Hostname: page-component-8448b6f56d-c4f8m Total loading time: 0 Render date: 2024-04-24T18:22:19.487Z Has data issue: false hasContentIssue false

A new approach for investigating spatial relationships of ichnofossils: a case study of Ediacaran–Cambrian animal traces

Published online by Cambridge University Press:  19 May 2022

Emily G. Mitchell*
Affiliation:
Department of Zoology, University of Cambridge, Cambridge, CB2 3EJ, U.K. E-mail: ek338@cam.ac.uk
Scott D. Evans
Affiliation:
Department of Geosciences, Virginia Tech, Blacksburg, Virginia 24061, U.S.A. E-mail: scotte23@vt.eu, xiao@vt.edu
Zhe Chen
Affiliation:
State Key Laboratory of Palaeobiology and Stratigraphy, Nanjing Institute of Geology and Palaeontology, and Centre for Excellence in Life and Paleoenvironment, Chinese Academy of Sciences, Nanjing 210008, China. E-mail: zhechen@nigpas.ac.cn
Shuhai Xiao
Affiliation:
Department of Geosciences, Virginia Tech, Blacksburg, Virginia 24061, U.S.A. E-mail: scotte23@vt.eu, xiao@vt.edu
*
*Corresponding author.

Abstract

Trace fossils record foraging behaviors, the search for resources in patchy environments, of animals in the rock record. Quantification of the strength, density, and nature of foraging behaviors enables the investigation of how these may have changed through time. Here, we present a novel approach to explore such patterns using spatial point process analyses to quantify the scale and strength of ichnofossil spatial distributions on horizontal bedding planes. To demonstrate the utility of this approach, we use two samples from the terminal Ediacaran Shibantan Member in South China (between 551 and 543 Ma) and the early Cambrian Nagaur Sandstone in northwestern India (between 539 and 509 Ma). We find that ichnotaxa on both surfaces exhibited significant nonhomogeneous lateral patterns, with distinct levels of heterogeneity exhibited by different types of trace fossils. In the Shibantan, two ichnotaxa show evidence for mutual positive aggregation over a shared resource, suggesting the ability to focus on optimal resource areas. Trace fossils from the Nagaur Sandstone exhibit more sophisticated foraging behavior, with greater niche differentiation. Critically, mark correlation functions highlight significant spatial autocorrelation of trace fossil orientations, demonstrating the greater ability of these Cambrian tracemakers to focus on optimal patches. Despite potential limitations, these analyses hint at changes in the development and optimization of foraging at the Ediacaran/Cambrian transition and highlight the potential of spatial point process analysis to tease apart subtle differences in behavior in the trace fossil record.

Type
Articles
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press on behalf of The Paleontological Society

Introduction

Trace fossils capture the activity of extinct organisms, providing important insights into the evolution of behaviors such as burrowing and foraging (e.g., Plotnick Reference Plotnick2012). Foraging animals develop strategies that minimize their energy expenditure when searching for resources, which are not typically distributed uniformly (Bond Reference Bond1980; Brown Reference Brown, Hutchings, John and Stewart2000). Optimization depends on the extent of resource heterogeneity—in a resource-rich area, suboptimal searching strategies incur little or no cost (Codling et al. Reference Codling, Plank and Benhamou2008). Identifying the extent of heterogeneity in trace fossils can provide important context regarding the behavioral ecology of the tracemakers through geological time, as well as the distribution of resources in a particular environment. Current metrics for describing horizontal trace fossils are primarily limited to the bedding-plane bioturbation index (BPBI), which describes the extent of bioturbation through assignment of a score from 1 to 5, where 1 indicates no bioturbation and 5 indicates maximal bioturbation (Miller and Smail Reference Miller and Smail1997). Further work to estimate the percentage of bioturbation on a surface uses grid maps and the presence/absence of trail intersections (Marenco and Hagadorn Reference Marenco and Hagadorn2019). However, these metrics do not quantify the relative patchiness of ichnofossils or provide the methodological power to compare to random distributions to a suite of other models.

One alternative approach to investigate such patchiness is to use spatial point process analyses (SPPA) to quantify the spatial scale and strength of spatial patterns with respect to the positions of horizontal trails on bedding planes (Illian et al. Reference Illian, Penttinen, Stoyan and Stoyan2008; Wiegand and Moloney Reference Wiegand and Moloney2013). SPPA in the fossil record have focused primarily on the use of nearest neighbor analyses (e.g., Leighton and Schneider Reference Leighton and Schneider2004; Shroat Lewis et al. Reference Shroat Lewis, Sumrall, McKinney and Meyer2014), where the distances between each pair of fossil specimens are calculated and compared with expected random patterns to determine whether nonrandom spatial patterns occur. However, nearest neighbor analyses only capture small spatial scales; if all specimens are within 10 cm of each other, for example, then the maximum resultant spatial pattern described will be 10 cm. This spatial limitation means that it is not possible to capture patterns at different spatial scales, so complex patterns are often not detected. Recently, SPPA have been successfully applied to body fossils to elucidate Ediacaran reproduction (Mitchell et al. Reference Mitchell, Kenchington, Liu, Matthews and Butterfield2015), competition dynamics (Mitchell and Kenchington Reference Mitchell and Kenchington2018), taphomorph identification (Mitchell and Butterfield Reference Mitchell and Butterfield2018), morphological characters (Mitchell et al. Reference Mitchell, Kenchington, Harris and Wilby2018), and the drivers of community dynamics (Mitchell et al. Reference Mitchell, Harris, Kenchington, Vixseboxse, Roberts, Clark, Dennis, Liu and Wilby2019, Reference Mitchell, Bobkov, Bykova, Dhungana, Kolesnikov, Hogarth, Liu, Mustill, Sozonov, Xiao and Grazhdankin2020), as well as facilitation within Silurian coral communities (Dhungana and Mitchell Reference Dhungana and Mitchell2020) and Jurassic crinoid colonization (Hunter et al. Reference Hunter, Casenove, Mitchell and Mayers2020). Such studies were possible due to an extensive set of ecological models that, in modern settings, correspond to different underlying processes for sessile organisms, such as mutual habitat associations (Getzin et al. Reference Getzin, Dean, He, Trofymow, Wiegand and Wiegand2008), dispersal limitation (Lin et al. Reference Lin, Chang, Yang, Wang and Sun2011), facilitation (Lingua et al. Reference Lingua, Cherubini, Motta and Nola2008), and density-dependent mortality (Fey et al. Reference Fey, Gibert and Siepielski2019). These models enable comparisons between the distributions of in situ fossil communities with those controlled by known ecological and biological processes today to determine the most likely control(s) of their spatial patterning.

Few studies have used SPPA to investigate the distribution of trace fossils. SPPA of the spatial positions of the Ediacaran body fossil Kimberella and its trace scratch marks Kimberichnus are suggestive of avoidance of pre-grazed patches (Mitchell et al. Reference Mitchell, Bobkov, Bykova, Dhungana, Kolesnikov, Hogarth, Liu, Mustill, Sozonov, Xiao and Grazhdankin2020). SPPA have also been used to visualize and quantify the distribution of predatory traces on shelled invertebrates, enabling the resolution of different modes of drilling predation (Rojas et al. Reference Rojas, Dietl, Kowalewski, Portell, Hendy and Blackburn2020). In principle, this approach can be extended to trails, trackways, and burrows, whereby the trace fossils are described by line segments (Fig. 1). The SPPA of their midpoints can be used to determine the nature (attractive/clustering or repelling/segregation), spatial scale, and strength of certain behaviors. Unfortunately, work using SPPA on movement and/or foraging ecology has not been used to investigate the trajectories of extant or fossil organisms, so there are few models for comparison with trace fossil spatial patterns. This limited set of movement models means that SPPA modeling fitting comparisons cannot be performed, and instead the SPPA of trails and trackways focus on describing relative lateral heterogeneity and optimization of the foraging strategies employed. For example, the trace midpoints of a single randomly moving organism (Fig. 1A) will produce a significantly different spatial point pattern than an organism responding to spatial heterogeneity (Fig. 1B,C). In the latter case, there are points that are both closer together and further apart than the random situation, that is, a higher variance of interpoint distances. Nonrandom patterns may indicate the ability to focus on good-quality resource patches. Comparisons of the spatial distributions of different trace midpoint patterns on a single surface can further test whether tracemakers responded to similar underlying heterogeneities, because they would have focused on the same area/patches, thus creating traces in this same area (Fig. 1). Therefore, two tracemakers that respond to the same heterogeneities will result in midpoint spatial patterns of similar scale and nonrandom bivariate spatial distributions. Such analyses also provide insights into possible time averaging: substrate heterogeneities are unlikely to persist for longer than ecological timescales, so nonrandom spatial patterns between ichnotaxa suggest that they co-existed within similar timescales (cf. Mitchell et al. Reference Mitchell, Kenchington, Liu, Matthews and Butterfield2015).

Figure 1. Schematic drawing showing different movement paths (blue lines), midpoints of the movement paths (stars), and background patchy environment (gray areas). Each midpoint is identified by the length and orientation of the corresponding line segments (“marks”). A, Random MCF: The moving organism does not respond to the underlying environment. The lengths of each segments, their orientations, and the distances between their midpoints are random. B, Nonrandom length movement: The tracemaker detects a preferable underlying substrate and so makes shorter path segments to maximize the time spent in the preferred resource. Marked lengths of paths and distances between midpoints are nonrandom, whereas marked orientations of paths are random. Short segments occur close together. C, Nonrandom length and nonrandom orientation MCF: The tracemaker detects a preferable underlying substrate and makes both shorter path segments and sharper turns to maximize the time spent in the preferred resource. Crucially, it turns around when it leaves its preferred area. Mark lengths and orientations of paths are nonrandom. Short segments and those with tight turns are more likely to occur closer together.

Mark correlation functions (MCFs) are a suite of functions that quantify how the marks (here segment lengths and absolute orientations) of a point (here trace fossil midpoints) vary with spatial scale (Velázquez et al. Reference Velázquez, Martínez, Getzin, Moloney and Wiegand2016). Under an optimal foraging strategy, a tracemaker will adjust both the length and orientation of each segment to focus on a preferred resource (Fig. 1C vs. Fig. 1A,B). If it strays out of the resource area, it quickly turns back, resulting in high directionality of orientations (Buhler and Grey Reference Buhler and Grey2017). Therefore, the directionality of trace fossil orientations is expected to be spatially heterogeneous, mirroring the underlying resource, and accompanied by shorter segment lengths to maximize time spent in favorable resource patches (Kitchell Reference Kitchell1979; Koy and Plotnick Reference Koy, Plotnick and Miller2007, Reference Koy and Plotnick2010). The optimization of foraging requires two different aspects: the ability to find quality resources, assessed using midpoint SPPA; and the ability to focus on these, for which MCFs are used. Combining these methods provides a novel approach for identifying the extent of foraging optimization of tracemakers.

