Department of Genomic Medicine, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Department of Cancer Biology, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Nat Commun. 2022 Jan 10;13(1):42. doi: 10.1038/s41467-021-27651-4.
Owing to a lack of response to the anti-PD1 therapy for most cancer patients, we develop a network approach to infer genes, pathways, and potential therapeutic combinations that are associated with tumor response to anti-PD1. Here, our prediction identifies genes and pathways known to be associated with anti-PD1, and is further validated by 6 CRISPR gene sets associated with tumor resistance to cytotoxic T cells and targets of the 36 compounds that have been tested in clinical trials for combination treatments with anti-PD1. Integration of our top prediction and TCGA data identifies hundreds of genes whose expression and genetic alterations that could affect response to anti-PD1 in each TCGA cancer type, and the comparison of these genes across cancer types reveals that the tumor immunoregulation associated with response to anti-PD1 would be tissue-specific. In addition, the integration identifies the gene signature to calculate the MHC I association immunoscore (MIAS) that shows a good correlation with patient response to anti-PD1 for 411 melanoma samples complied from 6 cohorts. Furthermore, mapping drug target data to the top genes in our association prediction identifies inhibitors that could potentially enhance tumor response to anti-PD1, such as inhibitors of the encoded proteins of CDK4, GSK3B, and PTK2.
由于大多数癌症患者对抗 PD1 治疗反应不佳,我们开发了一种网络方法来推断与抗 PD1 肿瘤反应相关的基因、途径和潜在的治疗组合。在这里,我们的预测确定了与抗 PD1 相关的已知基因和途径,并通过与细胞毒性 T 细胞肿瘤耐药相关的 6 个 CRISPR 基因集和在临床试验中已被测试用于与抗 PD1 联合治疗的 36 种化合物的靶点进一步验证。我们的顶级预测与 TCGA 数据的整合确定了数百个基因,其表达和遗传改变可能影响每个 TCGA 癌症类型对抗 PD1 的反应,并且对这些基因在癌症类型之间的比较表明,与抗 PD1 反应相关的肿瘤免疫调节将是组织特异性的。此外,整合确定了用于计算 MHC I 关联免疫评分 (MIAS) 的基因特征,该评分与来自 6 个队列的 411 个黑色素瘤样本的患者对抗 PD1 的反应具有良好的相关性。此外,将药物靶点数据映射到我们关联预测中的顶级基因,可以识别出可能增强肿瘤对抗 PD1 反应的抑制剂,如 CDK4、GSK3B 和 PTK2 编码蛋白的抑制剂。