| Literature DB >> 31388390 |
Andrew McDavid1, Raphael Gottardo2,3, Noah Simon4, Mathias Drton3,5.
Abstract
Bulk gene expression experiments relied on aggregations of thousands of cells to measure the average expression in an organism. Advances in microfluidic and droplet sequencing now permit expression profiling in single cells. This study of cell-to-cell variation reveals that individual cells lack detectable expression of transcripts that appear abundant on a population level, giving rise to zero-inflated expression patterns. To infer gene co-regulatory networks from such data, we propose a multivariate Hurdle model. It is comprised of a mixture of singular Gaussian distributions. We employ neighborhood selection with the pseudo-likelihood and a group lasso penalty to select and fit undirected graphical models that capture conditional independences between genes. The proposed method is more sensitive than existing approaches in simulations, even under departures from our Hurdle model. The method is applied to data for T follicular helper cells, and a high-dimensional profile of mouse dendritic cells. It infers network structure not revealed by other methods; or in bulk data sets. An R implementation is available at https://github.com/amcdavid/HurdleNormal.Entities:
Year: 2019 PMID: 31388390 PMCID: PMC6684253 DOI: 10.1214/18-AOAS1213
Source DB: PubMed Journal: Ann Appl Stat ISSN: 1932-6157 Impact factor: 2.083