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Assessing regional intracortical myelination in schizophrenia spectrum and bipolar disorders using the optimized T1w/T2w-ratio

Published online by Cambridge University Press:  02 April 2024

Kjetil Nordbø Jørgensen*
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatry, Telemark Hospital, Skien, Norway
Stener Nerland
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway
Nora Berz Slapø
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway
Linn B. Norbom
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway Department of Psychology, PROMENTA Research Center, University of Oslo, Oslo, Norway
Lynn Mørch-Johnsen
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatry & Department of Clinical Research, Østfold Hospital, Grålum, Norway
Laura Anne Wortinger
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway
Claudia Barth
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway
Dimitrios Andreou
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway Department of Clinical Neuroscience, Centre for Psychiatry Research, Karolinska Institutet, Stockholm, Sweden & Stockholm Health Care Services, Stockholm Region, Stockholm, Sweden
Ivan I. Maximov
Affiliation:
Department of Psychology, University of Oslo, Oslo, Norway The Norwegian Centre for Mental Disorders Research (NORMENT), Division of Mental Health and Addiction, Oslo University Hospital, Oslo, Norway Department of Health and Functioning, Western Norway University of Applied Sciences, Bergen, Norway
Oliver M. Geier
Affiliation:
Department of Physics and Computational Radiology, Division of Radiology and Nuclear Medicine, Oslo University Hospital, Oslo, Norway
Ole A. Andreassen
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway The Norwegian Centre for Mental Disorders Research (NORMENT), Division of Mental Health and Addiction, Oslo University Hospital, Oslo, Norway
Erik G. Jönsson
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Clinical Neuroscience, Centre for Psychiatry Research, Karolinska Institutet, Stockholm, Sweden & Stockholm Health Care Services, Stockholm Region, Stockholm, Sweden
Ingrid Agartz
Affiliation:
The Norwegian Centre for Mental Disorders Research (NORMENT), Institute of Clinical Medicine, University of Oslo, Oslo, Norway Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo, Norway Department of Clinical Neuroscience, Centre for Psychiatry Research, Karolinska Institutet, Stockholm, Sweden & Stockholm Health Care Services, Stockholm Region, Stockholm, Sweden
*
Corresponding author: Kjetil Nordbø Jørgensen; Email: k.n.jorgensen@medisin.uio.no
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Abstract

Background

Dysmyelination could be part of the pathophysiology of schizophrenia spectrum (SCZ) and bipolar disorders (BPD), yet few studies have examined myelination of the cerebral cortex. The ratio of T1- and T2-weighted magnetic resonance images (MRI) correlates with intracortical myelin. We investigated the T1w/T2w-ratio and its age trajectories in patients and healthy controls (CTR) and explored associations with antipsychotic medication use and psychotic symptoms.

Methods

Patients with SCZ (n = 64; mean age = 30.4 years, s.d. = 9.8), BPD (n = 91; mean age 31.0 years, s.d. = 10.2), and CTR (n = 155; mean age = 31.9 years, s.d. = 9.1) who participated in the TOP study (NORMENT, University of Oslo, Norway) were clinically assessed and scanned using a General Electric 3 T MRI system. T1w/T2w-ratio images were computed using an optimized pipeline with intensity normalization and field inhomogeneity correction. Vertex-wise regression models were used to compare groups and examine group × age interactions. In regions showing significant differences, we explored associations with antipsychotic medication use and psychotic symptoms.

Results

No main effect of diagnosis was found. However, age slopes of the T1w/T2w-ratio differed significantly between SCZ and CTR, predominantly in frontal and temporal lobe regions: Lower T1w/T2w-ratio values with higher age were found in CTR, but not in SCZ. Follow-up analyses revealed a more positive age slope in patients who were using antipsychotics and patients using higher chlorpromazine-equivalent doses.

Conclusions

While we found no evidence of reduced intracortical myelin in SCZ or BPD relative to CTR, different regional age trajectories in SCZ may suggest a promyelinating effect of antipsychotic medication.

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCCreative Common License - SA
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Copyright
Copyright © The Author(s), 2024. Published by Cambridge University Press

Introduction

Schizophrenia spectrum and bipolar disorders (BPD) are severe mental disorders that affect more than 1% of the population (Perälä et al., Reference Perälä, Suvisaari, Saarni, Kuoppasalmi, Isometsä, Pirkola and Lönnqvist2007). These disorders are proposed to exist along a psychosis continuum (Pearlson, Reference Pearlson2015; Tamminga et al., Reference Tamminga, Pearlson, Keshavan, Sweeney, Clementz and Thaker2014). Psychotic symptoms are also common in BPD, with an estimated lifetime prevalence above 60% in bipolar I disorder and above 20% in bipolar II disorder (Aminoff et al., Reference Aminoff, Onyeka, Ødegaard, Simonsen, Lagerberg, Andreassen and Melle2022; van Bergen et al., Reference van Bergen, Verkooijen, Vreeker, Abramovic, Hillegers, Spijker and Boks2019). Current evidence favors the view that both disorders reflect dysconnectivity within and across several brain circuitries rather than having focal origin (Friston, Brown, Siemerkus, & Stephan, Reference Friston, Brown, Siemerkus and Stephan2016; Friston & Frith, Reference Friston and Frith1995; Kelly et al., Reference Kelly, Jahanshad, Zalesky, Kochunov, Agartz, Alloza and Donohoe2018; Xia et al., Reference Xia, Womer, Chang, Zhu, Zhou, Edmiston and Wang2019). Dysmyelination has been proposed as one possible mechanism (Bartzokis, Reference Bartzokis2002; Whitford, Ford, Mathalon, Kubicki, & Shenton, Reference Whitford, Ford, Mathalon, Kubicki and Shenton2012). This hypothesis is supported by genetic (Goudriaan et al., Reference Goudriaan, de Leeuw, Ripke, Hultman, Sklar, Sullivan and Verheijen2014; Hakak et al., Reference Hakak, Walker, Li, Wong, Davis, Buxbaum and Fienberg2001) and post-mortem studies (Kolomeets & Uranova, Reference Kolomeets and Uranova2018; Uranova, Vikhreva, Rachmanova, & Orlovskaya, Reference Uranova, Vikhreva, Rachmanova and Orlovskaya2011; Vikhreva, Rakhmanova, Orlovskaya, & Uranova, Reference Vikhreva, Rakhmanova, Orlovskaya and Uranova2016) indicating lower myelin content as well as lower density and altered morphology of myelinating oligodendrocytes in the prefrontal cortex (Kolomeets & Uranova, Reference Kolomeets and Uranova2018; Uranova et al., Reference Uranova, Vikhreva, Rachmanova and Orlovskaya2011; Vikhreva et al., Reference Vikhreva, Rakhmanova, Orlovskaya and Uranova2016). Notably, the maturation of myelin in association fiber tracts and frontal regions of the cerebral cortex, regions known to be involved in psychotic disorders, extends into early adulthood, which is a period of heightened incidence of psychosis (Paus, Keshavan, & Giedd, Reference Paus, Keshavan and Giedd2008; Whitford et al., Reference Whitford, Ford, Mathalon, Kubicki and Shenton2012).

