JMIR Medical Informatics (Dec 2022)

Implementation of Machine Learning Pipelines for Clinical Practice: Development and Validation Study

  • Lara J Kanbar,
  • Benjamin Wissel,
  • Yizhao Ni,
  • Nathan Pajor,
  • Tracy Glauser,
  • John Pestian,
  • Judith W Dexheimer

DOI
https://doi.org/10.2196/37833
Journal volume & issue
Vol. 10, no. 12
p. e37833

Abstract

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BackgroundArtificial intelligence (AI) technologies, such as machine learning and natural language processing, have the potential to provide new insights into complex health data. Although powerful, these algorithms rarely move from experimental studies to direct clinical care implementation. ObjectiveWe aimed to describe the key components for successful development and integration of two AI technology–based research pipelines for clinical practice. MethodsWe summarized the approach, results, and key learnings from the implementation of the following two systems implemented at a large, tertiary care children’s hospital: (1) epilepsy surgical candidate identification (or epilepsy ID) in an ambulatory neurology clinic; and (2) an automated clinical trial eligibility screener (ACTES) for the real-time identification of patients for research studies in a pediatric emergency department. ResultsThe epilepsy ID system performed as well as board-certified neurologists in identifying surgical candidates (with a sensitivity of 71% and positive predictive value of 77%). The ACTES system decreased coordinator screening time by 12.9%. The success of each project was largely dependent upon the collaboration between machine learning experts, research and operational information technology professionals, longitudinal support from clinical providers, and institutional leadership. ConclusionsThese projects showcase novel interactions between machine learning recommendations and providers during clinical care. Our deployment provides seamless, real-time integration of AI technology to provide decision support and improve patient care.