To explore the power of SPPA methodologies to identify differences in behavior, we have applied them to two ichnofossil-rich horizons, from a critical time in the evolution of animal mobility—the Ediacaran/Cambrian transition. Trace fossils from this interval reveal crucial insights into the development of mobility, novel feeding behaviors, and the putative appearance of crown-group metazoans (Seilacher et al. Reference Seilacher, Buatois and Gabriela Mángano2005; Chen et al. Reference Chen, Zhou, Meyer, Xiang, Schiffbauer, Yuan and Xiao2013, Reference Chen, Zhou, Yuan and Xiao2019; Buatois and Mángano Reference Buatois, Mángano, Mángano and Buatois2016; Evans et al. Reference Evans, Gehling and Droser2019; Xiao et al. Reference Xiao, Chen, Zhou and Yuan2019). Indeed, adaptions to optimize foraging strategy—defined here as the exploitation of any resource distributed on the seafloor—have been suggested as potential drivers of early bilaterian evolution and diversification (Koy and Plotnick Reference Koy, Plotnick and Miller2007, Reference Koy and Plotnick2010; Budd and Jensen Reference Budd and Jensen2017; Mitchell et al. Reference Mitchell, Bobkov, Bykova, Dhungana, Kolesnikov, Hogarth, Liu, Mustill, Sozonov, Xiao and Grazhdankin2020). As such, methods that enable the determination of the extent of lateral resource heterogeneities and analyses of how animals exploit such resources are crucial for understanding the adaptation and progression of foraging behaviors during the Ediacaran and into the Cambrian.

Here, we demonstrate how spatial analyses of trace fossils can be used to elucidate foraging behavior by analyzing morphologically simple horizontal trails on a bedding plane from the late Ediacaran Shibantan Member (Xiao et al. Reference Xiao, Chen, Pang, Zhou and Yuan2021) and another from the early Cambrian Nagaur Sandstone of the Nagaur Group in Rajasthan, NW India (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014). These horizons yield trace fossils with comparable gross morphologies (and therefore likely underlying behavior) making them ideal candidates for this comparative study and comparison with other terminal Ediacaran traces (Jensen and Runnegar Reference Jensen and Runnegar2005).

Geological Setting

The Shibantan Member of the upper Ediacaran Dengying Formation, Yangtze Gorges area, South China, contains a high abundance of ichnofossils. These are preserved within 100–150 m of dark gray, thin-bedded, laminated peloidal limestone deposited in subtidal environments above the storm wave base and regularly impacted by current activity (Meyer et al. Reference Meyer, Xiao, Gill, Schiffbauer, Chen, Zhou and Yuan2014; Xiao et al. Reference Xiao, She, Wang, Li, Ouyang, Cao, Mason and Du2020, Reference Xiao, Chen, Pang, Zhou and Yuan2021). Depositional age is constrained between 550 and 543 Ma (Dornbos et al. Reference Dornbos, Bottjer and (陈均远) Chen2004; Condon et al. Reference Condon, Zhu, Bowring, Wang, Yang and Jin2005; Xiao et al. Reference Xiao, Chen, Pang, Zhou and Yuan2021; Yang et al. Reference Yang, Rooney, Condon, Li, Grazhdankin, Bowyer, Hu, Macdonald and Zhu2021; Fig. 2). Shibantan ichnofossils document extensive trails, resting or dwelling traces, undermat mining for oxygen and/or food (Xiao et al. Reference Xiao, Chen, Zhou and Yuan2019), and putative trackways of bilaterian animals with paired appendages (Xiao et al. Reference Xiao, Chen, Pang, Zhou and Yuan2021). Bedding-plane bioturbation intensity reaches 20%–40% (Meyer et al. Reference Meyer, Xiao, Gill, Schiffbauer, Chen, Zhou and Yuan2014), comparable to some pre-trilobite Cambrian carbonates (Dornbos et al. Reference Dornbos, Bottjer and (陈均远) Chen2004), although lower than the maximum observed for post-trilobite Cambrian carbonates (Fan et al. Reference Fan, Qi, Dai, Li, Liu and Qing2021). These ichnofossils are interpreted as recording the activity of organisms burrowing in and out of microbial mats, likely mining for oxygen and/or food (Xiao et al. Reference Xiao, Chen, Zhou and Yuan2019), which we refer to broadly as “resources,” and may have been spatially heterogeneous (Darroch et al. Reference Darroch, Cribb, Buatois, Germs, Kenchington, Smith, Mocke, O'Neil, Schiffbauer, Maloney, Racicot, Turk, Gibson, Almond, Koester, Boag, Tweedt and Laflamme2021) and temporally dynamic in Ediacaran oceans (Wood et al. Reference Wood, Poulton, Prave, Hoffman, Clarkson, Guilbaud, Lyne, Tostevin, Bowyer, Penny, Curtis and Kasemann2015). The bedding plane analyzed in this study was excavated at a horizon ~70 m above the base of the Shibantan Formation, covering an area of 0.51 m2. The excavated slabs were flipped and reassembled to view both part and counterpart (Droser et al. Reference Droser, Gehling, Tarhan, Evans, Hall, Hughes, Hughes, Dzaugis, Dzaugis, Dzaugis and Rice2019).

Figure 2. Geological map of the Yangtze Gorges area (A) and stratigraphic column of the Dengying Formation (B). Inset map shows major tectonic units, with red rectangle marking area shown in A. Star marks field site. Fossil ranges are updated from Xiao et al. (Reference Xiao, Chen, Pang, Zhou and Yuan2021) and Liang et al. (Reference Liang, Cai, Nolan and Xiao2020). The two possible correlations of the 551.1 ± 0.7 Ma tuffaceous bed are based on An et al. (Reference An, Jiang, Tong, Tian, Ye, Song and Song2015) and Zhou et al. (Reference Zhou, Xiao, Wang, Guan, Ouyang and Chen2017) and are denoted by two blue arrows. Mbr, Member; Fm, Formation; HMJ, Hamajing Member; SSF, small shelly fossil; Cry., Cryogenian; Cam., Cambrian. See Xiao et al. (Reference Xiao, Chen, Pang, Zhou and Yuan2021) for sources of radiometric dates.

The early Cambrian Nagaur Sandstone of the Nagaur Group near Dulmera, Rajasthan, NW India (Fig. 3), contains abundant trace fossils, including Cruziana, Diplichnites, Monomorphichnus, Rusophycus, and Treptichnus, among others (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014; Sharma et al. Reference Sharma, Ahmed, Pandey and Kumar2018). Ichnofossils are mostly preserved on the soles of sandstone beds, which are characterized by the abundance of trough cross-beds, planar cross-beds, and wave ripples. The fossiliferous sandstones were inferred to have deposited in shoreface environments (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014). The maximum depositional age of the Nagaur Sandstone is constrained by the youngest detrital zircons of ~540 Ma (McKenzie et al. Reference McKenzie, Hughes, Myrow, Xiao and Sharma2011), and the unit is variously considered as Cambrian Stage 2 or Stage 4 based on trace fossil assemblages (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014; Hughes Reference Hughes2016). A conservative age estimate is thus between 539 and 509 Ma. We selected a 0.039 m2 area of Nagaur Sandstone for this study.

Figure 3. Geological map of the Bikaner-Nagaur basin (A) and stratigraphic column of the Marwar Supergroup (B). Inset map in A shows general location of the basin in India. Black star marks fossil locality near Dulmera in NW India. Bb, Boulder bed; Dol, dolostone; Lst, limestone; Gr, Group; Pr, Period; SS, sandstone. Note: stratigraphic column is not to scale, but the Nagaur SS is reported to be approximately 500 m in total thickness, with the underlying Bilara Group approximately 300 m thick (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014). After figs. 1 and 2 of Pandey et al. (Reference Pandey, Uchman, Kumar and Shekhawat2014) and courtesy of Dhirenda Pandey.

Materials and Methods

Trace Fossil Markup

The Shibantan bed sole surface was chosen because there was a reasonable area of bedding plane with abundant ichnofossils and limited evidence of preservational or erosional heterogeneity (Fig. 4A; see also Xiao et al. Reference Xiao, Chen, Pang, Zhou and Yuan2021: fig. 6a). Taxonomy of Ediacaran trace fossils can be highly controversial (Darroch et al. Reference Darroch, Cribb, Buatois, Germs, Kenchington, Smith, Mocke, O'Neil, Schiffbauer, Maloney, Racicot, Turk, Gibson, Almond, Koester, Boag, Tweedt and Laflamme2021), and so here we recognize two distinct morphogroups consisting of relatively large (~1 cm) and small (~1 mm) horizontal traces, with no overlap in width. The smaller ichnofossils are Helminthoidichnites-like, and the larger ones are characterized by poorly preserved spiral structures reminiscent of Streptichnus (Jensen and Runnegar Reference Jensen and Runnegar2005; Xiao et al. Reference Xiao, Chen, Pang, Zhou and Yuan2021; Fig 4E). Importantly, even if this preferred taxonomy is incorrect, the statistical analyses we outline will not be impacted, as these large trace fossils represent similar behaviors, likely made by the same progenitor.

Figure 4. Ediacaran and Cambrian bedding surfaces. A, Shibantan surface analyzed in this study. B, Close-up of black box in A, showing small Helminthoidichnites-type trails (white oval) and Streptichnus with spiral structures (black arrows) indicative of this ichnotaxon. C, Nagaur surface analyzed in this study, with Treptichnus- and Rusophycus-type traces visible. D, A similar surface in the Nagaur Sandstone, illustrating small (white oval), circular (white square), and Treptichnus-type trace fossils. Lines in B and D illustrate the difference between connected (black) and unconnected (white) mark-up strategies of larger horizontal trails. E, Shibantan Streptichnus specimen with the radiating branches. F, Rusophycus from the Nagaur Group.

