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Reproducible Grey Matter Patterns Index a Multivariate, Global Alteration of Brain Structure in Schizophrenia and Bipolar Disorder

Translational psychiatry(2019)SCI 2区

Department of Psychiatry and Psychotherapy | Norwegian Centre for Mental Disorders Research (NORMENT) | Department of Basic Medical Sciences | Department of Human Genetics | Maastricht University Medical Center | Centre for Population Neuroscience and Stratified Medicine (PONS) and MRC-SGDP Centre | Brain Innovation B.V. | Section of Psychiatry | Department of Neurosciences and Mental Health | Donders Institute for Brain | Centre for Psychiatry Research | Department of Psychiatry | Neuroscience and Mental Health Research Institute | Department of Cognitive Psychology | Department of Clinical Psychology | Division of Psychiatry | Institute of Human Genetics | Division of Molecular Neuroscience | Transfaculty Research Platform Molecular and Cognitive Neuroscience | Department of Genetic Epidemiology in Psychiatry

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Abstract
Schizophrenia is a severe mental disorder characterized by numerous subtle changes in brain structure and function. Machine learning allows exploring the utility of combining structural and functional brain magnetic resonance imaging (MRI) measures for diagnostic application, but this approach has been hampered by sample size limitations and lack of differential diagnostic data. Here, we performed a multi-site machine learning analysis to explore brain structural patterns of T1 MRI data in 2668 individuals with schizophrenia, bipolar disorder or attention-deficit/ hyperactivity disorder, and healthy controls. We found reproducible changes of structural parameters in schizophrenia that yielded a classification accuracy of up to 76% and provided discrimination from ADHD, through it lacked specificity against bipolar disorder. The observed changes largely indexed distributed grey matter alterations that could be represented through a combination of several global brain-structural parameters. This multi-site machine learning study identified a brain-structural signature that could reproducibly differentiate schizophrenia patients from controls, but lacked specificity against bipolar disorder. While this currently limits the clinical utility of the identified signature, the present study highlights that the underlying alterations index substantial global grey matter changes in psychotic disorders, reflecting the biological similarity of these conditions, and provide a roadmap for future exploration of brain structural alterations in psychiatric patients.
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ADHD,Bipolar disorder,Diagnostic markers,Schizophrenia,Medicine/Public Health,general,Psychiatry,Neurosciences,Behavioral Sciences,Pharmacotherapy,Biological Psychology
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