Application of Deep Learning on Single-cell RNA Sequencing Data Analysis: A Review

IF 11.5 2区 生物学 Q1 GENETICS & HEREDITY
Matthew Brendel , Chang Su , Zilong Bai , Hao Zhang , Olivier Elemento , Fei Wang
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引用次数: 10

Abstract

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 the development of complex organisms, and improved our understanding of disease states, such as cancer, diabetes, and coronavirus disease 2019 (COVID-19). 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 and 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 analytic tools. Finally, we summarize the challenges in current deep learning approaches faced within scRNA-seq data and discuss potential directions for improvements in deep learning algorithms for scRNA-seq data analysis.

Abstract Image

Abstract Image

深度学习在单细胞RNA测序数据分析中的应用综述
单细胞RNA测序(scRNA-seq)已成为一种常规技术,用于同时定量数千个单细胞的基因表达谱。scRNA-seq数据分析在细胞状态和表型研究中发挥着重要作用,有助于阐明复杂生物体发育过程等生物学过程,并提高我们对癌症、糖尿病和冠状病毒疾病2019 (COVID-19)等疾病状态的理解。深度学习是人工智能的最新进展,已用于解决涉及大型数据集的许多问题,也已成为scRNA-seq数据分析的有前途的工具,因为它能够从嘈杂,异构和高维scRNA-seq数据中提取信息丰富且紧凑的特征,以改善下游分析。本综述旨在调查最近在scRNA-seq数据分析中开发的深度学习技术,确定通过深度学习推进的scRNA-seq数据分析管道中的关键步骤,并解释深度学习相对于传统分析工具的好处。最后,我们总结了当前深度学习方法在scRNA-seq数据中面临的挑战,并讨论了用于scRNA-seq数据分析的深度学习算法的潜在改进方向。
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来源期刊
Genomics, Proteomics & Bioinformatics
Genomics, Proteomics & Bioinformatics Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
14.30
自引率
4.20%
发文量
844
审稿时长
61 days
期刊介绍: Genomics, Proteomics and Bioinformatics (GPB) is the official journal of the Beijing Institute of Genomics, Chinese Academy of Sciences / China National Center for Bioinformation and Genetics Society of China. It aims to disseminate new developments in the field of omics and bioinformatics, publish high-quality discoveries quickly, and promote open access and online publication. GPB welcomes submissions in all areas of life science, biology, and biomedicine, with a focus on large data acquisition, analysis, and curation. Manuscripts covering omics and related bioinformatics topics are particularly encouraged. GPB is indexed/abstracted by PubMed/MEDLINE, PubMed Central, Scopus, BIOSIS Previews, Chemical Abstracts, CSCD, among others.
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