4.7 Article

scAPAmod: Profiling Alternative Polyadenylation Modalities in Single Cells from Single-Cell RNA-Seq Data

期刊

出版社

MDPI
DOI: 10.3390/ijms23158123

关键词

single-cell RNA-seq; alternative polyadenylation (APA); Gaussian mixture model; patterns of APA usages

资金

  1. National Natural Science Foundation of China [61573296]

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In this study, we proposed an analysis framework called scAPAmod to accurately identify patterns of APA usage at the single-cell level. We used scAPAmod to analyze the dynamic changes in APA usage patterns during mouse spermatogenesis and identified cell-type-specific APA usage patterns. This study provides a higher resolution analysis of single-cell gene expression heterogeneity compared to traditional gene expression profiling.
Alternative polyadenylation (APA) is a key layer of gene expression regulation, and APA choice is finely modulated in cells. Advances in single-cell RNA-seq (scRNA-seq) have provided unprecedented opportunities to study APA in cell populations. However, existing studies that investigated APA in single cells were either confined to a few cells or focused on profiling APA dynamics between cell types or identifying APA sites. The diversity and pattern of APA usages on a genomic scale in single cells remains unappreciated. Here, we proposed an analysis framework based on a Gaussian mixture model, scAPAmod, to identify patterns of APA usage from homogeneous or heterogeneous cell populations at the single-cell level. We systematically evaluated the performance of scAPAmod using simulated data and scRNA-seq data. The results show that scAPAmod can accurately identify different patterns of APA usages at the single-cell level. We analyzed the dynamic changes in the pattern of APA usage using scAPAmod in different cell differentiation and developmental stages during mouse spermatogenesis and found that even the same gene has different patterns of APA usages in different differentiation stages. The preference of patterns of usages of APA sites in different genomic regions was also analyzed. We found that patterns of APA usages of the same gene in 3 ' UTRs (3 ' untranslated region) and non-3 ' UTRs are different. Moreover, we analyzed cell-type-specific APA usage patterns and changes in patterns of APA usages across cell types. Different from the conventional analysis of single-cell heterogeneity based on gene expression profiling, this study profiled the heterogeneous pattern of APA isoforms, which contributes to revealing the heterogeneity of single-cell gene expression with higher resolution.

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