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Dynamic Personalized Optimization: An AI Functionality Framework for Digital Therapeutics (Preprint)

2025·0 ZitationenOpen Access
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2025

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Abstract

<sec> <title>UNSTRUCTURED</title> Dynamic Personalized Optimization (DPO) is introduced as a conceptual framework that defines core AI functions required to deliver real-time, personalized and optimized treatment in digital therapeutics (DTx). DPO continuously refines therapeutic strategies by integrating patient data, treatment content, usage feedback, and status measurements to provide real-time, personalized treatment. Utilizing predictive AI models, DPO adapts treatment approaches based on patient responses, thereby improving therapeutic effectiveness. Furthermore, this paper explores the potential role of large language models (LLMs) in supporting DPO by processing diverse and complex data formats. By addressing current limitations in real-time personalization within DTx, DPO establishes a structured, AI-driven approach to delivering tailored digital interventions. This framework ultimately aims to enhance treatment efficacy and improve patient engagement. </sec>

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Digital Mental Health InterventionsArtificial Intelligence in Healthcare and EducationMachine Learning in Healthcare
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