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Pre-COVID brain functional connectome features prospectively predict emergence of distress symptoms after onset of the COVID-19 pandemic

Published online by Cambridge University Press:  26 July 2022

Nanfang Pan
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Kun Qin
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China Department of Psychiatry, University of Cincinnati, Cincinnati, Ohio, USA
Yifan Yu
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Yajing Long
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Xun Zhang
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Min He
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Xueling Suo
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Shufang Zhang
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
John A. Sweeney
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China Department of Psychiatry, University of Cincinnati, Cincinnati, Ohio, USA
Song Wang*
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Research Unit of Psychoradiology, Chinese Academy of Medical Sciences, Chengdu, China Functional & Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital of Sichuan University, Chengdu, China
Qiyong Gong*
Affiliation:
Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, Chengdu, China Department of Radiology, West China Xiamen Hospital of Sichuan University, Xiamen, 361000, China
*
Authors for correspondence: Song Wang, E-mail: wangs_psych@163.com; Qiyong Gong, E-mail: qiyonggong@hmrrc.org.cn
Authors for correspondence: Song Wang, E-mail: wangs_psych@163.com; Qiyong Gong, E-mail: qiyonggong@hmrrc.org.cn
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Abstract

Background

Persistent psychological distress associated with the coronavirus disease 2019 (COVID-19) pandemic has been well documented. This study aimed to identify pre-COVID brain functional connectome that predicts pandemic-related distress symptoms among young adults.

Methods

Baseline neuroimaging studies and assessment of general distress using the Depression, Anxiety and Stress Scale were performed with 100 healthy individuals prior to wide recognition of the health risks associated with the emergence of COVID-19. They were recontacted for the Impact of Event Scale-Revised and the Posttraumatic Stress Disorder Checklist in the period of community-level outbreaks, and for follow-up distress evaluation again 1 year later. We employed the network-based statistic approach to identify connectome that predicted the increase of distress based on 136-region-parcellation with assigned network membership. Predictive performance of connectome features and causal relations were examined by cross-validation and mediation analyses.

Results

The connectome features that predicted emergence of distress after COVID contained 70 neural connections. Most within-network connections were located in the default mode network (DMN), and affective network-DMN and dorsal attention network-DMN links largely constituted between-network pairs. The hippocampus emerged as the most critical hub region. Predictive models of the connectome remained robust in cross-validation. Mediation analyses demonstrated that COVID-related posttraumatic stress partially explained the correlation of connectome to the development of general distress.

Conclusions

Brain functional connectome may fingerprint individuals with vulnerability to psychological distress associated with the COVID pandemic. Individuals with brain neuromarkers may benefit from the corresponding interventions to reduce the risk or severity of distress related to fear of COVID-related challenges.

Type
Original Article
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 (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press

Introduction

The worldwide spread of the coronavirus disease 2019 (COVID-19) pandemic has generated considerable fear and psychological distress since person-to-person communicability was established in late January 2020 (Holmes et al., Reference Holmes, O'Connor, Perry, Tracey, Wessely, Arseneault and Bullmore2020; Salari et al., Reference Salari, Hosseinian-Far, Jalali, Vaisi-Raygani, Rasoulpoor, Mohammadi and Khaledi-Paveh2020). With persistent waves of illness, there has yet to be a transition to normalcy and limited fear of transmission without a foreseeable endpoint (Ray et al., Reference Ray, Naidu, Maramraj, Chawla, Vashisht, Roy and Gopinath2021). The pandemic has caused significantly increased burdens upon mental health care systems in addition to its well-known impact on physical health (Wang et al., Reference Wang, Pan, Wan, Tan, Xu, McIntyre and Ho2020a; Zavlis et al., Reference Zavlis, Butter, Bennett, Hartman, Hyland, Mason and Bentall2021). Given the pervasive life events encompassing unprecedented uncertainty of infection and enforced quarantine, related to the COVID-19 pandemic (Brooks et al., Reference Brooks, Webster, Smith, Woodland, Wessely, Greenberg and Rubin2020), individuals are increasingly vulnerable to psychological distress problems, generally including depression, anxiety and stress (Prout et al., Reference Prout, Zilcha-Mano, Aafjes-van Doorn, Békés, Christman-Cohen, Whistler and Di Giuseppe2020; Shanahan et al., Reference Shanahan, Steinhoff, Bechtiger, Murray, Nivette, Hepp and Eisner2020). Notably, pandemic-related distress problems were more pronounced in adolescents and young adults than the elderly population (Huang & Zhao, Reference Huang and Zhao2020; Wang et al., Reference Wang, Pan, Wan, Tan, Xu, McIntyre and Ho2020a), as they confronted increased media exposure to COVID-related information (Magson et al., Reference Magson, Freeman, Rapee, Richardson, Oar and Fardouly2021).

Furthermore, the individual psychological reactivity varies considerably when confronting multiple stressors (Liu et al., Reference Liu, Yang, Zhuang, Wei, Yu, Huang and Qiu2021), and the chronic stress conditions adherence to COVID-19 magnify the long-lasting ecological effects of the pandemic on populations even after the lockdown ended (He et al., Reference He, Wei, Yang, Zhang, Cheng, Feng and Qiu2021; Vindegaard & Benros, Reference Vindegaard and Benros2020). Individuals with proper coping strategies tend to have high resilience to protect themselves from severe distress (Kukihara, Yamawaki, Uchiyama, Arai, & Horikawa, Reference Kukihara, Yamawaki, Uchiyama, Arai and Horikawa2014; Liu, Zhang, Wong, Hyun, & Hahm, Reference Liu, Zhang, Wong, Hyun and Hahm2020), while others may develop persistent distress symptoms due to chronic effects of the pandemic (Liu et al., Reference Liu, Yang, Zhuang, Wei, Yu, Huang and Qiu2021). Regarding great individual variations in psychological distress among general public during the pandemic (Zhang et al., Reference Zhang, Lu, Zeng, Zhang, Du, Jiang and Du2020), exploring biomarkers to identify those who are at high risk for developing persistent distress symptoms may facilitate addressing the salient mental health issues (Chen et al., Reference Chen, Feng, Becker, Xu, Nassar, Sirois and Feng2021). In addition, the exposure to COVID-19-related events and posttraumatic stress potentially exacerbate the psychological general distress during the pandemic (Liu et al., Reference Liu, Zhang, Wong, Hyun and Hahm2020), and it is of priority to unveil the relations of pandemic posttraumatic stress to the development of persistent general distress problems.

