Centre for Genetics and Genomics Versus Arthritis, Centre for Musculoskeletal Research, Manchester Academic Health Science Centre, The University of Manchester, AV Hill Building, Oxford Road, Manchester, M13 9PT, UK.
NIHR Manchester Biomedical Research Centre, Manchester University NHS Foundation Trust, Manchester Academic Health Science Centre, Manchester, UK.
Sci Rep. 2020 Nov 13;10(1):19825. doi: 10.1038/s41598-020-76972-9.
CD4+ T-cells represent a heterogeneous collection of specialised sub-types and are a key cell type in the pathogenesis of many diseases due to their role in the adaptive immune system. By investigating CD4+ T-cells at the single cell level, using RNA sequencing (scRNA-seq), there is the potential to identify specific cell states driving disease or treatment response. However, the impact of sequencing depth and cell numbers, two important factors in scRNA-seq, has not been determined for a complex cell population such as CD4+ T-cells. We therefore generated a high depth, high cell number dataset to determine the effect of reduced sequencing depth and cell number on the ability to accurately identify CD4+ T-cell subtypes. Furthermore, we investigated T-cell signatures under resting and stimulated conditions to assess cluster specific effects of stimulation. We found that firstly, cell number has a much more profound effect than sequencing depth on the ability to classify cells; secondly, this effect is greater when cells are unstimulated and finally, resting and stimulated samples can be combined to leverage additional power whilst still allowing differences between samples to be observed. While based on one individual, these results could inform future scRNA-seq studies to ensure the most efficient experimental design.
CD4+ T 细胞代表了一组异质性的特化亚群,由于其在适应性免疫系统中的作用,是许多疾病发病机制中的关键细胞类型。通过在单细胞水平上使用 RNA 测序(scRNA-seq)研究 CD4+ T 细胞,有可能识别出驱动疾病或治疗反应的特定细胞状态。然而,对于 CD4+ T 细胞等复杂细胞群,测序深度和细胞数量这两个 scRNA-seq 的重要因素的影响尚未确定。因此,我们生成了一个高深度、高细胞数数据集,以确定降低测序深度和细胞数量对准确识别 CD4+ T 细胞亚型的能力的影响。此外,我们还研究了静止和刺激条件下的 T 细胞特征,以评估刺激对特定簇的影响。我们发现,首先,细胞数量对细胞分类能力的影响比测序深度大得多;其次,这种影响在未受刺激的细胞中更大;最后,静止和刺激样本可以组合使用,以利用额外的力量,同时仍然可以观察到样本之间的差异。虽然这些结果基于一个个体,但它们可以为未来的 scRNA-seq 研究提供信息,以确保最有效的实验设计。