Department of Oncology, Medical Sciences Division, University of Oxford, Oxford, UK.
Department of Computing Sciences, Bocconi University, Milano, Italy.
Bioessays. 2022 Nov;44(11):e2200084. doi: 10.1002/bies.202200084. Epub 2022 Sep 6.
Almost all biomedical research to date has relied upon mean measurements from cell populations, however it is well established that what it is observed at this macroscopic level can be the result of many interactions of several different single cells. Thus, the observable macroscopic 'average' cannot outright be used as representative of the 'average cell'. Rather, it is the resulting emerging behaviour of the actions and interactions of many different cells. Single-cell RNA sequencing (scRNA-Seq) enables the comparison of the transcriptomes of individual cells. This provides high-resolution maps of the dynamic cellular programmes allowing us to answer fundamental biological questions on their function and evolution. It also allows to address medical questions such as the role of rare cell populations contributing to disease progression and therapeutic resistance. Furthermore, it provides an understanding of context-specific dependencies, namely the behaviour and function that a cell has in a specific context, which can be crucial to understand some complex diseases, such as diabetes, cardiovascular disease and cancer. Here, we provide an overview of scRNA-Seq, including a comparative review of emerging technologies and computational pipelines. We discuss the current and emerging applications and focus on tumour heterogeneity a clear example of how scRNA-Seq can provide new understanding of a complex disease. Additionally, we review the limitations and highlight the need of powerful computational pipelines and reproducible protocols for the broader acceptance of this technique in basic and clinical research.
迄今为止,几乎所有的生物医学研究都依赖于细胞群体的平均值测量,但众所周知,在宏观层面观察到的情况可能是多个不同单细胞相互作用的结果。因此,可观察到的宏观“平均值”不能直接用作“平均细胞”的代表。相反,它是许多不同细胞的作用和相互作用的结果所呈现出的新兴行为。单细胞 RNA 测序 (scRNA-Seq) 能够比较单个细胞的转录组。这提供了动态细胞程序的高分辨率图谱,使我们能够回答关于它们的功能和进化的基本生物学问题。它还可以解决一些医学问题,例如稀有细胞群体在疾病进展和治疗耐药性中的作用。此外,它还可以了解特定于上下文的依赖性,即细胞在特定环境中的行为和功能,这对于理解某些复杂疾病(如糖尿病、心血管疾病和癌症)至关重要。在这里,我们提供了 scRNA-Seq 的概述,包括对新兴技术和计算管道的比较评论。我们讨论了当前和新兴的应用,并重点介绍了肿瘤异质性,这清楚地说明了 scRNA-Seq 如何为复杂疾病提供新的认识。此外,我们还审查了该技术的局限性,并强调需要强大的计算管道和可重复的方案,以使其在基础和临床研究中得到更广泛的接受。