Integrating a Machine Learning System Into Clinical Workflows: Qualitative Study
Journal of Medical Internet Research2020Vol. 22(11), pp. e22421–e22421
Citations Over TimeTop 10% of 2020 papers
Sahil Sandhu, Anthony Lin, Nathan Brajer, Jessica Sperling, William Ratliff, Armando Bedoya, Suresh Balu, Cara O’Brien, Mark Sendak
Abstract
This study generated insights into how frontline clinicians perceived machine learning models and the barriers to integrating them into clinical workflows. These findings can inform future efforts to implement machine learning interventions in real-world settings and maximize the adoption of these interventions.
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