Optimizing the Implementation of Clinical Predictive Models to Minimize National Costs: Sepsis Case Study.
Parker RogersAaron E BoussinaSupreeth Prajwal ShashikumarGabriel WardiChristopher A LonghurstShamim NematiPublished in: Journal of medical Internet research (2023)
We designed a framework for customizing sepsis alert protocols within different diagnostic categories to minimize excess costs and analyzed model performance as a function of false alarm tolerance and compliance with model recommendations. We provide a framework that CMS policymakers could use to recommend minimum adherence rates to the early recognition and appropriate care of sepsis that is sensitive to hospital department-level incidence rates and national excess costs. Customizing the implementation of clinical predictive models by accounting for various behavioral and economic factors may improve the practical benefit of predictive models.