Psychiatry - Research Publications

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    Multi-site benchmark classification of major depressive disorder using machine learning on cortical and subcortical measures.
    Belov, V ; Erwin-Grabner, T ; Aghajani, M ; Aleman, A ; Amod, AR ; Basgoze, Z ; Benedetti, F ; Besteher, B ; Bülow, R ; Ching, CRK ; Connolly, CG ; Cullen, K ; Davey, CG ; Dima, D ; Dols, A ; Evans, JW ; Fu, CHY ; Gonul, AS ; Gotlib, IH ; Grabe, HJ ; Groenewold, N ; Hamilton, JP ; Harrison, BJ ; Ho, TC ; Mwangi, B ; Jaworska, N ; Jahanshad, N ; Klimes-Dougan, B ; Koopowitz, S-M ; Lancaster, T ; Li, M ; Linden, DEJ ; MacMaster, FP ; Mehler, DMA ; Melloni, E ; Mueller, BA ; Ojha, A ; Oudega, ML ; Penninx, BWJH ; Poletti, S ; Pomarol-Clotet, E ; Portella, MJ ; Pozzi, E ; Reneman, L ; Sacchet, MD ; Sämann, PG ; Schrantee, A ; Sim, K ; Soares, JC ; Stein, DJ ; Thomopoulos, SI ; Uyar-Demir, A ; van der Wee, NJA ; van der Werff, SJA ; Völzke, H ; Whittle, S ; Wittfeld, K ; Wright, MJ ; Wu, M-J ; Yang, TT ; Zarate, C ; Veltman, DJ ; Schmaal, L ; Thompson, PM ; Goya-Maldonado, R ; ENIGMA Major Depressive Disorder working group, (Springer Science and Business Media LLC, 2024-01-11)
    Machine learning (ML) techniques have gained popularity in the neuroimaging field due to their potential for classifying neuropsychiatric disorders. However, the diagnostic predictive power of the existing algorithms has been limited by small sample sizes, lack of representativeness, data leakage, and/or overfitting. Here, we overcome these limitations with the largest multi-site sample size to date (N = 5365) to provide a generalizable ML classification benchmark of major depressive disorder (MDD) using shallow linear and non-linear models. Leveraging brain measures from standardized ENIGMA analysis pipelines in FreeSurfer, we were able to classify MDD versus healthy controls (HC) with a balanced accuracy of around 62%. But after harmonizing the data, e.g., using ComBat, the balanced accuracy dropped to approximately 52%. Accuracy results close to random chance levels were also observed in stratified groups according to age of onset, antidepressant use, number of episodes and sex. Future studies incorporating higher dimensional brain imaging/phenotype features, and/or using more advanced machine and deep learning methods may yield more encouraging prospects.
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    The Study of Ketamine for Youth Depression (SKY-D): study protocol for a randomised controlled trial of low-dose ketamine for young people with major depressive disorder
    Schwartz, OS ; Amminger, P ; Baune, BT ; Bedi, G ; Berk, M ; Cotton, SM ; Daglas-Georgiou, R ; Glozier, N ; Harrison, B ; Hermens, DF ; Jennings, E ; Lagopoulos, J ; Loo, C ; Mallawaarachchi, S ; Martin, D ; Phelan, B ; Read, N ; Rodgers, A ; Schmaal, L ; Somogyi, AA ; Thurston, L ; Weller, A ; Davey, CG (BMC, 2023-10-24)
    BACKGROUND: Existing treatments for young people with severe depression have limited effectiveness. The aim of the Study of Ketamine for Youth Depression (SKY-D) trial is to determine whether a 4-week course of low-dose subcutaneous ketamine is an effective adjunct to treatment-as-usual in young people with major depressive disorder (MDD). METHODS: SKY-D is a double-masked, randomised controlled trial funded by the Australian Government's National Health and Medical Research Council (NHMRC). Participants aged between 16 and 25 years (inclusive) with moderate-to-severe MDD will be randomised to receive either low-dose ketamine (intervention) or midazolam (active control) via subcutaneous injection once per week for 4 weeks. The primary outcome is change in depressive symptoms on the Montgomery-Åsberg Depression Rating Scale (MADRS) after 4 weeks of treatment. Further follow-up assessment will occur at 8 and 26 weeks from treatment commencement to determine whether treatment effects are sustained and to investigate safety outcomes. DISCUSSION: Results from this trial will be important in determining whether low-dose subcutaneous ketamine is an effective treatment for young people with moderate-to-severe MDD. This will be the largest randomised trial to investigate the effects of ketamine to treat depression in young people. TRIAL REGISTRATION: Australian and New Zealand Clinical Trials Registry ID: ACTRN12619000683134. Registered on May 7, 2019. https://www.anzctr.org.au/Trial/Registration/TrialReview.aspx?id=377513 .
