Identification of transdiagnostic psychiatric disorder subtypes using unsupervised learning

被引:0
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作者
Helena Pelin
Marcus Ising
Frederike Stein
Susanne Meinert
Tina Meller
Katharina Brosch
Nils R. Winter
Axel Krug
Ramona Leenings
Hannah Lemke
Igor Nenadić
Stefanie Heilmann-Heimbach
Andreas J. Forstner
Markus M. Nöthen
Nils Opel
Jonathan Repple
Julia Pfarr
Kai Ringwald
Simon Schmitt
Katharina Thiel
Lena Waltemate
Alexandra Winter
Fabian Streit
Stephanie Witt
Marcella Rietschel
Udo Dannlowski
Tilo Kircher
Tim Hahn
Bertram Müller-Myhsok
Till F. M. Andlauer
机构
[1] Max Planck Institute of Psychiatry,Department of Psychiatry and Psychotherapy
[2] International Max Planck Research School for Translational Psychiatry,Institute for Translational Psychiatry
[3] Philipps-Universität Marburg,Department of Psychiatry and Psychotherapy
[4] Center for Mind,Institute of Human Genetics
[5] Brain and Behavior (CMBB),Institute of Neuroscience and Medicine (INM
[6] Westfälische Wilhelms-Universität Münster,1)
[7] University of Bonn,Centre for Human Genetics
[8] University of Bonn School of Medicine & University Hospital Bonn,Central Institute of Mental Health, Medical Faculty Mannheim
[9] Research Center Jülich,Institute of Translational Medicine
[10] University of Marburg,Department of Neurology, Klinikum rechts der Isar, School of Medicine
[11] Heidelberg University,Global Computational Biology and Data Sciences
[12] Munich Cluster for Systems Neurology (SyNergy),undefined
[13] University of Liverpool,undefined
[14] Technical University of Munich,undefined
[15] Boehringer Ingelheim Pharma GmbH & Co. KG,undefined
来源
Neuropsychopharmacology | 2021年 / 46卷
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摘要
Psychiatric disorders show heterogeneous symptoms and trajectories, with current nosology not accurately reflecting their molecular etiology and the variability and symptomatic overlap within and between diagnostic classes. This heterogeneity impedes timely and targeted treatment. Our study aimed to identify psychiatric patient clusters that share clinical and genetic features and may profit from similar therapies. We used high-dimensional data clustering on deep clinical data to identify transdiagnostic groups in a discovery sample (N = 1250) of healthy controls and patients diagnosed with depression, bipolar disorder, schizophrenia, schizoaffective disorder, and other psychiatric disorders. We observed five diagnostically mixed clusters and ordered them based on severity. The least impaired cluster 0, containing most healthy controls, showed general well-being. Clusters 1–3 differed predominantly regarding levels of maltreatment, depression, daily functioning, and parental bonding. Cluster 4 contained most patients diagnosed with psychotic disorders and exhibited the highest severity in many dimensions, including medication load. Depressed patients were present in all clusters, indicating that we captured different disease stages or subtypes. We replicated all but the smallest cluster 1 in an independent sample (N = 622). Next, we analyzed genetic differences between clusters using polygenic scores (PGS) and the psychiatric family history. These genetic variables differed mainly between clusters 0 and 4 (prediction area under the receiver operating characteristic curve (AUC) = 81%; significant PGS: cross-disorder psychiatric risk, schizophrenia, and educational attainment). Our results confirm that psychiatric disorders consist of heterogeneous subtypes sharing molecular factors and symptoms. The identification of transdiagnostic clusters advances our understanding of the heterogeneity of psychiatric disorders and may support the development of personalized treatments.
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页码:1895 / 1905
页数:10
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