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Considerations for Patient Privacy of Large Language Models in Health Care: Scoping Review
3
Zitationen
8
Autoren
2025
Jahr
Abstract
We propose comprehensive recommendations across 3 phases-study design, implementation, and reporting-to strengthen patient privacy protection and transparency in PHI-LLM. This study emphasizes the urgent need for the development of stricter regulatory frameworks and the adoption of advanced privacy protection technologies to effectively safeguard PHI. It is anticipated that future applications of LLMs in the health care field will achieve a balance between innovation and robust patient privacy protection, thereby enhancing ethical standards and scientific credibility.
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