35

Towards physician-centered oversight of conversational diagnostic AI

Elahe Vedadi
David Barrett
Natalie Harris
Ellery Wulczyn
Shashir Reddy
Roma Ruparel
Mike Schaekermann
Tim Strother
Ryutaro Tanno
Yash Sharma
Jihyeon Lee
Cían Hughes
Dylan Slack
Anil Palepu
Jan Freyberg
Khaled Saab
Valentin Liévin
Wei-Hung Weng
Tao Tu
Yun Liu
Nenad Tomasev
Kavita Kulkarni
S. Sara Mahdavi
Kelvin Guu
Joëlle Barral
Dale R. Webster
James Manyika
Avinatan Hassidim
Katherine Chou
Yossi Matias
Pushmeet Kohli
Adam Rodman
Vivek Natarajan
Alan Karthikesalingam
David Stutz
Main:24 Pages
23 Figures
Bibliography:6 Pages
7 Tables
Appendix:33 Pages
Abstract

Recent work has demonstrated the promise of conversational AI systems for diagnostic dialogue. However, real-world assurance of patient safety means that providing individual diagnoses and treatment plans is considered a regulated activity by licensed professionals. Furthermore, physicians commonly oversee other team members in such activities, including nurse practitioners (NPs) or physician assistants/associates (PAs). Inspired by this, we propose a framework for effective, asynchronous oversight of the Articulate Medical Intelligence Explorer (AMIE) AI system. We propose guardrailed-AMIE (g-AMIE), a multi-agent system that performs history taking within guardrails, abstaining from individualized medical advice. Afterwards, g-AMIE conveys assessments to an overseeing primary care physician (PCP) in a clinician cockpit interface. The PCP provides oversight and retains accountability of the clinical decision. This effectively decouples oversight from intake and can thus happen asynchronously. In a randomized, blinded virtual Objective Structured Clinical Examination (OSCE) of text consultations with asynchronous oversight, we compared g-AMIE to NPs/PAs or a group of PCPs under the same guardrails. Across 60 scenarios, g-AMIE outperformed both groups in performing high-quality intake, summarizing cases, and proposing diagnoses and management plans for the overseeing PCP to review. This resulted in higher quality composite decisions. PCP oversight of g-AMIE was also more time-efficient than standalone PCP consultations in prior work. While our study does not replicate existing clinical practices and likely underestimates clinicians' capabilities, our results demonstrate the promise of asynchronous oversight as a feasible paradigm for diagnostic AI systems to operate under expert human oversight for enhancing real-world care.

View on arXiv
Comments on this paper