The Nagaur bed-sole surface similarly contains limited preservational or erosional heterogeneity (Fig. 4C). We mapped four distinct types of trace fossils on this bedding plane. Of primary interest are larger horizontal traces, similar to Treptichnus pedum previously identified from this unit (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014), and smaller horizontal trails ~1 mm wide (Fig. 4D, white oval). The larger trails may not contain all the diagnostic features of T. pedum, so we classify them more broadly as Treptichnus isp. These exhibit a probing behavior broadly similar to that of Streptichnus from the Shibantan. Smaller trails were regarded as Planolites isp. (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014). Circular traces are of similar diameter to the width of the larger horizontal traces, and the two are often associated. A fourth group of bilobed traces represent Rusophycus and/or Cruziana (Pandey et al. Reference Pandey, Uchman, Kumar and Shekhawat2014; Fig. 4F).

The outline of each bed and individual trace fossils were marked as vector lines within Inkscape 0.92.3 (Fig. 5). Areas with low fossil density, interpreted as artifacts of differing erosion and/or poor photographic contrast, were excluded (Fig. 5B). Critically, such areas are much larger than the centimeter-scale heterogeneities investigated here, and thus would not affect this study. Most of the traces can be clearly marked; however, two different modes were employed for larger horizontal trails (Streptichnus and Treptichnus). Initially, each individual trace was marked irrespective of adjacent ones (unconnected trails; Fig. 4B,D). Then, in instances where traces appear to represent a series of segments/steps that can be reliably ascribed to the same progenitor, they were connected or simplified to a single segment to focus on the overall paths of the tracemakers (connected trails; Fig. 4B,D). While traces are continuous objects, rather than points, these spatial methods have already been established for modern organisms, such as root systems, so are appropriate to apply to trace segments (Kitchell Reference Kitchell1979; Koy and Plotnick Reference Koy and Plotnick2010). Each single line represents a single action of the tracemaker, so that as long as consistent labeling approaches are applied across each surface, this marking-up approach results in a representation of the behaviors of the tracemakers across the bedding planes.

Figure 5. The mark-up process. A, The Shibantan surface. B, The surface with the area marked up in red, the large ichnotaxon in black, and the small ichnotaxon in green. C, Close-up of area showing the details of how the large and small ichnotaxa were marked up. D, Close-up area showing the midpoints of each trace segment.

Line data were extracted from Inkscape using a custom script written in Haskell (https://github.com/egmitchell/traces). Analyses were performed in R (R Core Team 2017) using spatstat (Baddeley and Turner Reference Baddeley and Turner2005).

Quantification of Lateral Heterogeneity

Previous paleontological work on foraging behavior has focused on quantifying the lengths and orientations of trace fossils with comparisons to L-systems and Lévy foraging distributions (Plotnick Reference Plotnick2003; Sims et al. Reference Sims, Reynolds, Humphries, Southall, Wearmouth, Metcalfe and Twitchett2014). Such analyses can be used to investigate foraging behavior by comparing trace segment lengths and orientations to known models. Of these models, one of the best known is Lévy flights, which are thought to optimize foraging strategy (Viswanathan et al. Reference Viswanathan, Afanasyev, Buldyrev, Murphy, Prince and Stanley1996), although the extent to which these accurately describe observed foraging is still very much debated (Edwards et al. Reference Edwards, Phillips, Watkins, Freeman, Murphy, Afanasyev, Buldyrev, da Luz, Raposo, Stanley and Viswanathan2007; Sims et al. Reference Sims, Southall, Humphries, Hays, Bradshaw, Pitchford, James, Ahmed, Brierley, Hindell, Morritt, Musyl, Righton, Shepard, Wearmouth, Wilson, Witt and Metcalfe2008; Humphries et al. Reference Humphries, Weimerskirch and Sims2013; Raichlen et al. Reference Raichlen, Wood, Gordon, Mabulla, Marlowe and Pontzer2014). A Lévy distribution predicts that relatively short trace segment lengths represent foraging in areas with plentiful resources, with rare long segments representing the search for nondepleted resource patches (Edwards et al. Reference Edwards, Phillips, Watkins, Freeman, Murphy, Afanasyev, Buldyrev, da Luz, Raposo, Stanley and Viswanathan2007). This distribution is thought to maximize search efficiency, because the animal(s) will spend more time in high-resource areas, then move quickly far away once the resource is depleted. Lévy distributions are parameterized by a factor μ that quantifies how right-skewed the distribution is, with optimum foraging thought to occur at μ = 2 (Humphries and Sims Reference Humphries and Sims2014). Random or minimally optimized strategies can be modeled as Brownian motion and are adequately efficient when resources are abundant and uniformly distributed (Sims et al. Reference Sims, Humphries, Bradford and Bruce2012). Correlated random walks involve a correlation between successive orientations of each trace segment (Patlak Reference Patlak1953), so produce a direction bias locally, but with diminished directionality over broader spatial scales, thus producing uniform segment orientations (Benhamou Reference Benhamou2006). These approaches are used in movement ecology for extant species to analyze long trails covering substantial spatial scales (Humphries and Sims Reference Humphries and Sims2014). While such traces are found in the fossil record on surfaces of comparable spatial scales, far more common are relatively small surfaces with multiple partial segments of a longer trail, making such analyses difficult to directly compare (Plotnick Reference Plotnick2012). As such, alternative approaches are needed to provide insights into the evolution and development of foraging strategies in the fossil record.

Outside the paleontological record, the level of heterogeneity (LH*) has been applied across a wide range of systems such as plant communities, crime locations, or earthquakes to quantify the degree of patchiness within different systems (Shu et al. Reference Shu, Pei, Song, Ma, Du, Fan and Guo2019). Other methods exist for examining similar spatial patterns (see Shu et al. Reference Shu, Pei, Song, Ma, Du, Fan and Guo2019); however, we prefer LH*, because it provides a single measure for relative heterogeneity over all relevant spatial scales and is easily implemented using spatstat. Spatial patterns are described using point distributions, whereby a homogeneous Poisson process describes randomly distributed points within a mapped area (Illian et al. Reference Illian, Penttinen, Stoyan and Stoyan2008). The LH* is calculated by summing the difference in nearest neighbor distances between the observed points (here fossil specimens) and the expected random nearest neighbor distribution as described by a homogeneous Poisson model over all spatial scales up to the maximum nearest neighbor distance (Shu et al. Reference Shu, Pei, Song, Ma, Du, Fan and Guo2019). The higher the LH*, the greater the differences between the homogeneous pattern and the observed pattern, so the greater the level of heterogeneity. Therefore, calculation of the LH* for ichnotaxa can be used to evaluate the relative lateral heterogeneity of different tracemakers.

Density plots of the trace surfaces were made to aid visualization of the relative homogeneities, a smoothed density function was used to calculate the relative density across the surfaces rather than plotting individual points/traces. To quantify the level of homogeneity of traces on the Shibantan and Nagaur surfaces, two different analyses were performed. First, the homogeneity test of Hosking and Wallis was used to test whether the spatial distributions were significantly different from what would be expected from a homogeneous distribution (Hosking and Wallis Reference Hosking and Wallis1993). For the Hosking and Wallis test, the heterogeneity measure approximates a normal distribution with zero mean and standard deviation of 1 and is calculated using the sample coefficients of variation, skewness, and kurtosis. Homogeneity is defined when the heterogeneity measure is less than 1. Second, the LH* was calculated between different ichnotaxa and surfaces. Segment lengths and orientations were extracted for each ichnofossil to determine how they were spatially distributed and enable comparisons to known foraging distributions. Third, the skewness and kurtosis of the distributions of the segment lengths were quantified and tested for normality and lognormality using the Shapiro-Wilk tests and compared with Lévy distributions. The parameter for the best-fit Lévy distribution was found, and the fit of Lévy distributions to normal and lognormal distributions was compared using Akaike information criterion (AIC) values. The proportion of ichnofossils in each orientation cohort and their means were calculated using Mclust (Fraley and Raftery Reference Fraley and Raftery2017).

Spatial Analyses

The spatial distributions of each ichnotaxon were described by taking the midpoints of each segment, then calculating pair correlation functions (PCFs), which describe spatial patterns. The PCF of a point pattern is calculated as the density of points within a given radius of each point, for all points. Calculating the mean density for a range of different radii (e.g., from 0 to 2 m) allows the changes in point density over the relevant given spatial scale (generally half the minimum width of the mapped area) to be described. The spatial relationship between any pair of ichnotaxa was similarly examined using bivariate PCFs. These determine how the relative density of points (here the ichnofossil midpoints) vary over the mapped area. When PCF = 1 points are distributed randomly within the mapped area, PCF > 1 indicates aggregation or clustering, while PCF < 1 suggests greater spacing (segregation) than expected (Illian et al. Reference Illian, Penttinen, Stoyan and Stoyan2008).

Similar to PCFs, to establish whether observed patterns are significantly nonrandom, MCF data were compared with a homogeneous Poisson model and 999 Monte Carlo simulations of homogeneous Poisson models, with simulation envelopes defined as the highest and lowest 5% of generated data (Wiegand and Moloney Reference Wiegand and Moloney2013). To further aid comparisons with the random model (homogeneous Poisson model), the goodness-of-fit test pd was calculated, where pd = 0 corresponded to no model fit (nonrandom distribution) and pd = 1 corresponded to a perfect model fit (random). Significant excursions outside the simulation envelope and poor fit under a homogeneous Poisson model (pd < 0.1) signify nonrandom distributions.

To investigate how trace length and orientation varied over the mapped area, MCFs were used to test for spatial autocorrelation. MCFs are a type of SPPA in which the spatial patterns of a quantitative variable (the mark, here the segment length or orientation angle) for a set of spatial points are tested to see whether the variable exhibits nonrandom spatial behavior, that is, spatial autocorrelation (Grabarnik et al. Reference Grabarnik, Myllymäki and Stoyan2011). When the lengths are the marks for the spatial data, the MCF is calculated as the function (Eq. 1) k LL(r):

(1)$$k_{LL}( r ) = \displaystyle{{E_{ou}[ {M( O ) M( u ) } ] } \over {E[ {M, \;{\rm \;}{M}^{\prime}} ] }}$$

where Eou is the conditional expectation, given that there are points at location O with mark M(O) and u with mark M(u) separated by a distance r; E is the expectation; and M and M′ are marks drawn randomly from the distribution of marks. Where MCF = 1, the values associated with each point exhibit no spatial autocorrelation (random distribution). The interpretation of MCF ≠ 1 depends on the function itself, but for all cases indicates spatial autocorrelation (nonrandom behavior). For our analyses, MCF > 1 indicates trace fossils more likely to be aggregated with other specimens with similar marks (positive spatial autocorrelation), and MCF < 1 more likely to be segregated (negative spatial autocorrelation).

