Machine-learning-guided transcriptomic integration identifies GFM1 as a lactylation-related candidate biomarker in aortic dissection

机器学习引导的转录组整合分析发现 GFM1 是主动脉夹层中与乳酸化相关的候选生物标志物

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Abstract

Aortic dissection (AD) is a life-threatening aortic disease with limited disease-modifying pharmacologic options. Lysine lactylation is a metabolism-linked post-translational modification implicated in vascular and inflammatory biology, but its relationship to AD has not been well characterized. Public AD transcriptomic datasets were integrated for differential expression analysis and WGCNA. Lactylation-related DEGs were defined by intersecting DEGs with a curated lactylation-related gene set. Candidate genes were prioritized using complementary machine-learning models (LASSO, Random Forest, and XGBoost) as a feature-screening strategy with internal resampling and hold-out validation (cross-validation and a hold-out set). GFM1 expression was assessed by qRT-PCR and western blotting in human aortic tissues. Functional relevance was examined in primary mouse aortic vascular smooth muscle cells (VSMCs) using siRNA knockdown under angiotensin II stimulation (1.0 µmol/L, 24 h), with proliferation and migration assessed by CCK-8, EdU, Transwell, and scratch-wound assays. We identified 217 DEGs and an AD-associated co-expression module. Intersection analysis yielded 11 lactylation-related DEGs, among which GFM1 received consistent support across models. GFM1 showed higher expression in AD tissues, and GFM1 knockdown attenuated angiotensin II–induced VSMCs proliferation and migration. Integrated transcriptomics and machine-learning–based prioritization nominate GFM1 as a lactylation-related candidate associated with AD, warranting further investigation. These findings are hypothesis-generating: model performance reflects internal evaluation only, and independent external validation and direct lactylation profiling are required to establish generalizability and clarify mechanistic links. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1038/s41598-026-40139-9.

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