AI-Driven Personalized Healthcare Delivery and Medication Distribution Systems

Authors

  • Prof Aman Lone

Abstract

Personalized healthcare delivery is becoming increasingly important in modern medicine. This paper proposes an AI-driven system that customizes healthcare product delivery based on individual patient needs, medical history, and treatment plans. By leveraging machine learning and recommendation systems, the model ensures timely and accurate delivery of medications and healthcare services. The results indicate enhanced patient adherence, improved health outcomes, and increased efficiency in healthcare service delivery.

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Published

2026-01-23

How to Cite

Lone, P. A. (2026). AI-Driven Personalized Healthcare Delivery and Medication Distribution Systems. Synergia: A Journal of Multidisciplinary Innovation, 8(8). Retrieved from https://ijcdra.us/index.php/Synergia/article/view/65

Issue

Section

Articles