Psychiatry - Research Publications

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    Heterogeneity and Classification of Recent Onset Psychosis and Depression: A Multimodal Machine Learning Approach
    Lalousis, PA ; Wood, SJ ; Schmaal, L ; Chisholm, K ; Griffiths, S ; Reniers, R ; Bertolino, A ; Borgwardt, S ; Brambilla, P ; Kambeitz, J ; Lencer, R ; Pantelis, C ; Ruhrmann, S ; Salokangas, RKR ; Schultze-Lutter, F ; Bonivento, C ; Dwyer, DB ; Ferro, A ; Haidl, T ; Rosen, M ; Schmidt, A ; Meisenzahl, E ; Koutsouleris, N ; Upthegrove, R (Elsevier BV, 2021-05)
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    Brain Correlates of Suicide Attempt in 18,925 Participants Across 18 International Cohorts
    Campos, A ; Thompson, PM ; Veltman, DJ ; Pozzi, E ; van Veltzen, LS ; Jahanshad, N ; Adams, MJ ; Baune, BT ; Berger, K ; Brosch, K ; Bulow, R ; Connolly, CG ; Dannlowski, U ; Davey, CG ; de Zubicaray, G ; Dima, D ; Erwin-Grabner, T ; Evans, JW ; Fu, CHY ; Gotlib, IH ; Goya-Maldonado, R ; Grabe, HJ ; Grotegerd, D ; Harris, MA ; Harrison, BJ ; Hatton, SN ; Hermesdorf, M ; Hickie, IB ; Ho, TC ; Kircher, T ; Krug, A ; Lagopoulos, J ; Lemke, H ; McMahon, K ; MacMaster, FP ; Martin, NG ; McIntosh, AM ; Medland, SE ; Meinert, S ; Meller, T ; Nenadic, I ; Opel, N ; Redlich, R ; Reneman, L ; Repple, J ; Sacchet, MD ; Schmitt, S ; Schrantee, A ; Sim, K ; Singh, A ; Stein, F ; Strike, LT ; van Der Wee, NJA ; van Der Werff, SJA ; Volzke, H ; Waltemate, L ; Whalley, HC ; Wittfeld, K ; Wright, MJ ; Yang, TT ; Zarate, CA ; Schmaal, L ; Renteria, ME (ELSEVIER SCIENCE INC, 2021-08-15)
    BACKGROUND: Neuroimaging studies of suicidal behavior have so far been conducted in small samples, prone to biases and false-positive associations, yielding inconsistent results. The ENIGMA-MDD Working Group aims to address the issues of poor replicability and comparability by coordinating harmonized analyses across neuroimaging studies of major depressive disorder and related phenotypes, including suicidal behavior. METHODS: Here, we pooled data from 18 international cohorts with neuroimaging and clinical measurements in 18,925 participants (12,477 healthy control subjects and 6448 people with depression, of whom 694 had attempted suicide). We compared regional cortical thickness and surface area and measures of subcortical, lateral ventricular, and intracranial volumes between suicide attempters, clinical control subjects (nonattempters with depression), and healthy control subjects. RESULTS: We identified 25 regions of interest with statistically significant (false discovery rate < .05) differences between groups. Post hoc examinations identified neuroimaging markers associated with suicide attempt including smaller volumes of the left and right thalamus and the right pallidum and lower surface area of the left inferior parietal lobe. CONCLUSIONS: This study addresses the lack of replicability and consistency in several previously published neuroimaging studies of suicide attempt and further demonstrates the need for well-powered samples and collaborative efforts. Our results highlight the potential involvement of the thalamus, a structure viewed historically as a passive gateway in the brain, and the pallidum, a region linked to reward response and positive affect. Future functional and connectivity studies of suicidal behaviors may focus on understanding how these regions relate to the neurobiological mechanisms of suicide attempt risk.
