OBJECTIVE: This study aimed to systematically screen for mitophagy-related core genes in Non-alcoholic fatty liver disease (NAFLD), elucidate their specific molecular regulatory network, and investigate their functional mechanisms and roles within the immune microenvironment to provide novel targets for disease diagnosis and therapy. METHODS: Multiple NAFLD transcriptomic datasets and single-cell RNA sequencing data from the GEO database were integrated. Bioinformatics analysis, Weighted Gene Co-expression Network Analysis (WGCNA), and 11 machine learning algorithms were employed for core gene screening. Functional mechanisms and immune microenvironment characteristics were further investigated using SHAP model interpretability analysis, including detailed immune infiltration analysis, PPI network construction, GSEA, single-cell trajectory inference, and cell-cell communication analysis. Reverse network pharmacology and molecular docking predicted potential targeted compounds. In vitro experiments (Western Blot, qRT-PCR, JC-1 staining) validated core gene expression and mitophagy levels. RESULTS: Five key genes-IGF1, MYH11, HYOU1, SPATA18, and SCD-were identified, demonstrating excellent disease discrimination across multiple cohorts (training set AUC=0.974). These genes were significantly enriched in processes like endoplasmic reticulum stress, mitophagy, and lipid metabolism. Critically, they played crucial roles in reshaping the NAFLD immune microenvironment, characterized by increased macrophage M2 polarization and T cell infiltration, linking mitochondrial dysfunction to inflammatory response. Single-cell analysis revealed their expression heterogeneity across hepatocytes, macrophages, and T cells, along with their involvement in intercellular communication patterns. Experimental validation confirmed aberrant core gene expression and altered mitophagy levels in NAFLD cell models. CONCLUSION: This study systematically delineates the regulatory network of mitophagy-related core genes in NAFLD and the resultant inflammatory immune microenvironment, offering novel insights and data support for elucidating disease mechanisms, developing early diagnostic biomarkers, and formulating precise therapeutic strategies.
Integrated Machine Learning and Multi-Omics Analysis Identifies Mitophagy-Related Core Genes and Mechanisms in Non-Alcoholic Fatty Liver Disease.
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作者:Yuan Yu, Zhang Tianyu, Song Chao, Lin Chunli, Sun Yuewen, Tang Hongzhen
| 期刊: | Journal of Inflammation Research | 影响因子: | 4.100 |
| 时间: | 2026 | 起止号: | 2026 Mar 24; 19:575586 |
| doi: | 10.2147/JIR.S575586 | ||
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