Depression Symptom
Depression symptom research aims to develop accurate and efficient methods for identifying and classifying depression, moving beyond traditional subjective assessments. Current research focuses on leveraging machine learning, particularly deep learning models like transformers (e.g., BERT, RoBERTa) and neural networks, applied to diverse data modalities including speech, text from social media and clinical interviews, wearable sensor data, and facial expressions. These advancements offer the potential for improved early detection, personalized treatment strategies, and more objective diagnostic tools, ultimately impacting both clinical practice and public health initiatives.
Papers
Explainable Depression Symptom Detection in Social Media
Eliseo Bao Souto, Anxo Pérez, Javier Parapar
Analyzing the contribution of different passively collected data to predict Stress and Depression
Irene Bonafonte, Cristina Bustos, Abraham Larrazolo, Gilberto Lorenzo Martinez Luna, Adolfo Guzman Arenas, Xavier Baro, Isaac Tourgeman, Mercedes Balcells, Agata Lapedriza
DepreSym: A Depression Symptom Annotated Corpus and the Role of LLMs as Assessors of Psychological Markers
Anxo Pérez, Marcos Fernández-Pichel, Javier Parapar, David E. Losada
What's Race Got to do with it? Predicting Youth Depression Across Racial Groups Using Machine and Deep Learning
Nathan Zhong, Nikhil Yadav