Brain functional connectome, representing a collective set of temporally correlated neural activation patterns, is rather customized among individuals as a neurobiological marker to fingerprint the individual differences toward psychological problems (Chahal, Kirshenbaum, Miller, Ho, & Gotlib, Reference Chahal, Kirshenbaum, Miller, Ho and Gotlib2021; Rubinov & Sporns, Reference Rubinov and Sporns2010). In contrast to task-based manipulation with a specific task or stimuli, the functional connectome in resting-state may provide a more unbiased estimate for the persistent mental alterations (He et al., Reference He, Wei, Yang, Zhang, Cheng, Feng and Qiu2021). Prior studies revealed that intrinsic spontaneous activity and connectivity of brain default mode network (DMN) were the core neural mechanisms that how individuals respond to chronic stressors, and limbic and prefrontal substrates like the hippocampus and medial prefrontal cortex in the DMN served as the critical regions in the network resilience (Chang & Yu, Reference Chang and Yu2019; Liu et al., Reference Liu, Yang, Zhuang, Wei, Yu, Huang and Qiu2021). In this case, functional abnormalities in the DMN were attributed to stress-related mental health issues such as general distress and posttraumatic stress (Joshi, Duval, Kubat, & Liberzon, Reference Joshi, Duval, Kubat and Liberzon2020; van Ettinger-Veenstra et al., Reference van Ettinger-Veenstra, Boehme, Ghafouri, Olausson, Wicksell and Gerdle2020). Despite extensive investigation toward underlying brain connectome of distress-related problems, the delineation of altered within- and between-network patterns during the pandemic from the perspective of macro-scale brain networks are poorly understood.

Herein, we explore the changes of psychological general distress between pre- and during-pandemic periods, and then build the altered brain-distress construct by characterizing the pre-COVID brain functional connectome that prospectively encodes distress alterations. We expected that the individual variations of brain connectome features prior to the publicized recognition of pandemic emergency state could identify those who are susceptible to continuous general distress, and components in the DMN dominated the connectome construction. Then we conducted the cross-validation analysis to further evaluate the predictive performance of the pre-COVID brain connectome. To uncover the indispensable role of the pandemic-induced posttraumatic impacts in the development of general distress, we investigate the underlying effects of the COVID-related posttraumatic stress on the brain-distress link via mediation analysis. We assumed that pandemic-induced posttraumatic stress may causally explain the relations of brain functional connectome to general distress alterations.

Method and materials

Data collection

An overview of data collection and analytical procedures is shown in Fig. 1. A total of 151 individuals who had no known history of psychiatric or neurological disease were recruited for multimodal neuroimaging scanning and self-reported psychological scales from 13 October 2019 to 19 January 2020 (T1). Confirmation of human-to-human transmission of COVID-19 was established on 20 January and the declaration by the World Health Organization about the public health emergency of international concern occurred on 30 January (Mahase, Reference Mahase2020; Wang et al., Reference Wang, Pan, Wan, Tan, Xu, McIntyre and Ho2020a). All participants were recontacted during the pandemic, and 127 participants responded and completed research procedures. Follow-up evaluations included COVID-related questionnaires to assess posttraumatic stress during the community-level outbreak and the peak from 1 February to 1 April 2020 (T2, the most severe pandemic period in China) and the same psychological scales with T1 from 10 March to 18 April 2021 (T3, post-peak period of the pandemic). Notably, these participants had not been infected with COVID-19 as established through nucleic acid testing. During these tests, 12 participants were excluded given that they failed to pass the bogus items that have only one correct answer (e.g. I was born on earth) to screen participants who are not paying attention and responding dishonestly (Desimone, Harms, & Desimone, Reference Desimone, Harms and Desimone2015). Besides, 15 participants were excluded from further analyses due to excessive head motion (see Section ‘Neuroimaging data preprocessing’), and data from 100 participants (58 females, mean age 22.43 ± 2.12 years) were obtained for the primary analyses. This study was approved by the research ethics committee at the West China Hospital of Sichuan University. All individuals gave written informed consent before the participation.

Fig. 1. Schematic overview of the data acquisition and analytical procedures. Panel a: timeline of data acquisition and marked events of the COVID-19 pandemic in China. Notably, the World Health Organization declared the outbreak a Public Health Emergency of International Concern on 30 January 2020, and the Wuhan city lockdown officially ended on 8 April 2020 (indicating the remission of pandemic). Panel b: construction of distress-related functional connectome, from the brain region parcellation to prediction of distress with the general linear model. Panel c: cross-validation to examine the predictive performance of findings and mediation analysis to uncover the potential causal paths. DASS, Depression Anxiety Stress Scales; IES-R, Impact of Event Scale-Revised; PCL-5, Posttraumatic Stress Disorder Checklist for DSM-5; CPTS, COVID-19 posttraumatic stress, ΔDistress = pre-pandemic − during-pandemic distress score.

