Autores
Saldaña Pérez Ana María Magdalena
Reyes Vera Abdiel
Palma Preciado Carolina
Moreno Ibarra Marco Antonio
Título Automation of depression detection in texts to identify possible cases during COVID-19 pandemic
Tipo Libro
Sub-tipo Indefinido
Descripción Accelerating Strategic Changes for Digital Transformation in the Healthcare Industry
Resumen The COVID-19 pandemic was more than a medical problem; it also caused social problems such as unemployment, business closure, and delivery services collapse; also, there is a human factor that was seriously damaged, mental health. Since secondary human activities such as work and school were transformed from physical to virtual modalities, people started to present problems related to their emotions and the lack of contact with other people. From oneday to the next, human interactions were avoided in trying to preserve people's health, but for mental health, this was not the case. It was observed that throughout 2020 major depressive disorders as well as anxiety disorders increased due to the combined challenge of changing the life routines and the fear of being infected. In this chapter, we analyze the evolution of the research on depression and anxiety done during and after the pandemic. Also a natural language processing technique is implemented to identify depression in short texts of everyday life written by people, with a view to automate depression detection in such text and to refer possible cases to mental health experts. © 2023 Elsevier Inc. All rights reserved.
Observaciones DOI 10.1016/B978-0-443-15299-3.00005-1
Lugar London
País Reino Unido
No. de páginas 219-235
Vol. / Cap. v. 2
Inicio 2023-05-30
Fin
ISBN/ISSN 9780443152993