logo
Loading...
Large language model use in clinical oncology

Medicine and Health

Large language model use in clinical oncology

N. Carl, F. Schramm, et al.

Explore how Large Language Models can reshape clinical oncology in this systematic review and meta-analysis conducted by Nicolas Carl and colleagues. Discover the significant performance variances influenced by diverse methodologies and what this means for integrative cancer care.... show more
Abstract
Large language models (LLMs) are undergoing intensive research for various healthcare domains. This systematic review and meta-analysis assesses current applications, methodologies, and the performance of LLMs in clinical oncology. A mixed-methods approach was used to extract, summarize, and compare methodological approaches and outcomes. This review includes 34 studies. LLMs are primarily evaluated on their ability to answer oncologic questions across various domains. The meta-analysis highlights a significant performance variance, influenced by diverse methodologies and evaluation criteria. Furthermore, differences in inherent model capabilities, prompting strategies, and oncological subdomains contribute to heterogeneity. The lack of use of standardized and LLM-specific reporting protocols leads to methodological disparities, which must be addressed to ensure comparability in LLM research and ultimately leverage the reliable integration of LLM technologies into clinical practice.
Publisher
npj Precision Oncology
Published On
Oct 23, 2024
Authors
Nicolas Carl, Franziska Schramm, Sarah Haggenmüller, Jakob Nikolas Kather, Martin J Hetz, Christoph Wies, Maurice Stephan Miche, Frederik Wessels, Titus J Brinker
Tags
Large Language Models
clinical oncology
systematic review
meta-analysis
performance variance
evaluation criteria
methodologies
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny