Lessons Learned from Designing an AI-Enabled Diagnosis Tool for Pathologists

要旨

Despite the promises of data-driven artificial intelligence (AI), little is known about how we can bridge the gulf between traditional physician-driven diagnosis and a plausible future of medicine automated by AI. Specifically, how can we involve AI usefully in physicians’ diagnosis workflow given that most AI is still nascent and error-prone (e.g., in digital pathology)? To explore this question, we first propose a series of collaborative techniques to engage human pathologists with AI given AI’s capabilities and limitations, based on which we prototype Impetus—a tool where an AI takes various degrees of initiatives to provide various forms of assistance to a pathologist in detecting tumors from histological slides. We summarize observations and lessons learned from a study with eight pathologists and discuss recommendations for future work on human-centered medical AI systems.

著者
Hongyan Gu
UCLA, Los Angeles, California, United States
Jingbin Huang
UCLA, Los Angeles, California, United States
lauren Hung
UCLA, Los Angeles, California, United States
Xiang 'Anthony' Chen
UCLA, Los Angeles, California, United States
論文URL

https://doi.org/10.1145/3449084

動画

会議: CSCW2021

The 24th ACM Conference on Computer-Supported Cooperative Work and Social Computing

セッション: Human-AI Collaboration

Papers Room E
8 件の発表
2021-10-26 20:30:00
2021-10-26 22:00:00