Multi-Modal AI for Mental Health Prediction and Intervention
DOI:
https://doi.org/10.47363/JDDT/2026(6)141Keywords:
Real Time Emotion Recognition, Stress and Anxiety Detection Systems, AI based Therapy SuggestionAbstract
Mental health disorders are a growing concern globally, and early diagnosis remains a challenge due to limited access to mental health professionals and
inherent subjectivity in self-reporting methods. This paper introduces PsyPredict, an AI-based system for predicting mental health conditions such as depression and anxiety using multi-modal data inputs, including text, video-based emotion analysis, and real-time machine learning. Through the integration of these data sources, PsyPredict offers a comprehensive and accurate mental health assessment, providing timely, actionable interventions. This paper detail the methodology, implementation, and performance of the system, concluding with potential future applications and improvements.
