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Transparency, quality, and source accessibilty of AI-generated hypertension information: A cross-sectional evaluation of ChatGPT and Google Gemini
0
Zitationen
10
Autoren
2026
Jahr
Abstract
Introduction: Patients increasingly rely on artificial intelligence (AI)-generated information when seeking guidance about chronic diseases such as hypertension. Despite widespread use, the transparency, informational quality, patient-centeredness, and source accessibility of AI-generated hypertension-related content remain incompletely understood. The objectives of the study are to evaluate AI-generated responses to common hypertension questions and assess the validity of their cited sources.
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