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    A brain model of altered self-appraisal in social anxiety disorder.
    Jamieson, AJ ; Harrison, BJ ; Delahoy, R ; Schmaal, L ; Felmingham, KL ; Phillips, L ; Davey, CG (Springer Science and Business Media LLC, 2023-11-11)
    The brain's default mode network has a central role in the processing of information concerning oneself. Dysfunction in this self-referential processing represents a key component of multiple mental health conditions, particularly social anxiety disorder (SAD). This case-control study aimed to clarify alterations to network dynamics present during self-appraisal in SAD participants. A total of 38 adolescents and young adults with SAD and 72 healthy control participants underwent a self-referential processing fMRI task. The task involved two primary conditions of interest: direct self-appraisal (thinking about oneself) and reflected self-appraisal (thinking about how others might think about oneself). Dynamic causal modeling and parametric empirical Bayes were then used to explore differences in the effective connectivity of the default mode network between groups. We observed connectivity differences between SAD and healthy control participants in the reflected self-appraisal but not the direct self-appraisal condition. Specifically, SAD participants exhibited greater excitatory connectivity from the posterior cingulate cortex (PCC) to medial prefrontal cortex (MPFC) and greater inhibitory connectivity from the inferior parietal lobule (IPL) to MPFC. In contrast, SAD participants exhibited reduced intrinsic connectivity in the absence of task modulation. This was illustrated by reduced excitatory connectivity from the PCC to MPFC and reduced inhibitory connectivity from the IPL to MPFC. As such, participants with SAD showed changes to afferent connections to the MPFC which occurred during both reflected self-appraisal as well as intrinsically. The presence of connectivity differences in reflected and not direct self-appraisal is consistent with the characteristic fear of negative social evaluation that is experienced by people with SAD.
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    Inflammatory subgroups of schizophrenia and their association with brain structure: A semi-supervised machine learning examination of heterogeneity
    Lalousis, PA ; Schmaal, L ; Wood, SJ ; Reniers, RLEP ; Cropley, VL ; Watson, A ; Pantelis, C ; Suckling, J ; Barnes, NM ; Pariante, C ; Jones, PB ; Joyce, E ; Barnes, TRE ; Lawrie, SM ; Husain, N ; Dazzan, P ; Deakin, B ; Weickert, CS ; Upthegrove, R (ACADEMIC PRESS INC ELSEVIER SCIENCE, 2023-10)
    OBJECTIVE: Immune system dysfunction is hypothesised to contribute to structural brain changes through aberrant synaptic pruning in schizophrenia. However, evidence is mixed and there is a lack of evidence of inflammation and its effect on grey matter volume (GMV) in patients. We hypothesised that inflammatory subgroups can be identified and that the subgroups will show distinct neuroanatomical and neurocognitive profiles. METHODS: The total sample consisted of 1067 participants (chronic patients with schizophrenia n = 467 and healthy controls (HCs) n = 600) from the Australia Schizophrenia Research Bank (ASRB) dataset, together with 218 recent-onset patients with schizophrenia from the external Benefit of Minocycline on Negative Symptoms of Psychosis: Extent and Mechanism (BeneMin) dataset. HYDRA (HeterogeneitY through DiscRiminant Analysis) was used to separate schizophrenia from HC and define disease-related subgroups based on inflammatory markers. Voxel-based morphometry and inferential statistics were used to explore GMV alterations and neurocognitive deficits in these subgroups. RESULTS: An optimal clustering solution revealed five main schizophrenia groups separable from HC: Low Inflammation, Elevated CRP, Elevated IL-6/IL-8, Elevated IFN-γ, and Elevated IL-10 with an adjusted Rand index of 0.573. When compared with the healthy controls, the IL-6/IL-8 cluster showed the most widespread, including the anterior cingulate, GMV reduction. The IFN-γ inflammation cluster showed the least GMV reduction and impairment of cognitive performance. The CRP and the Low Inflammation clusters dominated in the younger external dataset. CONCLUSIONS: Inflammation in schizophrenia may not be merely a case of low vs high, but rather there are pluripotent, heterogeneous mechanisms at play which could be reliably identified based on accessible, peripheral measures. This could inform the successful development of targeted interventions.