To establish whether or not the observed pattern is significantly nonrandom, the observed pattern was compared with a homogeneous Poisson model and 999 Monte Carlo simulations of homogeneous Poisson models were created, with the simulation envelopes defined as the highest and lowest 5% of simulated data (Wiegand and Moloney Reference Wiegand and Moloney2013). To determine the extent to which the observed MCF patterns are described by the random model (homogeneous Poisson model), the goodness-of-fit test pd was calculated, with pd = 0 corresponding to no model fit (marks are not randomly distributed) and pd = 1 corresponding to a perfect random fit, so that the mark correlation function (Eq. 1) exactly describes the relationships between marks and specimen position. Significant excursions outside the simulation envelope where the MCF was not a good fit for the data (pd >> 0.1) are interpreted as nonrandom.

Results

The Shibantan surface contains a total of 1301 ichnofossils within the sampled area of 0.51 m2. Of these, 825 are classified as larger horizontal trails (Streptichnus), reduced to 424 trails when connected. The other 476 trails belong to the small ichnotaxon (Helminthoidichnites). For the Nagaur surface, a total of 1762 ichnofossils were mapped within the sampled area of 0.039 m2. These include 1116 large trace fossils (Treptichnus, reduced to 1051 when connected), 476 smaller horizontal trails (Planolites), 189 circular traces, and 25 patches of arthropod scratchings (i.e., Rusophycus and/or Cruziana). All ichnotaxa, apart from Nagaur arthropod traces, exhibited significant lateral heterogeneity, with none exhibiting Lévy distributions (Table 1).

Table 1. Summary metrics for the spatial heterogeneity and segment lengths of analyzed trace fossils. The H-W (Hosking and Wallis) test assesses whether the traces are significantly nonhomogeneous; LH* is a relative measure of heterogeneity; Lévy μ is the parameter for Lévy distributions, where μ = 2.71 is considered an optimal foraging strategy; normality test is the Shapiro-Wilk test to determine whether the segment length distributions are normally distributed.

Lateral Heterogeneity

Density plots (Fig. 6) of the Shibantan surface show notably different patterns between the small and large ichnotaxa, with significant nonhomogeneous patterns (both p < 0.001) and with specimen densities varying up to 20% for the small morphogroup and 7% for the large (Fig. 6A,E, Table 1). The small ichnotaxon exhibited 3.48× higher levels of heteogeneity than the large connected ichnotaxon and 1.58× the levels of heterogeneity for the large unconnected traces (Table 1).

Figure 6. Density plots and spatial distributions of ichnotaxa given by pair correlation functions (PCFs) of trace fossil midpoints. Density maps and corresponding PCF plots are shown in pairs. A, B, Shibantan large ichnotaxon (PCF: solid line, connected; dashed line, unconnected). C, D, Nagaur large ichnotaxon (PCF: solid line, connected; dashed line, unconnected). E, F, Shibantan small ichnotaxon. G, H, Nagaur small ichnotaxon. I, J, Nagaur circular ichnotaxon (PCF of large connected ichnotaxon is plotted for comparison). K, L, Nagaur arthropod traces. M, N, Shibantan bivariate distribution between large connected and small ichnotaxa. O, P, Nagaur bivariate distribution between large connected and small ichnotaxa. Scale bar next to density map is percent coverage, with range depending on the ichontaxon. PCF plots: blue lines, Shibantan; purple, Nagaur; gray area, 999 Monte Carlo simulations with a 5% threshold. PCF > 1 is aggregation; PCF < 1 is segregation; and PCF = 1 is random.

Density plots of the simple horizontal trails on the Nagaur surface (Fig. 6C,G) show notably different patterns between the small and large ichnotaxa, with significant nonhomogeneous patterns (both p < 0.001) and with varying specimen densities up to 14% for the small morphogroup and 20% for the large (Fig. 6C,G, Table 1). The small ichnotaxon exhbited 3.97× higher levels of heteogeneity than the large unconnected ichnotaxon and 2.39× the levels of heterogeneity for the connected large traces (Table 1). The spatial heterogeneity of the circular traces was significantly nonhomogeneous (p < 0.001), with varying specimen densities up to 0.14% (Fig. 6I, Table 1). The arthopod traces were not significantly heterogeneous (p = 0.219), which could be in part due to the relatively small number of these trace fossils (Fig. 6K).

Distribution of Trace Lengths

For the Shibantan, the small ichnotaxon was more strongly skewed in terms of segment length, but the large connected ichnotaxon had a greater kurtosis (Fig. 7A–C, Table 1). Neither ichnotaxon was normally distributed (p << 0.1; Table 1). The smallest ichnotaxon exhibited a lognormal distribution (p << 0.001; Table 1) but the large connected ichnotaxon did not (p >> 0.1; Table 1). For the Nagaur, the large ichnotaxon was more strongly skewed with greater kurtosis (Fig. 7G–I, Table 1). None of the ichnotaxa were normally distributed (p << 0.1; Table 1), and the large ichnotaxon was not lognormally distributed (p << 0.1; Table 1).

Figure 7. Shibantan data are presented in the top two rows (A–F), Nagaur data in the bottom two rows (G–L). First (A–C) and third (G–I) rows are histograms of segment lengths, and second (D–F) and fourth (J–L) rows are rose diagrams of segment orientations. The three columns are for small ichnotaxon (A, D, G, J), large (unconnected) ichnotaxon (B, E, H, K), and large connected ichnotaxon (C, F, I, L), respectively.

The best-fit Lévy distributions for large and small horizontal trails on both surfaces were not close to the optimum of 2 (Sims et al. Reference Sims, Humphries, Hu, Medan and Berni2019; Table 1). AIC showed a worse fit for Lévy distributions than normal distributions, and modeled Lévy distributions had much higher kurtosis and skewness. Thus, these distributions were not well described by Lévy distributions, so such comparisons have limited value. Both Brownian walks and correlated random walks produce uniform distributions with skewness and kurtosis much lower than the observed distribution, so these models are unlikely to describe any of the observed data.

Spatial Analyses

For the Shibantan, the midpoints of both ichnotaxa exhibit significantly nonrandom spatial distributions (Fig. 6B,F). The distributions of large connected and unconnected trails are the same at spatial scales greater than 1.5 cm, with unconnected trails showing higher aggregation (PCFmax = 2.0) than connected trails (PCFmax = 1.5; Fig. 6B). The large ichnotaxon has a single scale of aggregation at 1–8 cm of ~1.5× the random density (pd = 0.002; Fig. 6B). Small traces are significantly aggregated (pd = 0.002) with ~3× the random density under 1 cm and 1.5× the random density under 8 cm (Fig. 6E,F). Bivariate midpoint PCF shows a single scale of aggregation at 1–8 cm of ~1.5× the random density (pd = 0.025; Fig. 6M,N).

For the Nagaur, the midpoints of small, large, and circular ichnotaxa exhibited significantly nonrandom spatial distributions (Fig. 6D,H,J). Spatial distributions for the large connected and unconnected trails are the same, >0.5 cm, showing similar levels of aggregation (PCFmax ~ 2.0), but with the unconnected trails significantly segregated below 2 mm (pseg = 0.001; Fig. 6D). Segregation is most likely due to how connected versus unconnected trails were identified—when trails are less than 2 mm apart, it is difficult to distinguish between them, thus, they were likely counted as a single trail. The large ichnotaxon is aggregated at two spatial scales, under 0.5 cm and between 0.5 and 2.3 cm of ~1.5× the random density (pd = 0.001; Fig. 6C). Small traces are significantly aggregated (pd = 0.001) with ~8× the random density under 0.5 cm and 2× the random density under 1 cm (Fig. 6G,H). The circular traces showed a significantly nonrandom distribution (pd = 0.001), closely matching the aggregation of the large ichnotaxon, 0.5 cm (Fig. 6I,J), and consistent with the hypothesis that these were produced by the same organism but record slightly different behaviors. Arthropod traces were randomly distributed (pd = 0.267; Fig. 6K,L). The bivariate midpoint PCF exhibits significant segregation between small and large trails across most spatial scales, with a single scale of aggregation between 2.75 and 3 cm of ~1.5× the random density (pd = 0.001, pseg = 0.001; Fig. 6O,P).

Small and large ichnotaxa on both surfaces exhibit significant autocorrelation of segment lengths. The Shibantan ichnotaxa are aggregated at similar segment lengths under 2.0 cm (small pd = 0.011, large pd = 0.001; Fig. 8A,C), with large unconnected traces showing a stronger correlation at smaller distances of <1 cm (MCFmin = 0.6 vs. 0.8; pd = 0.001; Fig. 8A). The Nagaur ichnotaxa are aggregated at similar segment lengths under 0.5 cm (small pd = 0.001, large pd = 0.016; Fig. 8B,D), with large unconnected traces showing a slightly stronger correlation (MCFmin = 0.58 vs. 0.62; pd = 0.016; Fig. 8B).

Figure 8. Mark correlation functions (MCFs) of spatial patterns of the lengths (A–D) and orientations (E–H) of traces. MCF < 1 is aggregation; MCF > 1 is segregation; and MCF = 1 is random. Blue lines are for the Shibantan and purple for Nagaur. For the large ichnotaxon, solid lines are the connected traces and dashed lines are unconnected.

In the Shibantan, the orientations of the large ichnotaxon did not show significant spatial autocorrelation (pd = 0.997), although the large unconnected traces are borderline significant (pd = 0.105; Fig. 8E). The small ichnotaxon did not exhibit any significant autocorrelation (pd = 0.770; Fig. 8G). The lack of evidence for autocorrelation contrasts Nagaur ichnotaxa, which all show significant orientation autocorrelations (Fig. 8F,H). The Nagaur large ichnotaxon is significantly aggregated <1 cm (pd = 0.012) with a weaker signal from the unconnected traces (pd = 0.086). The Nagaur small ichnotaxon also exhibited significant autocorrelation (pd = 0.082) with spatial aggregation of orientations <1 cm and significant segregation between 1.3 and 2.2 cm (Fig. 8H).