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    Heterogeneity and Classification of Recent Onset Psychosis and Depression: A Multimodal Machine Learning Approach
    Lalousis, PA ; Wood, SJ ; Schmaal, L ; Chisholm, K ; Griffiths, SL ; Reniers, RLEP ; Bertolino, A ; Borgwardt, S ; Brambilla, P ; Kambeitz, J ; Lencer, R ; Pantelis, C ; Ruhrmann, S ; Salokangas, RKR ; Schultze-Lutter, F ; Bonivento, C ; Dwyer, D ; Ferro, A ; Haidl, T ; Rosen, M ; Schmidt, A ; Meisenzahl, E ; Koutsouleris, N ; Upthegrove, R (OXFORD UNIV PRESS, 2021-07)
    Diagnostic heterogeneity within and across psychotic and affective disorders challenges accurate treatment selection, particularly in the early stages. Delineation of shared and distinct illness features at the phenotypic and brain levels may inform the development of more precise differential diagnostic tools. We aimed to identify prototypes of depression and psychosis to investigate their heterogeneity, with common, comorbid transdiagnostic symptoms. Analyzing clinical/neurocognitive and grey matter volume (GMV) data from the PRONIA database, we generated prototypic models of recent-onset depression (ROD) vs. recent-onset psychosis (ROP) by training support-vector machines to separate patients with ROD from patients with ROP, who were selected for absent comorbid features (pure groups). Then, models were applied to patients with comorbidity, ie, ROP with depressive symptoms (ROP+D) and ROD participants with sub-threshold psychosis-like features (ROD+P), to measure their positions within the affective-psychotic continuum. All models were independently validated in a replication sample. Comorbid patients were positioned between pure groups, with ROP+D patients being more frequently classified as ROD compared to pure ROP patients (clinical/neurocognitive model: χ2 = 14.874; P < .001; GMV model: χ2 = 4.933; P = .026). ROD+P patient classification did not differ from ROD (clinical/neurocognitive model: χ2 = 1.956; P = 0.162; GMV model: χ2 = 0.005; P = .943). Clinical/neurocognitive and neuroanatomical models demonstrated separability of prototypic depression from psychosis. The shift of comorbid patients toward the depression prototype, observed at the clinical and biological levels, suggests that psychosis with affective comorbidity aligns more strongly to depressive rather than psychotic disease processes. Future studies should assess how these quantitative measures of comorbidity predict outcomes and individual responses to stratified therapeutic interventions.
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    Brain structural abnormalities in obesity: relation to age, genetic risk, and common psychiatric disorders Evidence through univariate and multivariate mega-analysis including 6420 participants from the ENIGMA MDD working group
    Opel, N ; Thalamuthu, A ; Milaneschi, Y ; Grotegerd, D ; Flint, C ; Leenings, R ; Goltermann, J ; Richter, M ; Hahn, T ; Woditsch, G ; Berger, K ; Hermesdorf, M ; McIntosh, A ; Whalley, HC ; Harris, MA ; MacMaster, FP ; Walter, H ; Veer, IM ; Frodl, T ; Carballedo, A ; Krug, A ; Nenadic, I ; Kircher, T ; Aleman, A ; Groenewold, NA ; Stein, DJ ; Soares, JC ; Zunta-Soares, GB ; Mwangi, B ; Wu, M-J ; Walter, M ; Li, M ; Harrison, BJ ; Davey, CG ; Cullen, KR ; Klimes-Dougan, B ; Mueller, BA ; Saemann, PG ; Penninx, B ; Nawijn, L ; Veltman, DJ ; Aftanas, L ; Brak, I ; Filimonova, EA ; Osipov, EA ; Reneman, L ; Schrantee, A ; Grabe, HJ ; Van der Auwera, S ; Wittfeld, K ; Hosten, N ; Voelzke, H ; Sim, K ; Gotlib, IH ; Sacchet, MD ; Lagopoulos, J ; Hatton, SN ; Hickie, I ; Pozzi, E ; Thompson, PM ; Jahanshad, N ; Schmaal, L ; Baune, BT ; Dannlowski, U (SPRINGERNATURE, 2021-09)
    Emerging evidence suggests that obesity impacts brain physiology at multiple levels. Here we aimed to clarify the relationship between obesity and brain structure using structural MRI (n = 6420) and genetic data (n = 3907) from the ENIGMA Major Depressive Disorder (MDD) working group. Obesity (BMI > 30) was significantly associated with cortical and subcortical abnormalities in both mass-univariate and multivariate pattern recognition analyses independent of MDD diagnosis. The most pronounced effects were found for associations between obesity and lower temporo-frontal cortical thickness (maximum Cohen´s d (left fusiform gyrus) = -0.33). The observed regional distribution and effect size of cortical thickness reductions in obesity revealed considerable similarities with corresponding patterns of lower cortical thickness in previously published studies of neuropsychiatric disorders. A higher polygenic risk score for obesity significantly correlated with lower occipital surface area. In addition, a significant age-by-obesity interaction on cortical thickness emerged driven by lower thickness in older participants. Our findings suggest a neurobiological interaction between obesity and brain structure under physiological and pathological brain conditions.