Magnetic resonance imaging (MRI) studies on dysmyelination in psychotic disorders have mainly examined white matter, whereas few have examined intracortical myelination (Ganzetti, Wenderoth, & Mantini, Reference Ganzetti, Wenderoth and Mantini2015; Iwatani et al., Reference Iwatani, Ishida, Donishi, Ukai, Shinosaki, Terada and Kaneoke2015; Wei et al., Reference Wei, Yin, Zhang, Li, Li, Guo and Li2022; Wei et al., Reference Wei, Zhang, Li, Meng, Li, Wang and Li2020). In a previous study, we examined the cortical gray–white matter contrast (GWC), i.e. the contrast between T1-weighted (T1w) intensities in gray matter and adjacent superficial white matter, which is inversely correlated with intracortical myelin. We found higher GWC values in sensory and motor regions in patients with schizophrenia spectrum disorders and, to a lesser extent, in BPD compared to healthy controls (Jørgensen et al., Reference Jørgensen, Nerland, Norbom, Doan, Nesvåg, Mørch-Johnsen and Agartz2016). More recently, Makowski et al. (Reference Makowski, Lewis, Lepage, Malla, Joober, Lepage and Evans2019) used structural covariance and principal component analysis on the GWC in patients with first-episode psychosis. They reported a similar trend-level difference in a GWC component representing sensory and motor regions in patients relative to healthy controls. However, the GWC is based on T1w intensities in both gray and superficial white matter, and it is consequently not possible to determine if it is the signal intensity in gray matter that drives the observed group differences. Other measures of intracortical myelin are therefore needed to validate these findings.

In bipolar I disorder, Sehmbi et al. (Reference Sehmbi, Rowley, Minuzzi, Kapczinski, Steiner, Sassi and Frey2018) found positive associations between a T1w intensity-based measure of intracortical myelin and verbal memory. They also reported an inverted U-shaped relationship with age in healthy controls but not in patients with bipolar I disorder (Sehmbi et al., Reference Sehmbi, Rowley, Minuzzi, Kapczinski, Kwiecien, Bock and Frey2019). In this study, three images were acquired to create cortical maps, a standard T1w anatomic reference image, used for registration, another T1w image, optimized for intracortical contrast, and a proton-density weighted image used to normalize intensity inhomogeneities (Bock et al., Reference Bock, Hashim, Janik, Konyer, Weiss, Stanisz and Geyer2013). This approach improves the intracortical contrast but relies on developmental sequences and may be influenced by cortical thickness. Furthermore, residual intensity inhomogeneities, e.g. those related to the B1 + field, are not eliminated. Quantitative MRI pulse sequences can compensate for field inhomogeneities and have been used to show higher T1 relaxation times in BPD (Rangel-Guerra, Perez-Payan, Minkoff, & Todd, Reference Rangel-Guerra, Perez-Payan, Minkoff and Todd1983), including the somatosensory and temporal cortices (Necus et al., Reference Necus, Smith, Thelwall, Flowers, Sinha, Taylor and Cousins2021). However, they require advanced and often time-consuming MRI pulse sequences, preventing widespread adoption.

Myelin may also be involved in the therapeutic action of antipsychotic medications (Bartzokis, Reference Bartzokis2012; Kroken et al., Reference Kroken, Løberg, Drønen, Gruner, Hugdahl, Kompus and Johnsen2014). In animal studies, a lipogenic effect of antipsychotic agents has been demonstrated (Ersland, Skrede, Stansberg, & Steen, Reference Ersland, Skrede, Stansberg and Steen2017; Ferno et al., Reference Ferno, Skrede, Vik-Mo, Jassim, Le Hellard and Steen2011), and in clinical studies an association between serum lipid levels and treatment response was reported (Gjerde et al., Reference Gjerde, Dieset, Simonsen, Hoseth, Iversen, Lagerberg and Steen2018a; Kim, Barr, Fredrikson, Honer, & Procyshyn, Reference Kim, Barr, Fredrikson, Honer and Procyshyn2019; Procyshyn et al., Reference Procyshyn, Wasan, Thornton, Barr, Chen, Pomarol-Clotet and Honer2007). Notably, Tishler et al. (Reference Tishler, Bartzokis, Lu, Raven, Khanoyan, Kirkpatrick and Ellingson2018) investigated a measure of frontal lobe intracortical myelin volume and found a significant association within the first year of antipsychotic medication exposure that declined with prolonged exposure. In a previous study, users of second-generation antipsychotics had a higher intracortical myelin volume compared with users of first-generation antipsychotics (Bartzokis et al., Reference Bartzokis, Lu, Nuechterlein, Gitlin, Doi, Edwards and Mintz2007). In these studies, they acquired a proton-density image, which is less sensitive to myelin, and an inversion recovery image, which is sensitive to myelin. By calculating the volumetric differences based on these images they estimated the superficial myelinated volume of the cerebral cortex. While these findings are based on an indirect measure, they provide in vivo evidence suggestive of a promyelinating effect of antipsychotic medication in the frontal lobe of the cerebral cortex.

