BRIE2: computational identification of splicing phenotypes from single-cell transcriptomic experiments.
Yuanhua HuangGuido SanguinettiPublished in: Genome biology (2021)
RNA splicing is an important driver of heterogeneity in single cells through the expression of alternative transcripts and as a determinant of transcriptional kinetics. However, the intrinsic coverage limitations of scRNA-seq technologies make it challenging to associate specific splicing events to cell-level phenotypes. BRIE2 is a scalable computational method that resolves these issues by regressing single-cell transcriptomic data against cell-level features. We show that BRIE2 effectively identifies differential disease-associated alternative splicing events and allows a principled selection of genes that capture heterogeneity in transcriptional kinetics and improve RNA velocity analyses, enabling the identification of splicing phenotypes associated with biological changes.
Keyphrases
- single cell
- rna seq
- high throughput
- bioinformatics analysis
- gene expression
- genome wide
- poor prognosis
- transcription factor
- induced apoptosis
- healthcare
- mesenchymal stem cells
- cell cycle arrest
- electronic health record
- cell proliferation
- binding protein
- bone marrow
- artificial intelligence
- heat stress
- genome wide identification