Inferring gene regulatory network from single-cell transcriptomes with graph autoencoder model

基因调控网络 生物 计算生物学 推论 基因表达调控 基因 调节基因 调节顺序 自编码 基因表达 遗传学 计算机科学 人工智能 深度学习
作者
Jiacheng Wang,Yaojia Chen,Quan Zou
出处
期刊:PLOS Genetics [Public Library of Science]
卷期号:19 (9): e1010942-e1010942 被引量:15
标识
DOI:10.1371/journal.pgen.1010942
摘要

The gene regulatory structure of cells involves not only the regulatory relationship between two genes, but also the cooperative associations of multiple genes. However, most gene regulatory network inference methods for single cell only focus on and infer the regulatory relationships of pairs of genes, ignoring the global regulatory structure which is crucial to identify the regulations in the complex biological systems. Here, we proposed a graph-based Deep learning model for Regulatory networks Inference among Genes (DeepRIG) from single-cell RNA-seq data. To learn the global regulatory structure, DeepRIG builds a prior regulatory graph by transforming the gene expression of data into the co-expression mode. Then it utilizes a graph autoencoder model to embed the global regulatory information contained in the graph into gene latent embeddings and to reconstruct the gene regulatory network. Extensive benchmarking results demonstrate that DeepRIG can accurately reconstruct the gene regulatory networks and outperform existing methods on multiple simulated networks and real-cell regulatory networks. Additionally, we applied DeepRIG to the samples of human peripheral blood mononuclear cells and triple-negative breast cancer, and presented that DeepRIG can provide accurate cell-type-specific gene regulatory networks inference and identify novel regulators of progression and inhibition.

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