Discussion

Potential Limitations

The main focus of this study is to provide a proof of concept that SPPA can be used to reliably identify patterns in trace fossils exposed on horizontal bedding planes. We chose to analyze two terminal Ediacaran–early Cambrian slabs that had been previously documented by Z.C. and S.X. A clear limitation is that the two beds may not be representative of each geological period, with a variety of potential taphonomic factors contributing to the density and distribution of trace fossils on each surface, rather than the hypothesized evolutionary shifts in animal behaviors highlighted below. The two surfaces, although both from deposits with evidence for regular current activity in a shallow-marine environment, are interpreted to represent different depositional settings, given their different lithologies (carbonate vs. siliciclastic rocks). Therefore, paleoenvironmental factors may contribute to the different patterns identified. For example, animals can only leave horizontal burrows while a bed is exposed or very shallowly buried, so time of exposure will exert a significant control on the number of trace fossils on any given surface. If sufficient time is allowed and resources are plentiful, burrows will begin to overprint one another, leading to time averaging and altering our ability to resolve the full extent of past behavior. Importantly, these taphonomic uncertainties do not negate the utility of this method. Application to a broader suite of horizontal bedding planes with abundant trace fossils across the Ediacaran/Cambrian boundary will provide further tests of the hypotheses presented here.

Trace fossils provide essential insight into the behaviors of ancient organisms; however, there are also many limitations associated with the ichnofossil record. Of particular importance here is a lack of understanding of exactly what behaviors are being recorded by horizontal trails. Even with confident assignment to Streptichnus, it is unclear whether individual segments represent systematic probing (the preferred interpretation), similar to Treptichnus pedum, or are instead related to the movement of the tracemaker (Hughes Reference Hughes2016; Darroch et al. Reference Darroch, Cribb, Buatois, Germs, Kenchington, Smith, Mocke, O'Neil, Schiffbauer, Maloney, Racicot, Turk, Gibson, Almond, Koester, Boag, Tweedt and Laflamme2021). Although likely related to the presence of an organic mat, smaller, indistinct trails may represent movement and/or feeding (Jensen et al. Reference Jensen, Droser, Gehling, Xiao and Kaufman2006). Such ambiguities also leave open the question of exactly what resources (e.g., oxygen vs. food) were being exploited.

Analyses of trace segment length and orientation have been a key focus in extant movement ecology (e.g., Houghton et al. Reference Houghton, Doyle, Wilson, Davenport and Hays2006; Humphries and Sims Reference Humphries and Sims2014; Kölzsch et al. Reference Kölzsch, Alzate, Bartumeus, de Jager, Weerman, Hengeveld, Naguib, Nolet and van de Koppel2015). In this study, we did not have long single traces or time dimensions, but instead had multiple shorter traces that limit the applicability of methods developed in extant movement ecology (for an overview, see Edelhoff et al. Reference Edelhoff, Signer and Balkenhol2016) and further motivate the need to explore alternative approaches, such as the ones presented here. Comparisons with extant movement ecology could be made if the partial trails included in our dataset represent a random subsample of the trails of a single tracemaker population. Theoretical model comparison would be needed to test this hypothesis and to assess how robust such subsamples are, but preservational effects, such as possible biases toward the preservation of shorter trails, complicate theoretical modeling. An inflated abundance of shorter trails would increase the tendency of segment length distributions toward Lévy distributions, which are highly skewed. If the validity of such approaches could be established or much longer traces could be used, the comparison of segment length distributions to the best-fit Lévy model would enable the comparison of the relative extent of optimization for ichnotaxa.

Animal Behavior across the Ediacaran/Cambrian Boundary

Despite the abovementioned limitations, all ichnotaxa investigated represent energetically demanding behaviors, likely with some benefit gained by their progenitor. The nonrandom distribution of most trace fossils identified here suggests that the tracemakers responded to heterogeneously distributed resources, regardless of what resources were targeted. We note that both redox conditions and microbial mat distribution in Ediacaran–Cambrian shallow-marine environments were spatially heterogenous and temporally dynamic, as evidenced by redox proxy data (e.g., Wood et al. Reference Wood, Poulton, Prave, Hoffman, Clarkson, Guilbaud, Lyne, Tostevin, Bowyer, Penny, Curtis and Kasemann2015) and microbially induced sedimentary structures as well as textured organic surfaces (e.g., Buatois et al. Reference Buatois, Narbonne, Mángano, Carmona and Myrow2014; Droser et al. Reference Droser, Gehling, Tarhan, Evans, Hall, Hughes, Hughes, Dzaugis, Dzaugis, Dzaugis and Rice2019; Darroch et al. Reference Darroch, Cribb, Buatois, Germs, Kenchington, Smith, Mocke, O'Neil, Schiffbauer, Maloney, Racicot, Turk, Gibson, Almond, Koester, Boag, Tweedt and Laflamme2021). Thus, resource heterogeneity is expected. Perhaps most importantly, the increased sophistication and specialization observed here would result in greater fitness of the trace-making animals in environments with heterogeneous resource distribution.

In ichnology, previous metrics for describing the extent of lateral bioturbation (Miller and Smail Reference Miller and Smail1997; Marenco and Hagadorn Reference Marenco and Hagadorn2019) have limitations in detecting patchiness at smaller spatial scales (Marenco and Hagadorn Reference Marenco and Hagadorn2019), cannot distinguish between significantly nonhomogeneous patchiness, and thus are unable to quantify the spatial scale of any such patchiness. Spatial patterns are often hard to identify with the naked eye, especially when assessing the significance of a pattern (Law et al. Reference Law, Illian, Burslem, Gratzer, Gunatilleke and Gunatilleke2009). Our use of the Hosking and Wallis homogeneity test enabled us to statistically assess whether the heterogeneity of each ichnotaxon was significantly different from a homogeneous pattern. The LH* metric indicates that the trails of the small ichnotaxon had greater heterogeneity than those of the large ichnotaxon on both surfaces. These two metrics provide a method to compare the extent of patchiness across beds with any level of coverage and to identify significant heterogeneities at much lower ichnofossil abundance. The ability to detect heterogeneities across a wide range of percent coverage indicates that these methods are applicable throughout the fossil record. Analysis of the Cambrian surface indicates distinct spatial differences between the arthropod scratches and other traces. This result is expected, given that these arthropod traces are interpreted to represent distinct behaviors (namely not foraging), especially because circular traces were likely related to the larger treptichniids and thus have a very similar spatial distribution to the treptichniids (Fig. 6J). Understanding how these metrics change beyond the early Cambrian with the increased depth and complexity of bioturbation observed through the Phanerozoic will also provide meaningful context for the patterns described here.

Aggregated spatial distributions of trace fossil midpoints from the Shibantan suggest preferential focus on optimal habitats. The smaller morphogroup showed more complex spatial patterns, with a strong (2.8×) aggregation under 2 cm and a weaker (1.5×) aggregation at larger spatial scales (Fig. 6B). These differences suggest two distinct external factors responsible for such aggregation. Similar scale and strength of aggregation between midpoint spatial distribution of the large and small ichnotaxa as well as their bivariate distribution suggest common resource exploitation. Some optimization was detected through the MCF analyses of segment lengths, which indicates decreased segment length in quality patches to optimize time spent there, but a lack of ability to turn back once they left the preferred area. Taken together, these analyses indicate the Shibantan large ichnotaxon represents relatively simple foraging behavior, likely responding to heterogeneities of a single resource with limited evidence for optimization via avoidance or return to optimal resource patches (cf. Fig. 1B).

The Nagaur trace fossils exhibited greater spatial aggregation than those from the Shibantan, with the small ichnotaxon showing significantly stronger (8×) aggregation than the large ichnotaxon (2×). Both Nagaur ichnotaxa have two scales of spatial aggregation, a stronger one under 0.5 cm and a weaker one at 0.5–1.5 cm for the small ichnotaxon and 0.5–2.5 cm for the large ichnotaxon. Differences in the PCF distributions of the small and large ichnotaxa suggest that they targeted different resources, further exemplified by strong segregation of the Nagaur bivariate PCF distribution (Fig. 6P). While some small-scale segregation may be preservational (e.g., large tracemakers erasing small traces), this process cannot explain the segregation over the majority of spatial scales. Thus, spatial distributions suggest that the Nagaur tracemakers had a greater degree of niche specialization than their Shibantan counterparts.

Strong directionality of small and large trace fossil segments on the Shibantan and Nagaur beds (Fig. 7, Table 2) runs against many models of movement ecology. Lévy flights, Brownian motion, and correlated random walks all describe more uniform distributions (Auger-Méthé et al. Reference Auger-Méthé, Derocher, Plank, Codling and Lewis2015). Strong directionality in extant taxa can arise when organisms reverse direction after straying out of food sources (Kölzsch et al. Reference Kölzsch, Alzate, Bartumeus, de Jager, Weerman, Hengeveld, Naguib, Nolet and van de Koppel2015). These changes in directionality could be driven by a variety of signals, including those from nonlocal sources (Fagan et al. Reference Fagan, Gurarie, Bewick, Howard, Cantrell and Cosner2017). Here, we would expect the orientations to have a spatial distribution that corresponds to the spatial distribution of food sources, because nonlocal sources would likely be operating over larger spatial scales, not providing the heterogeneity seen at the spatial scales we have described. By testing for the presence of spatial autocorrelation of orientations, and through comparisons of the spatial scales of any significant autocorrelation, we can further establish whether tracemakers do reverse direction after straying out of a high-quality resource patch.

Table 2. Bimodal orientation distributions of the trace orientations.

In the Shibantan, the orientations of the trace fossils do not exhibit significant spatial autocorrelation (Fig. 8E,G). Nonrandom spatial distributions of midpoints suggest preferential directionality was not focused on the sources of midpoint aggregations. As such, it is unlikely that the strong directionality exhibited in Ediacaran trace fossils analyzed here is due to resource distribution. More likely, the directionality is related to currents, as observed, for example, in fossil horseshoe crab trails (Buhler and Grey Reference Buhler and Grey2017). These patterns in the Shibantan show a second cohort of orientations approximately 160° to the majority of trails. Future studies targeting similar trace fossils associated with paleocurrent indicators (e.g., ripple marks) could test this hypothesized relationship.

Sophistication in the Nagaur ichnotaxa is captured in the MCF segment length analyses (Fig. 8B–D). Like the Shibantan trace fossils, MCFs indicate that small segment lengths likely represent focused behavior in beneficial resource patches (Fig. 8A–D). These Cambrian trace progenitors appear to have been able to detect optimal areas, only making minimal changes in direction to maximize time within the patches. In sharp contrast to the Shibantan, significant autocorrelation of trace orientations in the Nagaur (Fig. 8F,H) is consistent with tracemakers changing direction dependent on the spatial distribution of resources. This spatial autocorrelation of the Nagaur small ichnotaxon suggests that it was able to detect when it was leaving the resource patches and to make a significant change in orientation to enable a return to those patches (cf. Grabarnik et al. Reference Grabarnik, Myllymäki and Stoyan2011). Small spatial–scale aggregations suggest the maintenance of similar paths in preferred resource patches. Significant segregation of the small ichnotaxon at medium spatial scales further suggests that the small tracemaker changed direction consistently.

