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O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES
BACKGROUND: Childhood maltreatment (CM) is a major psychiatric risk factor and leads to long-lasting physical and mental health implications throughout the affected individual’s lifespan. Nonetheless, the neuroanatomical correlates of CM and their specific clinical impact remain elusive. This might...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7233991/ http://dx.doi.org/10.1093/schbul/sbaa028.046 |
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author | Popovic, David Ruef, Anne Dwyer, Dominic B Hedderich, Dennis Antonucci, Linda A Kambeitz-Ilankovic, Lana Öztürk, Ömer F Dong, Mark S Paul, Riya Kambeitz, Joseph Ruhrmann, Stephan Chisholm, Katharine Schultze-Lutter, Frauke Falkai, Peter Bertolino, Alessandro Lencer, Rebekka Dannlowski, Udo Upthegrove, Rachel Salokangas, Raimo K R Pantelis, Christos Meisenzahl, Eva Wood, Stephen Brambilla, Paolo Borgwardt, Stefan Koutsouleris, Nikolaos |
author_facet | Popovic, David Ruef, Anne Dwyer, Dominic B Hedderich, Dennis Antonucci, Linda A Kambeitz-Ilankovic, Lana Öztürk, Ömer F Dong, Mark S Paul, Riya Kambeitz, Joseph Ruhrmann, Stephan Chisholm, Katharine Schultze-Lutter, Frauke Falkai, Peter Bertolino, Alessandro Lencer, Rebekka Dannlowski, Udo Upthegrove, Rachel Salokangas, Raimo K R Pantelis, Christos Meisenzahl, Eva Wood, Stephen Brambilla, Paolo Borgwardt, Stefan Koutsouleris, Nikolaos |
author_sort | Popovic, David |
collection | PubMed |
description | BACKGROUND: Childhood maltreatment (CM) is a major psychiatric risk factor and leads to long-lasting physical and mental health implications throughout the affected individual’s lifespan. Nonetheless, the neuroanatomical correlates of CM and their specific clinical impact remain elusive. This might be attributed to the complex, multidimensional nature of CM as well as to the restrictions of traditional analysis pipelines using nosological grouping, univariate analysis and region-of-interest approaches. To overcome these issues, we present a novel transdiagnostic and naturalistic machine learning approach towards a better and more comprehensive understanding of the clinical and neuroanatomical complexity of CM. METHODS: We acquired our dataset from the multi-center European PRONIA cohort (www.pronia.eu). Specifically, we selected 649 male and female individuals, comprising young, minimally medicated patients with clinical high-risk states for psychosis as well as recent-onset of depression or psychosis and healthy volunteers. As part of our analysis approach, we created a new Matlab Toolbox, which performs multivariate Sparse Partial Least Squares Analysis in a robust machine learning framework. We employed this algorithm to detect multi-layered associations between combinations of items from the Childhood Trauma Questionnaire (CTQ) and grey matter volume (GMV) and assessed their generalizability via nested cross-validation. The clinical relevance of these CM signatures was assessed by correlating them to a wide range of clinical measurements, including current functioning (GAF, GF), depressivity (BDI), quality of life (WHOQOL-BREF) and personality traits (NEO-FFI). RESULTS: Overall, we detected three distinct signatures of sexual, physical and emotional maltreatment. The first signature consisted of an age-dependent sexual abuse pattern and a corresponding GMV pattern along the prefronto-thalamo-cerebellar axis. The second signature yielded a sex-dependent physical and sexual abuse pattern with a corresponding GMV pattern in parietal, occipital and subcortical regions. The third signature was a global emotional trauma signature, independent of age or sex, and projected to a brain structural pattern in sensory and limbic brain regions. Regarding the clinical impact of these signatures, the emotional trauma signature was most strongly associated with massively impaired state- and trait-level characteristics. Both on a phenomenological and on a brain structural level, the emotional trauma pattern was significantly correlated with lower levels of functioning, higher depression scores, decreased quality of life and maladaptive personality traits. DISCUSSION: Our findings deliver multimodal, data-driven evidence for a differential impact of sexual, physical and emotional trauma on brain structure and clinical state- and trait-level phenotypes. They also highlight the multidimensional nature of CM, which consists of multiple layers of highly complex trauma-brain patterns. In broader terms, our study emphasizes the potential of machine learning approaches in generating novel insights into long-standing psychiatric topics. |
format | Online Article Text |
