Peng Jiang, Yu Zhang, Beibei Ru, E. Ruppin, Kai Wucherpfennig
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The primary pro-inflammatory members of each group induce a distinct set of secondary signals and are repressed by different anti-inflammatory cytokines. CellSig can reliably predict target activities of 43 cytokines using the transcriptomic data from severe COVID-19 cases, cancer immunotherapy-induced colitis, and immune checkpoint blockade response. Among these clinical applications, the differential activities of the NFKB and interferon cytokine groups revealed potential therapeutic targets for alleviating adverse inflammation without compromising viral clearance or cancer treatment. Citation Format: Peng Jiang, Yu Zhang, Beibei Ru, Eytan Ruppin, Kai Wucherpfennig. CellSig: A data-driven model of cytokine activity identifies therapeutic targets for severe COVID-19 and cancer immunotherapy-induced colitis [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. 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引用次数: 0
摘要
细胞因子活性的研究是免疫学研究的基础。然而,细胞因子功能的复杂性和冗余性阻碍了生物样品中信号活动的系统分析。为了解决这些问题,我们开发了Cell Signaling Analyzer (CellSig, https://cellsig.ccr.cancer.gov),这是一个数据驱动的基础设施,用于模拟细胞因子在炎症过程中如何相互合作和对抗。我们手工整理了20,591个与人类细胞因子、趋化因子和生长因子反应相关的转录组谱。CellSig揭示了两个主要的细胞因子组,分别以NFKB和干扰素相关信号为特征。每组的主要促炎成员诱导一组不同的次级信号,并被不同的抗炎细胞因子抑制。利用来自严重COVID-19病例、癌症免疫治疗诱导的结肠炎和免疫检查点阻断反应的转录组学数据,CellSig可以可靠地预测43种细胞因子的靶标活性。在这些临床应用中,NFKB和干扰素细胞因子组的不同活性揭示了减轻不良炎症而不影响病毒清除或癌症治疗的潜在治疗靶点。引用格式:姜鹏,张宇,茹蓓蓓,Eytan Ruppin, Kai Wucherpfennig。CellSig:数据驱动的细胞因子活性模型确定了严重COVID-19和癌症免疫治疗诱导的结肠炎的治疗靶点[摘要]。见:美国癌症研究协会2021年年会论文集;2021年4月10日至15日和5月17日至21日。费城(PA): AACR;癌症杂志,2021;81(13 -增刊):文摘第700期。
Abstract 700: CellSig: A data-driven model of cytokine activity identifies therapeutic targets for severe COVID-19 and cancer immunotherapy-induced colitis
Studies of cytokine activity are foundational to immunology research. However, the complexity and redundancy of cytokine functions have prevented systematic profiling of signaling activities in biological samples. To address these issues, we developed Cell Signaling Analyzer (CellSig, https://cellsig.ccr.cancer.gov), a data-driven infrastructure to model how cytokines cooperate with and antagonize each other in inflammation processes. We manually curated 20,591 transcriptomic profiles related to human cytokine, chemokine, and growth-factor response. CellSig revealed two main cytokine groups typified by NFKB and interferon-associated signals, respectively. The primary pro-inflammatory members of each group induce a distinct set of secondary signals and are repressed by different anti-inflammatory cytokines. CellSig can reliably predict target activities of 43 cytokines using the transcriptomic data from severe COVID-19 cases, cancer immunotherapy-induced colitis, and immune checkpoint blockade response. Among these clinical applications, the differential activities of the NFKB and interferon cytokine groups revealed potential therapeutic targets for alleviating adverse inflammation without compromising viral clearance or cancer treatment. Citation Format: Peng Jiang, Yu Zhang, Beibei Ru, Eytan Ruppin, Kai Wucherpfennig. CellSig: A data-driven model of cytokine activity identifies therapeutic targets for severe COVID-19 and cancer immunotherapy-induced colitis [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. Philadelphia (PA): AACR; Cancer Res 2021;81(13_Suppl):Abstract nr 700.