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Symptom mapping and personalized care for depression, anxiety and stress: A data-driven AI approach.
Delgado, Sabrinna; Vignola, Rose Claudia Batistelli; Sassi, Renato José; Belan, Peterson Adriano; Araújo, Sidnei Alves de.
Afiliación
  • Delgado S; Nove de Julho University - UNINOVE, Informatics and Knowledge Management Post-Graduation Program, Vergueiro Street, 235/249, São Paulo, SP, Brazil, 01504-001.
  • Vignola RCB; Federal University of São Paulo - UNIFESP, Department of Health, Education and Society, Ana Costa Avenue, 95, Vl. Mathias, Santos, SP, Brazil, 11060-001.
  • Sassi RJ; Nove de Julho University - UNINOVE, Informatics and Knowledge Management Post-Graduation Program, Vergueiro Street, 235/249, São Paulo, SP, Brazil, 01504-001.
  • Belan PA; Nove de Julho University - UNINOVE, Informatics and Knowledge Management Post-Graduation Program, Vergueiro Street, 235/249, São Paulo, SP, Brazil, 01504-001.
  • Araújo SA; Nove de Julho University - UNINOVE, Informatics and Knowledge Management Post-Graduation Program, Vergueiro Street, 235/249, São Paulo, SP, Brazil, 01504-001. Electronic address: saraujo@uni9.pro.br.
Comput Biol Med ; 182: 109146, 2024 Sep 11.
Article en En | MEDLINE | ID: mdl-39265480
ABSTRACT

BACKGROUND:

Depression, anxiety, and stress disorders have significant and widespread impacts worldwide, affecting millions of individuals and their communities. According to the World Health Organization, depression impacts the daily lives of more than 300 million people, making it one of the most important diseases globally. Treatment for these mental disorders (MD) typically involves medication and psychotherapies, but also incorporates technological resources like Artificial Intelligence (AI) to indicate personalized therapies and care. While various AI approaches have been applied in the context of MD in the literature, they often focus solely on aiding diagnosis.

OBJECTIVE:

This research proposes an AI approach for mapping symptoms and assisting in the personalized care of depression, anxiety, and stress.

METHODS:

Symptom mapping utilizes data mining (DM) techniques to generate rules representing knowledge extracted from data of 242 patients collected using the Depression, Anxiety, and Stress Scale (DASS-21). This knowledge elucidates how symptoms impact the severity degrees of considered MDs. Subsequently, the generated rules are employed to construct a Fuzzy Inference System (FIS) for inferring the severities of MDs based on patient symptoms and personal data. RESULTS AND

CONCLUSIONS:

The results achieved in the DM (accuracy ≥92.98 %, sensibility ≥86.02 %, specificity ≥97.32 %, and kappa statistic ≥87.98 %), indicating consistent patterns, along with the results produced by the FIS, demonstrate the potential of the proposed approach to assist health professionals in rapidly predicting symptoms of depression, anxiety, and stress, thereby facilitating outpatient screening and emergency care. Furthermore, it can improve the association of symptoms, referral to specialized care, therapeutic proposals, and even investigations of other diseases unrelated to MD.
Palabras clave

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Comput Biol Med / Comput. biol. med / Computers in biology and medicine Año: 2024 Tipo del documento: Article

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Comput Biol Med / Comput. biol. med / Computers in biology and medicine Año: 2024 Tipo del documento: Article