Patient non-adherence to prescribed therapies continues to be a pervasive challenge in modern healthcare, contributing to increased morbidity, hospitalizations, and overall healthcare expenditures. This white paper explores the transformative role of Artificial Intelligence (AI) in predictive analytics as a means to proactively address and mitigate adherence issues. By integrating advanced machine learning algorithms with real-time data sources—including Electronic Health Records (EHR), wearable technology outputs, and patient communication streams—here is a proposal for a novel framework that forecasts adherence risks and facilitates timely, personalized interventions. Central to our approach is the development of algorithms that not only detect behavioral patterns indicative of non-adherence but also adaptively tailor interventions to the individual patient’s context, thereby enhancing engagement and treatment efficacy. Furthermore, this analysis delves into the application of Natural Language Processing (NLP) techniques to parse patient-provider interactions, offering deeper insight into patient sentiments and potential barriers to adherence. Recognizing the importance of ethical data practices, this paper also examines the critical issues of data privacy, informed consent, and algorithmic bias, ensuring that the deployment of AI in this domain aligns with the highest standards of clinical integrity and transparency. Through case studies and empirical evaluations, supporting evidence for the potential of AI-driven predictive analytics to not only forecast adherence trends but also to drive a paradigm shift towards more proactive, cost-effective, and patient-centric healthcare is presented here. The insights provided herein aim to serve as a strategic roadmap for healthcare providers, researchers, and policymakers committed to leveraging innovative technologies to improve patient outcomes and reduce systemic healthcare disparities.
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Pinaki Bose -
International Journal For Multidisciplinary Research
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Pinaki Bose - (Sat,) studied this question.
synapsesocial.com/papers/68c1a41654b1d3bfb60defc3 — DOI: https://doi.org/10.36948/ijfmr.2025.v07i04.50281