MRI protocol procedure

Participants underwent magnetic resonance imaging (MRI) scanning using a Siemens-Trio Erlangen 3.0 Tesla system with a 12-channel head coil. Structural and resting-state functional MRI (rs-fMRI) data were obtained for each participant (details in online Supplementary methods).

Psychological general distress

To examine the general distress alterations between pre- and during-pandemic periods, participants were evaluated at T1 and T3 by the 21-item Depression Anxiety Stress Scale (DASS-21) (Henry & Crawford, Reference Henry and Crawford2005), which includes three subscales that could be generated into one factor – general distress (details in online Supplementary methods) (Zanon et al., Reference Zanon, Brenner, Baptista, Vogel, Rubin, Al-Darmaki and Zlati2021). To confirm that the previously reported one-factor structure of the DASS score could be used in our dataset, we performed the principal component analysis (PCA) in SPSS software (Version 24.0). We concluded that both waves of the DASS data corresponded to single-factor models (details in online Supplementary methods and Table S2). Thus, we used the total score of DASS as the measure of general distress symptoms, and distress alterations were calculated by subtracting the pre-pandemic and during-pandemic scores.

COVID-19 posttraumatic stress (CPTS)

To assess the impact caused by COVID-19 as a traumatic event on mental health problems, we employed the Impact of Event Scale-Revised (IES-R) (Wang et al., Reference Wang, Pan, Wan, Tan, Xu, McIntyre and Ho2020a) and the Posttraumatic Stress Disorder Checklist for DSM-5 (PCL-5) at T2 (details in online Supplementary methods) (Blevins, Weathers, Davis, Witte, & Domino, Reference Blevins, Weathers, Davis, Witte and Domino2015). The outbreak of the COVID-19 pandemic was specified as the stressor in the instructions of scales. Similarly, subscales of IES-R and PCL-5 (i.e. intrusion, avoidance, hyperarousal and cognition/mood) were dimensionally reduced into one factor by PCA (details in online Supplementary methods and Table S2). Therefore, the total score of IES-R and PCL-5 was computed and used as the measure of CPTS (Vindegaard & Benros, Reference Vindegaard and Benros2020).

Other measurements

Given that general stressful life events and socio-economic status may underlie the association between psychological distress, CPTS and brain functional connectome (Wang et al., Reference Wang, Zhao, Li, Lai, Qiu, Pan and Gong2020b), we also assessed the self-rating life events checklist (SLEC) (Liu et al., Reference Liu, Liu, Yang, Chai, Wang, Sun and Ma1997) and socio-economic status scale (SESS) at the T1 to estimate their confounding effects (Peng et al., Reference Peng, Liu, Liu, Chu, Zheng, Wang and Yi2021). In addition, we asked participants whether their acquaintance or citizens in their communities were infected by COVID-19 at T3.

Neuroimaging data preprocessing

The rs-fMRI data were preprocessed using GRETNA (https://www.nitrc.org/projects/gretna/) and SPM 12 (https://www.fil.ion.ucl.ac.uk/spm/) toolbox with the following steps: first 10 images remove, slice timing correction, realignment, coregistration of functional and structural images, normalization with DARTEL strategy, resampling to 3 mm3 isotropic voxels, spatial smoothing with a 6 mm full-width half-maximum, linear trend remove and temporal filtering at 0.01–0.08 Hz (Ashburner, Reference Ashburner2007; Cui et al., Reference Cui, Sheng, Chen, Pang, Lu, Tang and Chen2020; Wang et al., Reference Wang, Wang, Xia, Liao, Evans and He2015). White matter and cerebrospinal fluid signals and head motion parameters were regressed out as nuisance covariates. We calculated the mean framewise displacement (FD) of each participant and excluded those whose mean FD exceeded 0.25 mm, and we applied motion scrubbing based on the FD threshold of 0.50 mm for the remaining subjects (Yan et al., Reference Yan, Cheung, Kelly, Colcombe, Craddock, Di Martino and Milham2013). Finally, 15 participants were excluded for excessive head motion and 100 participants remained for subsequent analyses.

Network matrix construction

To identify brain networks at the whole-brain level, the cerebral cortex was divided into 100 seed regions according to a 100-area parcellation proposed by Schaefer et al. (Reference Schaefer, Kong, Gordon, Laumann, Zuo, Holmes and Yeo2018), and the subcortical seed regions were selected from 36 subregions in the human Brainnetome Atlas (Fan et al., Reference Fan, Li, Zhuo, Zhang, Wang, Chen and Jiang2016). Based on the neurobiological clustering of brain organization, the cortical brain areas were dimensionally reduced into Yeo's 7 preserved network structures, including the DMN, central executive network (CEN), ventral attention network (VAN), dorsal attention network (DAN), affective network (AFN), sensorimotor network (SMN) and visual network (VN) to enhance the interpretability of our findings without losing their granularity (Schaefer et al., Reference Schaefer, Kong, Gordon, Laumann, Zuo, Holmes and Yeo2018; Yeo et al., Reference Yeo, Krienen, Sepulcre, Sabuncu, Lashkari, Hollinshead and Buckner2011). For subcortical regions, the striatal and thalamic parcels were grouped based on their preserved memberships with cortical networks (Choi, Yeo, & Buckner, Reference Choi, Yeo and Buckner2012; Shirer, Ryali, Rykhlevskaia, Menon, & Greicius, Reference Shirer, Ryali, Rykhlevskaia, Menon and Greicius2012), and the subregions of amygdala and hippocampus were assembled with the AFN and DMN, respectively (Alves et al., Reference Alves, Foulon, Karolis, Bzdok, Margulies, Volle and Thiebaut de Schotten2019; Chin Fatt et al., Reference Chin Fatt, Jha, Cooper, Fonzo, South, Grannemann and Trivedi2020; Satpute & Lindquist, Reference Satpute and Lindquist2019). The brain seed region and network parcellation are shown in online Supplementary Fig. S1.

