Exploring and Validating Prognostic Biomarkers Related to Sphingolipid Metabolism in Gastric Cancer through Machine Learning.

Jian Chai, Ce Guo, Houze Wang, Jiajie Wei, Yang Yu, Xiaolong Li, Huiqing Zhang, Xing Guo
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Abstract

Background: Sphingolipid metabolism (SM) has been implicated in the progression of gastric cancer (GC). However, its potential as a prognostic biomarker in GC remains underexplored. This study investigates the feasibility of using SM to predict GC prognosis.

Methods: Sphingolipid metabolism-related genes (SMRGs) were extracted from the GeneCards database, and differentially expressed genes (DEGs) were identified using the TCGA-STAD and GSE84437 gastric cancer datasets. Univariate Cox regression analysis was performed to identify genes associated with survival. Lasso-Cox and random survival forest analyses were employed to identify key survival-related genes, followed by multivariate Cox regression to establish a prognostic model and calculate the sphingolipid metabolism score (SMscore). The lasso-Cox analysis further assessed the prognostic significance of clinical traits and the SMscore. Hyperparameters were optimized using machine learning models to achieve the most accurate prognostic model. The potential utility of the SMscore in GC prognosis was evaluated, and hub gene expression was validated through immunohistochemistry (IHC) staining.

Results: ELOVL4, NOS3, and ABCA2 were identified as key prognostic genes from a pool of 556 SMRGs. The optimal prognostic model was developed and validated, demonstrating robust predictive performance. IHC staining revealed increased expression of ELOVL4 and NOS3 in tumor tissues, which correlated significantly with poor prognosis.

Conclusion: Bioinformatics analysis and IHC validation suggest that ELOVL4 expression may serve as a prognostic biomarker for GC, providing new insights for prognosis prediction and therapeutic target development in gastric cancer.

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通过机器学习探索和验证胃癌鞘脂代谢相关的预后生物标志物。
背景:鞘脂代谢(SM)与胃癌(GC)的进展有关。然而,其作为GC预后生物标志物的潜力仍未得到充分探索。本研究探讨SM预测胃癌预后的可行性。方法:从GeneCards数据库中提取鞘脂代谢相关基因(SMRGs),并使用TCGA-STAD和GSE84437胃癌数据集鉴定差异表达基因(DEGs)。采用单因素Cox回归分析确定与生存相关的基因。采用Lasso-Cox和随机生存森林分析鉴定关键生存相关基因,然后采用多变量Cox回归建立预后模型,计算鞘脂代谢评分(SMscore)。lasso-Cox分析进一步评估临床特征和SMscore对预后的意义。使用机器学习模型对超参数进行优化,以获得最准确的预后模型。评估SMscore在GC预后中的潜在效用,并通过免疫组化(IHC)染色验证hub基因表达。结果:从556个SMRGs中鉴定出ELOVL4、NOS3和ABCA2为关键预后基因。开发并验证了最佳预后模型,显示出稳健的预测性能。IHC染色显示肿瘤组织中ELOVL4和NOS3表达升高,与预后不良有显著相关性。结论:生物信息学分析和免疫组化验证提示ELOVL4表达可作为胃癌的预后生物标志物,为胃癌的预后预测和治疗靶点开发提供新的见解。
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