A regression framework for a probabilistic measure of cost-effectiveness.
Nicholas IllenbergerNandita MitraAndrew J SpiekerPublished in: Health economics (2022)
To make informed health policy decisions regarding a treatment, we must consider both its cost and its clinical effectiveness. In past work, we introduced the net benefit separation (NBS) as a novel measure of cost-effectiveness. The NBS is a probabilistic measure that characterizes the extent to which a treated patient will be more likely to experience benefit as compared to an untreated patient. Due to variation in treatment response across patients, uncovering factors that influence cost-effectiveness can assist policy makers in population-level decisions regarding resource allocation. In this paper, we introduce a regression framework for NBS in order to estimate covariate-specific NBS and find determinants of variation in NBS. Our approach is able to accommodate informative cost censoring through inverse probability weighting techniques, and addresses confounding through a semiparametric standardization procedure. Through simulations, we show that NBS regression performs well in a variety of common scenarios. We apply our proposed regression procedure to a realistic simulated data set as an illustration of how our approach could be used to investigate the association between cancer stage, comorbidities and cost-effectiveness when comparing adjuvant radiation therapy and chemotherapy in post-hysterectomy endometrial cancer patients.
Keyphrases
- public health
- healthcare
- radiation therapy
- end stage renal disease
- mental health
- newly diagnosed
- case report
- ejection fraction
- randomized controlled trial
- chronic kidney disease
- peritoneal dialysis
- early stage
- systematic review
- climate change
- minimally invasive
- papillary thyroid
- electronic health record
- molecular dynamics
- squamous cell carcinoma
- big data
- machine learning
- endometrial cancer
- risk assessment
- health information
- lymph node metastasis
- smoking cessation
- replacement therapy