AIMay 18

Evaluating the Utility of Personal Health Records in Personalized Health AI

arXiv:2605.1893797.4
Predicted impact top 5% in AI · last 90 daysOriginality Incremental advance
AI Analysis

For patients and healthcare providers, this work demonstrates that integrating PHR data into LLM-based health AI can enhance answer quality, but also highlights specific failure modes that need monitoring.

The study evaluates how providing Personal Health Record (PHR) data as context improves the helpfulness of large language model (Gemini 3.0 Flash) answers to patient health queries. Results show significant improvements in helpfulness (p < 0.001) across all question types, with gains in safety, accuracy, relevance, and personalization, while also identifying gaps like temporal disorientation and confabulations.

Patient-managed Personal Health Records (PHRs) promises to empower patients to better understand their health; but information in the record is complex, potentially hindering insights. In this study, we assess the potential of large language models (LLMs, Gemini 3.0 Flash) to provide helpful answers to user health queries, when provided clinical data from PHRs as context. A total of 2,257 user queries were drawn from 3 different distributions to represent patient questions: shorter web search queries, longer questions derived from templates of chatbot conversations, and questions patients asked to their healthcare team (patient calls). Queries were matched with de-identified PHRs (from a pool of 1,945). Gemini responses were generated (1) without PHR context; (2) with a basic summary of demographics, conditions, and medications; (3) with full, extensive clinical notes. For evaluation, we leveraged an existing rating framework (SHARP), and developed a new framework for specific error modes when interpreting PHRs. Evaluation was performed using autoraters for the full set, and with clinician ratings for a subset (n=95), with both sets of raters knowing the full PHR context. We see significant improvements in the helpfulness of answers to all question types with PHR data (p < 0.001, paired t-test). We also observe potential gains in safety, accuracy, relevance and personalization of answers. Our PHR evaluation framework further identifies gaps in LLM understanding of particular aspects of complex PHRs, such as temporal disorientation, and rare but meaningful confabulations. These results suggest potential for PHR data to help people with a wide range of user needs; and provide a framework for monitoring for gaps in LLM answers based on PHR context. This study motivates further work to assess and realize potential benefits to users from understanding their health records.

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