A Framework for Predicting Impactability of Digital Care Management Using Machine Learning Methods.

Journal: Population health management
Published Date:

Abstract

Digital care management programs can reduce health care costs and improve quality of care. However, it is unclear how to target patients who are most likely to benefit from these programs ex ante, a shortcoming of current "risk score"-based approaches across many interventions. This study explores a framework to define impactability by using machine learning (ML) models to identify those patients most likely to benefit from a digital health intervention for care management. Anonymized insurance claims data were used from a commercially insured population across several US states and combined with inferred sociodemographic data. The approach involves creating 2 models and the comparative analysis of the methodologies and performances therein. The authors first train a cost prediction model to calculate the differences in predicted (without intervention) versus actual (with onboarding onto digital health platform) health care expenditures for patients (N 5600). This enables classification impactability if differences in predicted versus actual costs meet a predetermined threshold. Several random forest and logistic regression machine learning models were then trained to accurately categorize new patients as impactable versus not impactable. These parameters are modified through grid search to define the parameters that deliver optimal performance, reaching an overall sensitivity of 0.77 and specificity of 0.65 among all models. This approach shows that impactability for a digital health intervention can be successfully defined using ML methods, thus enabling efficient allocation of resources. This framework is generalizable to analyzing impactability of any intervention and can contribute to realizing closed-loop feedback systems for continuous improvement in health care.

Authors

  • Heather Mattie
    Harvard T H Chan School of Public Health, Harvard University, Cambridge, MA, USA.
  • Patrick Reidy
    Wellframe, Inc., Boston, Massachusetts, USA.
  • Patrik Bachtiger
    Department of Health Policy and Management, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, USA.
  • Emily Lindemer
    Wellframe, Boston, MA, USA.
  • Nikolay Nikolaev
    Wellframe, Inc., Boston, Massachusetts, USA.
  • Mohammad Jouni
    Wellframe, Inc., Boston, Massachusetts, USA.
  • Joann Schaefer
    BlueCross BlueShield Nebraska, Omaha, Nebraska, USA.
  • Michael Sherman
    Harvard Pilgrim Health Care, Wellesley, Massachusetts, USA.
  • Trishan Panch
    Instructor, Department of Health Policy and Management, T.H. Chan School of Public Health, Harvard University, Boston, United States of America.