Center for Systems Medicine, Institute of Basic Medical Sciences, Chinese Academy of Medical Sciences &Peking Union Medical College, Beijing 100005, Suzhou Institute of Systems Medicine, Suzhou, Jiangsu 215123, China.
Sci Rep. 2017 Jan 13;7:40508. doi: 10.1038/srep40508.
Mice are some of the widely used experimental animal models for studying human diseases. Defining the compositions of immune cell populations in various tissues from experimental mouse models is critical to understanding the involvement of immune responses in various physiological and patho-physiological conditions. However, non-lymphoid tissues are normally composed of vast and diverse cellular components, which make it difficult to quantify the relative proportions of immune cell types. Here we report the development of a computational algorithm, ImmuCC, to infer the relative compositions of 25 immune cell types in mouse tissues using microarray-based mRNA expression data. The ImmuCC algorithm showed good performance and robustness in many simulated datasets. Remarkable concordances were observed when ImmuCC was used on three public datasets, one including enriched immune cells, one with normal single positive T cells, and one with leukemia cell samples. To validate the performance of ImmuCC objectively, thorough cross-comparison of ImmuCC predicted compositions and flow cytometry results was done with in-house generated datasets collected from four distinct mouse lymphoid tissues and three different types of tumor tissues. The good correlation and biologically meaningful results demonstrate the broad utility of ImmuCC for assessing immune cell composition in diverse mouse tissues under various conditions.
小鼠是用于研究人类疾病的广泛使用的实验动物模型之一。定义实验小鼠模型中各种组织中免疫细胞群体的组成对于理解免疫反应在各种生理和病理生理条件下的参与至关重要。然而,非淋巴组织通常由大量和多样化的细胞成分组成,这使得定量免疫细胞类型的相对比例变得困难。在这里,我们报告了一种计算算法 ImmuCC 的开发,该算法可使用基于微阵列的 mRNA 表达数据推断小鼠组织中 25 种免疫细胞类型的相对组成。ImmuCC 算法在许多模拟数据集上表现出良好的性能和稳健性。当 ImmuCC 用于三个公共数据集时,观察到了显著的一致性,其中一个数据集包含富集的免疫细胞,一个数据集包含正常的单阳性 T 细胞,另一个数据集包含白血病细胞样本。为了客观验证 ImmuCC 的性能,我们使用来自四个不同的小鼠淋巴组织和三种不同类型的肿瘤组织的内部生成数据集对 ImmuCC 预测的组成与流式细胞术结果进行了彻底的交叉比较。良好的相关性和有生物学意义的结果表明,ImmuCC 可广泛用于评估各种条件下不同小鼠组织中的免疫细胞组成。