Physician understanding, explainability, and trust in a hypothetical machine learning risk calculator.

Journal: Journal of the American Medical Informatics Association : JAMIA
PMID:

Abstract

OBJECTIVE: Implementation of machine learning (ML) may be limited by patients' right to "meaningful information about the logic involved" when ML influences healthcare decisions. Given the complexity of healthcare decisions, it is likely that ML outputs will need to be understood and trusted by physicians, and then explained to patients. We therefore investigated the association between physician understanding of ML outputs, their ability to explain these to patients, and their willingness to trust the ML outputs, using various ML explainability methods.

Authors

  • William K Diprose
    Department of Medicine, University of Auckland, Auckland, New Zealand.
  • Nicholas Buist
  • Ning Hua
  • Quentin Thurier
    Orion Health, New Zealand.
  • George Shand
    Clinical Education and Training Unit, Waitematā District Health Board, Auckland, New Zealand.
  • Reece Robinson