鉴定和验证用于预测肝细胞癌预后和免疫疗法反应的免疫相关基因特征模型

Zhiqiang Liu, Lingge Yang, Chun Liu, Zicheng Wang, Wendi Xu, Jueliang Lu, Chunmeng Wang, Xundi Xu
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引用次数: 0

摘要

这项研究旨在提高肝细胞癌(HCC)临床诊断和治疗决策的准确性和效率,并优化免疫疗法反应的评估。首先,进行筛选以确定对预后有重要意义的免疫相关基因(IRGs),然后应用逻辑回归和最小绝对缩小和选择算子(LASSO)回归方法进行基因建模。随后,使用支持向量机-递归特征消除(SVM-RFE)构建最终模型。在对模型进行评估后,我们采用定量聚合酶链反应(qPCR)方法检测了从本组 54 例 HCC 患者和一个独立的 231 例患者队列中获得的组织样本的基因表达谱,并证实了该模型与预后的相关性。随后,研究人员考察了该模型与免疫反应的关联,并通过对接受免疫疗法的三个队列的研究证实了该模型对免疫疗法疗效的预测价值。最后,该研究揭示了该模型有助于预测HCC预后和评估免疫疗法疗效的潜在机制。研究人员应用SVM-RFE模型开发了基于六种IRGs(CMTM7、HDAC1、HRAS、PSMD1、RAET1E和TXLNA)的OS预后模型。该模型的性能通过 ROC 曲线上的 AUC 值进行评估,结果显示 1 年、3 年和 5 年的预测值分别为 0.83、0.73 和 0.75。将高风险组(HRG)与低风险组(LRG)进行比较后发现,在初始训练集(P <0.0001)和随后的验证队列(P <0.0001)中,OS 结果存在明显差异。此外,HRG 的 SVMRS 与关键免疫检查点基因(CTLA-4、PD-1 和 PD-L1)呈显著正相关。本研究开发的 HCC 预测模型由六个基因组成,在预测 HCC 患者的 OS 和肿瘤治疗中的免疫治疗效果方面表现出了强大的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and validation of immune-related gene signature models for predicting prognosis and immunotherapy response in hepatocellular carcinoma
This study seeks to enhance the accuracy and efficiency of clinical diagnosis and therapeutic decision-making in hepatocellular carcinoma (HCC), as well as to optimize the assessment of immunotherapy response.A training set comprising 305 HCC cases was obtained from The Cancer Genome Atlas (TCGA) database. Initially, a screening process was undertaken to identify prognostically significant immune-related genes (IRGs), followed by the application of logistic regression and least absolute shrinkage and selection operator (LASSO) regression methods for gene modeling. Subsequently, the final model was constructed using support vector machines-recursive feature elimination (SVM-RFE). Following model evaluation, quantitative polymerase chain reaction (qPCR) was employed to examine the gene expression profiles in tissue samples obtained from our cohort of 54 patients with HCC and an independent cohort of 231 patients, and the prognostic relevance of the model was substantiated. Thereafter, the association of the model with the immune responses was examined, and its predictive value regarding the efficacy of immunotherapy was corroborated through studies involving three cohorts undergoing immunotherapy. Finally, the study uncovered the potential mechanism by which the model contributed to prognosticating HCC outcomes and assessing immunotherapy effectiveness.SVM-RFE modeling was applied to develop an OS prognostic model based on six IRGs (CMTM7, HDAC1, HRAS, PSMD1, RAET1E, and TXLNA). The performance of the model was assessed by AUC values on the ROC curves, resulting in values of 0.83, 0.73, and 0.75 for the predictions at 1, 3, and 5 years, respectively. A marked difference in OS outcomes was noted when comparing the high-risk group (HRG) with the low-risk group (LRG), as demonstrated in both the initial training set (P <0.0001) and the subsequent validation cohort (P <0.0001). Additionally, the SVMRS in the HRG demonstrated a notable positive correlation with key immune checkpoint genes (CTLA-4, PD-1, and PD-L1). The results obtained from the examination of three cohorts undergoing immunotherapy affirmed the potential capability of this model in predicting immunotherapy effectiveness.The HCC predictive model developed in this study, comprising six genes, demonstrates a robust capability to predict the OS of patients with HCC and immunotherapy effectiveness in tumor management.
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