We obtained the average time series over all the voxels in each seed region for each participant. The Pearson's correlations between the time courses of all pairs of the regions were calculated using the GRETNA toolbox, and these correlation coefficients were transformed to z values for the normality. A 136 × 136 symmetric functional network matrix with 9180 links was constructed for each individual.

Identification of functional connectome predicting distress

To identify the connectome patterns of the individual difference in distress alterations between the pre- and during-pandemic periods, we employed network-based statistic (NBS), which is a nonparametric statistical approach to control the family wise error (FWE) rate in multiple comparisons (Yang et al., Reference Yang, Liu, Meng, Xia, Cui, Wu and He2019). The NBS based on permutation testing is a network graph analog of cluster-based thresholding of statistical parametric maps with promise for identifying distributed subnetworks cross massive links (Zalesky, Fornito, & Bullmore, Reference Zalesky, Fornito and Bullmore2010). The Pearson's correlation coefficients between each functional connectivity and the difference in distress were calculated in a general linear model with regressing out age, sex and mean FD. We collected the connections with the absolute t statistic exceeding an uncorrected threshold of 3.50 to detect interconnected subnetworks (Cocchi et al., Reference Cocchi, Bramati, Zalesky, Furukawa, Fontenelle, Moll and Mattos2012). The FWE-corrected p value was then assigned to each network with 10 000 permutations to yield a significant connectome. The corrected p value (p < 0.010) was computed when the recorded connectome was larger than or equal to the size of the network in the permuted data as the proportion of permutations (Cocchi et al., Reference Cocchi, Bramati, Zalesky, Furukawa, Fontenelle, Moll and Mattos2012). The identified connections of connectome were then assigned to within- and between-network relationships.

To recognize important brain regions (hubs) in the connectome, we used measures of node strength as the sum of connection strengths to a preserved seed region. Brain regions with a high node strength are likely to facilitate functionally interacting within connectome (Rubinov & Sporns, Reference Rubinov and Sporns2010).

Individual prediction of distress alterations

To examine whether the identified pre-pandemic functional network component can robustly predict distress alterations at the individual level, we conducted a machine learning analysis with linear regression models (He et al., Reference He, Wei, Yang, Zhang, Cheng, Feng and Qiu2021; Lai, Wang, Zhao, Qiu, & Gong, Reference Lai, Wang, Zhao, Qiu and Gong2020). The mean functional connectivity within the identified component was used as the feature to predict the individual differences in distress. To validate the robustness and generability of our prediction model, 10-fold cross-validation was implemented to train and test our model. Specifically, the whole dataset was randomly divided into 10 subsets, of which nine-fold were employed as the training data to build a linear regression model to predict the test data.

To evaluate the predictive capacity of brain connectome features on distress, we obtained the predicted values of difference in distress for the test data and computed r (predicted, actual) to represent the correlations between the predicted and actual values (i.e. distress alterations) (He et al., Reference He, Wei, Yang, Zhang, Cheng, Feng and Qiu2021). The prediction framework was repeated 100 times to obtain the final r (predicted, actual) to avoid the bias of train-test dataset split (Lai et al., Reference Lai, Wang, Zhao, Qiu and Gong2020). Finally, we employed the permutation test that produced 5000 iterations to obtain a null distribution to assess the significance (Itahashi et al., Reference Itahashi, Okada, Ando, Yamasaki, Koshiyama, Morita and Hashimoto2020), and the p values were then determined as the percentage of permuted performance that was better than the original performance.

Mediation analysis

We performed the mediation analysis using PROCESS macro in SPSS (Hayes & Scharkow, Reference Hayes and Scharkow2013) to investigate the role of CPTS in the predictive models of functional connectome to distress symptom changes. This approach has been widely used in studies to delineate a potential pathway linking brain features and behavior valuables via a mediator (Itahashi et al., Reference Itahashi, Okada, Ando, Yamasaki, Koshiyama, Morita and Hashimoto2020; Lai et al., Reference Lai, Wang, Zhao, Qiu and Gong2020). The distress-related brain features (averaged t values of selected connections) were considered as the independent variables, the individual difference in distress alterations as the dependent variable, and the CPTS as the mediator. The direct and indirect effects of brain features on the difference in distress via CPTS were explored covarying age, sex and head motion. Based on bootstrapping approach (sampling = 5000), the indirect effect was significant when zero was not involved in the 95% confidence intervals (CIs).

Results

Pre- and during-pandemic psychological evaluations

The descriptive statistics and bivariate correlations for psychological assessments are shown in Table 1. According to the direction of distress change, 41 participants in the final sample were characterized as the increased distress group (mean age = 22.45, female proportion = 0.50, of which one subject reported people infected in their communities), and they exhibited significantly greater distress symptoms in the post-peak period of the COVID-19 pandemic compared to baseline (paired t test, t 40 = 8.90, p < 0.001). Meanwhile, 54 participants (mean age = 22.48, female proportion = 0.63) showed decreased distress (paired t test, t 53 = 8.66, p < 0.001, see online Supplementary Fig. S2). In addition, distress symptom alteration (T1–T3) was correlated with CPTS (r = −0.30, p = 0.002) but not with age (r = −0.09, p = 0.393), sex (r = 0.15, p = 0.142) or head motion (r = −0.12, p = 0.248). We then explored the relation of brain functional connectome to change of differences in distress symptoms from T1 to T3, and investigated the role of T2 CPTS in mediating this relationship.