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    Brain structural abnormalities in obesity: relation to age, genetic risk, and common psychiatric disorders (May, 2020, 10.1038/s41380-020-0774-9)
    Opel, N ; Thalamuthu, A ; Milaneschi, Y ; Grotegerd, D ; Flint, C ; Leenings, R ; Goltermann, J ; Richter, M ; Hahn, T ; Woditsch, G ; Berger, K ; Hermesdorf, M ; McIntosh, A ; Whalley, HC ; Harris, MA ; MacMaster, FP ; Walter, H ; Veer, IM ; Frodl, T ; Carballedo, A ; Krug, A ; Nenadic, I ; Kircher, T ; Aleman, A ; Groenewold, NA ; Stein, DJ ; Soares, JC ; Zunta-Soares, GB ; Mwangi, B ; Wu, M-J ; Walter, M ; Li, M ; Harrison, BJ ; Davey, CG ; Cullen, KR ; Klimes-Dougan, B ; Mueller, BA ; Samann, PG ; Penninx, B ; Nawijn, L ; Veltman, DJ ; Aftanas, L ; Brak, IV ; Filimonova, EA ; Osipov, EA ; Reneman, L ; Schrantee, A ; Grabe, HJ ; van der Auwera, S ; Wittfeld, K ; Hosten, N ; Volzke, H ; Sim, K ; Gotlib, IH ; Sacchet, MD ; Lagopoulos, J ; Hatton, SN ; Hickie, I ; Pozzi, E ; Thompson, PM ; Jahanshad, N ; Schmaal, L ; Baune, BT ; Dannlowski, U (SPRINGERNATURE, 2021-12)
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    Brain structural correlates of insomnia severity in 1053 individuals with major depressive disorder: results from the ENIGMA MDD working group
    Leerssen, J ; Blanken, TF ; Pozzi, E ; Jahanshad, N ; Aftanas, L ; Andreassen, OA ; Baune, BT ; Ching, CRK ; Dannlowski, U ; Frodl, T ; Godlewska, BR ; Gotlib, IH ; Grotegerd, D ; Gruber, O ; Hatton, SN ; Hickie, IB ; Jaworska, N ; Kircher, T ; Krug, A ; Lagopoulos, J ; Li, M ; MacMaster, FP ; McIntosh, AM ; Mwangi, B ; Osipov, E ; Portella, MJ ; Sacchet, MD ; Samann, PG ; Simulionyte, E ; Soares, JC ; Walter, M ; Whalley, HC ; Veltman, DJ ; Thompson, PM ; Schmaal, L ; Van Someren, EJW (WILEY, 2020-09)
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    Virtual Histology of Cortical Thickness and Shared Neurobiology in 6 Psychiatric Disorders
    Patel, Y ; Parker, N ; Shin, J ; Howard, D ; French, L ; Thomopoulos, SI ; Pozzi, E ; Abe, Y ; Abe, C ; Anticevic, A ; Alda, M ; Aleman, A ; Alloza, C ; Alonso-Lana, S ; Ameis, SH ; Anagnostou, E ; McIntosh, AA ; Arango, C ; Arnold, PD ; Asherson, P ; Assogna, F ; Auzias, G ; Ayesa-Arriola, R ; Bakker, G ; Banaj, N ; Banaschewski, T ; Bandeira, CE ; Baranov, A ; Bargallo, N ; Bau, CHD ; Baumeister, S ; Baune, BT ; Bellgrove, MA ; Benedetti, F ; Bertolino, A ; Boedhoe, PSW ; Boks, M ; Bollettini, I ; del Mar Bonnin, C ; Borgers, T ; Borgwardt, S ; Brandeis, D ; Brennan, BP ; Bruggemann, JM ; Bulow, R ; Busatto, GF ; Calderoni, S ; Calhoun, VD ; Calvo, R ; Canales-Rodriguez, EJ ; Cannon, DM ; Carr, VJ ; Cascella, N ; Cercignani, M ; Chaim-Avancini, TM ; Christakou, A ; Coghill, D ; Conzelmann, A ; Crespo-Facorro, B ; Cubillo, AI ; Cullen, KR ; Cupertino, RB ; Daly, E ; Dannlowski, U ; Davey, CG ; Denys, D ; Deruelle, C ; Di Giorgio, A ; Dickie, EW ; Dima, D ; Dohm, K ; Ehrlich, S ; Ely, BA ; Erwin-Grabner, T ; Ethofer, T ; Fair, DA ; Fallgatter, AJ ; Faraone, SV ; Fatjo-Vilas, M ; Fedor, JM ; Fitzgerald, KD ; Ford, JM ; Frodl, T ; Fu, CHY ; Fullerton, JM ; Gabel, MC ; Glahn, DC ; Roberts, G ; Gogberashvili, T ; Goikolea, JM ; Gotlib, IH ; Goya-Maldonado, R ; Grabe, HJ ; Green, MJ ; Grevet, EH ; Groenewold, NA ; Grotegerd, D ; Gruber, O ; Gruner, P ; Guerrero-Pedraza, A ; Gur, RE ; Gur, RC ; Haar, S ; Haarman, BCM ; Haavik, J ; Hahn, T ; Hajek, T ; Harrison, BJ ; Harrison, NA ; Hartman, CA ; Whalley, HC ; Heslenfeld, DJ ; Hibar, DP ; Hilland, E ; Hirano, Y ; Ho, TC ; Hoekstra, PJ ; Hoekstra, L ; Hohmann, S ; Hong, LE ; Hoschl, C ; Hovik, MF ; Howells, FM ; Nenadic, I ; Jalbrzikowski, M ; James, AC ; Janssen, J ; Jaspers-Fayer, F ; Xu, J ; Jonassen, R ; Karkashadze, G ; King, JA ; Kircher, T ; Kirschner, M ; Koch, K ; Kochunov, P ; Kohls, G ; Konrad, K ; Kramer, B ; Krug, A ; Kuntsi, J ; Kwon, JS ; Landen, M ; Landro, NI ; Lazaro, L ; Lebedeva, IS ; Leehr, EJ ; Lera-Miguel, S ; Lesch, K-P ; Lochner, C ; Louza, MR ; Luna, B ; Lundervold, AJ ; MacMaster, FP ; Maglanoc, LA ; Malpas, CB ; Portella, MJ ; Marsh, R ; Martyn, FM ; Mataix-Cols, D ; Mathalon, DH ; McCarthy, H ; McDonald, C ; McPhilemy, G ; Meinert, S ; Menchon, JM ; Minuzzi, L ; Mitchell, PB ; Moreno, C ; Morgado, P ; Muratori, F ; Murphy, CM ; Murphy, D ; Mwangi, B ; Nabulsi, L ; Nakagawa, A ; Nakamae, T ; Namazova, L ; Narayanaswamy, J ; Jahanshad, N ; Nguyen, DD ; Nicolau, R ; O'Gorman Tuura, RL ; O'Hearn, K ; Oosterlaan, J ; Opel, N ; Ophoff, RA ; Oranje, B ; Garcia de la Foz, VO ; Overs, BJ ; Paloyelis, Y ; Pantelis, C ; Parellada, M ; Pauli, P ; Pico-Perez, M ; Picon, FA ; Piras, F ; Piras, F ; Plessen, KJ ; Pomarol-Clotet, E ; Preda, A ; Puig, O ; Quide, Y ; Radua, J ; Ramos-Quiroga, JA ; Rasser, PE ; Rauer, L ; Reddy, J ; Redlich, R ; Reif, A ; Reneman, L ; Repple, J ; Retico, A ; Richarte, V ; Richter, A ; Rosa, PGP ; Rubia, KK ; Hashimoto, R ; Sacchet, MD ; Salvador, R ; Santonja, J ; Sarink, K ; Sarro, S ; Satterthwaite, TD ; Sawa, A ; Schall, U ; Schofield, PR ; Schrantee, A ; Seitz, J ; Serpa, MH ; Setien-Suero, E ; Shaw, P ; Shook, D ; Silk, TJ ; Sim, K ; Simon, S ; Simpson, HB ; Singh, A ; Skoch, A ; Skokauskas, N ; Soares, JC ; Soreni, N ; Soriano-Mas, C ; Spalletta, G ; Spaniel, F ; Lawrie, SM ; Stern, ER ; Stewart, SE ; Takayanagi, Y ; Temmingh, HS ; Tolin, DF ; Tomecek, D ; Tordesillas-Gutierrez, D ; Tosetti, M ; Uhlmann, A ; van Amelsvoort, T ; van der Wee, NJA ; van der Werff, SJA ; van Haren, NEM ; van Wingen, GA ; Vance, A ; Vazquez-Bourgon, J ; Vecchio, D ; Venkatasubramanian, G ; Vieta, E ; Vilarroya, O ; Vives-Gilabert, Y ; Voineskos, AN ; Volzke, H ; von Polier, GG ; Walton, E ; Weickert, TW ; Weickert, CS ; Weideman, AS ; Wittfeld, K ; Wolf, DH ; Wu, M-J ; Yang, TT ; Yang, K ; Yoncheva, Y ; Yun, J-Y ; Cheng, Y ; Zanetti, MV ; Ziegler, GC ; Franke, B ; Hoogman, M ; Buitelaar, JK ; van Rooij, D ; Andreassen, OA ; Ching, CRK ; Veltman, DJ ; Schmaal, L ; Stein, DJ ; van den Heuvel, OA ; Turner, JA ; van Erp, TGM ; Pausova, Z ; Thompson, PM ; Paus, T (AMER MEDICAL ASSOC, 2021-01)