The T1w/T2w-ratio has been proposed as a measure of intracortical myelin (Glasser et al., Reference Glasser, Coalson, Robinson, Hacker, Carl, Harwell, Yacoub and Van Essen2016; Glasser & Van Essen, Reference Glasser and Van Essen2011). This interpretation is based on observations that the T1- and T2-weighted (T2w) MRI signals have positive and negative correlations with myelin content, respectively, such that the contrast due to myelin is enhanced in the ratio (Koenig, Reference Koenig1991; Koenig, Brown, Spiller, & Lundbom, Reference Koenig, Brown, Spiller and Lundbom1990). Furthermore, shared field inhomogeneities in the T1w and T2w images are attenuated (Glasser & Van Essen, Reference Glasser and Van Essen2011). The T1w/T2w-ratio has been studied in neurological disorders such as multiple sclerosis (Beer et al., Reference Beer, Biberacher, Schmidt, Righart, Buck, Berthele and Muhlau2016), Huntington's disease (Rowley et al., Reference Rowley, Tabrizi, Scahill, Leavitt, Roos, Durr and Bock2018), and Alzheimer's disease (Pelkmans et al., Reference Pelkmans, Dicks, Barkhof, Vrenken, Scheltens, van der Flier and Tijms2019). In patients with schizophrenia spectrum disorders, Iwatani et al. (Reference Iwatani, Ishida, Donishi, Ukai, Shinosaki, Terada and Kaneoke2015) reported lower global T1w/T2w-ratio means both in gray and white matter compared to healthy controls, but no voxel-wise group differences in the cerebral cortex. Ganzetti et al. (Reference Ganzetti, Wenderoth and Mantini2015) used non-brain intensities to calibrate the T1w/T2w-ratio and found lower regional gray matter values in patients with schizophrenia spectrum disorders, particularly in the temporal lobe, frontal lobe, and the insula. However, two recent studies have indicated a more complex layer-dependent pattern of changes in first-episode psychosis (Wei et al., Reference Wei, Yin, Zhang, Li, Li, Guo and Li2022; Wei et al., Reference Wei, Zhang, Li, Meng, Li, Wang and Li2020). In BPD, Ishida et al. (Reference Ishida, Donishi, Iwatani, Yamada, Takahashi, Ukai and Kaneoke2017) reported lower T1w/T2w-ratio values in white matter regions relative to healthy controls, but no significant differences in gray matter.

Between-subject comparisons of the T1w/T2w-ratio are challenging due to the use of weighted, rather than quantitative, MRI pulse sequences. Quantitative MRI measures have a more direct biophysical interpretation with between-subject generalizability whereas weighted signal intensities, and their ratios, are influenced by non-biological factors that affect between-subject commensurability. In a previous study, we evaluated the measurement properties of 33 T1w/T2w-ratio processing pipelines (Nerland et al., Reference Nerland, Jørgensen, Nordhøy, Maximov, Bugge, Westlye and Agartz2021). Correction for field inhomogeneities improved the agreement with the expected myeloarchitecture (i.e. the expected distribution of myelin across cortical areas). Furthermore, intensity normalization ensured acceptable test–retest reliability, which is of particular importance for between-subject comparisons.

In the present study, we investigated cortical T1w/T2w-ratio values in patients with schizophrenia spectrum and BPD relative to healthy controls. An optimized intensity normalized pipeline was used for computing the T1w/T2w-ratio maps with corrections for partial volume effects, surface outliers, and field inhomogeneities (Nerland et al., Reference Nerland, Jørgensen, Nordhøy, Maximov, Bugge, Westlye and Agartz2021). We examined if T1w/T2w-ratio values or age trajectories differed between each patient group and healthy controls with the following two hypotheses: First, that T1w/T2w-ratio values would be lower in primary sensory and motor regions in both patient groups. Second, that use of antipsychotic medication would, particularly in frontal regions of the cerebral cortex, be positively associated with the T1w/T2w-ratio. In exploratory analyses, we examined associations with psychotic symptoms.

Methods

Study design

Participants were recruited from hospitals in the greater Oslo region to the Thematically Organized Psychosis (TOP) study conducted by the Norwegian Centre for Mental Disorders Research (NORMENT). Patients who met the criteria for a DSM-IV schizophrenia spectrum disorder (SCZ), including schizophrenia, schizophreniform disorder and schizo-affective disorder, or BPD, including bipolar I disorder, bipolar II disorder and BPD not otherwise specified, were included in the current study. Healthy controls were randomly drawn from the national population registry in the same geographical region and asked to participate. The study complied with the Helsinki Declaration and was approved by the Regional Committee for Medical Research Ethics (REC South-East Norway) and the Norwegian Data Inspectorate. All participants gave informed consent.