Table 1. Psychological characteristics of sample

Note: The data were obtained from 100 participants (58 females, mean age = 22.43, age s.d. = 2.12). The distress symptoms were measured by the total score of Depression Anxiety Stress Scale, and the CPTS were assessed by that of Impact of Event Scale-Revised and Posttraumatic Stress Disorder Checklist for DSM-5. For detailed information of subscale, see online Supplementary Table S1. T1: October 2019 to January 2020 (pre-pandemic period); T2: February to April 2020 (community-level outbreak and peak of pandemic in China); T3: March to April 2021 (post-peak period). s.d., standard deviation; SLEC, Self-Rating Life Events Checklist; CPTS, COVID-19 posttraumatic stress symptoms; SES, Socio-economic status.

*p < 0.05, **p < 0.01.

Brain connectome based on distress alterations

The general linear model for network matrices identified brain functional connectome that prospectively encoded distress alterations with 70 negatively correlated connections after NBS-based correction for multiple comparisons (see Fig. 2a and online Supplementary Table S3 for identified connectome and online Supplementary Fig. S3 for connectivity matrix construct). The identified relevant connectome features allowed prediction of increased distress between pre- and during-pandemic periods (r ranged from 0.26 to 0.39, all p ⩽ 0.010), and weaker connected pair predicted severer distress symptoms after the pandemic outbreak.

Fig. 2. Functional connectome encoded difference in distress during the pandemic and the network and node strength of the connectome. Panel a shows the distress-related brain connectome with the connectogram in a circle plot, of which 136 brain regions are assigned to seven macroscale networks, and the connectome contains only 70 links over the threshold (details of links in online Supplementary Table S3). Panels b and c show the network and node strength that calculated by summing the correlation t value in specific network memberships and brain regions, respectively (details of brain regions in online Supplementary Table S4). DMN, default mode network; CEN, central executive network; DAN, dorsal attention network; AFN, affective network; VN, visual network; VAN, ventral attention network; HIP, hippocampus; dmPFC, dorsomedial prefrontal cortex; PCUN, precuneus.

Among these identified links, 20 links were assigned to within-network pairs (in a total of within-network 1422 links) and 50 links to between-network pairs (in a total of between-network 7758 links). Notably, most of the within-network connections located in the DMN (19/20 links, network strength = 77.44), and the links between the DMN and AFN (17/50 links, network strength = 63.45) and links between the DMN and DAN (15/50 links, network strength = 55.78) constituted the largest proportion of between-network pairs (Fig. 2b).

The node strength analysis revealed that the left caudal hippocampus (node strength = 63.08, DMN), right dorsomedial prefrontal cortex (node strength = 56.26, DMN) and right precuneus (node strength = 37.76, CEN) are the top three provincial hubs with more than 10 connections (Fig. 2c and online Supplementary Table S4), which may play a critical role in connectome resilience and robustness.

Cross-validation of distress-related brain features

Analysis of 10-fold cross-validation with linear regression suggested that the prediction of distress via functional connectome was found to be reliable (r (predicted, actual) = 0.41, p < 0.001, Fig. 3). The distress alterations could also be predicted by the within-DMN links (r (predicted, actual) = 0.42, p < 0.001), between-DMN links (r (predicted, actual) = 0.40, p < 0.001), and left caudal hippocampal links (r (predicted, actual) = 0.36, p < 0.001), respectively. Given the highly significant correlation and robust predictive performance, these brain features were employed as independent variables in the subsequent mediation analyses.

Fig. 3. Prediction models based on various brain features and causal relations between variables. Panel a: prediction models for distress alterations exhibiting associations between the actual and predicted scores by 10-fold cross-validation with linear regression. Panel b: COVID-19 posttraumatic stress (CPTS) underlies the correlates between brain features and distress alterations. The indirect effect of CPTS (cc′) is significant among the four models. Age, sex and head motion were regarded as covariates in the mediation analyses, and the coefficients in pathways (a, b, c and c′) were exhibited as standard regression coefficients. DMN, default mode network; L., left; HIP, hippocampus, ΔDistress = pre-pandemic − during-pandemic distress score.

Mediator role of pandemic-induced posttraumatic stress

After obtaining the brain functional connectome predicting general distress changes during the COVID-19 pandemic, we further investigated whether the CPTS could explain the brain-distress relations when adjusting for age, sex and head motion. We first examined that CPTS could be predicted by the whole connectome (r = −0.26, p = 0.011), within-DMN links (r = −0.28, p = 0.006), between-DMN links (r = −0.25, p = 0.015) and left caudal hippocampal links (r = −0.22, p = 0.027).

The findings so far indicated that brain connectome features, CPTS and general distress symptoms interrelated with one another, but the essence of the relations between them remained uncertain. To examine whether CPTS mediated the linkage of connectome features to general distress symptoms, we performed mediation analyses with age, sex and head motion as controlling variables. The results demonstrated that the CPTS partially explained the connectome-distress linkage (standard indirect effect = 0.06; 95% CI 0.01–0.12, p < 0.05. The mediation model held when selecting within-DMN, between-DMN and left caudal hippocampal links as independent variables (Fig. 3). In summary, the brain connectome features may affect general distress symptom alterations via the CPTS.

Specificity of findings

To confirm the specificity of our main findings, we interrogated our results when controlling for scores of the SLEC and SESS as additional confounding factors. The supplemental analyses suggested that the association between the CPTS and distress alterations was also significant (r = −0.35, p = 0.001). Besides, the distress symptom change was significantly correlated with those brain connections (r ranged from 0.31 to 0.41, all p ⩽ 0.002). The mediation models persisted in the supplemental analysis as well (details in online Supplementary Fig. S4).