    IMPORTANCE: Large-scale neuroimaging studies have revealed group differences in cortical thickness across many psychiatric disorders. The underlying neurobiology behind these differences is not well understood. OBJECTIVE: To determine neurobiologic correlates of group differences in cortical thickness between cases and controls in 6 disorders: attention-deficit/hyperactivity disorder (ADHD), autism spectrum disorder (ASD), bipolar disorder (BD), major depressive disorder (MDD), obsessive-compulsive disorder (OCD), and schizophrenia. DESIGN, SETTING, AND PARTICIPANTS: Profiles of group differences in cortical thickness between cases and controls were generated using T1-weighted magnetic resonance images. Similarity between interregional profiles of cell-specific gene expression and those in the group differences in cortical thickness were investigated in each disorder. Next, principal component analysis was used to reveal a shared profile of group difference in thickness across the disorders. Analysis for gene coexpression, clustering, and enrichment for genes associated with these disorders were conducted. Data analysis was conducted between June and December 2019. The analysis included 145 cohorts across 6 psychiatric disorders drawn from the ENIGMA consortium. The numbers of cases and controls in each of the 6 disorders were as follows: ADHD: 1814 and 1602; ASD: 1748 and 1770; BD: 1547 and 3405; MDD: 2658 and 3572; OCD: 2266 and 2007; and schizophrenia: 2688 and 3244. MAIN OUTCOMES AND MEASURES: Interregional profiles of group difference in cortical thickness between cases and controls. RESULTS: A total of 12 721 cases and 15 600 controls, ranging from ages 2 to 89 years, were included in this study. Interregional profiles of group differences in cortical thickness for each of the 6 psychiatric disorders were associated with profiles of gene expression specific to pyramidal (CA1) cells, astrocytes (except for BD), and microglia (except for OCD); collectively, gene-expression profiles of the 3 cell types explain between 25% and 54% of variance in interregional profiles of group differences in cortical thickness. Principal component analysis revealed a shared profile of difference in cortical thickness across the 6 disorders (48% variance explained); interregional profile of this principal component 1 was associated with that of the pyramidal-cell gene expression (explaining 56% of interregional variation). Coexpression analyses of these genes revealed 2 clusters: (1) a prenatal cluster enriched with genes involved in neurodevelopmental (axon guidance) processes and (2) a postnatal cluster enriched with genes involved in synaptic activity and plasticity-related processes. These clusters were enriched with genes associated with all 6 psychiatric disorders. CONCLUSIONS AND RELEVANCE: In this study, shared neurobiologic processes were associated with differences in cortical thickness across multiple psychiatric disorders. These processes implicate a common role of prenatal development and postnatal functioning of the cerebral cortex in these disorders.