The evolution of optimization and the capability to search for patchy resources may be crucial to clarifying early bilaterian ecology, as the motivation to find these resources may be a driver of early animal adaptations (Koy and Plotnick Reference Koy, Plotnick and Miller2007, Reference Koy and Plotnick2010; Plotnick et al. Reference Plotnick, Dornbos and Chen2010; Budd and Jensen Reference Budd and Jensen2017). The ubiquity of Precambrian organic mats likely declined in the Phanerozoic with the advent and diversification of vertical bioturbating animals, providing new pressures for optimized foraging in the Cambrian that are absent or entirely different in the Ediacaran. Resulting adaptations could potentially start a feedback of increasing diversification due to increased heterogeneity through increased foraging (Mitchell et al. Reference Mitchell, Bobkov, Bykova, Dhungana, Kolesnikov, Hogarth, Liu, Mustill, Sozonov, Xiao and Grazhdankin2020). Despite evidence for heterogeneity in the Shibantan, the two ichnotaxa studied demonstrate a relatively limited capacity for resource-focused foraging in the Shibantan relative to the Nagaur. Further, the Nagaur ichnotaxa showed more behavioral complexity, with different niches occupied by horizontal grazers and intertaxon avoidance. Due to the limited sample sizes, it is not clear whether these samples are representative or to what extent taphonomy and/or paleoenvironment (among other factors) influenced our results, necessitating further work on surfaces across the Ediacaran/Cambrian transition to test potential evolutionary patterns. However, the fact that these patterns match previous observations of an increase in behavioral complexity across this boundary suggests that the methods employed here revealed a real evolutionary signal.

Further ground truthing based on analyses of younger deposits will continue to establish the utility of the methods described in this paper. Extending this work to a broader range of ichnotaxa and more bedding-plane surfaces will continue to test the hypotheses suggested here and identify the range of foraging efficiencies exhibited by early animals. However, increased ichnodisparity suggests that there was pressure to optimize foraging by the terminal Ediacaran, potentially contributing to changes in diversity at the Ediacaran/Cambrian transition. Only through analyses of trace fossil assemblages across this interval will we be able to detect and quantify how the development of complex trace morphologies relates to optimization of foraging. The ability to recognize differences between these Ediacaran and Cambrian behaviors suggests that spatial analysis is a powerful method for interrogating the trace fossil record.

Conclusions

Analysis of two trace fossil–rich surfaces from the Ediacaran Shibantan Member and the Cambrian Nagaur Sandstone shows that ichnotaxa on both surfaces exhibit lateral heterogeneity, likely in response to unevenly distributed resources. In the Ediacaran, both ichnotaxa investigated appear to have exploited the same resource. The small ichnotaxon also showed added aggregation at smaller spatial scales, indicating the preference for a second, distinct resource. Bivariate spatial patterns suggest that these Shibantan tracemakers likely did not interact directly with each other but shared similar resource requirements. Despite these patterns, foraging strategies were comparably limited, with only the smaller Shibantan ichnotaxon seemingly able to maximize time in presumed high-quality resource patches and neither expressing the ability to change orientation to concentrate on particular resources. In contrast, early Nagaur trace fossils exhibit notable increases in optimization of foraging behavior, specifically the ability of Nagaur tracemakers to adjust segment length and orientation to focus on preferred resources.

This study provides preliminary but quantitative data that Shibantan tracemakers exhibited limited evidence of resource optimization and that their Nagaur counterparts developed more sophisticated foraging strategies. Further work is needed to establish the extent to which these patterns reflect environmental difference between the two analyzed ichnofossil assemblages or behavior-evolutionary innovation across the Ediacaran/Cambrian transition. More broadly, the analytical techniques employed in this study provide a novel methodology for quantifying the lateral heterogeneity of bioturbation, the methods to test for spatially induced turning, and approaches to assess how tracemakers interact with lateral resource heterogeneity in their local environments.

Data Availability Statement

The datasets and code supporting this article are shared on Dryad: https://doi.org/10.5061/dryad.wh70rxwqb.

Acknowledgments

We thank M. Sharma and D. Pandey for field guidance and discussion on the Nagaur fossils, X. Yuan and C. Zhou for discussion on the Shibantan fossils, and two anonymous reviewers for constructive criticism. This work was funded by a UKRI grant (NE/S014756/1) to E.G.M. For the purpose of open access, the author has applied a Creative Commons Attribution (CC BY) license to any Author Accepted Manuscript version arising. S.D.E. was funded by an Agouron Institute Geobiology fellowship, S.X. by the National Science Foundation (EAR-2021207), and Z.C. by the National Natural Science Foundation of China (41921002). The authors declare no competing financial interests.

