Model-free prediction test with application to genomics data.

Journal: Proceedings of the National Academy of Sciences of the United States of America
PMID:

Abstract

Testing the significance of predictors in a regression model is one of the most important topics in statistics. This problem is especially difficult without any parametric assumptions on the data. This paper aims to test the null hypothesis that given confounding variables , does not significantly contribute to the prediction of under the model-free setting, where and are possibly high dimensional. We propose a general framework that first fits nonparametric machine learning regression algorithms on [Formula: see text] and [Formula: see text], then compares the prediction power of the two models. The proposed method allows us to leverage the strength of the most powerful regression algorithms developed in the modern machine learning community. The value for the test can be easily obtained by permutation. In simulations, we find that the proposed method is more powerful compared to existing methods. The proposed method allows us to draw biologically meaningful conclusions from two gene expression data analyses without strong distributional assumptions: 1) testing the prediction power of sequencing RNA for the proteins in cellular indexing of transcriptomes and epitopes by sequencing data and 2) identification of spatially variable genes in spatially resolved transcriptomics data.

Authors

  • Zhanrui Cai
    Faculty of Business and Economics, The University of Hong Kong.
  • Jing Lei
    Department of Statistics and Data Science, Carnegie Mellon University.
  • Kathryn Roeder
    Department of Statistics and Data Science, Carnegie Mellon University.