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Current Alzheimer research

Research on Alzheimer's Disease Risk Assessment Models and Biomarker Screening Based on Bioinformatics Analysis and Machine Learning Algorithms.

INTRODUCTION: Alzheimer's Disease (AD) is among the most prevalent neurodegenerative disorders globally, yet effective early diagnostic strategies remain lacking. Advances in multi-omics technologies and the integration of artificial intelligence into medicine have created new opportunities for developing predictive models for AD. Biomarker-based models hold significant promise for enhancing early detection. In this study, we integrated multi-omics data to identify core risk genes with potential causal links to AD and developed an early diagnostic model, thereby providing a theoretical framework for precision intervention. METHODS: We integrated Mendelian Randomization (MR), differential expression analysis, and Weighted Gene Co-Expression Network Analysis (WGCNA) to identify candidate genes with potential causal relevance to AD. Functional enrichment analyses using Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG), along with immune infiltration profiling, were performed to investigate the biological roles of these genes. We then applied eight machine learning algorithms to evaluate gene importance scores and selected the most diagnostically informative features to construct the Nomogram predictive model. The model's performance was validated in an independent external cohort. Finally, Gene Set Enrichment Analysis (GSEA) was conducted to further elucidate the mechanistic involvement of core risk genes in AD pathogenesis. RESULTS: Integrated analyses using multiple machine learning models (all with AUC values exceeding 0.88) identified VASP, PIP4K2A, RRP36, METTL7A, and AP2M1 as key diagnostic feature genes. The nomogram constructed based on these five genes demonstrated robust diagnostic performance in the validation cohort (AUC = 0.964). Notably, RRP36 and PIP4K2A consistently emerged as core risk genes across diverse machine learning approaches. GSEA results further suggested that RRP36 may contribute to neurodegeneration by modulating cytoskeletal remodeling and neuroinflammatory responses, while PIP4K2A may be implicated in synaptic dysfunction. DISCUSSION: This study is the first to integrate MR, differential gene expression, and WGCNA for systematic AD risk gene discovery, combined with a multi-algorithm machine learning strategy to enhance model robustness and translational potential. RRP36 and PIP4K2A, as core risk genes, may drive AD progression by orchestrating cytoskeletal reorganization, neuroinflammation, and synaptic impairment, offering promising targets for future mechanistic investigations and therapeutic development. CONCLUSION: This study identified and validated RRP36 and METTL7A as core risk genes for AD. The resulting nomogram, based on a five-gene panel, exhibited high diagnostic accuracy and provides new biomarkers and methodological support for the early screening and precise intervention of AD.

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