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Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation

People at risk of suicide tend to be isolated and cannot share their thoughts. For this reason, suicidal ideation monitoring becomes a hard task. Therefore, people at risk of suicide need to be monitored in a manner capable of identifying if and when they have a suicidal ideation, enabling professio...

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Autores principales: Diniz, Evandro J. S., Fontenele, José E., de Oliveira, Adonias C., Bastos, Victor H., Teixeira, Silmar, Rabêlo, Ricardo L., Calçada, Dario B., dos Santos, Renato M., de Oliveira, Ana K., Teles, Ariel S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9029735/
https://www.ncbi.nlm.nih.gov/pubmed/35455874
http://dx.doi.org/10.3390/healthcare10040698
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author Diniz, Evandro J. S.
Fontenele, José E.
de Oliveira, Adonias C.
Bastos, Victor H.
Teixeira, Silmar
Rabêlo, Ricardo L.
Calçada, Dario B.
dos Santos, Renato M.
de Oliveira, Ana K.
Teles, Ariel S.
author_facet Diniz, Evandro J. S.
Fontenele, José E.
de Oliveira, Adonias C.
Bastos, Victor H.
Teixeira, Silmar
Rabêlo, Ricardo L.
Calçada, Dario B.
dos Santos, Renato M.
de Oliveira, Ana K.
Teles, Ariel S.
author_sort Diniz, Evandro J. S.
collection PubMed
description People at risk of suicide tend to be isolated and cannot share their thoughts. For this reason, suicidal ideation monitoring becomes a hard task. Therefore, people at risk of suicide need to be monitored in a manner capable of identifying if and when they have a suicidal ideation, enabling professionals to perform timely interventions. This study aimed to develop the Boamente tool, a solution that collects textual data from users’ smartphones and identifies the existence of suicidal ideation. The solution has a virtual keyboard mobile application that passively collects user texts and sends them to a web platform to be processed. The platform classifies texts using natural language processing and a deep learning model to recognize suicidal ideation, and the results are presented to mental health professionals in dashboards. Text classification for sentiment analysis was implemented with different machine/deep learning algorithms. A validation study was conducted to identify the model with the best performance results. The BERTimbau Large model performed better, reaching a recall of 0.953 (accuracy: 0.955; precision: 0.961; F-score: 0.954; AUC: 0.954). The proposed tool demonstrated an ability to identify suicidal ideation from user texts, which enabled it to be experimented with in studies with professionals and their patients.
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spelling pubmed-90297352022-04-23 Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation Diniz, Evandro J. S. Fontenele, José E. de Oliveira, Adonias C. Bastos, Victor H. Teixeira, Silmar Rabêlo, Ricardo L. Calçada, Dario B. dos Santos, Renato M. de Oliveira, Ana K. Teles, Ariel S. Healthcare (Basel) Article People at risk of suicide tend to be isolated and cannot share their thoughts. For this reason, suicidal ideation monitoring becomes a hard task. Therefore, people at risk of suicide need to be monitored in a manner capable of identifying if and when they have a suicidal ideation, enabling professionals to perform timely interventions. This study aimed to develop the Boamente tool, a solution that collects textual data from users’ smartphones and identifies the existence of suicidal ideation. The solution has a virtual keyboard mobile application that passively collects user texts and sends them to a web platform to be processed. The platform classifies texts using natural language processing and a deep learning model to recognize suicidal ideation, and the results are presented to mental health professionals in dashboards. Text classification for sentiment analysis was implemented with different machine/deep learning algorithms. A validation study was conducted to identify the model with the best performance results. The BERTimbau Large model performed better, reaching a recall of 0.953 (accuracy: 0.955; precision: 0.961; F-score: 0.954; AUC: 0.954). The proposed tool demonstrated an ability to identify suicidal ideation from user texts, which enabled it to be experimented with in studies with professionals and their patients. MDPI 2022-04-08 /pmc/articles/PMC9029735/ /pubmed/35455874 http://dx.doi.org/10.3390/healthcare10040698 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Diniz, Evandro J. S.
Fontenele, José E.
de Oliveira, Adonias C.
Bastos, Victor H.
Teixeira, Silmar
Rabêlo, Ricardo L.
Calçada, Dario B.
dos Santos, Renato M.
de Oliveira, Ana K.
Teles, Ariel S.
Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title_full Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title_fullStr Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title_full_unstemmed Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title_short Boamente: A Natural Language Processing-Based Digital Phenotyping Tool for Smart Monitoring of Suicidal Ideation
title_sort boamente: a natural language processing-based digital phenotyping tool for smart monitoring of suicidal ideation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9029735/
https://www.ncbi.nlm.nih.gov/pubmed/35455874
http://dx.doi.org/10.3390/healthcare10040698
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