Institute for Immunity, Transplantation and Infection, School of Medicine, Stanford University, Stanford, CA, United States.
Center for Biomedical Research, Department of Medicine, School of Medicine, Stanford University, Stanford, CA, United States.
Front Immunol. 2021 May 14;12:659255. doi: 10.3389/fimmu.2021.659255. eCollection 2021.
Monocytes are crucial regulators of inflammation, and are characterized by three distinct subsets in humans, of which classical and non-classical are the most abundant. Different subsets carry out different functions and have been previously associated with multiple inflammatory conditions. Dissecting the contribution of different monocyte subsets to disease is currently limited by samples and cohorts, often resulting in underpowered studies and poor reproducibility. Publicly available transcriptome profiles provide an alternative source of data characterized by high statistical power and real-world heterogeneity. However, most transcriptome datasets profile bulk blood or tissue samples, requiring the use of approaches to quantify changes in cell levels. Here, we integrated 853 publicly available microarray expression profiles of sorted human monocyte subsets from 45 independent studies to identify robust and parsimonious gene expression signatures, consisting of 10 genes specific to each subset. These signatures maintain their accuracy regardless of disease state in an independent cohort profiled by RNA-sequencing and are specific to their respective subset when compared to other immune cells from both myeloid and lymphoid lineages profiled across 6160 transcriptome profiles. Consequently, we show that these signatures can be used to quantify changes in monocyte subsets levels in expression profiles from patients in clinical trials. Finally, we show that proteins encoded by our signature genes can be used in cytometry-based assays to specifically sort monocyte subsets. Our results demonstrate the robustness, versatility, and utility of our computational approach and provide a framework for the discovery of new cellular markers.
单核细胞是炎症的关键调节者,在人类中其特征为三个不同的亚群,其中经典和非经典亚群最为丰富。不同的亚群执行不同的功能,并与多种炎症状态相关。解析不同单核细胞亚群对疾病的贡献目前受到样本和队列的限制,这往往导致研究效力不足和可重复性差。公开可用的转录组谱提供了另一种数据来源,其具有高统计功效和真实世界的异质性。然而,大多数转录组数据集对批量血液或组织样本进行分析,需要使用计算方法来定量细胞水平的变化。在这里,我们整合了 45 项独立研究中 853 个人类单核细胞亚群的 853 个公开可用的微阵列表达谱,以确定稳健且简约的基因表达特征,这些特征由每个亚群特有的 10 个基因组成。这些特征在独立的 RNA 测序队列中保持准确性,与来自髓系和淋巴谱系的其他免疫细胞的转录组谱中分析的 6160 个转录组谱相比,具有各自亚群的特异性。因此,我们表明这些特征可用于量化临床试验中患者的单核细胞亚群水平在表达谱中的变化。最后,我们表明我们特征基因编码的蛋白质可用于基于细胞术的测定中,以特异性分选单核细胞亚群。我们的结果证明了我们计算方法的稳健性、多功能性和实用性,并为发现新的细胞标记物提供了框架。