Litcius/Paper detail

Harnessing Biomedical Literature to Calibrate Clinicians’ Trust in AI Decision Support Systems

Qian Yang, Yuexing Hao, K. Quan, Stephen Yang, Yiran Zhao, Volodymyr Kuleshov, Fei Wang

202370 citationsDOI

Abstract

Clinical decision support tools (DSTs), powered by Artificial Intelligence (AI), promise to improve clinicians’ diagnostic and treatment decision-making. However, no AI model is always correct. DSTs must enable clinicians to validate each AI suggestion, convincing them to take the correct suggestions while rejecting its errors. While prior work often tried to do so by explaining AI’s inner workings or performance, we chose a different approach: We investigated how clinicians validated each other’s suggestions in practice (often by referencing scientific literature) and designed a new DST that embraces these naturalistic interactions. This design uses GPT-3 to draw literature evidence that shows the AI suggestions’ robustness and applicability (or the lack thereof). A prototyping study with clinicians from three disease areas proved this approach promising. Clinicians’ interactions with the prototype also revealed new design and research opportunities around (1) harnessing the complementary strengths of literature-based and predictive decision supports; (2) mitigating risks of de-skilling clinicians; and (3) offering low-data decision support with literature.

Topics & Concepts

Decision support systemComputer scienceRobustness (evolution)Clinical decision support systemArtificial intelligenceManagement scienceKnowledge managementData scienceEngineeringChemistryGeneBiochemistryArtificial Intelligence in Healthcare and EducationExplainable Artificial Intelligence (XAI)Machine Learning in Healthcare
Harnessing Biomedical Literature to Calibrate Clinicians’ Trust in AI Decision Support Systems | Litcius