A Framework for Using Real-World Data and Health Outcomes Modeling to Evaluate Machine Learning–Based Risk Prediction Models

Mar 1, 2022, 00:00
10.1016/j.jval.2021.11.1360
https://www.valueinhealthjournal.com/article/S1098-3015(21)03191-0/fulltext
Title : A Framework for Using Real-World Data and Health Outcomes Modeling to Evaluate Machine Learning–Based Risk Prediction Models
Citation : https://www.valueinhealthjournal.com/action/showCitFormats?pii=S1098-3015(21)03191-0&doi=10.1016/j.jval.2021.11.1360
First page : 350
Section Title : THEMED SECTION: ARTIFICIAL INTELLIGENCE
Open access? : No
Section Order : 350

Objectives

We propose a framework of health outcomes modeling with dynamic decision making and real-world data (RWD) to evaluate the potential utility of novel risk prediction models in clinical practice. Lung transplant (LTx) referral decisions in cystic fibrosis offer a complex case study.

Methods

We used longitudinal RWD for a cohort of adults (n = 4247) from the Cystic Fibrosis Foundation Patient Registry to compare outcomes of an LTx referral policy based on machine learning (ML) mortality risk predictions to referral based on (1) forced expiratory volume in 1 second (FEV ) alone and (2) heterogenous usual care (UC). We then developed a patient-level simulation model to project number of patients referred for LTx and 5-year survival, accounting for transplant availability, organ allocation policy, and heterogenous treatment effects.

Results

Only 12% of patients (95% confidence interval 11%-13%) were referred for LTx over 5 years under UC, compared with 19% (18%-20%) under FEV and 20% (19%-22%) under ML. Of 309 patients who died before LTx referral under UC, 31% (27%-36%) would have been referred under FEV and 40% (35%-45%) would have been referred under ML. Given a fixed supply of organs, differences in referral time did not lead to significant differences in transplants, pretransplant or post-transplant deaths, or overall survival in 5 years.

Conclusions

Health outcomes modeling with RWD may help to identify novel ML risk prediction models with high potential real-world clinical utility and rule out further investment in models that are unlikely to offer meaningful real-world benefits.

Categories :
  • Artificial Intelligence, Machine Learning, Predictive Analytics
  • Cost/Cost of Illness/Resource Use Studies
  • Cost-comparison, Effectiveness, Utility, Benefit Analysis
  • Economic Evaluation
  • Literature Review & Synthesis
  • Methodological & Statistical Research
  • Study Approaches
Tags :
  • machine learning
  • microsimulation
  • real-world data
Regions :
  • Global
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