npj Digital Medicine (Jul 2022)

Human–machine teaming is key to AI adoption: clinicians’ experiences with a deployed machine learning system

  • Katharine E. Henry,
  • Rachel Kornfield,
  • Anirudh Sridharan,
  • Robert C. Linton,
  • Catherine Groh,
  • Tony Wang,
  • Albert Wu,
  • Bilge Mutlu,
  • Suchi Saria

DOI
https://doi.org/10.1038/s41746-022-00597-7
Journal volume & issue
Vol. 5, no. 1
pp. 1 – 6

Abstract

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Abstract While a growing number of machine learning (ML) systems have been deployed in clinical settings with the promise of improving patient care, many have struggled to gain adoption and realize this promise. Based on a qualitative analysis of coded interviews with clinicians who use an ML-based system for sepsis, we found that, rather than viewing the system as a surrogate for their clinical judgment, clinicians perceived themselves as partnering with the technology. Our findings suggest that, even without a deep understanding of machine learning, clinicians can build trust with an ML system through experience, expert endorsement and validation, and systems designed to accommodate clinicians’ autonomy and support them across their entire workflow.