计算生物学
单细胞测序
核糖核酸
人口
基因组学
DNA测序
单细胞分析
RNA序列
标准化
数据科学
生物
计算机科学
基因
细胞
基因组
基因表达
遗传学
转录组
外显子组测序
医学
操作系统
环境卫生
突变
作者
Shaked Slovin,Annamaria Carissimo,Francesco Panariello,Antonio Grimaldi,Valentina Bouché,Gennaro Gambardella,Davide Cacchiarelli
标识
DOI:10.1007/978-1-0716-1307-8_19
摘要
Thanks to innovative sample-preparation and sequencing technologies, gene expression in individual cells can now be measured for thousands of cells in a single experiment. Since its introduction, single-cell RNA sequencing (scRNA-seq) approaches have revolutionized the genomics field as they created unprecedented opportunities for resolving cell heterogeneity by exploring gene expression profiles at a single-cell resolution. However, the rapidly evolving field of scRNA-seq invoked the emergence of various analytics approaches aimed to maximize the full potential of this novel strategy. Unlike population-based RNA sequencing approaches, scRNA seq necessitates comprehensive computational tools to address high data complexity and keep up with the emerging single-cell associated challenges. Despite the vast number of analytical methods, a universal standardization is lacking. While this reflects the fields' immaturity, it may also encumber a newcomer to blend in.
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