A reference-free R-learner for treatment recommendation.
Junyi ZhouYing ZhangWanzhu F TuPublished in: Statistical methods in medical research (2022)
Assigning optimal treatments to individual patients based on their characteristics is the ultimate goal of precision medicine. Deriving evidence-based recommendations from observational data while considering the causal treatment effects and patient heterogeneity is a challenging task, especially in situations of multiple treatment options. Herein, we propose a reference-free R-learner based on a simplex algorithm for treatment recommendation. We showed through extensive simulation that the proposed method produced accurate recommendations that corresponded to optimal treatment outcomes, regardless of the reference group. We used the method to analyze data from the Systolic Blood Pressure Intervention Trial (SPRINT) and achieved recommendations consistent with the current clinical guidelines.
Keyphrases
- blood pressure
- clinical trial
- end stage renal disease
- heart failure
- clinical practice
- machine learning
- newly diagnosed
- chronic kidney disease
- electronic health record
- ejection fraction
- study protocol
- high resolution
- prognostic factors
- big data
- adipose tissue
- high intensity
- replacement therapy
- deep learning
- artificial intelligence
- combination therapy
- open label
- peritoneal dialysis
- phase ii
- blood glucose
- phase iii