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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.
  • Diniz EJS; Federal Institute of Maranhão, Araioses 65570-000, Brazil.
  • Fontenele JE; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • de Oliveira AC; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • Bastos VH; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • Teixeira S; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • Rabêlo RL; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • Calçada DB; Department of Electrical Engineering, Federal University of Piauí, Teresina 64049-550, Brazil.
  • Dos Santos RM; Department of Computer Science, State University of Piauí, Parnaíba 64202-220, Brazil.
  • de Oliveira AK; Technological Neuro Innovation Laboratory, Federal University of Delta do Parnaíba, Parnaíba 64202-020, Brazil.
  • Teles AS; Department of Electrical Engineering, Federal University of Piauí, Teresina 64049-550, Brazil.
Healthcare (Basel) ; 10(4)2022 Apr 08.
Article in English | MEDLINE | ID: covidwho-1809821
ABSTRACT
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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Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Year: 2022 Document Type: Article Affiliation country: Healthcare10040698

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Year: 2022 Document Type: Article Affiliation country: Healthcare10040698