CIEC: Cross-tissue Immune Cell Type Enrichment and Expression Map Visualization for Cancer.

Jinhua He, Haitao Luo, Wei Wang, Dechao Bu, Zhengkai Zou, Haolin Wang, Hongzhen Tang, Zeping Han, Wenfeng Luo, Jian Shen, Fangmei Xie, Yi Zhao, Zhiming Xiang
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Abstract

Single-cell transcriptome sequencing technology has been applied to decode the cell types and functional states of immune cells, revealing their tissue-specific gene expression patterns and functions in cancer immunity. Comprehensive assessments of immune cells within and across tissues will provide us with a deeper understanding of the tumor immune system in general. Here, we present Cross-tissue Immune cell type or state Enrichment analysis of gene lists for Cancer (CIEC), the first web-based application that integrates database and enrichment analysis to estimate the cross-tissue immune cell type or state. CIEC version 1.0 consists of 480 samples covering primary tumor, adjacent normal tissue, lymph node, metastasis tissue, and peripheral blood from 323 cancer patients. By applying integrative analysis, we constructed an immune cell-type/state map for each context and adopted our previously developed Kyoto Encyclopedia of Genes and Genomes (KEGG) Orthology Based Annotation System (KOBAS) algorithm to estimate the enrichment for context-specific immune cell type/state. In addition, CIEC also provides an easy-to-use online interface for users to comprehensively analyze the immune cell characteristics mapped across multiple tissues, including expression map, correlation, similar genes detection, signature score, and expression comparison. We believe that CIEC will be a valuable resource for exploring the intrinsic characteristics of immune cells in cancer patients and for potentially guiding novel cancer-immune biomarker development and immunotherapy strategies. CIEC is freely accessible at http://ciec.gene.ac/.

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CIEC:癌症跨组织免疫细胞类型富集和表达图谱可视化。
单细胞转录组测序技术已被用于解码免疫细胞的细胞类型和功能状态,揭示它们在癌症免疫中的组织特异性基因表达模式和功能。对组织内和组织间免疫细胞的全面评估将使我们对肿瘤免疫系统有更深入的了解。在这里,我们提出了癌症基因列表的跨组织免疫细胞类型或状态富集分析(CIEC),这是第一个基于网络的应用,它整合了数据库和富集分析,以估计跨组织免疫细胞类型或状态。CIEC 1.0 版包含 480 份样本,涵盖原发肿瘤、邻近正常组织、淋巴结、转移组织和外周血,来自 323 名癌症患者。通过综合分析,我们构建了每个背景的免疫细胞类型/状态图,并采用我们之前开发的《京都基因组百科全书》(KEGG)基于选集的注释系统(KOBAS)算法来估算背景特异性免疫细胞类型/状态的富集度。此外,CIEC还提供了一个易于使用的在线界面,供用户全面分析多个组织中免疫细胞的特征,包括表达图谱、相关性、相似基因检测、特征得分和表达比较。我们相信,CIEC 将成为探索癌症患者免疫细胞内在特征的宝贵资源,并有可能指导新型癌症免疫生物标记物的开发和免疫治疗策略。CIEC 可在 http://ciec.gene.ac/ 免费访问。
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