Login / Signup

A Research Ethics Framework for the Clinical Translation of Healthcare Machine Learning.

Melissa Danielle McCraddenJames A AndersonElizabeth A StephensonErik DrysdaleLauren ErdmanAnna GoldenbergRandi Zlotnik Shaul
Published in: The American journal of bioethics : AJOB (2022)
The application of artificial intelligence and machine learning (ML) technologies in healthcare have immense potential to improve the care of patients. While there are some emerging practices surrounding responsible ML as well as regulatory frameworks, the traditional role of research ethics oversight has been relatively unexplored regarding its relevance for clinical ML. In this paper, we provide a comprehensive research ethics framework that can apply to the systematic inquiry of ML research across its development cycle. The pathway consists of three stages: (1) exploratory, hypothesis-generating data access; (2) silent period evaluation; (3) prospective clinical evaluation. We connect each stage to its literature and ethical justification and suggest adaptations to traditional paradigms to suit ML while maintaining ethical rigor and the protection of individuals. This pathway can accommodate a multitude of research designs from observational to controlled trials, and the stages can apply individually to a variety of ML applications.
Keyphrases