The inclusion criteria for the TOP study include age between 18–65 years, no mental disability (defined as IQ < 70), no history of head trauma with loss of consciousness, and no neurological disorder or other organic disorder thought to affect brain function.

Healthy controls were screened using the PRIME-MD (Spitzer et al., Reference Spitzer, Williams, Kroenke, Linzer, deGruy, Hahn and Johnson1994). The absence of a mental disorder, substance use disorder, and history of severe mental disorders among first-degree relatives were criteria for inclusion. Healthy controls were selected from a larger pool (n = 278) based on age- and sex-matching to the patient sample (SCZ and BPD). Matching was performed with the MatchIt package in R (version 4.2.3; R Core Team, 2023; Ho, Imai, King, and Stuart, Reference Ho, Imai, King and Stuart2011). One-to-one matching was performed with the nearest neighbor method and quantile–quantile (Q–Q) plots were inspected to ensure adequate matching.

Diagnostic and clinical assessment

Clinical assessments were conducted by trained physicians, psychiatrists, or clinical psychologists. Diagnoses were verified using the Structured Clinical Interview for the DSM-IV Axis I disorders (SCID-IV; Spitzer, Williams, Gibbon, and First, Reference Spitzer, Williams, Gibbon and First1992). Current symptoms were rated using the Positive and Negative Syndrome Scales (PANSS; Kay, Fiszbein, and Opler, Reference Kay, Fiszbein and Opler1987). Scores for positive, negative, disorganized, excited, and depressed symptoms were calculated according to the five-factor model by Wallwork, Fortgang, Hashimoto, Weinberger, and Dickinson (Reference Wallwork, Fortgang, Hashimoto, Weinberger and Dickinson2012). Current medication use was obtained by interview or chart review and included information on antipsychotic, antiepileptic, antidepressant, and anxiolytics/hypnotic medication. For each medication, type and dose were recorded. Antipsychotic medication dosages were converted to chlorpromazine equivalent doses (CPZ; Andreasen, Pressler, Nopoulos, Miller, and Ho, Reference Andreasen, Pressler, Nopoulos, Miller and Ho2010). Intelligence quotient (IQ) was assessed with the Wechsler Abbreviated Scale of Intelligence (WASI-II; Wechsler, Reference Wechsler2007), and general psychosocial functioning was rated using the split version of the global assessment of functioning scale (GAF; Pedersen, Hagtvet, and Karterud, Reference Pedersen, Hagtvet and Karterud2007). The median time from clinical assessment (defined as the day of the PANSS interview) to MRI acquisition among patients was 12 days, with an interquartile range of 7–25 days.

MRI acquisition

Patients and healthy controls were scanned using a 3 T General Electric Discovery MR 750 system, equipped with a 32- channel head coil, between 2015 and 2019. T1w and T2w sequences were both acquired with 1 mm isotropic resolution. The T1w sequence was a 3D inversion recovery-prepared fast spoiled gradient echo recall (BRAVO) sequence with the following parameters: Repetition time (TR) = 8.16 ms; Echo time (TE) = 3.18 ms; Inversion time (TI) = 450 ms; Flip angle = 12°; Bandwidth = 244 Hz/px; ARC = 2; Acquisition time (TA) = 04:43. The T2w sequence was a 3D fast spin echo (CUBE) sequence with the following parameters: TR = 2500 ms; TE = 71.68 ms; FA = 90°; Bandwidth = 488 Hz/px; Echo train length (ETL) = 100; ARC = 2 × 2; TA = 04:23. Phased array uniformity enhancement (PURE) was enabled for both sequences. MRI images were inspected by a neuroradiologist and excluded if pathological findings were present.

MRI post-processing

FreeSurfer (v6.0.0; https://surfer.nmr.mgh.harvard.edu/) was used to reconstruct cortical surfaces, representing the boundary between gray and white matter (i.e. the inner gray–white surface of the cortex) and between gray matter and cerebrospinal fluid (i.e. the outer surface of the cortex or ‘pial surface’), based on T1w images. FreeSurfer is open source and has been described in detail previously (Fischl, Reference Fischl2012). Reconstructed surfaces were visually inspected and edited according to standard guidelines. Images were excluded in the event of substantial motion artifacts or otherwise poor image quality.

Calculation of the T1w/T2w-ratio

To compute the T1w/T2w-ratio, we rigidly registered T2w images to T1w images using bbregister in FreeSurfer with FSL initialization (Greve & Fischl, Reference Greve and Fischl2009). We then applied N4ITK field bias correction and normalized intensities with the WhiteStripe algorithm. The T1w image was then divided by the T2w image to form the T1w/T2w-ratio, which was corrected for partial volume effects (Shafee, Buckner, & Fischl, Reference Shafee, Buckner and Fischl2015). Next, T1w/T2w-ratio voxel values were projected onto the gray–white surface by sampling along layers representing equivolumetric distances of 10% to 80% of the vertex-wise cortical thickness (Waehnert et al., Reference Waehnert, Dinse, Schäfer, Geyer, Bazin, Turner and Tardif2016). Finally, we performed surface-based outlier correction based on a previously published approach (Glasser & Van Essen, Reference Glasser and Van Essen2011). This pipeline was shown in a previous study to be robust to the presence of field inhomogeneities and to improve test–retest reliability whilst preserving inter-individual variation (Nerland et al., Reference Nerland, Jørgensen, Nordhøy, Maximov, Bugge, Westlye and Agartz2021).

We visually inspected each T1w/T2w-ratio map. If the maps deviated from known myeloarchitecture, the T1w and T2w volumes were inspected. If artifacts or low image quality were found in either of the scans, the participant was excluded.