References

Literature Cited

An, Z., Jiang, G., Tong, J., Tian, L., Ye, Q., Song, H., and Song, H.. 2015. Stratigraphic position of the Ediacaran Miaohe biota and its constrains on the age of the upper Doushantuo δ13C anomaly in the Yangtze Gorges area, South China. Precambrian Research 271:243253.Google Scholar
Auger-Méthé, M., Derocher, A. E., Plank, M. J., Codling, E. A., and Lewis, M. A.. 2015. Differentiating the Lévy walk from a composite correlated random walk. Methods in Ecology and Evolution 6:11791189.CrossRefGoogle Scholar
Baddeley, A., and Turner, R.. 2005. Spatstat: a R package for analyzing spatial point patterns. Journal of Statistical Software 12:142.CrossRefGoogle Scholar
Benhamou, S. 2006. Detecting an orientation component in animal paths when the preferred direction is individual-dependent. Ecology 87:518528.Google ScholarPubMed
Bond, A. B. 1980. Optimal foraging in a uniform habitat: the search mechanism of the green lacewing. Animal Behaviour 28:1019.CrossRefGoogle Scholar
Brown, J. H. 2000. Foraging ecology of animals in response to heterogeneous environments. Pp. 181214 in Hutchings, M. J., John, E. A., and Stewart, A. J. A., eds. The ecological consequences of environmental heterogeneity. Blackwell Science, Oxford.Google Scholar
Buatois, L. A., and Mángano, M. G.. 2016. Ediacaran ecosystems and the dawn of animals. Pp. 2772 in Mángano, M. G. and Buatois, L. A., eds. The trace-fossil record of major evolutionary events. Vol. 1, Precambrian and Paleozoic. Springer, Dordrecht, Netherlands.CrossRefGoogle Scholar
Buatois, L. A., Narbonne, G. M., Mángano, M. G., Carmona, N. B., and Myrow, P.. 2014. Ediacaran matground ecology persisted into the earliest Cambrian. Nature Communications 5:3544.Google ScholarPubMed
Budd, G. E., and Jensen, S.. 2017. The origin of the animals and a “Savannah” hypothesis for early bilaterian evolution. Biological Reviews 92:446473.Google Scholar
Buhler, P. B., and Grey, M.. 2017. Xiphosuran digging traces at the late Carboniferous Joggins Fossil Cliffs UNESCO World Heritage Site, Nova Scotia, Canada. Ichnos 24:179190.CrossRefGoogle Scholar
Chen, Z., Zhou, C., Meyer, M., Xiang, K., Schiffbauer, J. D., Yuan, X., and Xiao, S.. 2013. Trace fossil evidence for Ediacaran bilaterian animals with complex behaviors. Precambrian Research 224:690701.CrossRefGoogle Scholar
Chen, Z., Zhou, C., Yuan, X., and Xiao, S.. 2019. Death march of a segmented and trilobate bilaterian elucidates early animal evolution. Nature 573:412415.CrossRefGoogle ScholarPubMed
Codling, E. A., Plank, M. J., and Benhamou, S.. 2008. Random walk models in biology. Journal of the Royal Society Interface 5:813834.CrossRefGoogle ScholarPubMed
Condon, D., Zhu, M., Bowring, S., Wang, W., Yang, A., and Jin, Y.. 2005. U-Pb ages from the Neoproterozoic Doushantuo Formation, China. Science 308:9598.CrossRefGoogle ScholarPubMed
Darroch, S. A. F., Cribb, A. T., Buatois, L. A., Germs, G. J. B., Kenchington, C. G., Smith, E. F., Mocke, H., O'Neil, G. R., Schiffbauer, J. D., Maloney, K. M., Racicot, R. A., Turk, K. A., Gibson, B. M., Almond, J., Koester, B., Boag, T. H., Tweedt, S. M., and Laflamme, M.. 2021. The trace fossil record of the Nama Group, Namibia: exploring the terminal Ediacaran roots of the Cambrian explosion. Earth-Science Reviews 212:103435.CrossRefGoogle Scholar
Dhungana, A., and Mitchell, E. G.. 2020. Facilitating corals in an early Silurian deep-water assemblage. Palaeontology 64:359370.CrossRefGoogle Scholar
Dornbos, S. Q., Bottjer, D. J., and (陈均远) Chen, J.. 2004. Evidence for seafloor microbial mats and associated metazoan lifestyles in Lower Cambrian phosphorites of southwest China. Lethaia 37:127137.Google Scholar
Droser, M. L., Gehling, J. G., Tarhan, L. G., Evans, S. D., Hall, C. M. S., Hughes, I. V., Hughes, E. B., Dzaugis, M. E., Dzaugis, M. P., Dzaugis, P. W., and Rice, D.. 2019. Piecing together the puzzle of the Ediacara Biota: excavation and reconstruction at the Ediacara National Heritage site Nilpena (South Australia). Palaeogeography, Palaeoclimatology, Palaeoecology 513:132145.CrossRefGoogle Scholar
Edelhoff, H., Signer, J., and Balkenhol, N.. 2016. Path segmentation for beginners: an overview of current methods for detecting changes in animal movement patterns. Movement Ecology 4:21.Google ScholarPubMed
Edwards, A. M., Phillips, R. A., Watkins, N. W., Freeman, M. P., Murphy, E. J., Afanasyev, V., Buldyrev, S. V., da Luz, M. G. E., Raposo, E. P., Stanley, H. E., and Viswanathan, G. M.. 2007. Revisiting Lévy flight search patterns of wandering albatrosses, bumblebees and deer. Nature 449:10441048.CrossRefGoogle ScholarPubMed
Evans, S. D., Gehling, J. G., and Droser, M. L.. 2019. Slime travelers: early evidence of animal mobility and feeding in an organic mat world. Geobiology 17:490509.CrossRefGoogle Scholar
Fagan, W. F., Gurarie, E., Bewick, S., Howard, A., Cantrell, R. S., and Cosner, C.. 2017. Perceptual ranges, information gathering, and foraging success in dynamic landscapes. American Naturalist 189:474489.CrossRefGoogle ScholarPubMed
Fan, Y.-C., Qi, Y.-A., Dai, M.-Y., Li, D., Liu, B.-C., and Qing, G.-S.. 2021. Bioturbation of Thalassinoides from the Lower Cambrian Zhushadong Formation of Dengfeng area, Henan Province, North China. Journal of Palaeogeography 10:1.CrossRefGoogle Scholar
Fey, S. B., Gibert, J. P., and Siepielski, A. M.. 2019. The consequences of mass mortality events for the structure and dynamics of biological communities. Oikos 128:16791690.CrossRefGoogle Scholar
Fraley, C., and Raftery, A. E.. 2017. MCLUST version 3 for R: normal mixture modeling and model-based clustering. Technical Report No. 57. Seattle: Department of Statistics, University of Washington.Google Scholar
Getzin, S., Dean, C., He, F., Trofymow, J. A., Wiegand, K., and Wiegand, T.. 2008. Heterogeneity influences spatial patterns and demographics in forest stands. Journal of Ecology 96:807820.CrossRefGoogle Scholar
Grabarnik, P., Myllymäki, M., and Stoyan, D.. 2011. Correct testing of mark independence for marked point patterns. Ecological Modelling 222:38883894.Google Scholar
Hosking, J. R. M., and Wallis, J. R.. 1993. Some statistics useful in regional frequency analysis. Water Resources Research 29:271281.CrossRefGoogle Scholar
Houghton, J. D. R., Doyle, T. K., Wilson, M. W., Davenport, J., and Hays, G. C.. 2006. Jellyfish aggregations and leatherback turtle foraging patterns in a temperate coastal environment. Ecology 87:19671972.CrossRefGoogle Scholar
Hughes, N. C. 2016. The Cambrian palaeontological record of the Indian subcontinent. Earth-Science Reviews 159:428461.CrossRefGoogle Scholar
Humphries, N. E., and Sims, D. W.. 2014. Optimal foraging strategies: Lévy walks balance searching and patch exploitation under a very broad range of conditions. Journal of Theoretical Biology 358:179193.Google Scholar
Humphries, N. E., Weimerskirch, H., and Sims, D. W.. 2013. A new approach for objective identification of turns and steps in organism movement data relevant to random walk modelling. Methods in Ecology and Evolution 4:930938.Google Scholar
Hunter, A. W., Casenove, D., Mitchell, E., and Mayers, C.. 2020. Reconstructing the ecology of a Jurassic pseudoplanktonic megaraft colony. Royal Society Open Science 7:200142.Google ScholarPubMed
Illian, J., Penttinen, P. A., Stoyan, D. H., and Stoyan, D. D.. 2008. Statistical analysis and modelling of spatial point patterns. Wiley, London.Google Scholar
Jensen, S., Droser, M. L., and Gehling, J. G.. 2006. A critical look at the Ediacaran trace fossil record. Pp. 115157 in Xiao, S. and Kaufman, A. J., eds. Neoproterozoic geobiology and paleobiology. Springer, Dordrecht, Netherlands.CrossRefGoogle Scholar
Jensen, S. R., and Runnegar, Bruce. 2005. A complex trace fossil from the Spitskop Member (terminal Ediacaran–? Lower Cambrian) of southern Namibia. Geological Magazine 142:561569.Google Scholar
Kitchell, J. A. 1979. Deep-sea foraging pathways: an analysis of randomness and resource exploitation. Paleobiology 5:107125.CrossRefGoogle Scholar
Kölzsch, A., Alzate, A., Bartumeus, F., de Jager, M., Weerman, E. J., Hengeveld, G. M., Naguib, M., Nolet, B. A., and van de Koppel, J.. 2015. Experimental evidence for inherent Lévy search behaviour in foraging animals. Proceedings of the Royal Society of London B 282:20150424.Google ScholarPubMed
Koy, K., and Plotnick, R. E.. 2007. Theoretical and experimental ichnology of mobile foraging. Pp. 428441 in Miller, W., ed. Trace fossils. Elsevier, Amsterdam.CrossRefGoogle Scholar
Koy, K. A., and Plotnick, R. E.. 2010. Ichnofossil morphology as a response to resource distribution: insights from modern invertebrate foraging. Palaeogeography, Palaeoclimatology, Palaeoecology 292:272281.CrossRefGoogle Scholar
Law, R., Illian, J., Burslem, D. F. R. P., Gratzer, G., Gunatilleke, C. V. S., and Gunatilleke, I. A. U. N.. 2009. Ecological information from spatial patterns of plants: insights from point process theory. Journal of Ecology 97:616628.Google Scholar
Leighton, L. R., and Schneider, C. L.. 2004. Neighbor proximity analysis, a technique for assessing spatial patterns in the fossil record. Palaios 19:396407.2.0.CO;2>CrossRefGoogle Scholar
Liang, D., Cai, Y., Nolan, M., and Xiao, S.. 2020. The terminal Ediacaran tubular fossil Cloudina in the Yangtze Gorges area of South China. Precambrian Research 351:105931.CrossRefGoogle Scholar
Lin, Y.-C., Chang, L.-W., Yang, K.-C., Wang, H.-H., and Sun, I.-F.. 2011. Point patterns of tree distribution determined by habitat heterogeneity and dispersal limitation. Oecologia 165:175184.CrossRefGoogle ScholarPubMed
Lingua, E., Cherubini, P., Motta, R., and Nola, P.. 2008. Spatial structure along an altitudinal gradient in the Italian central Alps suggests competition and facilitation among coniferous species. Journal of Vegetation Science 19:425436.CrossRefGoogle Scholar
Marenco, K. N., and Hagadorn, J. W.. 2019. Big bedding planes: outcrop size and spatial heterogeneity influence trace fossil analyses. Palaeogeography, Palaeoclimatology, Palaeoecology 513:1424.Google Scholar
McKenzie, N. R., Hughes, N. C., Myrow, P. M., Xiao, S., and Sharma, M.. 2011. Correlation of Precambrian–Cambrian sedimentary successions across northern India and the utility of isotopic signatures of Himalayan lithotectonic zones. Earth and Planetary Science Letters 312:471483.CrossRefGoogle Scholar
Meyer, M., Xiao, S., Gill, B. C., Schiffbauer, J. D., Chen, Z., Zhou, C., and Yuan, X.. 2014. Interactions between Ediacaran animals and microbial mats: insights from Lamonte trevallis, a new trace fossil from the Dengying Formation of South China. Palaeogeography, Palaeoclimatology, Palaeoecology 396:6274.Google Scholar
Miller, M. F., and Smail, S. E.. 1997. A semiquantitative field method for evaluating bioturbation on bedding planes. Palaios 12:391396.CrossRefGoogle Scholar
Mitchell, E. G., and Butterfield, N. J.. 2018. Spatial analyses of Ediacaran communities at Mistaken Point. Paleobiology 44:4057.CrossRefGoogle Scholar
Mitchell, E. G., and Kenchington, C. G.. 2018. The utility of height for the Ediacaran organisms of Mistaken Point. Nature Ecology and Evolution 2:12181222.Google ScholarPubMed
Mitchell, E. G., Kenchington, C. G., Liu, A. G., Matthews, J. J., and Butterfield, N. J.. 2015. Reconstructing the reproductive mode of an Ediacaran macro-organism. Nature 524:343346.CrossRefGoogle ScholarPubMed
Mitchell, E. G., Kenchington, C. G., Harris, S., and Wilby, P. R.. 2018. Revealing rangeomorph species characters using spatial analyses. Canadian Journal of Earth Sciences 55:12621270.CrossRefGoogle Scholar
Mitchell, E. G., Harris, S., Kenchington, C. G., Vixseboxse, P., Roberts, L., Clark, C., Dennis, A., Liu, A. G., and Wilby, P. R.. 2019. The importance of neutral over niche processes in structuring Ediacaran early animal communities. Ecology Letters 22:20282038.Google ScholarPubMed
Mitchell, E. G., Bobkov, N., Bykova, N., Dhungana, A., Kolesnikov, A., Hogarth, I. R. P., Liu, A. G., Mustill, T. M. R., Sozonov, N., Xiao, S., and Grazhdankin, D. V.. 2020. The influence of environmental setting on the community ecology of Ediacaran organisms. Interface Focus 10(4). doi: 10.1098/rsfs.2019.0109.CrossRefGoogle ScholarPubMed
Pandey, D. K., Uchman, A., Kumar, V., and Shekhawat, R. S.. 2014. Cambrian trace fossils of the Cruziana ichnofacies from the Bikaner-Nagaur Basin, north western Indian Craton. Journal of Asian Earth Sciences 81:129141.CrossRefGoogle Scholar
Patlak, C. S. 1953. Random walk with persistence and external bias. Bulletin of Mathematical Biophysics 15:311338.Google Scholar
Plotnick, R. E. 2003. Ecological and L-system based simulations of trace fossils. Palaeogeography, Palaeoclimatology, Palaeoecology 192:4558.CrossRefGoogle Scholar
Plotnick, R. E. 2012. Behavioral biology of trace fossils. Paleobiology 38:459473.Google Scholar
Plotnick, R. E., Dornbos, S. Q., and Chen, J.. 2010. Information landscapes and sensory ecology of the Cambrian Radiation. Paleobiology 36:303317.CrossRefGoogle Scholar
Raichlen, D. A., Wood, B. M., Gordon, A. D., Mabulla, A. Z. P., Marlowe, F. W., and Pontzer, H.. 2014. Evidence of Lévy walk foraging patterns in human hunter–gatherers. Proceedings of the National Academy of Sciences USA 111:728733.CrossRefGoogle ScholarPubMed
R Core Team. 2017. R: a language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria.Google Scholar
Rojas, A., Dietl, G. P., Kowalewski, M., Portell, R. W., Hendy, A., and Blackburn, J. K.. 2020. Spatial point pattern analysis of traces (SPPAT): an approach for visualizing and quantifying site-selectivity patterns of drilling predators. Paleobiology 46:259271.CrossRefGoogle Scholar
Seilacher, A., Buatois, L. A., and Gabriela Mángano, M.. 2005. Trace fossils in the Ediacaran–Cambrian transition: behavioral diversification, ecological turnover and environmental shift. Palaeogeography, Palaeoclimatology, Palaeoecology 227:323356.Google Scholar
Sharma, M., Ahmed, S., Pandey, S. K., and Kumar, K.. 2018. On the ichnofossil Treptichnus pedum: inferences from the Nagaur Sandstone, Marwar Supergroup, India. Bulletin of Geosciences 93:305325.Google Scholar
Shroat Lewis, R., A., Sumrall, C. D., McKinney, F. K., and Meyer, D. L. 2014. A paleoecologic comparison of two edrioasteroid (Echinodermata) encrusted pavements from the Upper Ordovician Corryville Formation of Florence, Kentucky and the Miamitown Shale of Sharonville, Ohio, USA. Palaios 29:154169.CrossRefGoogle Scholar
Shu, H., Pei, T., Song, C., Ma, T., Du, Y., Fan, Z., and Guo, S.. 2019. Quantifying the spatial heterogeneity of points. International Journal of Geographical Information Science 33:13551376.CrossRefGoogle Scholar
Sims, D. W., Southall, E. J., Humphries, N. E., Hays, G. C., Bradshaw, C. J. A., Pitchford, J. W., James, A., Ahmed, M. Z., Brierley, A. S., Hindell, M. A., Morritt, D., Musyl, M. K., Righton, D., Shepard, E. L. C., Wearmouth, V. J., Wilson, R. P., Witt, M. J., and Metcalfe, J. D.. 2008. Scaling laws of marine predator search behaviour. Nature 451:10981102.CrossRefGoogle ScholarPubMed
Sims, D. W., Humphries, N. E., Bradford, R. W., and Bruce, B. D.. 2012. Lévy flight and Brownian search patterns of a free-ranging predator reflect different prey field characteristics. Journal of Animal Ecology 81:432442.CrossRefGoogle ScholarPubMed
Sims, D. W., Reynolds, A. M., Humphries, N. E., Southall, E. J., Wearmouth, V. J., Metcalfe, B., and Twitchett, R. J.. 2014. Hierarchical random walks in trace fossils and the origin of optimal search behavior. Proceedings of the National Academy of Sciences USA 111:1107311078.CrossRefGoogle ScholarPubMed
Sims, D. W., Humphries, N. E., Hu, N., Medan, V., and Berni, J.. 2019. Optimal searching behaviour generated intrinsically by the central pattern generator for locomotion. eLife 8:e50316.Google ScholarPubMed
Velázquez, E., Martínez, I., Getzin, S., Moloney, K. A., and Wiegand, T.. 2016. An evaluation of the state of spatial point pattern analysis in ecology. Ecography 39:10421055.CrossRefGoogle Scholar
Viswanathan, G. M., Afanasyev, V., Buldyrev, S. V., Murphy, E. J., Prince, P. A., and Stanley, H. E.. 1996. Lévy flight search patterns of wandering albatrosses. Nature 381:413415.Google Scholar
Wiegand, T., and Moloney, K. A.. 2013. Handbook of spatial point-pattern analysis in ecology. CRC Press, Boca Raton, Fla.CrossRefGoogle Scholar
Wood, R. A., Poulton, S. W., Prave, A. R., Hoffman, K.-H., Clarkson, M. O., Guilbaud, R., Lyne, J. W., Tostevin, R., Bowyer, F., Penny, A. M., Curtis, A., and Kasemann, S. A.. 2015. Dynamic redox conditions control late Ediacaran metazoan ecosystems in the Nama Group, Namibia. Precambrian Research 261:252271.CrossRefGoogle Scholar
Xiao, Q., She, Z., Wang, G., Li, Y., Ouyang, G., Cao, K., Mason, R., and Du, Y.. 2020. Terminal Ediacaran carbonate tempestites in the eastern Yangtze Gorges area, South China. Palaeogeography, Palaeoclimatology, Palaeoecology 547:109681.Google Scholar
Xiao, S., Chen, Z., Zhou, C., and Yuan, X.. 2019. Surfing in and on microbial mats: oxygen-related behavior of a terminal Ediacaran bilaterian animal. Geology 47:10541058.CrossRefGoogle Scholar
Xiao, S., Chen, Z., Pang, K., Zhou, C., and Yuan, X.. 2021. The Shibantan Lagerstätte: insights into the Proterozoic–Phanerozoic transition. Journal of the Geological Society 178:jgs2020-2135.CrossRefGoogle Scholar
Yang, C., Rooney, A. D., Condon, D. J., Li, X.-H., Grazhdankin, D. V., Bowyer, F. T., Hu, C., Macdonald, F. A., and Zhu, M.. 2021. The tempo of Ediacaran evolution. Science Advances 7:eabi9643.Google ScholarPubMed
Zhou, C., Xiao, S., Wang, W., Guan, C., Ouyang, Q., and Chen, Z.. 2017. The stratigraphic complexity of the middle Ediacaran carbon isotopic record in the Yangtze Gorges area, South China, and its implications for the age and chemostratigraphic significance of the Shuram excursion. Precambrian Research 288:2338.Google Scholar
Figure 0

