Variable Selection for Sparse Data with Applications to Vaginal Microbiome and Gene Expression Data

Genes (Basel). 2023 Feb 3;14(2):403. doi: 10.3390/genes14020403.

Abstract

Sparse data with a high portion of zeros arise in various disciplines. Modeling sparse high-dimensional data is a challenging and growing research area. In this paper, we provide statistical methods and tools for analyzing sparse data in a fairly general and complex context. We utilize two real scientific applications as illustrations, including a longitudinal vaginal microbiome data and a high dimensional gene expression data. We recommend zero-inflated model selections and significance tests to identify the time intervals when the pregnant and non-pregnant groups of women are significantly different in terms of Lactobacillus species. We apply the same techniques to select the best 50 genes out of 2426 sparse gene expression data. The classification based on our selected genes achieves 100% prediction accuracy. Furthermore, the first four principal components based on the selected genes can explain as high as 83% of the model variability.

Keywords: gene expression; hurdle model; longitudinal data; model selection; vaginal microbiome; zero-inflated model.

Publication types

  • Research Support, Non-U.S. Gov't
  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Female
  • Gene Expression
  • Humans
  • Lactobacillus
  • Microbiota*
  • Models, Statistical*
  • Vagina

Grants and funding

This research was partially supported by the U.S. NSF grant DMS-1924859 and the CSUSB 2022 Summer Research Grant.