Abstract

Allelic expression imbalance (AEI), quantified by the relative expression of two alleles of a gene in a diploid organism, can help explain phenotypic variations among individuals. Traditional methods detect AEI using bulk RNA sequencing (RNA-seq) data, a data type that averages out cell-to-cell heterogeneity in gene expression across cell types. Since the patterns of AEI may vary across different cell types, it is desirable to study AEI in a cell-type-specific manner. Although this can be achieved by single-cell RNA sequencing (scRNA-seq), it requires full-length transcript to be sequenced in single cells of a large number of individuals, which are still cost prohibitive to generate. To overcome this limitation and utilize the vast amount of existing disease relevant bulk tissue RNA-seq data, we developed BSCET, which enables the characterization of cell-type-specific AEI in bulk RNA-seq data by integrating cell type composition information inferred from a small set of scRNA-seq samples, possibly obtained from an external dataset. By modeling covariate effect, BSCET can also detect genes whose cell-type-specific AEI are associated with clinical factors. Through extensive benchmark evaluations, we show that BSCET correctly detected genes with cell-type-specific AEI and differential AEI between healthy and diseased samples using bulk RNA-seq data. BSCET also uncovered cell-type-specific AEIs that were missed in bulk data analysis when the directions of AEI are opposite in different cell types. We further applied BSCET to two pancreatic islet bulk RNA-seq datasets, and detected genes showing cell-type-specific AEI that are related to the progression of type 2 diabetes. Since bulk RNA-seq data are easily accessible, BSCET provides a convenient tool to integrate information from scRNA-seq data to gain insight on AEI with cell type resolution. Results from such analysis will advance our understanding of cell type contributions in human diseases.

Highlights

  • Allelic expression imbalance (AEI) refers to the phenomenon where the expression between the paternal and maternal alleles of a gene differs in their magnitude in a diploid individual [1]

  • Detection of allelic expression imbalance (AEI), a phenomenon where the two alleles of a gene differ in their expression magnitude, is a key step towards the understanding of phenotypic variations among individuals

  • For a single nucleotide polymorphisms (SNPs) with cell-type-specific AEI, it might be of interest to further investigate if its celltype-specific AEI is affected by any clinical factors

Read more

Summary

Introduction

Allelic expression imbalance (AEI) refers to the phenomenon where the expression between the paternal and maternal alleles of a gene differs in their magnitude in a diploid individual [1]. In the presence of cis-regulatory effect, the expression increasing allele at a cis-regulatory polymorphism can lead to higher expression of one allele compared to the other. Such allelic imbalance in gene expression may associate with phenotypic variations among individuals and contribute to human disease. AEI is studied by bulk RNA sequencing (RNA-seq) in which the allelic expression differences at heterozygous exonic single nucleotide polymorphisms (SNPs) are characterized by allele-specific read counts [3,4,5]. To gain further insight into the cis-regulatory effect, it is necessary to characterize AEI with cell type resolution

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call