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基于代谢和免疫亚型的胰腺癌新型预后生物标志物的基因组分析和筛选。

Genomic analysis and filtration of novel prognostic biomarkers based on metabolic and immune subtypes in pancreatic cancer.

机构信息

General Surgery Department, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, 100730, China.

Department of Breast Surgery, The Affiliated Hospital of Guizhou Medical University, Guizhou Medical University, Guiyang, China.

出版信息

Cell Oncol (Dordr). 2023 Dec;46(6):1691-1708. doi: 10.1007/s13402-023-00836-3. Epub 2023 Jul 11.

Abstract

Patients with pancreatic cancer (PC) can be classified into various molecular subtypes and benefit from some precise therapy. Nevertheless, the interaction between metabolic and immune subtypes in the tumor microenvironment (TME) remains unknown. We hope to identify molecular subtypes related to metabolism and immunity in pancreatic cancer METHODS: Unsupervised consensus clustering and ssGSEA analysis were utilized to construct molecular subtypes related to metabolism and immunity. Diverse metabolic and immune subtypes were characterized by distinct prognoses and TME. Afterward, we filtrated the overlapped genes based on the differentially expressed genes (DEGs) between the metabolic and immune subtypes by lasso regression and Cox regression, and used them to build risk score signature which led to PC patients was categorized into high- and low-risk groups. Nomogram were built to predict the survival rates of each PC patient. RT-PCR, in vitro cell proliferation assay, PC organoid, immunohistochemistry staining were used to identify key oncogenes related to PC RESULTS: High-risk patients have a better response for various chemotherapeutic drugs in the Genomics of Drug Sensitivity in Cancer (GDSC) database. We built a nomogram with the risk group, age, and the number of positive lymph nodes to predict the survival rates of each PC patient with average 1-year, 2-year, and 3-year areas under the curve (AUCs) equal to 0.792, 0.752, and 0.751. FAM83A, KLF5, LIPH, MYEOV were up-regulated in the PC cell line and PC tissues. Knockdown of FAM83A, KLF5, LIPH, MYEOV could reduce the proliferation in the PC cell line and PC organoids CONCLUSION: The risk score signature based on the metabolism and immune molecular subtypes can accurately predict the prognosis and guide treatments of PC, meanwhile, the metabolism-immune biomarkers may provide novel target therapy for PC.

摘要

患者胰腺癌(PC)可以分为多种分子亚型,并受益于一些精确的治疗。然而,肿瘤微环境(TME)中代谢和免疫亚型之间的相互作用尚不清楚。我们希望确定与胰腺癌代谢和免疫相关的分子亚型。

方法

采用无监督共识聚类和 ssGSEA 分析构建与代谢和免疫相关的分子亚型。不同的代谢和免疫亚型具有不同的预后和 TME 特征。然后,我们根据代谢和免疫亚型之间的差异表达基因(DEGs)通过lasso 回归和 Cox 回归过滤重叠基因,并使用它们构建风险评分特征,将 PC 患者分为高风险和低风险组。构建列线图预测每个 PC 患者的生存率。RT-PCR、体外细胞增殖试验、PC 类器官、免疫组织化学染色用于鉴定与 PC 相关的关键癌基因。

结果

高危患者在癌症药物敏感性基因组学(GDSC)数据库中对各种化疗药物的反应更好。我们构建了一个列线图,其中包括风险组、年龄和阳性淋巴结数,以预测每个 PC 患者的生存率,平均 1 年、2 年和 3 年的曲线下面积(AUC)分别为 0.792、0.752 和 0.751。FAM83A、KLF5、LIPH、MYEOV 在 PC 细胞系和 PC 组织中上调。FAM83A、KLF5、LIPH、MYEOV 的敲低可降低 PC 细胞系和 PC 类器官的增殖。

结论

基于代谢和免疫分子亚型的风险评分特征可以准确预测 PC 的预后并指导治疗,同时代谢-免疫生物标志物可为 PC 提供新的靶向治疗。

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