A Roadmap for Selecting and Utilizing Optimal Features in scRNA Sequencing Data Analysis for Stem Cell Research: A Comprehensive Review.

IF 2.5 4区 医学 Q3 CELL & TISSUE ENGINEERING International journal of stem cells Pub Date : 2024-11-30 Epub Date: 2024-03-27 DOI:10.15283/ijsc23170
Maath Alani, Hamza Altarturih, Selin Pars, Bahaa Al-Mhanawi, Ernst J Wolvetang, Mohammed R Shaker
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Abstract

Stem cells and the cells they produce are unique because they vary from one cell to another. Traditional methods of studying cells often overlook these differences. However, the development of new technologies for studying individual cells has greatly changed biological research in recent years. Among these innovations, single-cell RNA sequencing (scRNA-seq) stands out. This technique allows scientists to examine the activity of genes in each cell, across thousands or even millions of cells. This makes it possible to understand the diversity of cells, identify new types of cells, and see how cells differ across different tissues, individuals, species, times, and conditions. This paper discusses the importance of scRNA-seq and the computational tools and software that are essential for analyzing the vast amounts of data generated by scRNA-seq studies. Our goal is to provide practical advice for bioinformaticians and biologists who are using scRNA-seq to study stem cells. We offer an overview of the scRNA-seq field, including the tools available, how they can be used, and how to present the results of these studies effectively. Our findings include a detailed overview and classification of tools used in scRNA-seq analysis, based on a review of 2,733 scientific publications. This review is complemented by information from the scRNA-tools database, which lists over 1,400 tools for analyzing scRNA-seq data. This database is an invaluable resource for researchers, offering a wide range of options for analyzing their scRNA-seq data.

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在干细胞研究 scRNA 测序数据分析中选择和利用最佳特征的路线图:全面综述。
干细胞及其产生的细胞是独一无二的,因为它们因细胞而异。传统的细胞研究方法往往忽略了这些差异。然而,近年来研究单个细胞的新技术的发展极大地改变了生物学研究。在这些创新中,单细胞 RNA 测序(scRNA-seq)脱颖而出。这项技术让科学家们能够研究每个细胞中基因的活性,以及数千甚至数百万个细胞中基因的活性。这使得了解细胞的多样性、识别新型细胞以及观察细胞在不同组织、个体、物种、时间和条件下的差异成为可能。本文讨论了 scRNA-seq 的重要性,以及分析 scRNA-seq 研究产生的大量数据所必需的计算工具和软件。我们的目标是为使用scRNA-seq研究干细胞的生物信息学家和生物学家提供实用建议。我们概述了scRNA-seq领域,包括可用的工具、如何使用这些工具以及如何有效地展示这些研究的结果。我们的研究结果包括对 scRNA-seq 分析所用工具的详细概述和分类,这是基于对 2,733 篇科学出版物的综述。scRNA-tools 数据库列出了 1,400 多种用于分析 scRNA-seq 数据的工具,对这一综述进行了补充。该数据库是研究人员的宝贵资源,为分析 scRNA-seq 数据提供了多种选择。
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来源期刊
International journal of stem cells
International journal of stem cells Biochemistry, Genetics and Molecular Biology-Cell Biology
CiteScore
5.10
自引率
4.30%
发文量
38
期刊介绍: International Journal of Stem Cells (Int J Stem Cells), a peer-reviewed open access journal, principally aims to provide a forum for investigators in the field of stem cell biology to present their research findings and share their visions and opinions. Int J Stem Cells covers all aspects of stem cell biology including basic, clinical and translational research on genetics, biochemistry, and physiology of various types of stem cells including embryonic, adult and induced stem cells. Reports on epigenetics, genomics, proteomics, metabolomics of stem cells are welcome as well. Int J Stem Cells also publishes review articles, technical reports and treatise on ethical issues.
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