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Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning

There is a critical need for fast, inexpensive, objective, and accurate screening tools for childhood psychopathology. Perhaps most compelling is in the case of internalizing disorders, like anxiety and depression, where unobservable symptoms cause children to go unassessed–suffering in silence beca...

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Autores principales: McGinnis, Ryan S., McGinnis, Ellen W., Hruschak, Jessica, Lopez-Duran, Nestor L., Fitzgerald, Kate, Rosenblum, Katherine L., Muzik, Maria
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6334916/
https://www.ncbi.nlm.nih.gov/pubmed/30650109
http://dx.doi.org/10.1371/journal.pone.0210267
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author McGinnis, Ryan S.
McGinnis, Ellen W.
Hruschak, Jessica
Lopez-Duran, Nestor L.
Fitzgerald, Kate
Rosenblum, Katherine L.
Muzik, Maria
author_facet McGinnis, Ryan S.
McGinnis, Ellen W.
Hruschak, Jessica
Lopez-Duran, Nestor L.
Fitzgerald, Kate
Rosenblum, Katherine L.
Muzik, Maria
author_sort McGinnis, Ryan S.
collection PubMed
description There is a critical need for fast, inexpensive, objective, and accurate screening tools for childhood psychopathology. Perhaps most compelling is in the case of internalizing disorders, like anxiety and depression, where unobservable symptoms cause children to go unassessed–suffering in silence because they never exhibiting the disruptive behaviors that would lead to a referral for diagnostic assessment. If left untreated these disorders are associated with long-term negative outcomes including substance abuse and increased risk for suicide. This paper presents a new approach for identifying children with internalizing disorders using an instrumented 90-second mood induction task. Participant motion during the task is monitored using a commercially available wearable sensor. We show that machine learning can be used to differentiate children with an internalizing diagnosis from controls with 81% accuracy (67% sensitivity, 88% specificity). We provide a detailed description of the modeling methodology used to arrive at these results and explore further the predictive ability of each temporal phase of the mood induction task. Kinematical measures most discriminative of internalizing diagnosis are analyzed in detail, showing affected children exhibit significantly more avoidance of ambiguous threat. Performance of the proposed approach is compared to clinical thresholds on parent-reported child symptoms which differentiate children with an internalizing diagnosis from controls with slightly lower accuracy (.68-.75 vs. .81), slightly higher specificity (.88–1.00 vs. .88), and lower sensitivity (.00-.42 vs. .67) than the proposed, instrumented method. These results point toward the future use of this approach for screening children for internalizing disorders so that interventions can be deployed when they have the highest chance for long-term success.
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spelling pubmed-63349162019-01-31 Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning McGinnis, Ryan S. McGinnis, Ellen W. Hruschak, Jessica Lopez-Duran, Nestor L. Fitzgerald, Kate Rosenblum, Katherine L. Muzik, Maria PLoS One Research Article There is a critical need for fast, inexpensive, objective, and accurate screening tools for childhood psychopathology. Perhaps most compelling is in the case of internalizing disorders, like anxiety and depression, where unobservable symptoms cause children to go unassessed–suffering in silence because they never exhibiting the disruptive behaviors that would lead to a referral for diagnostic assessment. If left untreated these disorders are associated with long-term negative outcomes including substance abuse and increased risk for suicide. This paper presents a new approach for identifying children with internalizing disorders using an instrumented 90-second mood induction task. Participant motion during the task is monitored using a commercially available wearable sensor. We show that machine learning can be used to differentiate children with an internalizing diagnosis from controls with 81% accuracy (67% sensitivity, 88% specificity). We provide a detailed description of the modeling methodology used to arrive at these results and explore further the predictive ability of each temporal phase of the mood induction task. Kinematical measures most discriminative of internalizing diagnosis are analyzed in detail, showing affected children exhibit significantly more avoidance of ambiguous threat. Performance of the proposed approach is compared to clinical thresholds on parent-reported child symptoms which differentiate children with an internalizing diagnosis from controls with slightly lower accuracy (.68-.75 vs. .81), slightly higher specificity (.88–1.00 vs. .88), and lower sensitivity (.00-.42 vs. .67) than the proposed, instrumented method. These results point toward the future use of this approach for screening children for internalizing disorders so that interventions can be deployed when they have the highest chance for long-term success. Public Library of Science 2019-01-16 /pmc/articles/PMC6334916/ /pubmed/30650109 http://dx.doi.org/10.1371/journal.pone.0210267 Text en © 2019 McGinnis et al 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 use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
McGinnis, Ryan S.
McGinnis, Ellen W.
Hruschak, Jessica
Lopez-Duran, Nestor L.
Fitzgerald, Kate
Rosenblum, Katherine L.
Muzik, Maria
Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title_full Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title_fullStr Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title_full_unstemmed Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title_short Rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
title_sort rapid detection of internalizing diagnosis in young children enabled by wearable sensors and machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6334916/
https://www.ncbi.nlm.nih.gov/pubmed/30650109
http://dx.doi.org/10.1371/journal.pone.0210267
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