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基于加权基因共表达网络分析(WGCNA)鉴定构建并验证肝癌超声治疗的预后标志物及风险模型

Construction and validation of a prognostic marker and risk model for HCC ultrasound therapy combined with WGCNA identification.

作者信息

Bi Yunlong, Jing Yu, Guo Lingling

机构信息

Department of Orthopedics, First Affiliated Hospital of Jinzhou Medical University, Jinzhou, China.

Department of Oncology, First Affiliated Hospital of Jinzhou Medical University, Jinzhou, China.

出版信息

Front Genet. 2022 Oct 3;13:1017551. doi: 10.3389/fgene.2022.1017551. eCollection 2022.

Abstract

Hepatocellular carcinoma (HCC) is a malignant tumor with a highly aggressive and metastatic nature. Ultrasound remains a routine monitoring tool for screening, treatment and post-treatment recheck of HCC. Therefore, it is of great significance to explore the role of ultrasound therapy and related genes in prognosis prediction and clinical diagnosis and treatment of HCC. Gene co-expression networks were developed utilizing the R package WGCNA as per the expression profiles and clinical features of TCGA HCC samples, key modules were identified by the correlation coefficients between clinical features and modules, and hub genes of modules were determined as per the GS and MM values. Ultrasound treatment differential expression genes were identified using R package limma, and univariate Cox analysis was conducted on the intersection genes of ultrasound differential expression genes and hub genes of key HCC modules to screen the signatures linked with HCC prognosis and construct a risk model. The median risk score was used as the threshold point to classify tumor samples into high- and low-risk groups, and the R package IOBR was used to assess the proportion of immune cells in high- and low-risk groups, R package maftools to assess the genomic mutation differences in high- and low-risk groups, R package GSVA's ssgsea algorithm to assess the HALLMARK pathway enrichment analysis, and R package pRRophetic to analyze drug sensitivity in patients with HCC. WGCNA analysis based on the expression profiles and clinical data of the TCGA LIHC cohort identified three key modules with two major clinical features associated with HCC. The intersection of ultrasound-related differential genes and module hub genes was selected for univariate Cox analysis to identify prognostic factors significantly associated with HCC, and a risk score model consisting of six signatures was finally developed to analyze the prognosis of individuals with HCC. The risk model showed strength in the training set, overall set, and external validation set. The percentage of immune cell infiltration, genomic mutations, pathway enrichment scores, and chemotherapy drug resistance were significantly different between high- and low-risk groups according to the risk scores. Expression of model genes correlated with tumor immune microenvironment and clinical tumor characteristics while generally differentially expressed in pan-cancer tumor and healthy samples. In the immunotherapy dataset, patients in the high-risk group had a worse prognosis with immunotherapy, indicating that subjects in the low-risk group are more responsive to immunotherapy. The 6-gene signature constructed by ultrasound treatment of HCC combined with WGCNA analysis can be used for prognosis prediction of HCC patients and may become a marker for immune response.

摘要

肝细胞癌(HCC)是一种具有高度侵袭性和转移性的恶性肿瘤。超声仍然是HCC筛查、治疗及治疗后复查的常规监测工具。因此,探索超声治疗及相关基因在HCC预后预测和临床诊断治疗中的作用具有重要意义。利用R包WGCNA根据TCGA HCC样本的表达谱和临床特征构建基因共表达网络,通过临床特征与模块间的相关系数确定关键模块,并根据GS和MM值确定模块的枢纽基因。使用R包limma鉴定超声治疗差异表达基因,对超声差异表达基因与HCC关键模块枢纽基因的交集基因进行单变量Cox分析,以筛选与HCC预后相关的特征并构建风险模型。将中位风险评分作为阈值点,将肿瘤样本分为高风险组和低风险组,使用R包IOBR评估高风险组和低风险组中免疫细胞的比例,使用R包maftools评估高风险组和低风险组中的基因组突变差异,使用R包GSVA的ssgsea算法评估HALLMARK通路富集分析,使用R包pRRophetic分析HCC患者的药物敏感性。基于TCGA LIHC队列的表达谱和临床数据进行的WGCNA分析确定了三个关键模块以及与HCC相关的两个主要临床特征。选择超声相关差异基因与模块枢纽基因的交集进行单变量Cox分析,以鉴定与HCC显著相关的预后因素,最终开发了一个由六个特征组成的风险评分模型来分析HCC个体的预后。该风险模型在训练集、总体集和外部验证集中均表现出优势。根据风险评分,高风险组和低风险组之间免疫细胞浸润百分比、基因组突变、通路富集分数和化疗耐药性存在显著差异。模型基因的表达与肿瘤免疫微环境和临床肿瘤特征相关,同时在泛癌肿瘤和健康样本中普遍存在差异表达。在免疫治疗数据集中,高风险组患者接受免疫治疗的预后较差,这表明低风险组受试者对免疫治疗更敏感。由HCC超声治疗结合WGCNA分析构建的6基因特征可用于HCC患者的预后预测,并可能成为免疫反应的标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/214f/9573990/d936df6db98c/fgene-13-1017551-g001.jpg

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