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Bioinformatics Approaches to Profile the Tumor Microenvironment for Immunotherapeutic Discovery

机译:生物信息学方法以概况肿瘤微环境进行免疫治疗发现

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摘要

In the microenvironment of a malignancy, tumor cells do not exist in isolation, but rather in a diverse ecosystem consisting not only of heterogeneous tumor-cell clones, but also normal cell types such as fibroblasts, vasculature, and an extensive pool of immune cells at numerous possible stages of activation and differentiation. This results in a complex interplay of diverse cellular signaling systems, where the immune cell component is now established to influence cancer progression and therapeutic response. It is experimentally difficult and laborious to comprehensively and systematically profile these distinct cell types from heterogeneous tumor samples in order to capitalize on potential therapeutic and biomarker discoveries. One emerging solution to address this challenge is to computationally extract cell-type specific information directly from bulk tumors. Such in silico approaches are advantageous because they can capture both the cell-type specific profiles and the tissue systems level of cell-cell interactions. Accurately and comprehensively predicting these patterns in tumors is an important challenge to overcome, not least given the success of immunotherapeutic drug treatment of several human cancers. This is especially challenging for subsets of closely related immune cell phenotypes with relatively small gene expression differences, which have critical functional distinctions. Here, we outline the existing and emerging novel bioinformatics strategies that can be used to profile the tumor immune landscape.
机译:在恶性肿瘤的微环境中,肿瘤细胞不存在分离,而是在不仅包括异质肿瘤 - 细胞克隆的各种生态系统中,而且在诸如成纤维细胞,血管系统和广泛的免疫细胞中组成的正常细胞类型许多可能的激活和分化阶段。这导致多种细胞信号系统的复杂相互作用,现在建立免疫细胞组分以影响癌症进展和治疗反应。它是通过实验难以和生成的,以全面肿瘤样本全面和系统地概述这些不同的细胞类型,以利用潜在的治疗和生物标志物发现。解决这一挑战的一个新兴解决方案是直接从散装肿瘤计算细胞类型特定信息。在硅方法中是有利的,因为它们可以捕获细胞型特异性谱和细胞 - 细胞相互作用的组织系统水平。准确,全面地预测肿瘤中的这些模式是克服的重要挑战,否则克服了几种人类癌症的免疫治疗药物治疗成功。这对于具有相对较小的基因表达差异的密切相关免疫细胞表型的子集特别具有挑战性,这具有关键的功能区别。在这里,我们概述了现有和新兴的新型生物信息学策略,可用于概述肿瘤免疫景观。

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