Predictive assessment of eating disorder risk and recovery: uncovering the effectiveness of questionnaires and influencing characteristics
Cargando...
Fecha
2025
Título de la revista
ISSN de la revista
Título del volumen
Editor
Elsevier B.V.
Resumen
This study aims to assess the predictive capabilities of various questionnaires in determining the risk of Eating Disorders (ED) and predicting the level of recovery among individuals. Employing machine learning models and diverse datasets, the research focuses on understanding the effectiveness of different questionnaires in providing insights into ED symptoms and recovery outcomes. Additionally, the study seeks to identify the characteristics that significantly influence the recovery process. The investigation aims to contribute valuable information to enhance the diagnostic and monitoring tools used in the field of mental health, particularly concerning ED
Palabras clave
Eating disorders
Feature importance
Machine learning
Questionnaires
Feature importance
Machine learning
Questionnaires
Descripción
Materias
Cita
Pikatza-Huerga, Las Hayas, Zulaika, & Almeida. (2025). Predictive assessment of eating disorder risk and recovery: uncovering the effectiveness of questionnaires and influencing characteristics. Computational and Structural Biotechnology Journal, 28, 118-127. https://doi.org/10.1016/J.CSBJ.2025.03.048