Statistical analyses

Sample characteristics were examined using descriptive statistics for demographical and clinical variables and we examined if the groups differed using analysis of variance (ANOVA), t- or Χ2- tests. To examine which groups differed, post hoc Bonferroni tests were used where appropriate.

In the primary analyses, we examined if either patient group differed from healthy controls with respect to average T1w/T2w ratio values or their age trajectories. In these analyses, we used mri_glmfit in FreeSurfer to fit age- and sex-adjusted general linear models for each vertex of the cortical surface. We specified contrasts to examine: (1) main effects of diagnosis (SCZ v. CTR, BPD v. CTR), and (2) diagnosis × age interaction effects. T1w/T2w-ratio maps were concatenated and smoothed (10 mm FWHM) before running the analyses. We applied cluster-wise correction for multiple testing with a cluster-forming threshold of 0.001, a cluster-wise probability of 5%, and correction for analysis across both hemispheres (Greve & Fischl, Reference Greve and Fischl2018). If significant diagnosis × age interaction effects were found, we further examined if the age slope differed from zero within each diagnostic group separately. The latter were regarded as follow-up analyses, and we chose a liberal p-value threshold of p < 0.01. Results from these analyses are presented as statistical t-maps.

Further, we aimed to examine whether T1w/T2w-ratio values were associated with antipsychotic medication use or psychotic symptoms in regions where significant differences were found in the primary analyses. We first extracted the mean T1w/T2w-ratio values for each significant cluster. These were defined as dependent variables. To examine associations with antipsychotic medication use, antipsychotic medication status (current use/no use) as well as medication status × age interaction terms were entered as predictors of interest in the first set of linear regression models conducted in the patient sample (n = 155). In the second set of models, we examined only patients who were using antipsychotic medication and where information about dosage was available (n = 86) and entered CPZ and CPZ × age interaction terms as predictors. We then performed separate linear regression analyses among all patients (n = 155) using the PANSS total score and each of the five Wallwork factor scores as predictors of interest. All models were adjusted for age, sex, and diagnosis (SCZ/BPD). The analyses were conducted in SPSS version 28. False discovery rate (FDR) set at 5% was used to correct for multiple testing (Benjamini & Hochberg, Reference Benjamini and Hochberg1995).

Results

Description of the study sample

The study sample consisted of 64 patients with SCZ, 91 patients with BPD and 155 CTR. The mean age did not differ between the groups. The sex distribution differed between groups, and post hoc tests indicated a non-significant trend towards more males in the SCZ group and more females in the BPD group.

The distributions of other demographic and clinical variables are shown in Table 1. Briefly, years of education and estimated IQ differed between the groups. Patients with SCZ had higher current PANSS positive, negative, and disorganized symptom scores, but not excited or depressive symptom scores, compared to patients with BPD. Patients with SCZ also had lower GAF scores compared to patients with BPD.

Table 1. Sample characteristics

Abbreviations: M, Mean; SD, Standard deviation; SCZ, Schizophrenia; BPD, Bipolar disorders; CTR, Healthy controls; WASI, Wechsler abbreviated scale of intelligence; PANSS, Positive and negative syndrome scale; GAF, Global assessment of functioning scale; CPZ, Chlorpromazine; SGA, Second generation antipsychotics; FGA, First-generation antipsychotics; n.s., Not significant; n.a., Not applicable.

1 Calculated using Fisher's exact test.

2 Defined as the current use of one antipsychotic medication type.

Missing values: Education: n = 12. WASI IQ: n = 14. Age at onset: n = 2. Duration of illness: n = 2. GAF – functioning: n = 1. PANSS total score: n = 1. PANSS negative factor score: n = 1. Medication use: n = 1. CPZ-equivalent dose: n = 1.

Medication use in the patient sample

The use of antipsychotics was more prevalent in SCZ than in BPD, whereas BPD had a more frequent use of antiepileptic drugs. Other medication categories did not differ between groups (Table 1).

Patients with SCZ used higher doses and were more often treated with multiple antipsychotic agents or long-acting injectables than patients with BPD (Table 1). Further information is found in online Supplementary Table 1.

The association between age and current antipsychotic dose (CPZ) was not significant (ρ = 0.18, p = 0.09).

No group differences in regional T1w/T2w-ratio values

When examining the main effects of diagnosis (SCZ v. CTR, BPD v. CTR), we found no differences in regional T1w/T2w-ratio values after cluster-wise correction for multiple testing (CWP > 0.05).

Different age trajectories of regional T1w/T2w-ratio values

In the group-wise comparison of T1w/T2w-ratio age slopes (i.e. diagnosis x age interaction terms), patients with SCZ had more positive age slopes compared to CTR in 22 clusters. These included clusters in frontal and temporal regions, e.g. bilateral regions of the superior frontal and insular cortices, as well as parietal and occipital regions. There were no significant differences in age slopes between patients with BPD and CTR. An overview of significant clusters is shown in Table 2 and Fig. 1. See online Supplementary Figure 1 for further details.

Table 2. Significant clusters based on vertex-wise analysis of schizophrenia × age interaction effect

Maximal significance value refers to the p-value at the vertex showing the largest difference in age slopes between SCZ and CTR within each cluster.

Figure 1. Clusters shown in red to yellow colors on the inflated cortical surfaces signify cortical regions where associations with age differed between SCZ and CTR. The cluster-forming threshold was 0.001 and the cluster-wise probability set at p < 0.05 with correction for two hemispheres. In the left and right boxes, scatterplots illustrate the association with age among SCZ (red line), BPD (blue line) and CTR (green line) with age on the x-axes and mean T1w/T2-ratio values within the cluster on the y-axes.

