Metabolic dysfunction-associated fatty liver disease (MAFLD), a global epidemic affecting 25% of adults, is driven by immune-metabolic dysregulation, yet the causal mechanisms linking immune cell-specific gene perturbations to disease progression remain unresolved. Current studies lack systematic integration of single-cell transcriptomics, causal inference, and functional validation to dissect actionable potential intervention targets. We combined peripheral blood mononuclear cells (PBMCs) single-cell RNA sequencing (scRNA-seq; GSE179886: 2 MAFLD vs. 4 controls) with two-sample Mendelian randomization (MR; GWAS data: 8,434 cases vs. 770,180 controls) to prioritize causal candidate genes. Machine learning (101 algorithms) and multi-cohort validations (GSE126848, GSE63067, GSE89632) established diagnostic models. Causal candidate gene expression and functional impact were validated in high-fat diet (HFD)-fed mice, ob/ob mice, AML12 hepatocytes, and primary hepatocytes. scRNA-seq identified 212 differentially expressed genes (DEGs) across six immune cell types, with CD4â+âT cells and monocytes showing the most significant dysregulation (FDRâ<â0.001). MR analysis revealed 37 causal candidate genes, including PRF1 (protective: IVW ORâ=â0.68, 95% CI 0.59-0.79; pâ=â1.2âÃâ10â»âµ) and EVI2B (risk: ORâ=â1.42, 95% CI 1.21-1.67; pâ=â3.8âÃâ10â»â´), which antagonistically modulated MAFLD risk. A machine learning model integrating five causal candidate genes (PRF1, EVI2B, CST7, GNG2, KLHL24) achieved robust diagnostic accuracy (training AUCâ=â1.00; validation AUCâ=â0.74-0.78), outperforming conventional biomarkers. In vivo validation in both HFD-fed and ob/ob mice confirmed marked overexpression of PRF1, EVI2B, CST7, GNG2, and KLHL24 in hepatic tissue (pâ<â0.05), with EVI2B overexpression significantly exacerbating lipid accumulation in AML12 and primary hepatocytes. This study pioneers the integration of scRNA-seq, MR, and cross-species and cellular validation to unravel immune-driven metabolic dysfunction in MAFLD. We identify EVI2B as a pro-steatotic driver and provide a causally informed diagnostic framework grounded in experimental validation, advancing mechanistic understanding toward future targeted interventions.
Immune metabolic changes identify causal candidate genes and enable diagnostic frameworks in MAFLD.
免疫代谢变化可识别致病候选基因,并为 MAFLD 的诊断框架提供支持
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作者:Qiao Jie, Wu Yi-Wen, Wang Yuan-You, Huang Jing-Jing, Shan Peng-Fei
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2025 | 起止号: | 2025 Aug 28; 15(1):31751 |
| doi: | 10.1038/s41598-025-17406-2 | 研究方向: | 代谢 |
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