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    Comorbidity between major depressive disorder and physical diseases: a comprehensive review of epidemiology, mechanisms and management
    Berk, M ; Kohler-Forsberg, O ; Turner, M ; Penninx, BWJH ; Wrobel, A ; Firth, J ; Loughman, A ; Reavley, NJ ; Mcgrath, JJ ; Momen, NC ; Plana-Ripoll, O ; O'Neil, A ; Siskind, D ; Williams, LJ ; Carvalho, AF ; Schmaal, L ; Walker, AJ ; Dean, O ; Walder, K ; Berk, L ; Dodd, S ; Yung, AR ; Marx, W (Wiley, 2023-10)
    Populations with common physical diseases - such as cardiovascular diseases, cancer and neurodegenerative disorders - experience substantially higher rates of major depressive disorder (MDD) than the general population. On the other hand, people living with MDD have a greater risk for many physical diseases. This high level of comorbidity is associated with worse outcomes, reduced adherence to treatment, increased mortality, and greater health care utilization and costs. Comorbidity can also result in a range of clinical challenges, such as a more complicated therapeutic alliance, issues pertaining to adaptive health behaviors, drug-drug interactions and adverse events induced by medications used for physical and mental disorders. Potential explanations for the high prevalence of the above comorbidity involve shared genetic and biological pathways. These latter include inflammation, the gut microbiome, mitochondrial function and energy metabolism, hypothalamic-pituitary-adrenal axis dysregulation, and brain structure and function. Furthermore, MDD and physical diseases have in common several antecedents related to social factors (e.g., socioeconomic status), lifestyle variables (e.g., physical activity, diet, sleep), and stressful live events (e.g., childhood trauma). Pharmacotherapies and psychotherapies are effective treatments for comorbid MDD, and the introduction of lifestyle interventions as well as collaborative care models and digital technologies provide promising strategies for improving management. This paper aims to provide a detailed overview of the epidemiology of the comorbidity of MDD and specific physical diseases, including prevalence and bidirectional risk; of shared biological pathways potentially implicated in the pathogenesis of MDD and common physical diseases; of socio-environmental factors that serve as both shared risk and protective factors; and of management of MDD and physical diseases, including prevention and treatment. We conclude with future directions and emerging research related to optimal care of people with comorbid MDD and physical diseases.
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    Concurrent Validity and Reliability of Suicide Risk Assessment Instruments: A Meta-Analysis of 20 Instruments Across 27 International Cohorts
    Campos, AI ; Van Velzen, LS ; Veltman, DJ ; Pozzi, E ; Ambrogi, S ; Ballard, ED ; Banaj, N ; Basgoeze, Z ; Bellow, S ; Benedetti, F ; Bollettini, I ; Brosch, K ; Canales-Rodriguez, EJ ; Clarke-Rubright, EK ; Colic, L ; Connolly, CG ; Courtet, P ; Cullen, KR ; Dannlowski, U ; Dauvermann, MR ; Davey, CG ; Deverdun, J ; Dohm, K ; Erwin-Grabner, T ; Goya-Maldonado, R ; Fani, N ; Fortea, L ; Fuentes-Claramonte, P ; Gonul, AS ; Gotlib, IH ; Grotegerd, D ; Harris, MA ; Harrison, BJ ; Haswell, CC ; Hawkins, EL ; Hill, D ; Hirano, Y ; Ho, TC ; Jollant, F ; Jovanovic, T ; Kircher, T ; Klimes-Dougan, B ; le Bars, E ; Lochner, C ; McIntosh, AM ; Meinert, S ; Mekawi, Y ; Melloni, E ; Mitchell, P ; Morey, RA ; Nakagawa, A ; Nenadic, I ; Olie, E ; Pereira, F ; Phillips, RD ; Piras, F ; Poletti, S ; Pomarol-Clotet, E ; Radua, J ; Ressler, KJ ; Roberts, G ; Rodriguez-Cano, E ; Sacchet, MD ; Salvador, R ; Sandu, A-L ; Shimizu, E ; Singh, A ; Spalletta, G ; Steele, JD ; Stein, DJ ; Stein, F ; Stevens, JS ; Teresi, GI ; Uyar-Demir, A ; van der Wee, NJ ; van der Werff, SJ ; van Rooij, SJH ; Vecchio, D ; Verdolini, N ; Vieta, E ; Waiter, GD ; Whalley, H ; Whittle, SL ; Yang, TT ; Zarate Jr, CA ; Thompson, PM ; Jahanshad, N ; van Harmelen, A-L ; Blumberg, HP ; Schmaal, L ; Renteria, ME (AMER PSYCHOLOGICAL ASSOC, 2023-03)
