基于脂质代谢相关基因的乳腺癌患者预后预测模型构建及ALDH2的功能验证OA
Construction of a prognosis forecasting model for breast cancer based on lipid metabolism-related genes and functional verification of ALDH2
目的:探讨乳腺癌脂质代谢相关基因的表达模式及其预后价值.方法:研究数据来源于癌症基因组图谱乳腺癌相关基因数据集,共收集1100份乳腺癌组织标本和112份正常乳腺组织标本的RNA测序数据及患者临床特征资料.采用R语言Bioconductor生物信息学分析工具,从分子特征数据库2043个脂质代谢相关基因中,以错误发现率<0.05且|log2(差异倍数)|>2为标准筛选乳腺癌脂质代谢相关差异表达基因.入组的乳腺癌组织标本按6:4比例随机分配至训练队列(n=651)和验证队列(n=431).通过Cox比例风险回归模型筛选乳腺癌预后脂质代谢相关基因(P<0.01),并采用LASSO回归分析进一步优化基因.利用多因素Cox回归模型构建风险评分模型,依据中位风险值将患者分为高风险组和低风险组.通过Kaplan-Meier生存分析和log-rank检验评估组间生存差异,采用时间依赖性受试者操作特征曲线评价模型预测性能.同时,整合年龄、TNM分期、临床分级和风险评分构建列线图,并通过校准曲线及一致性指数验证其预测效能.随后,采用免疫评分算法量化评估肿瘤免疫浸润,并通过加权基因共表达网络分析(WGCNA)识别与关键免疫细胞浸润显著相关的基因模块.最后通过转染靶向ALDH2的小干扰RNA,利用Transwell侵袭实验和细胞划痕实验观察敲低ALDH2对乳腺癌细胞(MDA-MB-231)侵袭和迁移能力的影响.结果:共鉴定出185个与乳腺癌脂质代谢相关的差异表达基因,经单因素Cox回归分析和LASSO回归分析,最终将ALDH2、CYP21A2和IL24纳入多因素Cox回归模型.基于这三个基因构建的预后预测模型在训练队列和验证队列中均表现出较好的生存预测能力:高风险组患者的总生存时间显著缩短(均P<0.01),模型预测患者1、3、5年存活率的曲线下面积均在0.64以上.肿瘤免疫微环境分析显示,高风险组肿瘤免疫微环境呈现功能失调状态,多种抗肿瘤免疫细胞浸润水平普遍降低,同时程序性细胞死亡蛋白1、细胞毒性T淋巴细胞相关抗原4等关键免疫检查点分子表达下调.WGCNA提示ALDH2与免疫细胞浸润有关.细胞实验结果证实,在乳腺癌细胞中敲低ALDH2可增强细胞的迁移和侵袭能力.结论:建立并验证了一个基于脂质代谢相关基因的乳腺癌患者预后预测模型,揭示ALDH2低表达与不良预后及免疫抑制密切相关.
Objective:To investigate the expression patterns and prognostic value of lipid metabolism-related genes in breast cancer.Methods:RNA sequencing data and clinical information were obtained from The Cancer Genome Atlas breast cancer-related gene(TCGA-BRCA)cohort,including 1100 breast cancer tissue samples and 112 normal breast tissue samples.Differentially expressed lipid metabolism-related genes were screened from a predefined set of 2043 genes using Bioconductor in R,with a false discovery rate<0.05 and|log2(fold change)|>2.Breast cancer tissue samples were randomly divided into a training cohort(n=651)and a validation cohort(n=431)at a 6:4 ratio.Prognostic lipid metabolism-related genes were identified using univariate Cox regression(P<0.01)and further refined via least absolute shrinkage and selection operate(LASSO)regression.A risk score model was constructed using multivariate Cox regression,and patients were stratified into high-and low-risk groups based on the median risk score.The model's performance was evaluated using Kaplan-Meier survival analysis with the log-rank test and time-dependent receiver operator characteristic(ROC)curves.A nomogram integrating age,TNM stage,clinical grade,and risk score was developed and validated using calibration curves and the concordance index.Immune cell infiltration was quantified using an immune scoring algorithm,and weighted gene co-expression network analysis(WGCNA)was applied to identify key modules associated with immune cell infiltration.Finally,to validate the function of the key gene ALDH2,small interfering RNA targeting ALDH2 was transfected into breast cancer cells(MDA-MB-231),and its effects on invasion and migration were assessed using Transwell invasion and wound healing assays.Results:A total of 185 differentially expressed lipid metabolism-related genes were identified.Univariate Cox and LASSO regression analyses identified three genes—ALDH2,CYP21A2,and IL24—which were incorporated into the multivariate Cox model.The prognosis forecasting model based on these genes demonstrated good predictive performance in both cohorts:patients in the high-risk group had significantly shorter overall survival(both P<0.01),and the areas under the ROC curve for predicting 1-,3-,and 5-year survival rates were all greater than 0.64.Analysis of the tumor microenvironment revealed a dysfunctional state in the high-risk group,characterized by reduced infiltration of several anti-tumor immune cells and downregulation of key immune checkpoint molecules such as PDCD1 and CTLA-4.WGCNA suggested an association between ALDH2 and immune cell infiltration.Functional experiments confirmed that ALDH2 knockdown significantly enhanced the migration and invasion abilities of breast cancer cells.Conclusions:This study established and validated a prognosis forecasting model for breast cancer based on lipid metabolism-related genes.It revealed that reduced ALDH2 expression is closely associated with poor prognosis and immunosuppression.
陆姿蓉;卢愚风;周吉;朱一超
南京医科大学儿科学院,南京 210008||南京医科大学基础医学实验教学中心,南京 211166南京医科大学基础医学实验教学中心,南京 211166||南京医科大学第二临床医学院,南京 210011南京医科大学基础医学院生理学系,南京 211166南京医科大学基础医学院生理学系,南京 211166||南京医科大学附属泰州人民医院普外科 南京医科大学泰州临床医学院,泰州 225300
医药卫生
乳腺癌预后脂质代谢相关基因醛脱氢酶2预测模型
Breast cancerPrognosisLipid metabolism-related genesAldehyde dehydrogenase 2Forecasting model
《浙江大学学报(医学版)》 2026 (1)
77-86,10
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