基于癌症驱动基因的肺腺癌预后风险标记的构建及其临床意义

Yazhou Su, Tingting Huo, Yanan Wang, Jingyan Li
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摘要

背景据报道,癌症驱动基因(CDGs)是影响肺腺癌(LUAD)进展的关键因素。方法从公共数据库和文献中获取肺腺癌转录组数据和 CDG 相关数据。方法从公共数据库中获取了LUAD转录组数据和CDG相关数据,确定了与LUAD存活率密切相关的差异表达CDGs(DE-CDGs)(P < 0.05),从而建立了预后模型。此外,还利用 CIBERSORT 和单样本基因组富集分析(ssGSEA)算法对高风险组(HR)和低风险组(LR)进行了免疫分析,以评估免疫差异。随后,使用 maftools 进行了突变分析。结果 通过筛选,发现了40个与LUAD存活率显著相关的DE-CDGs和11个与预后相关的DE-CDGs。回归分析显示,风险评分可独立预测 LUAD 的预后(P < 0.05)。免疫景观分析显示,与HR组相比,LR组的免疫评分更高,各种免疫细胞如滤泡辅助B细胞和T细胞的浸润程度更高。突变情况分析表明,错义突变是两个风险组中最常见的突变类型。药物预测分析表明,氟维司群、S-63845、沙帕他滨、洛莫司汀、BLU-667、SR16157、莫替沙尼、AZD-9496、XK-469、二甲基法舒地尔、P-529和伊马替尼与模型基因有很强的相关性,表明它们有可能成为靶向模型基因的候选药物。结论 本研究发现了11个可预测LUAD预后的有效生物标志物DE-CDGs,并探讨了CDGs在LUAD预后、免疫疗法和治疗中的生物学意义。
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Construction and clinical significance of prognostic risk markers based on cancer driver genes in lung adenocarcinoma

Background

Cancer driver genes (CDGs) have been reported as key factors influencing the progression of lung adenocarcinoma (LUAD). However, the role of CDGs in LUAD prognosis has not been fully elucidated.

Methods

LUAD transcriptome data and CDG-related data were obtained from public databases and literature. Differentially expressed CDGs (DE-CDGs) greatly associated with LUAD survival (P < 0.05) were identified to establish a prognostic model. In addition, immune analysis of high-risk (HR) and low-risk (LR) groups was conducted by utilizing the CIBERSORT and single sample gene set enrichment analysis (ssGSEA) algorithms to assess immune differences. Subsequently, mutation analysis was conducted using maftools. Finally, candidate drugs were identified using the CellMiner database.

Results

40 DE-CDGs significantly associated with LUAD survival and 11 DE-CDGs associated with prognosis were identified through screening. Regression analysis revealed that risk score can independently predict LUAD prognosis (P < 0.05). Immune landscape analysis revealed that compared to the HR group, the LR group had higher immune scores and high infiltration of various immune cells such as follicular helper B cells and T cells. Mutation landscape analysis demonstrated that missense mutation was the most common mutation type in both risk groups. Drug prediction analysis revealed strong correlations of fulvestrant, S-63845, sapacitabine, lomustine, BLU-667, SR16157, motesanib, AZD-9496, XK-469, dimethylfasudil, P-529, and imatinib with the model genes, suggesting their potential as candidate drugs targeting the model genes.

Conclusion

This study identified 11 effective biomarkers, DE-CDGs, which can predict LUAD prognosis and explored the biological significance of CDGs in LUAD prognosis, immunotherapy, and treatment.

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