Follow-up analyses of the linear age slopes in each group showed that CTR had predominantly negative age slopes in medial frontal and temporal regions, with positive age slopes only in the central sulcus. In contrast, patients with SCZ had several regions with positive age slopes, including frontal lobe regions (Fig. 2).

Figure 2. The figure displays results from a vertex-wise general linear model adjusted for age and sex. Contrasts were specified to examine age slopes within each group separately. Colored regions indicate where the association with age deviated from the null hypothesis (i.e. no association) at the threshold p < 0.01, uncorrected. Blue to light blue colors denote negative age slopes (i.e. lower T1w/T2w-ratio in older individuals). Red to yellow colors denote positive age slopes (i.e. higher T1w/T2w-ratio values in older individuals).

Age trajectories of the T1w/T2w-ratio and antipsychotic medication use

We found significant interaction effects indicating a more positive age slope in patients using antipsychotic medication compared to patients who did not. This was found in temporal lobe regions, insular regions, the precuneus bilaterally, the left precentral gyrus, the right superior and middle frontal lobe, and the postcentral gyrus (Table 3).

Table 3. Analysis of cluster-wise T1w/T2w values, antipsychotic medication use and interaction with age

Linear regression models (n = 154) adjusted for age, sex, and diagnosis. The age and CPZ variables were centered prior to analysis. p-values below 0.05 (FDR-corrected) are marked in bold. Information about antipsychotic medication use was missing for one participant.

Abbreviations: AP, Antipsychotic medication status; CPZ, Chlorpromazine-equivalent dose.

When analyses were further restricted to patients using antipsychotic medication only (n = 86), we found more positive age slopes of T1w/T2w-ratio values in patients using a higher current dose (CPZ). Significant CPZ × age interaction effects were found in all except two of the 22 significant clusters (Table 3).

We also conducted cluster-wise analyses in patients with SCZ and BPD separately. In these analyses, there were no significant associations after correction for multiple testing. In SCZ, trends towards more positive age slopes were observed in patients who used antipsychotic medication in two clusters and, among medicated patients, with higher CPZ in six clusters (all p < 0.05, uncorrected). In BPD, there were no significant associations with medication use or dose. See online Supplementary Tables 2 and 3 for further details.

No association with clinical symptoms

We found no associations between T1w/T2w-ratio values and PANSS total scores, nor with any of the five symptom factors after correction for multiple testing. See online Supplementary Table 2 for details. Similarly, when PANSS scores were examined in SCZ and BPD separately, no association was significant after correction for multiple testing; however, in SCZ one cluster showed a trend towards a positive association with positive symptoms and in BPD six clusters showed trends towards positive associations with the excited, disorganized, or negative symptom factors (p < 0.05, uncorrected). See online Supplementary Tables 5 and 6 for further details.

Discussion

We did not find lower T1w/T2w-ratio values in either of the patient groups compared to healthy controls. Thus, insofar as the T1w/T2w-ratio is a measure of intracortical myelin, our results provide little support for intracortical myelin deficits in these disorders. However, we observed divergent age trajectories in patients with schizophrenia spectrum disorders. Antipsychotic medication status and dose were both associated with divergent age slopes within the patient sample, which is consistent with a possible promyelinating effect of antipsychotic medication.

The absence of lower regional T1w/T2w-ratio values in patients contrasts with our previous study on the GWC (Jørgensen et al., Reference Jørgensen, Nerland, Norbom, Doan, Nesvåg, Mørch-Johnsen and Agartz2016). While these are different measures, they show moderate to high correlations, with a reported overall correlation of 0.73 (Parent et al., Reference Parent, Olafson, Bussy, Tullo, Blostein, Dai and Chakravarty2023). Our results also differed from previous findings of lower global and regional T1w/T2w-ratio values in patients with schizophrenia spectrum disorders (Ganzetti et al., Reference Ganzetti, Wenderoth and Mantini2015; Iwatani et al., Reference Iwatani, Ishida, Donishi, Ukai, Shinosaki, Terada and Kaneoke2015). However, it is worth noting that only the study by Ganzetti et al. (Reference Ganzetti, Wenderoth and Mantini2015) reported lower regional T1w/T2w-ratio values. In this study, data was pooled from three different sites, which may have influenced the results given the known effects of scanner on the T1w/T2w-ratio (Nerland et al., Reference Nerland, Jørgensen, Nordhøy, Maximov, Bugge, Westlye and Agartz2021). Furthermore, the calibration method based on small masks covering the eyes and the temporal muscles may be unreliable, especially for low-resolution data. In the study by Iwatani et al. (Reference Iwatani, Ishida, Donishi, Ukai, Shinosaki, Terada and Kaneoke2015), a large smoothing kernel was used for computing the T1w/T2w-ratio, and a large portion of the sensorimotor cortices was excluded from the analyses. Notably, both these previous studies used low-resolution T2w images, which may introduce partial volume effects (Shafee et al., Reference Shafee, Buckner and Fischl2015).

In two recent studies on first-episode treatment-naïve patients with schizophrenia spectrum disorders (FEP) by Wei et al. (Reference Wei, Yin, Zhang, Li, Li, Guo and Li2022; Reference Wei, Zhang, Li, Meng, Li, Wang and Li2020), a layer-dependent regional pattern was reported, with lower T1w/T2w-ratio values in the left cingulate and insula and higher values in the left superior temporal gyrus. Notably, these regions belong to the salience network and the language and auditory processing circuitry, respectively, both thought to be affected in psychotic disorders. Interestingly, the patients with FEP differed from healthy controls in the superficial and middle layers of the cortex, but not in the deep layer. In the present study, T1w/T2w-ratio values were sampled at distances of 10–80% of cortical thickness from the gray–white surface and depth-dependent analyses were not performed. Furthermore, Wei et al. (Reference Wei, Zhang, Li, Meng, Li, Wang and Li2020) normalized each individual T1w/T2w-ratio map by subtracting the subject-wise mean T1w/T2w-ratio and dividing by the variance, which makes the comparison to the present study difficult.

