menu_book Explore the article's raw data

DeepKINET: a deep generative model for estimating single-cell RNA splicing and degradation rates

Abstract

Messenger RNA splicing and degradation are critical for gene expression regulation, the abnormality of which leads to diseases. Previous methods for estimating kinetic rates have limitations, assuming uniform rates across cells. DeepKINET is a deep generative model that estimates splicing and degradation rates at single-cell resolution from scRNA-seq data. DeepKINET outperforms existing methods on simulated and metabolic labeling datasets. Applied to forebrain and breast cancer data, it identifies RNA-binding proteins responsible for kinetic rate diversity. DeepKINET also analyzes the effects of splicing factor mutations on target genes in erythroid lineage cells. DeepKINET effectively reveals cellular heterogeneity in post-transcriptional regulation.

article Article
date_range 2024
language English
link Link of the paper
format_quote
Sorry! There is no raw data available for this article.
Loading references...
Loading citations...
Featured Keywords

Single-cell RNA sequencing (scRNA-seq)
RNA splicing
RNA degradation
Splicing kinetics
Transcriptome dynamics
RNA-binding proteins
RNA velocity
Neural network
Variational autoencoder (VAE)
Deep generative model
Dimensionality reduction
Cell differentiation
Metabolic labeling
Citations by Year

Share Your Research Data, Enhance Academic Impact