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Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence

Despite the high level of interest in the use of machine learning (ML) and neuroimaging to detect psychosis at the individual level, the reliability of the findings is unclear due to potential methodological issues that may have inflated the existing literature. This study aimed to elucidate the ext...

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Autores principales: Vieira, Sandra, Gong, Qi-yong, Pinaya, Walter H L, Scarpazza, Cristina, Tognin, Stefania, Crespo-Facorro, Benedicto, Tordesillas-Gutierrez, Diana, Ortiz-García, Victor, Setien-Suero, Esther, Scheepers, Floortje E, Van Haren, Neeltje E M, Marques, Tiago R, Murray, Robin M, David, Anthony, Dazzan, Paola, McGuire, Philip, Mechelli, Andrea
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6942152/
https://www.ncbi.nlm.nih.gov/pubmed/30809667
http://dx.doi.org/10.1093/schbul/sby189
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author Vieira, Sandra
Gong, Qi-yong
Pinaya, Walter H L
Scarpazza, Cristina
Tognin, Stefania
Crespo-Facorro, Benedicto
Tordesillas-Gutierrez, Diana
Ortiz-García, Victor
Setien-Suero, Esther
Scheepers, Floortje E
Van Haren, Neeltje E M
Marques, Tiago R
Murray, Robin M
David, Anthony
Dazzan, Paola
McGuire, Philip
Mechelli, Andrea
author_facet Vieira, Sandra
Gong, Qi-yong
Pinaya, Walter H L
Scarpazza, Cristina
Tognin, Stefania
Crespo-Facorro, Benedicto
Tordesillas-Gutierrez, Diana
Ortiz-García, Victor
Setien-Suero, Esther
Scheepers, Floortje E
Van Haren, Neeltje E M
Marques, Tiago R
Murray, Robin M
David, Anthony
Dazzan, Paola
McGuire, Philip
Mechelli, Andrea
author_sort Vieira, Sandra
collection PubMed
description Despite the high level of interest in the use of machine learning (ML) and neuroimaging to detect psychosis at the individual level, the reliability of the findings is unclear due to potential methodological issues that may have inflated the existing literature. This study aimed to elucidate the extent to which the application of ML to neuroanatomical data allows detection of first episode psychosis (FEP), while putting in place methodological precautions to avoid overoptimistic results. We tested both traditional ML and an emerging approach known as deep learning (DL) using 3 feature sets of interest: (1) surface-based regional volumes and cortical thickness, (2) voxel-based gray matter volume (GMV) and (3) voxel-based cortical thickness (VBCT). To assess the reliability of the findings, we repeated all analyses in 5 independent datasets, totaling 956 participants (514 FEP and 444 within-site matched controls). The performance was assessed via nested cross-validation (CV) and cross-site CV. Accuracies ranged from 50% to 70% for surfaced-based features; from 50% to 63% for GMV; and from 51% to 68% for VBCT. The best accuracies (70%) were achieved when DL was applied to surface-based features; however, these models generalized poorly to other sites. Findings from this study suggest that, when methodological precautions are adopted to avoid overoptimistic results, detection of individuals in the early stages of psychosis is more challenging than originally thought. In light of this, we argue that the current evidence for the diagnostic value of ML and structural neuroimaging should be reconsidered toward a more cautious interpretation.
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spelling pubmed-69421522020-01-08 Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence Vieira, Sandra Gong, Qi-yong Pinaya, Walter H L Scarpazza, Cristina Tognin, Stefania Crespo-Facorro, Benedicto Tordesillas-Gutierrez, Diana Ortiz-García, Victor Setien-Suero, Esther Scheepers, Floortje E Van Haren, Neeltje E M Marques, Tiago R Murray, Robin M David, Anthony Dazzan, Paola McGuire, Philip Mechelli, Andrea Schizophr Bull Regular Articles Despite the high level of interest in the use of machine learning (ML) and neuroimaging to detect psychosis at the individual level, the reliability of the findings is unclear due to potential methodological issues that may have inflated the existing literature. This study aimed to elucidate the extent to which the application of ML to neuroanatomical data allows detection of first episode psychosis (FEP), while putting in place methodological precautions to avoid overoptimistic results. We tested both traditional ML and an emerging approach known as deep learning (DL) using 3 feature sets of interest: (1) surface-based regional volumes and cortical thickness, (2) voxel-based gray matter volume (GMV) and (3) voxel-based cortical thickness (VBCT). To assess the reliability of the findings, we repeated all analyses in 5 independent datasets, totaling 956 participants (514 FEP and 444 within-site matched controls). The performance was assessed via nested cross-validation (CV) and cross-site CV. Accuracies ranged from 50% to 70% for surfaced-based features; from 50% to 63% for GMV; and from 51% to 68% for VBCT. The best accuracies (70%) were achieved when DL was applied to surface-based features; however, these models generalized poorly to other sites. Findings from this study suggest that, when methodological precautions are adopted to avoid overoptimistic results, detection of individuals in the early stages of psychosis is more challenging than originally thought. In light of this, we argue that the current evidence for the diagnostic value of ML and structural neuroimaging should be reconsidered toward a more cautious interpretation. Oxford University Press 2020-01 2019-02-27 /pmc/articles/PMC6942152/ /pubmed/30809667 http://dx.doi.org/10.1093/schbul/sby189 Text en © The Author(s) 2019. Published by Oxford University Press on behalf of the Maryland Psychiatric Research Center. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Regular Articles
Vieira, Sandra
Gong, Qi-yong
Pinaya, Walter H L
Scarpazza, Cristina
Tognin, Stefania
Crespo-Facorro, Benedicto
Tordesillas-Gutierrez, Diana
Ortiz-García, Victor
Setien-Suero, Esther
Scheepers, Floortje E
Van Haren, Neeltje E M
Marques, Tiago R
Murray, Robin M
David, Anthony
Dazzan, Paola
McGuire, Philip
Mechelli, Andrea
Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title_full Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title_fullStr Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title_full_unstemmed Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title_short Using Machine Learning and Structural Neuroimaging to Detect First Episode Psychosis: Reconsidering the Evidence
title_sort using machine learning and structural neuroimaging to detect first episode psychosis: reconsidering the evidence
topic Regular Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6942152/
https://www.ncbi.nlm.nih.gov/pubmed/30809667
http://dx.doi.org/10.1093/schbul/sby189
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