We observed more positive age trajectories of the T1w/T2w-ratio in patients with schizophrenia spectrum disorders. Furthermore, patients currently treated with antipsychotics showed more positive age trajectories compared with patients not currently on antipsychotics, with evidence suggesting a dose-response relationship, although a sensitivity analysis performed in each diagnostic group separately did not confirm this. It has been proposed that some antipsychotic medications have myelin-promoting properties (Bartzokis, Reference Bartzokis2012) and that their lipogenic effects are related to clinical efficacy (Kim et al., Reference Kim, Barr, Fredrikson, Honer and Procyshyn2019; Leucht et al., Reference Leucht, Cipriani, Spineli, Mavridis, Orey, Richter and Davis2013; Procyshyn et al., Reference Procyshyn, Wasan, Thornton, Barr, Chen, Pomarol-Clotet and Honer2007). Indeed, several psychotropic drugs are known to induce cholesterol synthesis (Ferno et al., Reference Ferno, Skrede, Vik-Mo, Jassim, Le Hellard and Steen2011) and in two preclinical studies in rodents, the antipsychotic agents quetiapine and risperidone had ameliorating effects after experimentally induced demyelination (O'Sullivan et al., Reference O'Sullivan, Green, Stone, Zareie, Kharkrang, Fong and La Flamme2014; Xiao et al., Reference Xiao, Xu, Zhang, Wei, He, Jiang and Li2008). Similarly, clozapine and haloperidol were found to inhibit myelin loss through modulating autophagic processes in a recent study (Patergnani et al., Reference Patergnani, Bonora, Ingusci, Previati, Marchi, Zucchini and Pinton2021). However, in a previous study of long-term treatment with olanzapine and haloperidol in macaque monkeys, a reduction of glial cells was found, although the oligodendrocyte density was not reduced after treatment (Konopaske et al., Reference Konopaske, Dorph-Petersen, Sweet, Pierri, Zhang, Sampson and Lewis2008). Some evidence suggests similar effects are present in human settings (Barth et al., Reference Barth, Lonning, Gurholt, Andreassen, Myhre and Agartz2020; Bartzokis et al., Reference Bartzokis, Lu, Nuechterlein, Gitlin, Doi, Edwards and Mintz2007; Gjerde et al., Reference Gjerde, Jørgensen, Steen, Melle, Andreassen, Steen and Agartz2018b; Tishler et al., Reference Tishler, Bartzokis, Lu, Raven, Khanoyan, Kirkpatrick and Ellingson2018). Thus, the interpretation that divergent age trajectories in patients reflect an effect of antipsychotic treatment is plausible. However, the observed association with antipsychotic medication could also be due to factors that influence antipsychotic dosing and use, such as illness severity and chronicity, sex, or treatment response (Moilanen et al., Reference Moilanen, Haapea, Miettunen, Jääskeläinen, Veijola, Isohanni and Koponen2013; Sommer et al., Reference Sommer, Brand, Gangadin, Tanskanen, Tiihonen and Taipale2023). To examine this further, we encourage future studies to assess intracortical myelination longitudinally in patients with FEP who are drug-naïve at baseline.

Previous studies indicate that the myelination of the cerebral cortex follows a pattern of rapid myelination in early life, stabilization in early-to-mid adulthood, and subsequent decline in late adulthood (Callaghan et al., Reference Callaghan, Freund, Draganski, Anderson, Cappelletti, Chowdhury and Weiskopf2014; Whitaker et al., Reference Whitaker, Vértes, Romero-Garcia, Váša, Moutoussis, Prabhu and Bullmore2016). Notably, this myelination cycle varies between different regions of the brain (Grydeland et al., Reference Grydeland, Vértes, Váša, Romero-Garcia, Whitaker, Alexander-Bloch and Bullmore2019), with an earlier myelination peak for the primary sensory and motor cortices than for the association, insular, and limbic cortices. Although our findings indicated a modest linear decline with age in the T1w/T2w-ratio in healthy controls, the age range in our dataset did not include the period of rapid myelination in early life. If a broader age range was included, we would expect to capture nonlinear myelination trajectories. Finally, it is possible that the divergent age trajectories observed in the present study reflect a different maturational trajectory of myelination in patients with schizophrenia spectrum disorders.

Strengths and limitations

Strengths of this study include the use of a clinically well-characterized sample where all participants were scanned on the same MRI system. We used a well-tested pipeline for computing the T1w/T2w-ratio, which showed good test–retest reliability and agreement with known myeloarchitecture using scan acquisitions from the same MRI scanner system and pulse sequence parameters.

To compute the T1w/T2w-ratio, we used an intensity normalization procedure, WhiteStripe, based on intensities in normal-appearing white matter (NAWM). While this was previously shown to improve test–retest reliability whilst preserving individual variation in T1w/T2w-ratio distributions, it may introduce dependencies between cortical T1w/T2w-ratio values and T1w and T2w intensity values in NAWM. We cannot rule out the possibility that the observed age-by-diagnosis interactions reflect age trajectories of NAWM rather than gray matter. Quantitative MRI pulse sequences, such as inversion recovery imaging, may be used to rule out this possibility. Such methods estimate biophysically meaningful properties of the MRI measurements and can be used for between-subject comparisons without the need for intensity normalization or calibration.