Figure 1. Schematic drawing showing different movement paths (blue lines), midpoints of the movement paths (stars), and background patchy environment (gray areas). Each midpoint is identified by the length and orientation of the corresponding line segments (“marks”). A, Random MCF: The moving organism does not respond to the underlying environment. The lengths of each segments, their orientations, and the distances between their midpoints are random. B, Nonrandom length movement: The tracemaker detects a preferable underlying substrate and so makes shorter path segments to maximize the time spent in the preferred resource. Marked lengths of paths and distances between midpoints are nonrandom, whereas marked orientations of paths are random. Short segments occur close together. C, Nonrandom length and nonrandom orientation MCF: The tracemaker detects a preferable underlying substrate and makes both shorter path segments and sharper turns to maximize the time spent in the preferred resource. Crucially, it turns around when it leaves its preferred area. Mark lengths and orientations of paths are nonrandom. Short segments and those with tight turns are more likely to occur closer together.

Figure 1

Figure 2. Geological map of the Yangtze Gorges area (A) and stratigraphic column of the Dengying Formation (B). Inset map shows major tectonic units, with red rectangle marking area shown in A. Star marks field site. Fossil ranges are updated from Xiao et al. (2021) and Liang et al. (2020). The two possible correlations of the 551.1 ± 0.7 Ma tuffaceous bed are based on An et al. (2015) and Zhou et al. (2017) and are denoted by two blue arrows. Mbr, Member; Fm, Formation; HMJ, Hamajing Member; SSF, small shelly fossil; Cry., Cryogenian; Cam., Cambrian. See Xiao et al. (2021) for sources of radiometric dates.

Figure 2

Figure 3. Geological map of the Bikaner-Nagaur basin (A) and stratigraphic column of the Marwar Supergroup (B). Inset map in A shows general location of the basin in India. Black star marks fossil locality near Dulmera in NW India. Bb, Boulder bed; Dol, dolostone; Lst, limestone; Gr, Group; Pr, Period; SS, sandstone. Note: stratigraphic column is not to scale, but the Nagaur SS is reported to be approximately 500 m in total thickness, with the underlying Bilara Group approximately 300 m thick (Pandey et al. 2014). After figs. 1 and 2 of Pandey et al. (2014) and courtesy of Dhirenda Pandey.

Figure 3

Figure 4. Ediacaran and Cambrian bedding surfaces. A, Shibantan surface analyzed in this study. B, Close-up of black box in A, showing small Helminthoidichnites-type trails (white oval) and Streptichnus with spiral structures (black arrows) indicative of this ichnotaxon. C, Nagaur surface analyzed in this study, with Treptichnus- and Rusophycus-type traces visible. D, A similar surface in the Nagaur Sandstone, illustrating small (white oval), circular (white square), and Treptichnus-type trace fossils. Lines in B and D illustrate the difference between connected (black) and unconnected (white) mark-up strategies of larger horizontal trails. E, Shibantan Streptichnus specimen with the radiating branches. F, Rusophycus from the Nagaur Group.

Figure 4

Figure 5. The mark-up process. A, The Shibantan surface. B, The surface with the area marked up in red, the large ichnotaxon in black, and the small ichnotaxon in green. C, Close-up of area showing the details of how the large and small ichnotaxa were marked up. D, Close-up area showing the midpoints of each trace segment.

Figure 5

Table 1. Summary metrics for the spatial heterogeneity and segment lengths of analyzed trace fossils. The H-W (Hosking and Wallis) test assesses whether the traces are significantly nonhomogeneous; LH* is a relative measure of heterogeneity; Lévy μ is the parameter for Lévy distributions, where μ = 2.71 is considered an optimal foraging strategy; normality test is the Shapiro-Wilk test to determine whether the segment length distributions are normally distributed.

Figure 6

Figure 6. Density plots and spatial distributions of ichnotaxa given by pair correlation functions (PCFs) of trace fossil midpoints. Density maps and corresponding PCF plots are shown in pairs. A, B, Shibantan large ichnotaxon (PCF: solid line, connected; dashed line, unconnected). C, D, Nagaur large ichnotaxon (PCF: solid line, connected; dashed line, unconnected). E, F, Shibantan small ichnotaxon. G, H, Nagaur small ichnotaxon. I, J, Nagaur circular ichnotaxon (PCF of large connected ichnotaxon is plotted for comparison). K, L, Nagaur arthropod traces. M, N, Shibantan bivariate distribution between large connected and small ichnotaxa. O, P, Nagaur bivariate distribution between large connected and small ichnotaxa. Scale bar next to density map is percent coverage, with range depending on the ichontaxon. PCF plots: blue lines, Shibantan; purple, Nagaur; gray area, 999 Monte Carlo simulations with a 5% threshold. PCF > 1 is aggregation; PCF < 1 is segregation; and PCF = 1 is random.

Figure 7

Figure 7. Shibantan data are presented in the top two rows (A–F), Nagaur data in the bottom two rows (G–L). First (A–C) and third (G–I) rows are histograms of segment lengths, and second (D–F) and fourth (J–L) rows are rose diagrams of segment orientations. The three columns are for small ichnotaxon (A, D, G, J), large (unconnected) ichnotaxon (B, E, H, K), and large connected ichnotaxon (C, F, I, L), respectively.

Figure 8

Figure 8. Mark correlation functions (MCFs) of spatial patterns of the lengths (A–D) and orientations (E–H) of traces. MCF < 1 is aggregation; MCF > 1 is segregation; and MCF = 1 is random. Blue lines are for the Shibantan and purple for Nagaur. For the large ichnotaxon, solid lines are the connected traces and dashed lines are unconnected.

Figure 9

Table 2. Bimodal orientation distributions of the trace orientations.