    OBJECTIVE: A major limitation of current suicide research is the lack of power to identify robust correlates of suicidal thoughts or behavior. Variation in suicide risk assessment instruments used across cohorts may represent a limitation to pooling data in international consortia. METHOD: Here, we examine this issue through two approaches: (a) an extensive literature search on the reliability and concurrent validity of the most commonly used instruments and (b) by pooling data (N ∼ 6,000 participants) from cohorts from the Enhancing NeuroImaging Genetics Through Meta-Analysis (ENIGMA) Major Depressive Disorder and ENIGMA-Suicidal Thoughts and Behaviour working groups, to assess the concurrent validity of instruments currently used for assessing suicidal thoughts or behavior. RESULTS: We observed moderate-to-high correlations between measures, consistent with the wide range (κ range: 0.15-0.97; r range: 0.21-0.94) reported in the literature. Two common multi-item instruments, the Columbia Suicide Severity Rating Scale and the Beck Scale for Suicidal Ideation were highly correlated with each other (r = 0.83). Sensitivity analyses identified sources of heterogeneity such as the time frame of the instrument and whether it relies on self-report or a clinical interview. Finally, construct-specific analyses suggest that suicide ideation items from common psychiatric questionnaires are most concordant with the suicide ideation construct of multi-item instruments. CONCLUSIONS: Our findings suggest that multi-item instruments provide valuable information on different aspects of suicidal thoughts or behavior but share a modest core factor with single suicidal ideation items. Retrospective, multisite collaborations including distinct instruments should be feasible provided they harmonize across instruments or focus on specific constructs of suicidality. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
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    The Role of Educational Attainment and Brain Morphology in Major Depressive Disorder: Findings From the ENIGMA Major Depressive Disorder Consortium
    Whittle, S ; Rakesh, D ; Schmaal, L ; Veltman, DJ ; Thompson, PM ; Singh, A ; Gonul, AS ; Aleman, A ; Demir, AU ; Krug, A ; Mwangi, B ; Kramer, B ; Baune, BT ; Stein, DJ ; Grotegerd, D ; Pomarol-Clotet, E ; Rodriguez-Cano, E ; Melloni, E ; Benedetti, F ; Stein, F ; Grabe, HJ ; Volzke, H ; Gotlib, IH ; Nenadic, I ; Soares, JC ; Repple, J ; Sim, K ; Brosch, K ; Wittfeld, K ; Berger, K ; Hermesdorf, M ; Portella, MJ ; Sacchet, MD ; Wu, M-J ; Opel, N ; Groenewold, NA ; Gruber, O ; Fuentes-Claramonte, P ; Salvador, R ; Goya-Maldonado, R ; Sarro, S ; Poletti, S ; Meinert, SL ; Kircher, T ; Dannlowski, U ; Pozzi, E (AMER PSYCHOLOGICAL ASSOC, 2022-08)
    Brain structural abnormalities and low educational attainment are consistently associated with major depressive disorder (MDD), yet there has been little research investigating the complex interaction of these factors. Brain structural alterations may represent a vulnerability or differential susceptibility marker, and in the context of low educational attainment, predict MDD. We tested this moderation model in a large multisite sample of 1958 adults with MDD and 2921 controls (aged 18 to 86) from the ENIGMA MDD working group. Using generalized linear mixed models and within-sample split-half replication, we tested whether brain structure interacted with educational attainment to predict MDD status. Analyses revealed that cortical thickness in a number of occipital, parietal, and frontal regions significantly interacted with education to predict MDD. For the majority of regions, models suggested a differential susceptibility effect, whereby thicker cortex was more likely to predict MDD in individuals with low educational attainment, but less likely to predict MDD in individuals with high educational attainment. Findings suggest that greater thickness of brain regions subserving visuomotor and social-cognitive functions confers susceptibility to MDD, dependent on level of educational attainment. Longitudinal work, however, is ultimately needed to establish whether cortical thickness represents a preexisting susceptibility marker. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
