Zhang Biao, Liu Jifeng, Li Han, Huang Bingqian, Zhang Bolin, Song Binyu, Bao Chongchan, Liu Yunfei, Wang Zhizhou
Department of General Surgery, The First Affiliated Hospital of Dalian Medical University, Dalian, China.
Department of Oncology, Southwest Medical University, Luzhou, China.
Front Pharmacol. 2023 Sep 7;14:1244752. doi: 10.3389/fphar.2023.1244752. eCollection 2023.
The extremely malignant tumour known as pancreatic cancer (PC) lacks efficient prognostic markers and treatment strategies. The microbiome is crucial to how cancer develops and responds to treatment. Our study was conducted in order to better understand how PC patients' microbiomes influence their outcome, tumour microenvironment, and responsiveness to immunotherapy. We integrated transcriptome and microbiome data of PC and used univariable Cox regression and Kaplan-Meier method for screening the prognostic microbes. Then intratumor microbiome-derived subtypes were identified using consensus clustering. We utilized LASSO and Cox regression to build the microbe-related model for predicting the prognosis of PC, and utilized eight algorithms to assess the immune microenvironment feature. The OncoPredict package was utilized to predict drug treatment response. We utilized qRT-PCR to verify gene expression and single-cell analysis to reveal the composition of PC tumour microenvironment. We obtained a total of 26 prognostic genera in PC. And PC samples were divided into two microbiome-related subtypes: Mcluster A and B. Compared with Mcluster A, patients in Mcluster B had a worse prognosis and higher TNM stage and pathological grade. Immune analysis revealed that neutrophils, regulatory T cell, CD8 T cell, macrophages M1 and M2, cancer associated fibroblasts, myeloid dendritic cell, and activated mast cell had remarkably higher infiltrated levels within the tumour microenvironment of Mcluster B. Patients in Mcluster A were more likely to benefit from CTLA-4 blockers and were highly sensitive to 5-fluorouracil, cisplatin, gemcitabine, irinotecan, oxaliplatin, and epirubicin. Moreover, we built a microbe-derived model to assess the outcome. The ROC curves showed that the microbe-related model has good predictive performance. The expression of LAMA3 and LIPH was markedly increased within pancreatic tumour tissues and was linked to advanced stage and poor prognosis. Single-cell analysis indicated that besides cancer cells, the tumour microenvironment of PC was also rich in monocytes/macrophages, endothelial cells, and fibroblasts. LIPH and LAMA3 exhibited relatively higher expression in cancer cells and neutrophils. The intratumor microbiome-derived subtypes and signature in PC were first established, and our study provided novel perspectives on PC prognostic indicators and treatment options.
胰腺癌(PC)是一种极具恶性的肿瘤,缺乏有效的预后标志物和治疗策略。微生物群对癌症的发展和治疗反应至关重要。我们开展这项研究是为了更好地了解PC患者的微生物群如何影响其预后、肿瘤微环境以及对免疫治疗的反应。我们整合了PC的转录组和微生物群数据,并使用单变量Cox回归和Kaplan-Meier方法筛选预后微生物。然后使用一致性聚类识别肿瘤内微生物群衍生的亚型。我们利用LASSO和Cox回归建立预测PC预后的微生物相关模型,并利用八种算法评估免疫微环境特征。使用OncoPredict软件包预测药物治疗反应。我们利用qRT-PCR验证基因表达,并通过单细胞分析揭示PC肿瘤微环境的组成。我们在PC中总共获得了26个预后属。PC样本被分为两种与微生物群相关的亚型:Mcluster A和B。与Mcluster A相比,Mcluster B中的患者预后更差,TNM分期和病理分级更高。免疫分析显示,中性粒细胞、调节性T细胞、CD8 T细胞、巨噬细胞M1和M2、癌症相关成纤维细胞、髓样树突状细胞和活化肥大细胞在Mcluster B的肿瘤微环境中的浸润水平明显更高。Mcluster A中的患者更有可能从CTLA-4阻断剂中获益,并且对5-氟尿嘧啶、顺铂、吉西他滨、伊立替康、奥沙利铂和表柔比星高度敏感。此外,我们建立了一个微生物衍生模型来评估预后。ROC曲线表明,微生物相关模型具有良好的预测性能。LAMA3和LIPH在胰腺肿瘤组织中的表达明显增加,并且与晚期和不良预后相关。单细胞分析表明,除癌细胞外,PC的肿瘤微环境中还富含单核细胞/巨噬细胞、内皮细胞和成纤维细胞。LIPH和LAMA3在癌细胞和中性粒细胞中表现出相对较高的表达。首次建立了PC中肿瘤内微生物群衍生的亚型和特征,我们的研究为PC预后指标和治疗选择提供了新的视角。