BACKGROUND: The complex pathogenesis of Alzheimer's disease (AD) has resulted in limited current biomarkers for its classification and diagnosis, necessitating further investigation into reliable universal biomarkers or combinations. METHODS: In this work, we collect multiple CSF proteomics datasets and build a universal diagnose model by SVM-RFECV method combined with equal sample size and standard normalization design. The model was training in 297_CSF and then test the effect in other datasets. RESULTS: Utilizing machine learning, we identify a 12-protein panel from cerebrospinal fluid proteomic datasets. The universal diagnosis model demonstrated strong diagnostic capability and high accuracy across ten different AD cohorts across different countries and different detection technologies. These proteins involved in various biological processes related to AD and shows a tight correlation with established AD pathogenic biomarkers, including amyloid-β, tau/p-tau, and the Montreal Cognitive Assessment score. The high accuracy in the model may due to multiple protein combination based on comprehensive pathogenesis and different AD progress. Furthermore, it effectively differentiates AD from mild cognitive impairment (MCI) and other neurodegenerative disorders, especially the frontotemporal dementia (FTD), which share similar pathogenesis as AD. CONCLUSION: This study highlights a high accuracy, robustness and compatibility model of 12-protein panel whose detection is even based on label-free, TMT and DIA mass spectrometry or ELISA technologies, implicating its potential prospect in clinical application.
Machine-learning based strategy identifies a robust protein biomarker panel for Alzheimer's disease in cerebrospinal fluid.
基于机器学习的策略在脑脊液中识别出阿尔茨海默病的可靠蛋白质生物标志物组合
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作者:Hou Xiaosen, Qiu Yunjie, Li Hui, Yan Yan, Zhao Dongxu, Ji Simei, Ni Junjun, Zhang Jun, Liu Kefu, Qing Hong, Quan Zhenzhen
| 期刊: | Alzheimers Research & Therapy | 影响因子: | 7.600 |
| 时间: | 2025 | 起止号: | 2025 Jul 4; 17(1):147 |
| doi: | 10.1186/s13195-025-01789-5 | 研究方向: | 免疫/内分泌 |
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