2024
DOI: 10.1101/2024.05.01.24306691
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Evaluating a Large Language Model’s Ability to Answer Clinicians’ Requests for Evidence Summaries

Mallory N. Blasingame,
Taneya Y. Koonce,
Annette M. Williams
et al.

Abstract: Objective: This study investigated the performance of a generative artificial intelligence (AI) tool using GPT-4 in answering clinical questions in comparison with medical librarians' gold-standard evidence syntheses. Methods: Questions were extracted from an in-house database of clinical evidence requests previously answered by medical librarians. Questions with multiple parts were subdivided into individual topics. A standardized prompt was developed using the COSTAR framework. Librarians submitted each ques… Show more

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