Systematic Analysis and Biomarker Study for Alzheimer’s Disease

被引:0
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作者
Xinzhong Li
Haiyan Wang
Jintao Long
Genhua Pan
Taigang He
Oleg Anichtchik
Robert Belshaw
Diego Albani
Paul Edison
Elaine K Green
James Scott
机构
[1] Plymouth University Faculty of Medicine and Dentistry,Department of Methodology
[2] Drake Circus,School of Computing Electronics and Mathematics
[3] London School of Economics and Political Science,Molecular and Clinical Sciences Research Institute
[4] Houghton St,Department of Neuroscience
[5] Plymouth University,undefined
[6] Drake Circus,undefined
[7] St George’s,undefined
[8] University of London,undefined
[9] Cranmer Terrace,undefined
[10] IRCCS - Istituto di Ricerche Farmacologiche “Mario Negri” Via La Masa 19,undefined
[11] Department of Medicine,undefined
[12] Imperial College London,undefined
来源
Scientific Reports | / 8卷
关键词
Differentially Expressed Genes (DEGs); Genome-wide Association Studies; International Genomics Of Alzheimer’s Project (IGAP); Least Absolute Shrinkage And Selection Operator (LASSO); Area Under Precision-recall Curve (AUPR);
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摘要
Revealing the relationship between dysfunctional genes in blood and brain tissues from patients with Alzheimer’s Disease (AD) will help us to understand the pathology of this disease. In this study, we conducted the first such large systematic analysis to identify differentially expressed genes (DEGs) in blood samples from 245 AD cases, 143 mild cognitive impairment (MCI) cases, and 182 healthy control subjects, and then compare these with DEGs in brain samples. We evaluated our findings using two independent AD blood datasets and performed a gene-based genome-wide association study to identify potential novel risk genes. We identified 789 and 998 DEGs common to both blood and brain of AD and MCI subjects respectively, over 77% of which had the same regulation directions across tissues and disease status, including the known ABCA7, and the novel TYK2 and TCIRG1. A machine learning classification model containing NDUFA1, MRPL51, and RPL36AL, implicating mitochondrial and ribosomal function, was discovered which discriminated between AD patients and controls with 85.9% of area under the curve and 78.1% accuracy (sensitivity = 77.6%, specificity = 78.9%). Moreover, our findings strongly suggest that mitochondrial dysfunction, NF-κB signalling and iNOS signalling are important dysregulated pathways in AD pathogenesis.
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