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Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships
BACKGROUND: In 2009, the National Institute of Mental Health launched the Research Domain Criteria, an attempt to move beyond diagnostic categories and ground psychiatry within neurobiological constructs that combine different levels of measures (e.g., brain imaging and behavior). Statistical method...
Autores principales: | , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6970221/ https://www.ncbi.nlm.nih.gov/pubmed/32040421 http://dx.doi.org/10.1016/j.biopsych.2019.12.001 |
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author | Mihalik, Agoston Ferreira, Fabio S. Moutoussis, Michael Ziegler, Gabriel Adams, Rick A. Rosa, Maria J. Prabhu, Gita de Oliveira, Leticia Pereira, Mirtes Bullmore, Edward T. Fonagy, Peter Goodyer, Ian M. Jones, Peter B. Shawe-Taylor, John Dolan, Raymond Mourão-Miranda, Janaina |
author_facet | Mihalik, Agoston Ferreira, Fabio S. Moutoussis, Michael Ziegler, Gabriel Adams, Rick A. Rosa, Maria J. Prabhu, Gita de Oliveira, Leticia Pereira, Mirtes Bullmore, Edward T. Fonagy, Peter Goodyer, Ian M. Jones, Peter B. Shawe-Taylor, John Dolan, Raymond Mourão-Miranda, Janaina |
author_sort | Mihalik, Agoston |
collection | PubMed |
description | BACKGROUND: In 2009, the National Institute of Mental Health launched the Research Domain Criteria, an attempt to move beyond diagnostic categories and ground psychiatry within neurobiological constructs that combine different levels of measures (e.g., brain imaging and behavior). Statistical methods that can integrate such multimodal data, however, are often vulnerable to overfitting, poor generalization, and difficulties in interpreting the results. METHODS: We propose an innovative machine learning framework combining multiple holdouts and a stability criterion with regularized multivariate techniques, such as sparse partial least squares and kernel canonical correlation analysis, for identifying hidden dimensions of cross-modality relationships. To illustrate the approach, we investigated structural brain–behavior associations in an extensively phenotyped developmental sample of 345 participants (312 healthy and 33 with clinical depression). The brain data consisted of whole-brain voxel-based gray matter volumes, and the behavioral data included item-level self-report questionnaires and IQ and demographic measures. RESULTS: Both sparse partial least squares and kernel canonical correlation analysis captured two hidden dimensions of brain–behavior relationships: one related to age and drinking and the other one related to depression. The applied machine learning framework indicates that these results are stable and generalize well to new data. Indeed, the identified brain–behavior associations are in agreement with previous findings in the literature concerning age, alcohol use, and depression-related changes in brain volume. CONCLUSIONS: Multivariate techniques (such as sparse partial least squares and kernel canonical correlation analysis) embedded in our novel framework are promising tools to link behavior and/or symptoms to neurobiology and thus have great potential to contribute to a biologically grounded definition of psychiatric disorders. |
format | Online Article Text |
id | pubmed-6970221 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-69702212020-02-15 Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships Mihalik, Agoston Ferreira, Fabio S. Moutoussis, Michael Ziegler, Gabriel Adams, Rick A. Rosa, Maria J. Prabhu, Gita de Oliveira, Leticia Pereira, Mirtes Bullmore, Edward T. Fonagy, Peter Goodyer, Ian M. Jones, Peter B. Shawe-Taylor, John Dolan, Raymond Mourão-Miranda, Janaina Biol Psychiatry Article BACKGROUND: In 2009, the National Institute of Mental Health launched the Research Domain Criteria, an attempt to move beyond diagnostic categories and ground psychiatry within neurobiological constructs that combine different levels of measures (e.g., brain imaging and behavior). Statistical methods that can integrate such multimodal data, however, are often vulnerable to overfitting, poor generalization, and difficulties in interpreting the results. METHODS: We propose an innovative machine learning framework combining multiple holdouts and a stability criterion with regularized multivariate techniques, such as sparse partial least squares and kernel canonical correlation analysis, for identifying hidden dimensions of cross-modality relationships. To illustrate the approach, we investigated structural brain–behavior associations in an extensively phenotyped developmental sample of 345 participants (312 healthy and 33 with clinical depression). The brain data consisted of whole-brain voxel-based gray matter volumes, and the behavioral data included item-level self-report questionnaires and IQ and demographic measures. RESULTS: Both sparse partial least squares and kernel canonical correlation analysis captured two hidden dimensions of brain–behavior relationships: one related to age and drinking and the other one related to depression. The applied machine learning framework indicates that these results are stable and generalize well to new data. Indeed, the identified brain–behavior associations are in agreement with previous findings in the literature concerning age, alcohol use, and depression-related changes in brain volume. CONCLUSIONS: Multivariate techniques (such as sparse partial least squares and kernel canonical correlation analysis) embedded in our novel framework are promising tools to link behavior and/or symptoms to neurobiology and thus have great potential to contribute to a biologically grounded definition of psychiatric disorders. Elsevier 2020-02-15 /pmc/articles/PMC6970221/ /pubmed/32040421 http://dx.doi.org/10.1016/j.biopsych.2019.12.001 Text en © 2019 Published by Elsevier Inc on behalf of Society of Biological Psychiatry. http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Mihalik, Agoston Ferreira, Fabio S. Moutoussis, Michael Ziegler, Gabriel Adams, Rick A. Rosa, Maria J. Prabhu, Gita de Oliveira, Leticia Pereira, Mirtes Bullmore, Edward T. Fonagy, Peter Goodyer, Ian M. Jones, Peter B. Shawe-Taylor, John Dolan, Raymond Mourão-Miranda, Janaina Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title | Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title_full | Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title_fullStr | Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title_full_unstemmed | Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title_short | Multiple Holdouts With Stability: Improving the Generalizability of Machine Learning Analyses of Brain–Behavior Relationships |
title_sort | multiple holdouts with stability: improving the generalizability of machine learning analyses of brain–behavior relationships |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6970221/ https://www.ncbi.nlm.nih.gov/pubmed/32040421 http://dx.doi.org/10.1016/j.biopsych.2019.12.001 |
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