id | pubmed-7233991 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-72339912020-05-23 O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES Popovic, David Ruef, Anne Dwyer, Dominic B Hedderich, Dennis Antonucci, Linda A Kambeitz-Ilankovic, Lana Öztürk, Ömer F Dong, Mark S Paul, Riya Kambeitz, Joseph Ruhrmann, Stephan Chisholm, Katharine Schultze-Lutter, Frauke Falkai, Peter Bertolino, Alessandro Lencer, Rebekka Dannlowski, Udo Upthegrove, Rachel Salokangas, Raimo K R Pantelis, Christos Meisenzahl, Eva Wood, Stephen Brambilla, Paolo Borgwardt, Stefan Koutsouleris, Nikolaos Schizophr Bull Oral Session: Digital Health/Methods BACKGROUND: Childhood maltreatment (CM) is a major psychiatric risk factor and leads to long-lasting physical and mental health implications throughout the affected individual’s lifespan. Nonetheless, the neuroanatomical correlates of CM and their specific clinical impact remain elusive. This might be attributed to the complex, multidimensional nature of CM as well as to the restrictions of traditional analysis pipelines using nosological grouping, univariate analysis and region-of-interest approaches. To overcome these issues, we present a novel transdiagnostic and naturalistic machine learning approach towards a better and more comprehensive understanding of the clinical and neuroanatomical complexity of CM. METHODS: We acquired our dataset from the multi-center European PRONIA cohort (www.pronia.eu). Specifically, we selected 649 male and female individuals, comprising young, minimally medicated patients with clinical high-risk states for psychosis as well as recent-onset of depression or psychosis and healthy volunteers. As part of our analysis approach, we created a new Matlab Toolbox, which performs multivariate Sparse Partial Least Squares Analysis in a robust machine learning framework. We employed this algorithm to detect multi-layered associations between combinations of items from the Childhood Trauma Questionnaire (CTQ) and grey matter volume (GMV) and assessed their generalizability via nested cross-validation. The clinical relevance of these CM signatures was assessed by correlating them to a wide range of clinical measurements, including current functioning (GAF, GF), depressivity (BDI), quality of life (WHOQOL-BREF) and personality traits (NEO-FFI). RESULTS: Overall, we detected three distinct signatures of sexual, physical and emotional maltreatment. The first signature consisted of an age-dependent sexual abuse pattern and a corresponding GMV pattern along the prefronto-thalamo-cerebellar axis. The second signature yielded a sex-dependent physical and sexual abuse pattern with a corresponding GMV pattern in parietal, occipital and subcortical regions. The third signature was a global emotional trauma signature, independent of age or sex, and projected to a brain structural pattern in sensory and limbic brain regions. Regarding the clinical impact of these signatures, the emotional trauma signature was most strongly associated with massively impaired state- and trait-level characteristics. Both on a phenomenological and on a brain structural level, the emotional trauma pattern was significantly correlated with lower levels of functioning, higher depression scores, decreased quality of life and maladaptive personality traits. DISCUSSION: Our findings deliver multimodal, data-driven evidence for a differential impact of sexual, physical and emotional trauma on brain structure and clinical state- and trait-level phenotypes. They also highlight the multidimensional nature of CM, which consists of multiple layers of highly complex trauma-brain patterns. In broader terms, our study emphasizes the potential of machine learning approaches in generating novel insights into long-standing psychiatric topics. Oxford University Press 2020-05 2020-05-18 /pmc/articles/PMC7233991/ http://dx.doi.org/10.1093/schbul/sbaa028.046 Text en © The Author(s) 2020. Published by Oxford University Press on behalf of the Maryland Psychiatric Research Center. http://creativecommons.org/licenses/by-nc/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com |
spellingShingle | Oral Session: Digital Health/Methods Popovic, David Ruef, Anne Dwyer, Dominic B Hedderich, Dennis Antonucci, Linda A Kambeitz-Ilankovic, Lana Öztürk, Ömer F Dong, Mark S Paul, Riya Kambeitz, Joseph Ruhrmann, Stephan Chisholm, Katharine Schultze-Lutter, Frauke Falkai, Peter Bertolino, Alessandro Lencer, Rebekka Dannlowski, Udo Upthegrove, Rachel Salokangas, Raimo K R Pantelis, Christos Meisenzahl, Eva Wood, Stephen Brambilla, Paolo Borgwardt, Stefan Koutsouleris, Nikolaos O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title | O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title_full | O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title_fullStr | O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title_full_unstemmed | O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title_short | O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES |
title_sort | o8.5. signs of adversity - a novel machine learning approach to childhood trauma, brain structure and clinical profiles |
topic | Oral Session: Digital Health/Methods |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7233991/ http://dx.doi.org/10.1093/schbul/sbaa028.046 |
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