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    Accommodating site variation in neuroimaging data using normative and hierarchical Bayesian models
    Bayer, JMM ; Dinga, R ; Kia, SM ; Kottaram, AR ; Wolfers, T ; Lv, J ; Zalesky, A ; Schmaal, L ; Marquand, A (ACADEMIC PRESS INC ELSEVIER SCIENCE, 2022-10-29)
    The potential of normative modeling to make individualized predictions from neuroimaging data has enabled inferences that go beyond the case-control approach. However, site effects are often confounded with variables of interest in a complex manner and can bias estimates of normative models, which has impeded the application of normative models to large multi-site neuroimaging data sets. In this study, we suggest accommodating for these site effects by including them as random effects in a hierarchical Bayesian model. We compared the performance of a linear and a non-linear hierarchical Bayesian model in modeling the effect of age on cortical thickness. We used data of 570 healthy individuals from the ABIDE (autism brain imaging data exchange) data set in our experiments. In addition, we used data from individuals with autism to test whether our models are able to retain clinically useful information while removing site effects. We compared the proposed single stage hierarchical Bayesian method to several harmonization techniques commonly used to deal with additive and multiplicative site effects using a two stage regression, including regressing out site and harmonizing for site with ComBat, both with and without explicitly preserving variance caused by age and sex as biological variation of interest, and with a non-linear version of ComBat. In addition, we made predictions from raw data, in which site has not been accommodated for. The proposed hierarchical Bayesian method showed the best predictive performance according to multiple metrics. Beyond that, the resulting z-scores showed little to no residual site effects, yet still retained clinically useful information. In contrast, performance was particularly poor for the regression model and the ComBat model in which age and sex were not explicitly modeled. In all two stage harmonization models, predictions were poorly scaled, suffering from a loss of more than 90% of the original variance. Our results show the value of hierarchical Bayesian regression methods for accommodating site variation in neuroimaging data, which provides an alternative to harmonization techniques. While the approach we propose may have broad utility, our approach is particularly well suited to normative modeling where the primary interest is in accurate modeling of inter-subject variation and statistical quantification of deviations from a reference model.
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    Virtual Ontogeny of Cortical Growth Preceding Mental Illness
    Patel, Y ; Shin, J ; Abe, C ; Agartz, I ; Alloza, C ; Alnaes, D ; Ambrogi, S ; Antonucci, LA ; Arango, C ; Arolt, V ; Auzias, G ; Ayesa-Arriola, R ; Banaj, N ; Banaschewski, T ; Bandeira, C ; Basgoze, Z ; Cupertino, RB ; Bau, CHD ; Bauer, J ; Baumeister, S ; Bernardoni, F ; Bertolino, A ; del Mar Bonnin, C ; Brandeis, D ; Brem, S ; Bruggemann, J ; Bulow, R ; Bustillo, JR ; Calderoni, S ; Calvo, R ; Canales-Rodriguez, EJ ; Cannon, DM ; Carmona, S ; Carr, VJ ; Catts, SV ; Chenji, S ; Chew, QH ; Coghill, D ; Connolly, CG ; Conzelmann, A ; Craven, AR ; Crespo-Facorro, B ; Cullen, K ; Dahl, A ; Dannlowski, U ; Davey, CG ; Deruelle, C ; Diaz-Caneja, CM ; Dohm, K ; Ehrlich, S ; Epstein, J ; Erwin-Grabner, T ; Eyler, LT ; Fedor, J ; Fitzgerald, J ; Foran, W ; Ford, JM ; Fortea, L ; Fuentes-Claramonte, P ; Fullerton, J ; Furlong, L ; Gallagher, L ; Gao, B ; Gao, S ; Goikolea, JM ; Gotlib, I ; Goya-Maldonado, R ; Grabe, HJ ; Green, M ; Grevet, EH ; Groenewold, NA ; Grotegerd, D ; Gruber, O ; Haavik, J ; Hahn, T ; Harrison, BJ ; Heindel, W ; Henskens, F ; Heslenfeld, DJ ; Hilland, E ; Hoekstra, PJ ; Hohmann, S ; Holz, N ; Howells, FM ; Ipser, JC ; Jahanshad, N ; Jakobi, B ; Jansen, A ; Janssen, J ; Jonassen, R ; Kaiser, A ; Kaleda, V ; Karantonis, J ; King, JA ; Kircher, T ; Kochunov, P ; Koopowitz, S-M ; Landen, M ; Landro, NI ; Lawrie, S ; Lebedeva, I ; Luna, B ; Lundervold, AJ ; MacMaster, FP ; Maglanoc, LA ; Mathalon, DH ; McDonald, C ; McIntosh, A ; Meinert, S ; Michie, PT ; Mitchell, P ; Moreno-Alcazar, A ; Mowry, B ; Muratori, F ; Nabulsi, L ; Nenadic, I ; Tuura, RO ; Oosterlaan, J ; Overs, B ; Pantelis, C ; Parellada, M ; Pariente, JC ; Pauli, P ; Pergola, G ; Piarulli, FM ; Picon, F ; Piras, F ; Pomarol-Clotet, E ; Pretus, C ; Quide, Y ; Radua, J ; Ramos-Quiroga, JA ; Rasser, PE ; Reif, A ; Retico, A ; Roberts, G ; Rossell, S ; Rovaris, DL ; Rubia, K ; Sacchet, M ; Salavert, J ; Salvador, R ; Sarro, S ; Sawa, A ; Schall, U ; Scott, R ; Selvaggi, P ; Silk, T ; Sim, K ; Skoch, A ; Spalletta, G ; Spaniel, F ; Stein, DJ ; Steinstrater, O ; Stolicyn, A ; Takayanagi, Y ; Tamm, L ; Tavares, M ; Teumer, A ; Thiel, K ; Thomopoulos, SI ; Tomecek, D ; Tomyshev, AS ; Tordesillas-Gutierrez, D ; Tosetti, M ; Uhlmann, A ; Van Rheenen, T ; Vazquez-Bourgon, J ; Vernooij, MW ; Vieta, E ; Vilarroya, O ; Weickert, C ; Weickert, T ; Westlye, LT ; Whalley, H ; Willinger, D ; Winter, A ; Wittfeld, K ; Yang, TT ; Yoncheva, Y ; Zijlmans, JL ; Hoogman, M ; Franke, B ; van Rooij, D ; Buitelaar, J ; Ching, CRK ; Andreassen, OA ; Pozzi, E ; Veltman, D ; Schmaal, L ; van Erp, TGM ; Turner, J ; Castellanos, FX ; Pausova, Z ; Thompson, P ; Paus, T (ELSEVIER SCIENCE INC, 2022-08-15)
    BACKGROUND: Morphology of the human cerebral cortex differs across psychiatric disorders, with neurobiology and developmental origins mostly undetermined. Deviations in the tangential growth of the cerebral cortex during pre/perinatal periods may be reflected in individual variations in cortical surface area later in life. METHODS: Interregional profiles of group differences in surface area between cases and controls were generated using T1-weighted magnetic resonance imaging from 27,359 individuals including those with attention-deficit/hyperactivity disorder, autism spectrum disorder, bipolar disorder, major depressive disorder, schizophrenia, and high general psychopathology (through the Child Behavior Checklist). Similarity of interregional profiles of group differences in surface area and prenatal cell-specific gene expression was assessed. RESULTS: Across the 11 cortical regions, group differences in cortical area for attention-deficit/hyperactivity disorder, schizophrenia, and Child Behavior Checklist were dominant in multimodal association cortices. The same interregional profiles were also associated with interregional profiles of (prenatal) gene expression specific to proliferative cells, namely radial glia and intermediate progenitor cells (greater expression, larger difference), as well as differentiated cells, namely excitatory neurons and endothelial and mural cells (greater expression, smaller difference). Finally, these cell types were implicated in known pre/perinatal risk factors for psychosis. Genes coexpressed with radial glia were enriched with genes implicated in congenital abnormalities, birth weight, hypoxia, and starvation. Genes coexpressed with endothelial and mural genes were enriched with genes associated with maternal hypertension and preterm birth. CONCLUSIONS: Our findings support a neurodevelopmental model of vulnerability to mental illness whereby prenatal risk factors acting through cell-specific processes lead to deviations from typical brain development during pregnancy.
