| Literature DB >> 35641123 |
Armando D Bedoya1,2, Nicoleta J Economou-Zavlanos3, Benjamin A Goldstein4, Allison Young3, J Eric Jelovsek5, Cara O'Brien1,2, Amanda B Parrish3, Scott Elengold6, Kay Lytle2, Suresh Balu7, Erich Huang1,2, Eric G Poon1,2,4, Michael J Pencina4,8.
Abstract
Artificial intelligence/machine learning models are being rapidly developed and used in clinical practice. However, many models are deployed without a clear understanding of clinical or operational impact and frequently lack monitoring plans that can detect potential safety signals. There is a lack of consensus in establishing governance to deploy, pilot, and monitor algorithms within operational healthcare delivery workflows. Here, we describe a governance framework that combines current regulatory best practices and lifecycle management of predictive models being used for clinical care. Since January 2021, we have successfully added models to our governance portfolio and are currently managing 52 models.Entities:
Keywords: Governance Models—organizational; Health Information Management/Organization & Administration; artificial intelligence; decision support systems—clinical; machine learning
Mesh:
Year: 2022 PMID: 35641123 PMCID: PMC9382367 DOI: 10.1093/jamia/ocac078
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 7.942