Jiang Ying, Zheng Baotong, Yang Yang, Li Xiangmei, Han Junwei
College of Basic Medical Science, Heilongjiang University of Chinese Medicine, Harbin, China.
College of Bioinformatics Science and Technology, Harbin Medical University, Harbin, China.
Front Cell Dev Biol. 2021 Jul 21;9:715275. doi: 10.3389/fcell.2021.715275. eCollection 2021.
Tumor somatic mutations in protein-coding regions may generate neoantigens which may trigger antitumor immune cell response. Increasing evidence supports that immune cell response may profoundly influence tumor progression. However, there are no calculated tools to systematically identify immune cells driven by specific somatic mutations. It is urgent to develop a calculated method to comprehensively detect tumor-infiltrating immune cells driven by the specific somatic mutations in cancer. We developed a novel software package (SMDIC) that enables the automated identification of somatic mutation-driven immune cell. SMDIC provides a novel pipeline to discover mutation-specific immune cells by integrating genomic and transcriptome data. The operation modes include inference of the relative abundance matrix of tumor-infiltrating immune cells, detection of differential abundance immune cells with respect to the gene mutation status, conversion of the abundance matrix of significantly dysregulated cells into two binary matrices (one for upregulated and one for downregulated cells), identification of somatic mutation-driven immune cells by comparing the gene mutation status with each immune cell in the binary matrices across all samples, and visualization of immune cell abundance of samples in different mutation status for each gene. SMDIC provides a user-friendly tool to identify somatic mutation-specific immune cell response. SMDIC may contribute to understand the mechanisms underlying anticancer immune response and find targets for cancer immunotherapy. The SMDIC was implemented as an R-based tool which was freely available from the CRAN website https://CRAN.R-project.org/package=SMDIC.
蛋白质编码区域的肿瘤体细胞突变可能产生新抗原,从而触发抗肿瘤免疫细胞反应。越来越多的证据支持免疫细胞反应可能会深刻影响肿瘤进展。然而,目前尚无用于系统识别由特定体细胞突变驱动的免疫细胞的计算工具。迫切需要开发一种计算方法,以全面检测癌症中由特定体细胞突变驱动的肿瘤浸润免疫细胞。我们开发了一种新型软件包(SMDIC),可实现对体细胞突变驱动的免疫细胞的自动识别。SMDIC通过整合基因组和转录组数据,提供了一种发现突变特异性免疫细胞的新途径。其操作模式包括推断肿瘤浸润免疫细胞的相对丰度矩阵、检测相对于基因突变状态的差异丰度免疫细胞、将显著失调细胞的丰度矩阵转换为两个二元矩阵(一个用于上调细胞,一个用于下调细胞)、通过比较所有样本二元矩阵中每个免疫细胞的基因突变状态来识别体细胞突变驱动的免疫细胞,以及可视化每个基因在不同突变状态下样本的免疫细胞丰度。SMDIC提供了一个用户友好的工具来识别体细胞突变特异性免疫细胞反应。SMDIC可能有助于理解抗癌免疫反应的潜在机制,并找到癌症免疫治疗的靶点。SMDIC作为基于R的工具实现,可从CRAN网站https://CRAN.R-project.org/package=SMDIC免费获取。