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    Brain ageing in schizophrenia: evidence from 26 international cohorts via the ENIGMA Schizophrenia consortium
    Constantinides, C ; Han, LKM ; Alloza, C ; Antonucci, LA ; Arango, C ; Ayesa-Arriola, R ; Banaj, N ; Bertolino, A ; Borgwardt, S ; Bruggemann, J ; Bustillo, J ; Bykhovski, O ; Calhoun, V ; Carr, V ; Catts, S ; Chung, Y-C ; Crespo-Facorro, B ; Diaz-Caneja, CM ; Donohoe, G ; Du Plessis, S ; Edmond, J ; Ehrlich, S ; Emsley, R ; Eyler, LT ; Fuentes-Claramonte, P ; Georgiadis, F ; Green, M ; Guerrero-Pedraza, A ; Ha, M ; Hahn, T ; Henskens, FA ; Holleran, L ; Homan, S ; Homan, P ; Jahanshad, N ; Janssen, J ; Ji, E ; Kaiser, S ; Kaleda, V ; Kim, M ; Kim, W-S ; Kirschner, M ; Kochunov, P ; Kwak, YB ; Kwon, JS ; Lebedeva, I ; Liu, J ; Mitchie, P ; Michielse, S ; Mothersill, D ; Mowry, B ; de la Foz, VO-G ; Pantelis, C ; Pergola, G ; Piras, F ; Pomarol-Clotet, E ; Preda, A ; Quide, Y ; Rasser, PE ; Rootes-Murdy, K ; Salvador, R ; Sangiuliano, M ; Sarro, S ; Schall, U ; Schmidt, A ; Scott, RJ ; Selvaggi, P ; Sim, K ; Skoch, A ; Spalletta, G ; Spaniel, F ; Thomopoulos, S ; Tomecek, D ; Tomyshev, AS ; Tordesillas-Gutierrez, D ; van Amelsvoort, T ; Vazquez-Bourgon, J ; Vecchio, D ; Voineskos, A ; Weickert, CS ; Weickert, T ; Thompson, PM ; Schmaal, L ; van Erp, TGM ; Turner, J ; Cole, JH ; Dima, D ; Walton, E (SPRINGERNATURE, 2023-03)
    Schizophrenia (SZ) is associated with an increased risk of life-long cognitive impairments, age-related chronic disease, and premature mortality. We investigated evidence for advanced brain ageing in adult SZ patients, and whether this was associated with clinical characteristics in a prospective meta-analytic study conducted by the ENIGMA Schizophrenia Working Group. The study included data from 26 cohorts worldwide, with a total of 2803 SZ patients (mean age 34.2 years; range 18-72 years; 67% male) and 2598 healthy controls (mean age 33.8 years, range 18-73 years, 55% male). Brain-predicted age was individually estimated using a model trained on independent data based on 68 measures of cortical thickness and surface area, 7 subcortical volumes, lateral ventricular volumes and total intracranial volume, all derived from T1-weighted brain magnetic resonance imaging (MRI) scans. Deviations from a healthy brain ageing trajectory were assessed by the difference between brain-predicted age and chronological age (brain-predicted age difference [brain-PAD]). On average, SZ patients showed a higher brain-PAD of +3.55 years (95% CI: 2.91, 4.19; I2 = 57.53%) compared to controls, after adjusting for age, sex and site (Cohen's d = 0.48). Among SZ patients, brain-PAD was not associated with specific clinical characteristics (age of onset, duration of illness, symptom severity, or antipsychotic use and dose). This large-scale collaborative study suggests advanced structural brain ageing in SZ. Longitudinal studies of SZ and a range of mental and somatic health outcomes will help to further evaluate the clinical implications of increased brain-PAD and its ability to be influenced by interventions.