Bayesian nonparametric estimation of targeted agent effects on biomarker change to predict clinical outcome.
نویسندگان
چکیده
The effect of a targeted agent on a cancer patient's clinical outcome putatively is mediated through the agent's effect on one or more early biological events. This is motivated by pre-clinical experiments with cells or animals that identify such events, represented by binary or quantitative biomarkers. When evaluating targeted agents in humans, central questions are whether the distribution of a targeted biomarker changes following treatment, the nature and magnitude of this change, and whether it is associated with clinical outcome. Major difficulties in estimating these effects are that a biomarker's distribution may be complex, vary substantially between patients, and have complicated relationships with clinical outcomes. We present a probabilistically coherent framework for modeling and estimation in this setting, including a hierarchical Bayesian nonparametric mixture model for biomarkers that we use to define a functional profile of pre-versus-post-treatment biomarker distribution change. The functional is similar to the receiver operating characteristic used in diagnostic testing. The hierarchical model yields clusters of individual patient biomarker profile functionals, and we use the profile as a covariate in a regression model for clinical outcome. The methodology is illustrated by analysis of a dataset from a clinical trial in prostate cancer using imatinib to target platelet-derived growth factor, with the clinical aim to improve progression-free survival time.
منابع مشابه
Web-based Supplementary Materials for "Bayesian nonparametric estimation of targeted agent effects on biomarker change to predict clinical outcome," by
Prostate Cancer Trial Data Testing Assumptions. We test the validity of the simplifying assumption of no association between the distributions of the PDGFR values X and Y and the other covariates Z in the PFS model, by regressing the individual preand posttreatment mean values on hemoglobin levels and increase in prostate antigen levels. No significant association was revealed by such analysis....
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عنوان ژورنال:
- Biometrics
دوره 71 1 شماره
صفحات -
تاریخ انتشار 2015