Discussion

In a prospective investigation of public mental health following the unprecedented COVID-19 pandemic, we assessed the psychological states of a general population sample in the pre-pandemic, outbreak and post-peak periods. Brain features prior to COVID-19 epidemic could predict later emergence of distress, mainly including within- and between-DMN connection patterns with the left hippocampus emerging as a hub region. Analyses confirmed that posttraumatic stress induced by the COVID-19 pandemic played a mediator role in the brain-distress prediction. Our results were independent of other general stressful life events and family socio-economic status, indicating the specificity of the findings. Although a population-level increase in psychological distress may not be the case during the COVID-19 pandemic (Breslau et al., Reference Breslau, Finucane, Locker, Baird, Roth and Collins2021; Daly & Robinson, Reference Daly and Robinson2021), additional efforts on quantitative data targeted to those at high risk for developing serious distress symptoms during the pandemic are warranted apart from merely baseline level of distress and resilience (Kimhi, Marciano, Eshel, & Adini, Reference Kimhi, Marciano, Eshel and Adini2020; Shanahan et al., Reference Shanahan, Steinhoff, Bechtiger, Murray, Nivette, Hepp and Eisner2020). Neuroimaging data on volumetric alterations have been proved to be closely associated with anxiety and stress during the pandemic (Salomon et al., Reference Salomon, Cohen, Barazany, Ben-Zvi, Botvinik-Nezer, Gera and Assaf2021). Furthermore, based on the brain connectome in fMRI modality, we may identify individuals who confer high vulnerability to long-standing distress symptoms with well-performing predictive modeling (Li, Sun, Biswal, Sweeney, and Gong, Reference Li, Sun, Biswal, Sweeney and Gong2021). In this case, our findings may reveal neural correlates that prospectively encode pandemic-related distress at the individual macro-scale network level, and the susceptibility markers may serve as targets for early psychological and/or brain intervention that help to embark on long-term coping strategies in terms of limited mental health care resources (Chahal et al., Reference Chahal, Kirshenbaum, Miller, Ho and Gotlib2021; He et al., Reference He, Wei, Yang, Zhang, Cheng, Feng and Qiu2021).

Connectome in the network level

The identified connection patterns in the current study were predominantly associated with the DMN network, which was consistent with previous researches on neural correlates of psychological general distress. Our findings suggested that the weaker within- and between-network connections of DMN predicted more severe distress symptoms during the pandemic, indicating that the habitual functioning of DMN reversed the transition toward pathologically negative emotion as a resistant role (Akiki, Averill, & Abdallah, Reference Akiki, Averill and Abdallah2017; Chin Fatt et al., Reference Chin Fatt, Jha, Cooper, Fonzo, South, Grannemann and Trivedi2020; Qin et al., Reference Qin, Lei, Pinaya, Pan, Li, Zhu and Gong2022). In view of neuroimaging, the DMN is characterized by resting-state brain functional activity during a cognitive task, by which individuals tend to experience mind-wandering that evokes negative emotions including depression and anxiety (Gusnard, Raichle, & Raichle, Reference Gusnard, Raichle and Raichle2001; Mason et al., Reference Mason, Norton, Van Horn, Wegner, Grafton and Macrae2007; Zhang et al., Reference Zhang, Suo, Yang, Lai, Pan, He and Gong2022). The DMN is also involved in affective empathy (Göttlich, Ye, Rodriguez-Fornells, Münte, & Krämer, Reference Göttlich, Ye, Rodriguez-Fornells, Münte and Krämer2017), which indicates the simulation of others' emotional experiences that resulted in empathic distress (Ashar, Andrews-Hanna, Dimidjian, & Wager, Reference Ashar, Andrews-Hanna, Dimidjian and Wager2017). The execution of DMN during rest allows to construct discrete emotions of negative valence by conceptualizing affective sensations in the context of preceded experience (Pan et al., Reference Pan, Wang, Qin, Li, Chen, Zhang and Gong2022; Satpute & Lindquist, Reference Satpute and Lindquist2019), and the deprivation of temporal coherence in DMN may impair the processing of generalizing across heterogeneous emotion features (Lindquist, Wager, Kober, Bliss-Moreau, & Barrett, Reference Lindquist, Wager, Kober, Bliss-Moreau and Barrett2012; Suo et al., Reference Suo, Zuo, Lan, Pan, Zhang, Kemp and Gong2022), all of which may further lead to distress symptoms.

Specially, our findings of provincial within-DMN connectivity in the connectome demonstrated that the disruption of intrinsic synchronous coordination of DMN may be the predictors of subsequent pandemic-related distress, which is aligned with previous research studies that indicated its critical role as predictive biomarkers in individuals with major depressive disorder and posttraumatic stress disorder (Korgaonkar, Goldstein-Piekarski, Fornito, & Williams, Reference Korgaonkar, Goldstein-Piekarski, Fornito and Williams2020; Patriat, Birn, Keding, & Herringa, Reference Patriat, Birn, Keding and Herringa2016). In addition, lower connectivity of the DMN with AFN and DAN in our identified connectome predicted more severe long-standing distress symptoms during the pandemic. The AFN located in the temporo-amygdala-orbitofrontal circuit is anchored on the interrogation of emotion with the encoding and retrieval of declarative memory (Pan et al., Reference Pan, Wang, Zhao, Lai, Qin, Li and Gong2021; Petrides, Reference Petrides2007). Deficits in the memory framework resulting from weaker connections to AFN may thwart access to positive emotions and contribute to the psychopathology of distress, which formed negative behavioral strategies (Catani, Dell'Acqua, & Thiebaut de Schotten, Reference Catani, Dell'Acqua and Thiebaut de Schotten2013; Dobbin & Ross, Reference Dobbin and Ross2019). In addition, the DAN is engaged in mediating and interpreting external stimuli in emotion regulation (Korgaonkar et al., Reference Korgaonkar, Goldstein-Piekarski, Fornito and Williams2020), and a previous study suggested that stronger connectivity between DMN and DAN was paralleled with contextualizing emotional experience during reappraisal (Froeliger et al., Reference Froeliger, Garland, Kozink, Modlin, Chen, McClernon and Sobin2012; Sripada et al., Reference Sripada, Angstadt, Kessler, Phan, Liberzon, Evans and Swain2014), with which individuals might overcome pandemic stressors at a mitigated distress level. Taken together, individuals with weak connections of DMN are more likely to indulge in internalizing processes and psychological distress triggered by predisposing scenes when exposing to information and life events adherence to the COVID-19 pandemic (Li et al., Reference Li, Ge, Yang, Feng, Qiao, Jiang and Yang2020; Satpute & Lindquist, Reference Satpute and Lindquist2019).

