A Sentiment-Aware mHealth System for Emotional State Detection via Text Messaging

Dr. Olivia Parshad

Abstract


This paper describes a sentiment-aware mHealth system that detects patients' emotional states through text message analysis. Using machine learning techniques, the system analyzes the sentiment of patient messages to identify signs of emotional distress or positive mental health trends.

References


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