4.7 Article

A hybrid deep learning framework for gene regulatory network inference from single-cell transcriptomic data

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 23, Issue 2, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbab568

Keywords

gene regulatory network; single-cell transcriptomic data; network inference methods; deep learning

Funding

  1. National Natural Science Foundation of China [NSFC 61972280, 62172296]
  2. National Key R&D Program of China [2021YFC2100700]
  3. Shenzhen Science and Technology Program [KQTD20200820113106007]

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In this study, a deep learning framework called DGRNS is developed for inferring gene regulatory networks from single-cell transcriptomic data. It effectively identifies the relationships between gene pairs and overcomes the challenges of sparsity and noise in the data. The results show that DGRNS outperforms other methods and discovers novel regulatory relationships with high confidence, which require further research.
Inferring gene regulatory networks (GRNs) based on gene expression profiles is able to provide an insight into a number of cellular phenotypes from the genomic level and reveal the essential laws underlying various life phenomena. Different from the bulk expression data, single-cell transcriptomic data embody cell-to-cell variance and diverse biological information, such as tissue characteristics, transformation of cell types, etc. Inferring GRNs based on such data offers unprecedented advantages for making a profound study of cell phenotypes, revealing gene functions and exploring potential interactions. However, the high sparsity, noise and dropout events of single-cell transcriptomic data pose new challenges for regulation identification. We develop a hybrid deep learning framework for GRN inference from single-cell transcriptomic data, DGRNS, which encodes the raw data and fuses recurrent neural network and convolutional neural network (CNN) to train a model capable of distinguishing related gene pairs from unrelated gene pairs. To overcome the limitations of such datasets, it applies sliding windows to extract valuable features while preserving the direction of regulation. DGRNS is constructed as a deep learning model containing gated recurrent unit network for exploring time-dependent information and CNN for learning spatially related information. Our comprehensive and detailed comparative analysis on the dataset of mouse hematopoietic stem cells illustrates that DGRNS outperforms state-of-the-art methods. The networks inferred by DGRNS are about 16% higher than the area under the receiver operating characteristic curve of other unsupervised methods and 10% higher than the area under the precision recall curve of other supervised methods. Experiments on human datasets show the strong robustness and excellent generalization of DGRNS. By comparing the predictions with standard network, we discover a series of novel interactions which are proved to be true in some specific cell types. Importantly, DGRNS identifies a series of regulatory relationships with high confidence and functional consistency, which have not yet been experimentally confirmed and merit further research.

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