A flexible approach for predictive biomarker discovery

Biostatistics. 2023 Oct 18;24(4):1085-1105. doi: 10.1093/biostatistics/kxac029.

Abstract

An endeavor central to precision medicine is predictive biomarker discovery; they define patient subpopulations which stand to benefit most, or least, from a given treatment. The identification of these biomarkers is often the byproduct of the related but fundamentally different task of treatment rule estimation. Using treatment rule estimation methods to identify predictive biomarkers in clinical trials where the number of covariates exceeds the number of participants often results in high false discovery rates. The higher than expected number of false positives translates to wasted resources when conducting follow-up experiments for drug target identification and diagnostic assay development. Patient outcomes are in turn negatively affected. We propose a variable importance parameter for directly assessing the importance of potentially predictive biomarkers and develop a flexible nonparametric inference procedure for this estimand. We prove that our estimator is double robust and asymptotically linear under loose conditions in the data-generating process, permitting valid inference about the importance metric. The statistical guarantees of the method are verified in a thorough simulation study representative of randomized control trials with moderate and high-dimensional covariate vectors. Our procedure is then used to discover predictive biomarkers from among the tumor gene expression data of metastatic renal cell carcinoma patients enrolled in recently completed clinical trials. We find that our approach more readily discerns predictive from nonpredictive biomarkers than procedures whose primary purpose is treatment rule estimation. An open-source software implementation of the methodology, the uniCATE R package, is briefly introduced.

Keywords: Heterogeneous treatment effects; High-dimensional data; Nonparametric statistics; Precision medicine; Predictive biomarkers; Variable importance.

Publication types

  • Randomized Controlled Trial
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Biomarkers
  • Biomedical Research*
  • Carcinoma, Renal Cell* / diagnosis
  • Carcinoma, Renal Cell* / genetics
  • Computer Simulation
  • Humans
  • Kidney Neoplasms* / diagnosis
  • Kidney Neoplasms* / genetics

Substances

  • Biomarkers