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An Intelligent Mobile Application for Music-based Blood Sugar Management using Personalized Therapeutic Recommendations and Real-Time Health Monitoring

Authors

Liying (Victoria) Qu 1 and Yu Sun 2 , 1 USA, 2 California State Polytechnic University, USA

Abstract

Diabetes mellitus affects over 537 million adults globally, demanding continuous self-management that conventional pharmacological approaches alone cannot fully address. Music therapy has emerged as a promising complementary intervention, with clinical research demonstrating that slow-tempo music can reduce blood glucose by 15-30 mg/dL through parasympathetic activation and cortisol reduction. BeatSugar is a cross-platform mobile application that integrates real-time blood sugar and heart rate monitoring with personalized, evidence-based music therapy recommendations. The system employs a context-aware algorithm that maps blood glucose levels, measurement timing, and diabetic status to clinically appropriate music tempos, incorporating Traditional Chinese Medicine FiveElement tonal sequences alongside AI-generated therapeutic compositions. A personalized effectiveness scoring engine learns from individual listening sessions, adapting recommendations based on measurable health outcomes. Experimental evaluation demonstrates 94.2% recommendation accuracy and algorithm convergence within 8-12 sessions. BeatSugar offers a scientifically grounded, scalable approach to complementary diabetes management through accessible digital music therapy.

Keywords

Music Therapy, Diabetes Management, Blood Sugar Regulation, Mobile Health, Personalized Recommendations

Full Text  Volume 16, Number 10