Artificial intelligence's contribution to biomedical literature search: revolutionizing or complicating?

Authors: 
Rui Yip, Young Joo Sun, Alexander G Bassuk, Vinit B Mahajan
Publication date: 
2025-05

There is a growing number of articles about conversational AI (i.e., ChatGPT) for generating scientific literature reviews and summaries. Yet, comparative evidence lags its wide adoption by many clinicians and researchers. We explored ChatGPT's utility for literature search from an end-user perspective through the lens of clinicians and biomedical researchers. We quantitatively compared basic versions of ChatGPT's utility against conventional search methods such as Google and PubMed. We further tested whether ChatGPT user-support tools (i.e., plugins, web-browsing function, prompt-engineering, and custom-GPTs) could improve its response across four common and practical literature search scenarios: (1) high-interest topics with an abundance of information, (2) niche topics with limited information, (3) scientific hypothesis generation, and (4) for newly emerging clinical practices questions. Our results demonstrated that basic ChatGPT functions had limitations in consistency, accuracy, and relevancy. User-support tools showed improvements, but the limitations persisted. Interestingly, each literature search scenario posed different challenges: an abundance of secondary information sources in high interest topics, and uncompelling literatures for new/niche topics. This study tested practical examples highlighting both the potential and the pitfalls of integrating conversational AI into literature search processes, and underscores the necessity for rigorous comparative assessments of AI tools in scientific research.

Citation: 

Yip R, Sun YJ, Bassuk AG, Mahajan VB. Artificial intelligence's contribution to biomedical literature search: revolutionizing or complicating? PLOS Digit Health. 2025 May 12;4(5):e0000849. doi: 10.1371/journal.pdig.0000849. PMID: 40354425; PMCID: PMC12068611.

PMCID: 
PMC12068611
PubMed ID: 
40354425
Year of Publication: 
2025
PLOS Digit Health