Hub regions of the connectome

When considering local substrates of the connectome, the left caudal hippocampus, right dorsomedial prefrontal cortex and right precuneus appeared as hub regions in the connectome encoding distress alterations during the pandemic. Specially, the hippocampus, belonging to the medial temporal lobe subsystem in DMN, represents the psychological formation of scenarios in terms of autobiographical memory recollection (Akiki et al., Reference Akiki, Averill and Abdallah2017; Zhou et al., Reference Zhou, Chen, Shen, Li, Chen, Zhu and Yan2020). Individuals with posttraumatic stress disorder are characterized by the lower activity and weaker intrinsic connectivity of hippocampus (Akiki et al., Reference Akiki, Averill and Abdallah2017; Joshi et al., Reference Joshi, Duval, Kubat and Liberzon2020). Similarly, growing literature of the COVID-19 pandemic also confirmed that pre-pandemic functional connectivity of hippocampus contributed to robust predictive markers of during-pandemic distress (Feng et al., Reference Feng, Chen, Becker, Liu, Zhou, He and Feng2021; Perica, Ravindranath, Calabro, Foran, & Luna, Reference Perica, Ravindranath, Calabro, Foran and Luna2021). In view of psychophysiology, the hippocampus engages in glucocorticoid feedback inhibition that responds to external stressors in emotional information processing with a high density of hormone receptors (Chang & Yu, Reference Chang and Yu2019). The temporal disconnection between the hippocampus and other substrates may underlie the suppressed synaptic strength that contributed to increased glucocorticoid levels and individual vulnerability to the long-standing exposure to threatening pandemic stimuli (McEwen & Gianaros, Reference McEwen and Gianaros2011). Furthermore, the dorsomedial prefrontal cortex subsystem of DMN is instrumental in mentalizing and processing current psychological states, and its hyper-activation is aligned with rumination as a core symptom of major depressive disorder (Satpute & Lindquist, Reference Satpute and Lindquist2019). Structural abnormalities of the dorsomedial prefrontal cortex were associated with the individual difference in psychological distress (Luo et al., Reference Luo, Zhong, Zhu, Wang, Yang, Gu and Wu2018; Lai et al., Reference Lai, Kong, Zhao, Pan, Zhang, He and Gong2022). Additionally, the activity of precuneus is anchored on highly integrated tasks including memory retrieval and self-referential processing (Cavanna & Trimble, Reference Cavanna and Trimble2006). The psychopathological form of self-processing is rumination that emerged as obsessively distressful thinking based on retrievals from personalized memory framework (Zhou et al., Reference Zhou, Chen, Shen, Li, Chen, Zhu and Yan2020), which might be the preceded symptom for developing pandemic-related distress.

Mediation effects of posttraumatic stress symptoms

Our findings of mediation analysis revealed that COVID-related posttraumatic stress could independently explain the correlates of brain connectome to general distress alterations as a prominent resource. Previous studies suggested that severe posttraumatic stress symptoms were predicted by decreased intrinsic connectivity of DMN with abnormality in the hippocampus (Joshi et al., Reference Joshi, Duval, Kubat and Liberzon2020; Patriat et al., Reference Patriat, Birn, Keding and Herringa2016), underlying psychopathological processes of disrupted mentation, altered self-processing and fear generalization (Akiki et al., Reference Akiki, Averill and Abdallah2017). Regarding the role of DMN and hippocampus in emotion processing and affective empathy (Göttlich et al., Reference Göttlich, Ye, Rodriguez-Fornells, Münte and Krämer2017; Satpute & Lindquist, Reference Satpute and Lindquist2019), the weaker connectivity assigned to DMN regions may facilitate pointing out individuals who are highly susceptible to pandemic-related posttraumatic stress, which further contributes to persistent general distress symptoms.

Confounding effects of sex

Our study did not find any correlations between distress symptom alteration and sex ratio. However, previous studies indicated that sex differences may play a critical role in the mental health crisis of pandemic, as females were more susceptible to affective hyper-reactivity (Perica et al., Reference Perica, Ravindranath, Calabro, Foran and Luna2021; Shanahan et al., Reference Shanahan, Steinhoff, Bechtiger, Murray, Nivette, Hepp and Eisner2020). The discrepancy might be attributed to the limited sample size only when considering behavioral data. Given that early onset of puberty in females caused by many sociobiological factors may pose a threat to psychological distress (Natsuaki et al., Reference Natsuaki, Klimes-Dougan, Ge, Shirtcliff, Hastings and Zahn-Waxler2009; Perica et al., Reference Perica, Ravindranath, Calabro, Foran and Luna2021), the female population deserves more attention in terms of coping with this thorny issue.

