The long but necessary road to responsible use of large language models in healthcare research
Jethro C.C. Kwong, Serena Wang, Grace C. Nickel, Giovanni Cacciamani, Joseph C. Kvedar
Abstract
Large language models (LLMs) have shown promise in reducing time, costs, and errors associated with manual data extraction. A recent study demonstrated that LLMs outperformed natural language processing approaches in abstracting pathology report information. However, challenges include the risks of weakening critical thinking, propagating biases, and hallucinations, which may undermine the scientific method and disseminate inaccurate information. Incorporating suitable guidelines (e.g., CANGARU), should be encouraged to ensure responsible LLM use.
Topics & Concepts
DisseminationData extractionHealth careComputer scienceData scienceRisk analysis (engineering)PsychologyCognitive psychologyMedicineMEDLINEPolitical scienceLawTelecommunicationsArtificial Intelligence in Healthcare and EducationRadiomics and Machine Learning in Medical ImagingAI in cancer detection