Strategies for Implementing Machine Learning Algorithms in the Clinical Practice of Radiology.
Allison ChaeMichael S YaoHersh SagreiyaAri D GoldbergNeil ChatterjeeMatthew T MacLeanJeffrey T DudaAmeena ElahiArijitt BorthakurMarylyn DeRiggi RitchieDaniel James RaderCharles E KahnWalter R WitscheyJames C GeePublished in: Radiology (2024)
Despite recent advancements in machine learning (ML) applications in health care, there have been few benefits and improvements to clinical medicine in the hospital setting. To facilitate clinical adaptation of methods in ML, this review proposes a standardized framework for the step-by-step implementation of artificial intelligence into the clinical practice of radiology that focuses on three key components: problem identification, stakeholder alignment, and pipeline integration. A review of the recent literature and empirical evidence in radiologic imaging applications justifies this approach and offers a discussion on structuring implementation efforts to help other hospital practices leverage ML to improve patient care. Clinical trial registration no. 04242667 © RSNA, 2024 Supplemental material is available for this article.
Keyphrases
- artificial intelligence
- machine learning
- healthcare
- clinical practice
- big data
- deep learning
- quality improvement
- primary care
- clinical trial
- systematic review
- high resolution
- emergency department
- randomized controlled trial
- acute care
- mass spectrometry
- adverse drug
- study protocol
- open label
- social media
- electronic health record
- phase ii