Cargando…

Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients

BACKGROUND: Machine learning modeling can provide valuable support in different areas of mental health, because it enables to make rapid predictions and therefore support the decision making, based on valuable data. However, few studies have applied this method to predict symptoms’ worsening, based...

Descripción completa

Detalles Bibliográficos
Autores principales: Tubío-Fungueiriño, María, Cernadas, Eva, Gonçalves, Óscar F., Segalas, Cinto, Bertolín, Sara, Mar-Barrutia, Lorea, Real, Eva, Fernández-Delgado, Manuel, Menchón, Jose M., Carvalho, Sandra, Alonso, Pino, Carracedo, Angel, Fernández-Prieto, Montse
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8866769/
https://www.ncbi.nlm.nih.gov/pubmed/35221957
http://dx.doi.org/10.3389/fninf.2022.807584
_version_ 1784655905303822336
author Tubío-Fungueiriño, María
Cernadas, Eva
Gonçalves, Óscar F.
Segalas, Cinto
Bertolín, Sara
Mar-Barrutia, Lorea
Real, Eva
Fernández-Delgado, Manuel
Menchón, Jose M.
Carvalho, Sandra
Alonso, Pino
Carracedo, Angel
Fernández-Prieto, Montse
author_facet Tubío-Fungueiriño, María
Cernadas, Eva
Gonçalves, Óscar F.
Segalas, Cinto
Bertolín, Sara
Mar-Barrutia, Lorea
Real, Eva
Fernández-Delgado, Manuel
Menchón, Jose M.
Carvalho, Sandra
Alonso, Pino
Carracedo, Angel
Fernández-Prieto, Montse
author_sort Tubío-Fungueiriño, María
collection PubMed
description BACKGROUND: Machine learning modeling can provide valuable support in different areas of mental health, because it enables to make rapid predictions and therefore support the decision making, based on valuable data. However, few studies have applied this method to predict symptoms’ worsening, based on sociodemographic, contextual, and clinical data. Thus, we applied machine learning techniques to identify predictors of symptomatologic changes in a Spanish cohort of OCD patients during the initial phase of the COVID-19 pandemic. METHODS: 127 OCD patients were assessed using the Yale–Brown Obsessive-Compulsive Scale (Y-BOCS) and a structured clinical interview during the COVID-19 pandemic. Machine learning models for classification (LDA and SVM) and regression (linear regression and SVR) were constructed to predict each symptom based on patient’s sociodemographic, clinical and contextual information. RESULTS: A Y-BOCS score prediction model was generated with 100% reliability at a score threshold of ± 6. Reliability of 100% was reached for obsessions and/or compulsions related to COVID-19. Symptoms of anxiety and depression were predicted with less reliability (correlation R of 0.58 and 0.68, respectively). The suicidal thoughts are predicted with a sensitivity of 79% and specificity of 88%. The best results are achieved by SVM and SVR. CONCLUSION: Our findings reveal that sociodemographic and clinical data can be used to predict changes in OCD symptomatology. Machine learning may be valuable tool for helping clinicians to rapidly identify patients at higher risk and therefore provide optimized care, especially in future pandemics. However, further validation of these models is required to ensure greater reliability of the algorithms for clinical implementation to specific objectives of interest.
format Online
Article
Text
id pubmed-8866769
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-88667692022-02-25 Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients Tubío-Fungueiriño, María Cernadas, Eva Gonçalves, Óscar F. Segalas, Cinto Bertolín, Sara Mar-Barrutia, Lorea Real, Eva Fernández-Delgado, Manuel Menchón, Jose M. Carvalho, Sandra Alonso, Pino Carracedo, Angel Fernández-Prieto, Montse Front Neuroinform Neuroscience BACKGROUND: Machine learning modeling can provide valuable support in different areas of mental health, because it enables to make rapid predictions and therefore support the decision making, based on valuable data. However, few studies have applied this method to predict symptoms’ worsening, based on sociodemographic, contextual, and clinical data. Thus, we applied machine learning techniques to identify predictors of symptomatologic changes in a Spanish cohort of OCD patients during the initial phase of the COVID-19 pandemic. METHODS: 127 OCD patients were assessed using the Yale–Brown Obsessive-Compulsive Scale (Y-BOCS) and a structured clinical interview during the COVID-19 pandemic. Machine learning models for classification (LDA and SVM) and regression (linear regression and SVR) were constructed to predict each symptom based on patient’s sociodemographic, clinical and contextual information. RESULTS: A Y-BOCS score prediction model was generated with 100% reliability at a score threshold of ± 6. Reliability of 100% was reached for obsessions and/or compulsions related to COVID-19. Symptoms of anxiety and depression were predicted with less reliability (correlation R of 0.58 and 0.68, respectively). The suicidal thoughts are predicted with a sensitivity of 79% and specificity of 88%. The best results are achieved by SVM and SVR. CONCLUSION: Our findings reveal that sociodemographic and clinical data can be used to predict changes in OCD symptomatology. Machine learning may be valuable tool for helping clinicians to rapidly identify patients at higher risk and therefore provide optimized care, especially in future pandemics. However, further validation of these models is required to ensure greater reliability of the algorithms for clinical implementation to specific objectives of interest. Frontiers Media S.A. 2022-02-10 /pmc/articles/PMC8866769/ /pubmed/35221957 http://dx.doi.org/10.3389/fninf.2022.807584 Text en Copyright © 2022 Tubío-Fungueiriño, Cernadas, Gonçalves, Segalas, Bertolín, Mar-Barrutia, Real, Fernández-Delgado, Menchón, Carvalho, Alonso, Carracedo and Fernández-Prieto. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Tubío-Fungueiriño, María
Cernadas, Eva
Gonçalves, Óscar F.
Segalas, Cinto
Bertolín, Sara
Mar-Barrutia, Lorea
Real, Eva
Fernández-Delgado, Manuel
Menchón, Jose M.
Carvalho, Sandra
Alonso, Pino
Carracedo, Angel
Fernández-Prieto, Montse
Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title_full Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title_fullStr Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title_full_unstemmed Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title_short Viability Study of Machine Learning-Based Prediction of COVID-19 Pandemic Impact in Obsessive-Compulsive Disorder Patients
title_sort viability study of machine learning-based prediction of covid-19 pandemic impact in obsessive-compulsive disorder patients
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8866769/
https://www.ncbi.nlm.nih.gov/pubmed/35221957
http://dx.doi.org/10.3389/fninf.2022.807584
work_keys_str_mv AT tubiofungueirinomaria viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT cernadaseva viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT goncalvesoscarf viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT segalascinto viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT bertolinsara viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT marbarrutialorea viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT realeva viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT fernandezdelgadomanuel viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT menchonjosem viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT carvalhosandra viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT alonsopino viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT carracedoangel viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients
AT fernandezprietomontse viabilitystudyofmachinelearningbasedpredictionofcovid19pandemicimpactinobsessivecompulsivedisorderpatients