Construction of a novel radioresistance-related signature for prediction of prognosis, immune microenvironment and anti-tumour drug sensitivity in non-small cell lung cancer.

Annals of medicine Pub Date : 2025-12-01 Epub Date: 2025-01-10 DOI:10.1080/07853890.2024.2447930
Yanliang Chen, Chan Zhou, Xiaoqiao Zhang, Min Chen, Meifang Wang, Lisha Zhang, Yanhui Chen, Litao Huang, Junjun Sun, Dandan Wang, Yong Chen
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Abstract

Background: Non-small cell lung cancer (NSCLC) is a fatal disease, and radioresistance is an important factor leading to treatment failure and disease progression. The objective of this research was to detect radioresistance-related genes (RRRGs) with prognostic value in NSCLC.

Methods: The weighted gene coexpression network analysis (WGCNA) and differentially expressed genes (DEGs) analysis were performed to identify RRRGs using expression profiles from TCGA and GEO databases. The least absolute shrinkage and selection operator (LASSO) regression and random survival forest (RSF) were used to screen for prognostically relevant RRRGs. Multivariate Cox regression was used to construct a risk score model. Then, Immune landscape and drug sensitivity were evaluated. The biological functions exerted by the key gene LBH were verified by in vitro experiments.

Results: Ninety-nine RRRGs were screened by intersecting the results of DEGs and WGCNA, then 11 hub RRRGs associated with survival were identified using machine learning algorithms (LASSO and RSF). Subsequently, an eight-gene (APOBEC3B, DOCK4, IER5L, LBH, LY6K, RERG, RMDN2 and TSPAN2) risk score model was established and demonstrated to be an independent prognostic factor in NSCLC on the basis of Cox regression analysis. The immune landscape and sensitivity to anti-tumour drugs showed significant disparities between patients categorized into different risk score subgroups. In vitro experiments indicated that overexpression of LBH enhanced the radiosensitivity of A549 cells, and knockdown LBH reversed the cytotoxicity induced by X-rays.

Conclusion: Our study developed an eight-gene risk score model with potential clinical value that can be adopted for choice of drug treatment and prognostic prediction. Its clinical routine use may assist clinicians in selecting more rational practices for individuals, which is important for improving the prognosis of NSCLC patients. These findings also provide references for the development of potential therapeutic targets.

一种预测非小细胞肺癌预后、免疫微环境和抗肿瘤药物敏感性的新型放射耐药相关标记的构建
背景:非小细胞肺癌(NSCLC)是一种致死性疾病,放射耐药是导致治疗失败和疾病进展的重要因素。本研究的目的是检测非小细胞肺癌中具有预后价值的放射耐药相关基因(RRRGs)。方法:采用加权基因共表达网络分析(WGCNA)和差异表达基因(DEGs)分析,利用TCGA和GEO数据库的表达谱对RRRGs进行鉴定。使用最小绝对收缩和选择算子(LASSO)回归和随机生存森林(RSF)筛选与预后相关的RRRGs。采用多变量Cox回归构建风险评分模型。然后评价免疫景观和药物敏感性。通过体外实验验证了关键基因LBH所发挥的生物学功能。结果:通过交叉deg和WGCNA的结果筛选了99个RRRGs,然后使用机器学习算法(LASSO和RSF)鉴定了11个与生存相关的中枢RRRGs。随后,我们建立了APOBEC3B、DOCK4、IER5L、LBH、LY6K、RERG、RMDN2、TSPAN2等8个基因的风险评分模型,并通过Cox回归分析证明其是NSCLC的独立预后因素。不同风险评分亚组患者的免疫景观和对抗肿瘤药物的敏感性存在显著差异。体外实验表明,过表达LBH可增强A549细胞的放射敏感性,敲低LBH可逆转x射线诱导的细胞毒性。结论:本研究建立了一个具有潜在临床价值的八基因风险评分模型,可用于药物治疗的选择和预后预测。它的临床常规使用可以帮助临床医生为个体选择更合理的做法,这对改善NSCLC患者的预后具有重要意义。这些发现也为潜在治疗靶点的开发提供了参考。
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