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首页> 外文期刊>Journal for ImmunoTherapy of Cancer >664?Applying advanced data analysis to immunotherapy drug discovery for Uveal Melanoma
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664?Applying advanced data analysis to immunotherapy drug discovery for Uveal Melanoma

机译:664?对Uveal黑色素瘤的免疫治疗药物发现应用高级数据分析

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Background Uveal melanoma is a rare variant of melanoma associated with monosomy 3, present high risk for metastatic disease, and has been resistant to all therapeutic approaches. We sought to use a novel advanced big data approach to identify potential new immunotherapy targets for the treatment of uveal melanoma. Methods Comprehensive multiplatform analysis of 80 primary uveal melanoma specimens in the TCGA gene expression database were evaluated. There were four previously reported [Robertson et al , Cancer Cell, 2017] molecularly distinct subsets consisting of two high-risk, largely disomy 3 (N=38 after data QC) and two low-risk, largely monosomy 3 (N=40) patterns predictive of metastatic progression. RNA sequencing data for these subsets were analyzed at Immuneering to obtain differential expression signatures associated with prognosis. QC was performed, including principal component analysis to identify outlier samples, and gene expression changes were determined by limma-voom analysis and organized by magnitude of change and statistical significance, using Benjamini-Hochberg multiple hypothesis correction. Pathway enrichments were conducted by GSEA. Prognosis-associated genomic signatures were evaluated using an advanced big data platform to identify relevant biological perturbations in each subgroup using two- and four- subset analyses. Results Large differences in gene expression were identified in high-risk vs. low-risk uveal melanoma samples. Volcano plots identified several independent genes differentially expressed in good vs. poor risk uveal melanoma. The most positively enriched gene expression pathways associated with poor prognosis related to innate and adaptive immune processes. This included genes associated with MHC expression, antigen processing and presentation, regulation of T cell responses, leukocyte chemotaxis, antigen binding and type I interferon responses. Transcriptomic perturbation analysis identified several associations of which the top included genes associated with overexpression of interferon-gamma and interferon-beta 1, and interferon-gamma ligand stimulation. Another major family identified was RAB31, which coordinate small GTPases involved in intracellular membrane trafficking. Prognosis-associated immune perturbations were far more highly enriched among a subset of patients, indicating differing underlying biology in a patient subset that could be relevant for treatment. Conclusions Our data identified numerous potential therapeutic targets, many associated with tumor-immune system interactions in high-risk uveal melanoma samples. Advanced big data analysis platforms may be leveraged to identify therapeutic targets in challenging human diseases and our data has provided new directions for immunotherapy drug development in uveal melanoma.
机译:背景技术UVEAL黑色素瘤是与单体3相关的黑素瘤的罕见变体,即转移性疾病的高风险,并对所有治疗方法抵抗。我们试图利用新的高级大数据方法来识别潜在的新免疫疗法治疗无过敏黑色素瘤。方法评价了TCGA基因表达数据库中80次初级无过马那亚瘤样品的综合多层型分析。先前报道了[罗伯逊等人,癌细胞,2017]分子不同的子集,由两个高风险,主要是强度3(n = 38后数据QC)和两个低风险,主要是单兆字节3(n = 40)组成模式预测转移性进展。通过免疫接收分析这些子集的RNA测序数据,以获得与预后相关的差异表达签名。进行了QC,包括主要成分分析以鉴定异常样本,并通过利马变速分析确定基因表达变化,并使用本杰里尼-Hochberg多假设校正,通过变化和统计显着性的大小来组织。途径富集由GSEA进行。使用高级大数据平台评估预后相关的基因组特征,以识别每个子组中的相关生物扰动,使用两组和四个子集分析。结果高风险的高风暴黑素瘤样品中鉴定了基因表达的大差异。火山图鉴定了几种差异表达的几个独立基因,具有良好的风险耐受性黑色素瘤。与先天和适应性免疫过程相关的预后差异的最积极富集的基因表达途径。这包括与MHC表达,抗原加工和呈递相关的基因,T细胞应答的调节,白细胞趋化,抗原结合和I型干扰素反应。转录组扰动分析鉴定了几种关联,其中顶部包括与干扰素-γ和干扰素-β1的过度表达相关的基因,以及干扰素-γ-β配体刺激。鉴定的另一个主要家庭是Rab31,其协调参与细胞内膜贩运的小GTP酶。预后相关的免疫扰动在患者的子集中富集了更高度富集,表明可能与治疗相关的患者子集中的不同潜在生物学。结论我们的数据鉴定了许多潜在的治疗目标,许多与高风险性黑色素瘤样品中的肿瘤 - 免疫系统相互作用有关。可以利用先进的大数据分析平台来识别挑战性人类疾病的治疗目标,我们的数据为UVEAL黑色素瘤中的免疫治疗药物发育提供了新的指导。

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