Litcius/Paper detail

Developing and Implementing Predictive Models in a Learning Healthcare System: Traditional and Artificial Intelligence Approaches in the Veterans Health Administration

David Atkins, Christos Makridis, Gil Alterovitz, Rachel Ramoni, Carolyn M. Clancy

2022Annual Review of Biomedical Data Science25 citationsDOI

Abstract

Predicting clinical risk is an important part of healthcare and can inform decisions about treatments, preventive interventions, and provision of extra services. The field of predictive models has been revolutionized over the past two decades by electronic health record data; the ability to link such data with other demographic, socioeconomic, and geographic information; the availability of high-capacity computing; and new machine learning and artificial intelligence methods for extracting insights from complex datasets. These advances have produced a new generation of computerized predictive models, but debate continues about their development, reporting, validation, evaluation, and implementation. In this review we reflect on more than 10 years of experience at the Veterans Health Administration, the largest integrated healthcare system in the United States, in developing, testing, and implementing such models at scale. We report lessons from the implementation of national risk prediction models and suggest an agenda for research.

Topics & Concepts

Psychological interventionHealth carePredictive powerData scienceScale (ratio)Predictive modellingComputer scienceClinical decision support systemSocioeconomic statusArtificial intelligenceKnowledge managementMedicineMachine learningDecision support systemNursingPolitical sciencePopulationEnvironmental healthLawEpistemologyPhilosophyQuantum mechanicsPhysicsArtificial Intelligence in Healthcare and EducationFrailty in Older AdultsHealthcare cost, quality, practices