Limitations

The current study has several limitations that should be considered. First, our data were collected from uninfected young adults with COVID-19, of which findings may not generalize to other populations, and mental tolerance and resilience of general subjects may protect them from extremely high levels of distress symptoms during the pandemic (Liu et al., Reference Liu, Zhang, Wong, Hyun and Hahm2020). Further studies evaluating the predictive performance of functional connectome in the other general public populations (e.g. children and the elderly) and highly vulnerable groups (e.g. frontline medical workers) to psychological distress are warranted (Lin et al., Reference Lin, Yang, Luo, Liu, Ma, Huang and McIntyre2020). Second, our predictive model only revealed individual varying degrees of distress alterations based on brain constructs when the distress scale was considered a dimensional rather than a psychopathological measurement (Henry & Crawford, Reference Henry and Crawford2005). Further study with a case-control design based on DSM-5 criteria might be needed. Third, we only collected the neuroimaging data before the epidemic outbreak without a follow-up longitudinal brain data to illustrate associations of pandemic event-related impact with brain connectivity, and our study design was unlikely to assess the robustness and consistency of identified brain-distress constructs across multiple time points (Weissman et al., Reference Weissman, Rodman, Rosen, Kasparek, Mayes, Sheridan and McLaughlin2021). Due to the exploratory nature of our study, yet the likelihood of this approach being used in clinical settings is limited. In terms of these limitations mentioned above, when coupled with perspective psychological data during the COVID-19 pandemic and preceded neuroimaging data in our study, longitudinally multimodal research focusing on highly vulnerable groups to mental distress might be of great priority to cope with the global health crisis.

Conclusions

Psychological distress problems have captured widespread attention during the COVID-19 pandemic, especially for vulnerable young adults who are sensitive to stressors of pandemic-related events. In this regard, we identified a preceding brain functional connectome principally constituting DMN-connectivity patterns that encodes distress symptom changes based on a prospective psychological investigation among a young adult sample. The well-performing predictive models may interrogate individuals to determine if they are at high risk for developing pandemic-related persistent distress (Chahal et al., Reference Chahal, Kirshenbaum, Miller, Ho and Gotlib2021). According to the functioning of DMN, those who are marked with the altered susceptibility connectome may benefit from mental construction of scenarios in psychotherapies (e.g. mindfulness-based training program; Zhou et al., Reference Zhou, Chen, Shen, Li, Chen, Zhu and Yan2020) and neural interventions (e.g. neurofeedback procedures; Sitaram et al., Reference Sitaram, Ros, Stoeckel, Haller, Scharnowski, Lewis-Peacock and Sulzer2017) to reduce the risk of or mitigate distress symptoms adherence to COVID-related challenges, which is in line with the aim of psychoradiology (Gong, Reference Gong2020; Lui, Zhou, Sweeney, & Gong, Reference Lui, Zhou, Sweeney and Gong2016).

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0033291722002173.

Acknowledgements

We deeply thank Shiyu Ji from the Johns Hopkins Bloomberg School of Public Health for suggesting on statistical analysis. We also thank all the participating subjects at the Sichuan University.

Financial support

This work was supported by the National Natural Science Foundation of China (Q. Y. G., grants 81621003 and 82027808), (S. W., grant 31800963); the National Natural Science Foundation (J. S. and Q. Y. G., grant 81820108018).

Conflict of interest

J. S. consults to VeraSci. Other authors declare no conflict of interest.

Footnotes

*

These authors contributed equally to this work.

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Figure 0

Fig. 1. Schematic overview of the data acquisition and analytical procedures. Panel a: timeline of data acquisition and marked events of the COVID-19 pandemic in China. Notably, the World Health Organization declared the outbreak a Public Health Emergency of International Concern on 30 January 2020, and the Wuhan city lockdown officially ended on 8 April 2020 (indicating the remission of pandemic). Panel b: construction of distress-related functional connectome, from the brain region parcellation to prediction of distress with the general linear model. Panel c: cross-validation to examine the predictive performance of findings and mediation analysis to uncover the potential causal paths. DASS, Depression Anxiety Stress Scales; IES-R, Impact of Event Scale-Revised; PCL-5, Posttraumatic Stress Disorder Checklist for DSM-5; CPTS, COVID-19 posttraumatic stress, ΔDistress = pre-pandemic − during-pandemic distress score.

Figure 1

Table 1. Psychological characteristics of sample

Figure 2

Fig. 2. Functional connectome encoded difference in distress during the pandemic and the network and node strength of the connectome. Panel a shows the distress-related brain connectome with the connectogram in a circle plot, of which 136 brain regions are assigned to seven macroscale networks, and the connectome contains only 70 links over the threshold (details of links in online Supplementary Table S3). Panels b and c show the network and node strength that calculated by summing the correlation t value in specific network memberships and brain regions, respectively (details of brain regions in online Supplementary Table S4). DMN, default mode network; CEN, central executive network; DAN, dorsal attention network; AFN, affective network; VN, visual network; VAN, ventral attention network; HIP, hippocampus; dmPFC, dorsomedial prefrontal cortex; PCUN, precuneus.

Figure 3

Fig. 3. Prediction models based on various brain features and causal relations between variables. Panel a: prediction models for distress alterations exhibiting associations between the actual and predicted scores by 10-fold cross-validation with linear regression. Panel b: COVID-19 posttraumatic stress (CPTS) underlies the correlates between brain features and distress alterations. The indirect effect of CPTS (cc′) is significant among the four models. Age, sex and head motion were regarded as covariates in the mediation analyses, and the coefficients in pathways (a, b, c and c′) were exhibited as standard regression coefficients. DMN, default mode network; L., left; HIP, hippocampus, ΔDistress = pre-pandemic − during-pandemic distress score.

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