175:将27基因免疫肿瘤学算法转化为膀胱癌的途径建模

R. Seitz, T. Nielsen, B. Schweitzer, D. Hout, D. Ross
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引用次数: 0

摘要

27基因免疫肿瘤学(IO)算法已经证明与TNBC、NSCLC和转移性尿路上皮癌(mUC)的免疫检查点抑制剂(ICI)应答相关。该算法可以运行在从qPCR分析或从整个转录组RNA-seq数据分析产生的数据上。它将浸润性炎症细胞的基因表达信息与周围基质和肿瘤细胞的特征结合起来,将病例分为可能有反应的和无反应的。我们假设,由于该算法源自肿瘤免疫微环境(TIME)的生物学特征,分类功能和阈值可能转化为基于炎症表型生物分离的其他实体组织类型。方法利用来自TCGA的NSCLC和乳腺癌数据集,我们确定了939个基因,这些基因包括间充质(M)、间充质干样(MSL)和免疫调节(IM)基因表达模式,这些基因以先前描述的101个基因特征为中心(Ring, 2016)。我们将这939基因集应用于来自TCGA (UC)的433个膀胱样本,并基于三个质心对基因进行k-means聚类。采用k-means聚类(k=3)对临床病例进行分组。进行通路分析(GSEA-UCSD /Broad)。我们通过对比M或MSL聚集的间充质途径和IM聚集的炎症途径的富集来评估UC病例的分类。使用先前在TNBC中建立的27基因IO算法对应答者分类的阈值进行评估,通过量化富集到IM集群(潜在应答者)而不是M或MSL集群(潜在无应答者)的病例比例。结果以101个基因为中心的939个基因编码了20种不同的生理通路。其中10个途径至少包含27个基因IO算法中的一个基因。炎症细胞通路在IM集群中显著富集,而在M和MSL集群中则富集间充质和反应性成纤维细胞通路。含有治疗靶点的途径被设计来克服对ICIs的抗性,在MSL基因表达质心中富集。应用于TCGA样本的27个基因IO算法阈值将IM集群中79%的应答者分类为应答者,而M和MSL中为16%。这些结果支持这样的假设,即识别与ICI反应相关的TIME生理的基因表达特征是组织不可知的,并且与多种实体组织类型相关。使用先前建立的阈值将应答者显著富集到IM集群中,这与病例的适当生物学分类是一致的,并且支持使用27基因IO算法和已建立的阈值来与治疗的mUC队列中的ICI应答相关联。引用格式:Robert S. Seitz, Tyler J. Nielsen, Brock L. Schweitzer, David R. Hout, Douglas T. Ross。27基因免疫肿瘤学算法应用于膀胱癌的途径建模[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):摘要第175期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstract 175: Pathway modeling to translate the 27-gene immuno-oncology algorithm into bladder cancer
Background The 27-gene immuno-oncology (IO) algorithm has demonstrated an association with immune checkpoint inhibitor (ICI) response in TNBC, NSCLC, and metastatic urothelial carcinoma (mUC). The algorithm can be run on data generated from either a qPCR assay or from analysis of whole transcriptome RNA-seq data. It integrates gene expression information from infiltrating inflammatory cells with signatures from surrounding stroma and tumor cells to classify cases into likely responder versus non-responders. We hypothesized that because the algorithm derives its biologic signature from the tumor immune microenvironment (TIME), the classification function and thresholds might translate to other solid tissue types based upon biologic separation of inflammatory phenotypes. Methods Using NSCLC and breast cancer datasets from TCGA, we identified 939 genes that comprise the Mesenchymal (M), Mesenchymal Stem-like (MSL), and Immunomodulatory (IM) gene expression patterns centered around a previously described 101-gene signature (Ring, 2016). We applied this 939 gene set to 433 bladder samples from TCGA (UC) and k-means clustered the genes based upon each of the three centroids. Clinical cases were also organized by k-means clustering (k=3). Pathway analysis was performed (GSEA—UCSD/Broad). We assessed classification of UC cases by looking at enrichment of inflammatory pathways into the IM cluster compared to mesenchymal pathways into the M or MSL clusters. The threshold for responder classification using the 27-gene IO algorithm previously established in TNBC was assessed by quantitating the fraction of cases enriched into the IM cluster (potential responders) as opposed to the M or MSL clusters (potential non-responders). Results The 939 genes centered around the 101-gene signature encoded twenty different physiologic pathways. Ten of these pathways included at least one of the genes from the 27-gene IO algorithm. Significant enrichment of inflammatory cell pathways was seen into the IM cluster as opposed to mesenchymal and reactive fibroblast pathways enriched into the M and MSL clusters. Pathways containing therapeutic targets designed to overcome resistance to ICIs were enriched in the MSL gene expression centroid. The 27-gene IO algorithm threshold applied to the TCGA samples classified 79% as responders in the IM cluster as opposed 16% in the M and MSL. Discussion These results support the hypothesis that gene expression signatures discerning TIME physiology associated with ICI response are tissue agnostic and relevant in multiple solid tissue types. The dramatic enrichment of responders into the IM cluster using previously established thresholds is consistent with appropriate biologic classification of the cases and supports utilizing the 27-gene IO algorithm and established threshold for association with ICI response in treated mUC cohorts. Citation Format: Robert S. Seitz, Tyler J. Nielsen, Brock L. Schweitzer, David R. Hout, Douglas T. Ross. Pathway modeling to translate the 27-gene immuno-oncology algorithm into bladder cancer [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 175.
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