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一种基于细菌脂多糖相关基因的评分模型用于预测非小细胞肺癌的预后。

A scoring model based on bacterial lipopolysaccharide-related genes to predict prognosis in NSCLC.

作者信息

Bao Nandi, Zhang Xinxin, Lin Chenyu, Qiu Feng, Mo Guoxin

机构信息

Senior Department of Cardiology, The Sixth Medical Center of PLA General Hospital, Beijing, China.

Department of Pulmonary and Critical Care Medicine, The Eighth Medical Center of the PLA General Hospital, Beijing, China.

出版信息

Front Genet. 2024 Nov 14;15:1408000. doi: 10.3389/fgene.2024.1408000. eCollection 2024.

Abstract

BACKGROUND

Non-small cell lung cancer (NSCLC) has high incidence and mortality rates. The discovery of an effective biomarker for predicting prognosis and treatment response in patients with NSCLC is of great significance. Bacterial lipopolysaccharide-related genes (LRGs) play a critical role in tumor development and the formation of an immunosuppressive microenvironment; however, their relevance in NSCLC prognosis and immune features is yet to be discovered.

METHODS

Differentially expressed LRGs associated with NSCLC prognosis were identified in the TCGA dataset. Prognostic LRG scoring and nomogram models were established using single-variable Cox regression, Least Absolute Shrinkage, and Selection Operator (LASSO) regression. The prognostic value of the scoring and nomogram models was evaluated using Kaplan-Meier (KM) analysis and further validated using an external dataset. Patients were stratified into high- and low-risk groups based on the nomogram score, and drug sensitivity analysis was performed. Additionally, clinical characteristics, mutation features, immune infiltration characteristics, and responses to immunotherapy were compared between the two groups.

RESULTS

We identified 15 differentially expressed LRGs associated with NSCLC prognosis. A prognostic prediction model consisting of 6 genes (VIPR1, NEK2, HMGA1, FERMT1, SLC7A, and TNS4) was established. Higher LRG scores were associated with worse clinical prognosis and were independent prognostic factors for NSCLC. Subsequently, a clinical risk prediction nomogram model for NSCLC was constructed, incorporating the status of patients with tumor burden, tumor T-stage, and LRG scores. The nomogram model demonstrated good predictive performance upon validation. Additionally, NSCLC patients classified as high risk based on the model's predictions exhibited not only a poorer prognosis but also a more pronounced inflammatory immune microenvironment phenotype than low-risk patients. Furthermore, high-risk patients showed disparate predicted responses to various drugs and immunotherapies compared with low-risk patients.

CONCLUSION

The LRGs scoring model can serve as a biomarker that contributes to the establishment of a reliable prognostic risk-prediction model, potentially facilitating the development of personalized treatment strategies for patients with NSCLC.

摘要

背景

非小细胞肺癌(NSCLC)的发病率和死亡率都很高。发现一种有效的生物标志物来预测NSCLC患者的预后和治疗反应具有重要意义。细菌脂多糖相关基因(LRGs)在肿瘤发展和免疫抑制微环境形成中起关键作用;然而,它们与NSCLC预后和免疫特征的相关性尚未被发现。

方法

在TCGA数据集中鉴定与NSCLC预后相关的差异表达LRGs。使用单变量Cox回归、最小绝对收缩和选择算子(LASSO)回归建立预后LRG评分和列线图模型。使用Kaplan-Meier(KM)分析评估评分和列线图模型的预后价值,并使用外部数据集进行进一步验证。根据列线图评分将患者分为高风险和低风险组,并进行药物敏感性分析。此外,比较两组患者的临床特征、突变特征、免疫浸润特征和免疫治疗反应。

结果

我们鉴定出15个与NSCLC预后相关的差异表达LRGs。建立了一个由6个基因(VIPR1、NEK2、HMGA1、FERMT1、SLC7A和TNS4)组成的预后预测模型。较高的LRG评分与较差的临床预后相关,是NSCLC的独立预后因素。随后,构建了一个NSCLC临床风险预测列线图模型,纳入了肿瘤负荷状态、肿瘤T分期和LRG评分。列线图模型在验证时表现出良好的预测性能。此外,根据模型预测分类为高风险的NSCLC患者不仅预后较差,而且与低风险患者相比,炎症免疫微环境表型更明显。此外,与低风险患者相比,高风险患者对各种药物和免疫治疗的预测反应不同。

结论

LRGs评分模型可作为一种生物标志物,有助于建立可靠的预后风险预测模型,可能促进NSCLC患者个性化治疗策略的制定。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a9cf/11602480/20ce3c07fed1/fgene-15-1408000-g001.jpg

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