The T1w/T2w-ratio shows spatial correlation with cortical myeloarchitecture (Glasser, Goyal, Preuss, Raichle, & Van Essen, Reference Glasser, Goyal, Preuss, Raichle and Van Essen2014) but is based on T1w and T2w image intensities which are inherently non-dimensional measures. Recent studies have indicated that the correlations between the T1w/T2w-ratio and other indices of myelination vary between brain regions. For instance, low correlations have been found with the myelin-water fraction (MWF) in densely myelinated regions in white matter (Sandrone et al., Reference Sandrone, Aiello, Cavaliere, Thiebaut de Schotten, Reimann, Troakes and Dell'Acqua2023; Uddin, Figley, Solar, Shatil, & Figley, Reference Uddin, Figley, Solar, Shatil and Figley2019). High correlations have, however, been found between the T1w/T2w-ratio and T1 relaxation time mapping of the cerebral cortex (Parent et al., Reference Parent, Olafson, Bussy, Tullo, Blostein, Dai and Chakravarty2023; Shams, Norris, & Marques, Reference Shams, Norris and Marques2019). Still, strong conclusions regarding microstructural tissue properties should be avoided since the T1w/T2w-ratio remains a complex measure and other tissue properties than myelin content, such as iron content or dendritic density, may also influence it (Righart et al., Reference Righart, Biberacher, Jonkman, Klaver, Schmidt, Buck and Mühlau2017).

Neuroimaging findings in schizophrenia and BPD show considerable heterogeneity (Wolfers et al., Reference Wolfers, Rokicki, Alnaes, Berthet, Agartz, Kia and Westlye2021). Recent studies have suggested the existence of pathophysiological subtypes based on structural and functional neuroimaging markers, which may reflect different neurodevelopmental trajectories (Clementz et al., Reference Clementz, Parker, Trotti, McDowell, Keedy, Keshavan and Tamminga2022; du Plessis et al., Reference du Plessis, Chand, Erus, Phahladira, Luckhoff, Smit and Emsley2023; Dwyer et al., Reference Dwyer, Chand, Pigoni, Khuntia, Wen, Antoniades and Dazzan2023). Of note, a recent study found a spatial correlation between cortical thickness deviations and glial-specific gene expression profiles to be present in some, but not all, patients with schizophrenia (Di Biase et al., Reference Di Biase, Geaghan, Reay, Seidlitz, Weickert, Pébay and Zalesky2022). Examining the covariation with other imaging markers, such as cortical thickness, in a large-scale context and investigating longitudinal T1w/T2w-ratio change from early illness phases would be important avenues to pursue; however, in the present study this was not possible due to sample size limitations and the cross-sectional nature of the study.

The T1w and T2w sequences we used both had 1 mm isotropic resolution; however, for cortical myelin mapping, images with submillimeter resolution would be optimal. Furthermore, while our optimized pipeline improved reliability (Nerland et al., Reference Nerland, Jørgensen, Nordhøy, Maximov, Bugge, Westlye and Agartz2021), correction for field inhomogeneities through the acquisition of B1 + field maps is an alternative approach (Glasser et al., Reference Glasser, Coalson, Harms, Xu, Baum, Autio and Hayashi2022). Lastly, although our findings did not confirm an intracortical myelin deficit in schizophrenia spectrum disorders, such deficits could be present in early illness phases or in treatment-naïve individuals.

Conclusions

While our findings did not support the hypothesis of intracortical myelin deficits in schizophrenia spectrum or BPD, they were consistent with the hypothesized promyelinating effect of antipsychotic medication. The possibility that this effect could also mask an intracortical myelin deficit in patients cannot be ruled out. The findings should be followed up by applying quantitative MRI measures and assessing longitudinal trajectories of intracortical myelination in patients who are drug-naïve at baseline.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0033291724000503.

Acknowledgements

We thank the study participants and the clinicians responsible for recruitment and assessment at the Norwegian Research Centre for Mental Disorders (NORMENT). We also thank the scientific assistants who performed quality assurance and editing of reconstructed surfaces. The work was partly conducted on a platform provided by the Services for sensitive data (TSD), operated and developed at the University of Oslo IT Department (USIT).

Funding statement

This work was supported by The Research Council of Norway (grant numbers 223273, 274359) and the South-Eastern Norway Regional Health Authority (grant number 2019-104).

Competing interests

Author OAA has received speaker's honoraria from Lundbeck, Janssen and Sunovion and is a consultant for Cortechs.ai. Author IA has received a speaker's honorarium from Lundbeck. The other authors report no conflict of interest.

Footnotes

*

These authors contributed equally.

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Figure 0

Table 1. Sample characteristics

Figure 1

Table 2. Significant clusters based on vertex-wise analysis of schizophrenia × age interaction effect

Figure 2

Figure 1. Clusters shown in red to yellow colors on the inflated cortical surfaces signify cortical regions where associations with age differed between SCZ and CTR. The cluster-forming threshold was 0.001 and the cluster-wise probability set at p < 0.05 with correction for two hemispheres. In the left and right boxes, scatterplots illustrate the association with age among SCZ (red line), BPD (blue line) and CTR (green line) with age on the x-axes and mean T1w/T2-ratio values within the cluster on the y-axes.

Figure 3

Figure 2. The figure displays results from a vertex-wise general linear model adjusted for age and sex. Contrasts were specified to examine age slopes within each group separately. Colored regions indicate where the association with age deviated from the null hypothesis (i.e. no association) at the threshold p < 0.01, uncorrected. Blue to light blue colors denote negative age slopes (i.e. lower T1w/T2w-ratio in older individuals). Red to yellow colors denote positive age slopes (i.e. higher T1w/T2w-ratio values in older individuals).

Figure 4

Table 3. Analysis of cluster-wise T1w/T2w values, antipsychotic medication use and interaction with age

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