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    Brain structural correlates of insomnia severity in 1053 individuals with major depressive disorder: results from the ENIGMA MDD Working Group
    Leerssen, J ; Blanken, TF ; Pozzi, E ; Jahanshad, N ; Aftanas, L ; Andreassen, OA ; Baune, BT ; Brack, I ; Carballedo, A ; Ching, CRK ; Dannlowski, U ; Dohm, K ; Enneking, V ; Filimonova, E ; Fingas, SM ; Frodl, T ; Godlewska, BR ; Goltermann, J ; Gotlib, IH ; Grotegerd, D ; Gruber, O ; Harris, MA ; Hatton, SN ; Hawkins, E ; Hickie, IB ; Jaworska, N ; Kircher, T ; Krug, A ; Lagopoulos, J ; Lemke, H ; Li, M ; MacMaster, FP ; McIntosh, AM ; McLellan, Q ; Meinert, S ; Mwangi, B ; Nenadic, I ; Osipov, E ; Portella, MJ ; Redlich, R ; Repple, J ; Sacchet, MD ; Saemann, PG ; Simulionyte, E ; Soares, JC ; Walter, M ; Watanabe, N ; Whalley, HC ; Yueksel, D ; Veltman, DJ ; Thompson, PM ; Schmaal, L ; Van Someren, EJW (SPRINGERNATURE, 2020-12-08)
    It has been difficult to find robust brain structural correlates of the overall severity of major depressive disorder (MDD). We hypothesized that specific symptoms may better reveal correlates and investigated this for the severity of insomnia, both a key symptom and a modifiable major risk factor of MDD. Cortical thickness, surface area and subcortical volumes were assessed from T1-weighted brain magnetic resonance imaging (MRI) scans of 1053 MDD patients (age range 13-79 years) from 15 cohorts within the ENIGMA MDD Working Group. Insomnia severity was measured by summing the insomnia items of the Hamilton Depression Rating Scale (HDRS). Symptom specificity was evaluated with correlates of overall depression severity. Disease specificity was evaluated in two independent samples comprising 2108 healthy controls, and in 260 clinical controls with bipolar disorder. Results showed that MDD patients with more severe insomnia had a smaller cortical surface area, mostly driven by the right insula, left inferior frontal gyrus pars triangularis, left frontal pole, right superior parietal cortex, right medial orbitofrontal cortex, and right supramarginal gyrus. Associations were specific for insomnia severity, and were not found for overall depression severity. Associations were also specific to MDD; healthy controls and clinical controls showed differential insomnia severity association profiles. The findings indicate that MDD patients with more severe insomnia show smaller surfaces in several frontoparietal cortical areas. While explained variance remains small, symptom-specific associations could bring us closer to clues on underlying biological phenomena of MDD.
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    Mental images of suicide: Theoretical framework and preliminary findings in depressed youth attending outpatient care.
    De Rozario, MR ; Van Velzen, LS ; Davies, P ; Rice, SM ; Davey, CG ; Robinson, J ; Alvarez-Jimenez, M ; Allott, K ; McKechnie, B ; Felmingham, KL ; Schmaal, L (Elsevier BV, 2021-04)
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    Individual deviations from normative models of brain structure in a large cross-sectional schizophrenia cohort
    Lv, J ; Di Biase, M ; Cash, RFH ; Cocchi, L ; Cropley, VL ; Klauser, P ; Tian, Y ; Bayer, J ; Schmaal, L ; Cetin-Karayumak, S ; Rathi, Y ; Pasternak, O ; Bousman, C ; Pantelis, C ; Calamante, F ; Zalesky, A (SPRINGERNATURE, 2021-07)
    The heterogeneity of schizophrenia has defied efforts to derive reproducible and definitive anatomical maps of structural brain changes associated with the disorder. We aimed to map deviations from normative ranges of brain structure for individual patients and evaluate whether the loci of individual deviations recapitulated group-average brain maps of schizophrenia pathology. For each of 48 white matter tracts and 68 cortical regions, normative percentiles of variation in fractional anisotropy (FA) and cortical thickness (CT) were established using diffusion-weighted and structural MRI from healthy adults (n = 195). Individuals with schizophrenia (n = 322) were classified as either within the normative range for healthy individuals of the same age and sex (5-95% percentiles), infra-normal (<5% percentile) or supra-normal (>95% percentile). Repeating this classification for each tract and region yielded a deviation map for each individual. Compared to the healthy comparison group, the schizophrenia group showed widespread reductions in FA and CT, involving virtually all white matter tracts and cortical regions. Paradoxically, however, no more than 15-20% of patients deviated from the normative range for any single tract or region. Furthermore, 79% of patients showed infra-normal deviations for at least one locus (healthy individuals: 59 ± 2%, p < 0.001). Thus, while infra-normal deviations were common among patients, their anatomical loci were highly inconsistent between individuals. Higher polygenic risk for schizophrenia associated with a greater number of regions with infra-normal deviations in CT (r = -0.17, p = 0.006). We conclude that anatomical loci of schizophrenia-related changes are highly heterogeneous across individuals to the extent that group-consensus pathological maps are not representative of most individual patients. Normative modeling can aid in parsing schizophrenia heterogeneity and guiding personalized interventions.