Leveraging Generative AI for Clinical Evidence Summarization Needs to Ensure Trustworthiness
Gongbo Zhang
Qiao Jin
Denis Jered McInerney
Yong Chen
Fei Wang
Curtis L. Cole
Qian Yang
Yanshan Wang
Brad Malin
Mor Peleg
Byron C. Wallace
Zhiyong Lu
Chunhua Weng
Yifan Peng

Abstract
Evidence-based medicine promises to improve the quality of healthcare by empowering medical decisions and practices with the best available evidence. The rapid growth of medical evidence, which can be obtained from various sources, poses a challenge in collecting, appraising, and synthesizing the evidential information. Recent advancements in generative AI, exemplified by large language models, hold promise in facilitating the arduous task. However, developing accountable, fair, and inclusive models remains a complicated undertaking. In this perspective, we discuss the trustworthiness of generative AI in the context of automated summarization of medical evidence.
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