TY - JOUR
T1 - Traces of trauma – a multivariate pattern analysis of childhood trauma, brain structure and clinical phenotypes
AU - Popovic, David
AU - Ruef, Anne
AU - Dwyer, Dominic B.
AU - Antonucci, Linda A.
AU - Eder, Julia
AU - Sanfelici, Rachele
AU - Kambeitz-ilankovic, Lana
AU - Oeztuerk, Oemer Faruk
AU - Dong, Mark S.
AU - Paul, Riya
AU - Paolini, Marco
AU - Hedderich, Dennis
AU - Haidl, Theresa
AU - Kambeitz, Joseph
AU - Ruhrmann, Stephan
AU - Chisholm, Katharine
AU - Schultze-lutter, Frauke
AU - Falkai, Peter
AU - Pergola, Giulio
AU - Blasi, Giuseppe
AU - Bertolino, Alessandro
AU - Lencer, Rebekka
AU - Dannlowski, Udo
AU - Upthegrove, Rachel
AU - Salokangas, Raimo K.r.
AU - Pantelis, Christos
AU - Meisenzahl, Eva
AU - Wood, Stephen J.
AU - Brambilla, Paolo
AU - Borgwardt, Stefan
AU - Koutsouleris, Nikolaos
N1 - © 2020, Elsevier. Licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International http://creativecommons.org/licenses/by-nc-nd/4.0/
PY - 2020/12/1
Y1 - 2020/12/1
N2 - Background: Childhood trauma (CT) is a major yet elusive psychiatric risk factor, whose multidimensional conceptualization and heterogeneous effects on brain morphology might demand advanced mathematical modeling. Therefore, we present an unsupervised machine learning approach to characterize the clinical and neuroanatomical complexity of CT in a larger, transdiagnostic context. Methods: We used a multicenter European cohort of 1076 female and male individuals (discovery: n = 649; replication: n = 427) comprising young, minimally medicated patients with clinical high-risk states for psychosis; patients with recent-onset depression or psychosis; and healthy volunteers. We employed multivariate sparse partial least squares analysis to detect parsimonious associations between combinations of items from the Childhood Trauma Questionnaire and gray matter volume and tested their generalizability via nested cross-validation as well as via external validation. We investigated the associations of these CT signatures with state (functioning, depressivity, quality of life), trait (personality), and sociodemographic levels. Results: We discovered signatures of age-dependent sexual abuse and sex-dependent physical and sexual abuse, as well as emotional trauma, which projected onto gray matter volume patterns in prefronto-cerebellar, limbic, and sensory networks. These signatures were associated with predominantly impaired clinical state- and trait-level phenotypes, while pointing toward an interaction between sexual abuse, age, urbanicity, and education. We validated the clinical profiles for all three CT signatures in the replication sample. Conclusions: Our results suggest distinct multilayered associations between partially age- and sex-dependent patterns of CT, distributed neuroanatomical networks, and clinical profiles. Hence, our study highlights how machine learning approaches can shape future, more fine-grained CT research.
AB - Background: Childhood trauma (CT) is a major yet elusive psychiatric risk factor, whose multidimensional conceptualization and heterogeneous effects on brain morphology might demand advanced mathematical modeling. Therefore, we present an unsupervised machine learning approach to characterize the clinical and neuroanatomical complexity of CT in a larger, transdiagnostic context. Methods: We used a multicenter European cohort of 1076 female and male individuals (discovery: n = 649; replication: n = 427) comprising young, minimally medicated patients with clinical high-risk states for psychosis; patients with recent-onset depression or psychosis; and healthy volunteers. We employed multivariate sparse partial least squares analysis to detect parsimonious associations between combinations of items from the Childhood Trauma Questionnaire and gray matter volume and tested their generalizability via nested cross-validation as well as via external validation. We investigated the associations of these CT signatures with state (functioning, depressivity, quality of life), trait (personality), and sociodemographic levels. Results: We discovered signatures of age-dependent sexual abuse and sex-dependent physical and sexual abuse, as well as emotional trauma, which projected onto gray matter volume patterns in prefronto-cerebellar, limbic, and sensory networks. These signatures were associated with predominantly impaired clinical state- and trait-level phenotypes, while pointing toward an interaction between sexual abuse, age, urbanicity, and education. We validated the clinical profiles for all three CT signatures in the replication sample. Conclusions: Our results suggest distinct multilayered associations between partially age- and sex-dependent patterns of CT, distributed neuroanatomical networks, and clinical profiles. Hence, our study highlights how machine learning approaches can shape future, more fine-grained CT research.
KW - Childhood trauma
KW - MRI
KW - Machine learning
KW - Morphometry
KW - Sparse partial least squares
KW - Transdiagnostic
UR - https://linkinghub.elsevier.com/retrieve/pii/S0006322320316267
UR - http://www.scopus.com/inward/record.url?scp=85089187666&partnerID=8YFLogxK
U2 - 10.1016/j.biopsych.2020.05.020
DO - 10.1016/j.biopsych.2020.05.020
M3 - Article
SN - 0006-3223
VL - 88
SP - 829
EP - 842
JO - Biological Psychiatry
JF - Biological Psychiatry
IS - 11
ER -