GNLGOct 11, 2022

Application of Deep Learning on Single-Cell RNA-sequencing Data Analysis: A Review

arXiv:2210.05677v168 citationsh-index: 108
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of analyzing complex scRNA-seq data for researchers in genomics and biomedicine, but is incremental as it is a review paper summarizing existing methods.

This review surveys deep learning techniques applied to single-cell RNA-sequencing data analysis, highlighting their benefits over conventional tools in extracting features from noisy, high-dimensional data to improve downstream biological insights.

Single-cell RNA-sequencing (scRNA-seq) has become a routinely used technique to quantify the gene expression profile of thousands of single cells simultaneously. Analysis of scRNA-seq data plays an important role in the study of cell states and phenotypes, and has helped elucidate biological processes, such as those occurring during development of complex organisms and improved our understanding of disease states, such as cancer, diabetes, and COVID, among others. Deep learning, a recent advance of artificial intelligence that has been used to address many problems involving large datasets, has also emerged as a promising tool for scRNA-seq data analysis, as it has a capacity to extract informative, compact features from noisy, heterogeneous, and high-dimensional scRNA-seq data to improve downstream analysis. The present review aims at surveying recently developed deep learning techniques in scRNA-seq data analysis, identifying key steps within the scRNA-seq data analysis pipeline that have been advanced by deep learning, and explaining the benefits of deep learning over more conventional analysis tools. Finally, we summarize the challenges in current deep learning approaches faced within scRNA-seq data and discuss potential directions for improvements in deep algorithms for scRNA-seq data analysis.

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