scholarly article | Q13442814 |
P2093 | author name string | Fang Yang | |
Hong Yue | |||
Xiao-Li Hu | |||
B O Yang | |||
Fan-Bin Kong | |||
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Integrating Genome-Wide Association Study and Brain Expression Data Highlights Cell Adhesion Molecules and Purine Metabolism in Alzheimer's Disease. | Q30849405 | ||
Microarray analyses of laser-captured hippocampus reveal distinct gray and white matter signatures associated with incipient Alzheimer's disease | Q31023394 | ||
Gene coexpression network analysis as a source of functional annotation for rice genes | Q31027057 | ||
Proposed cardiovascular risk assessment algorithm using high-sensitivity C-reactive protein and lipid screening | Q31810626 | ||
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The utility of MAS5 expression summary and detection call algorithms | Q33292452 | ||
Alzheimer's disease is associated with reduced expression of energy metabolism genes in posterior cingulate neurons | Q33323272 | ||
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Signed weighted gene co-expression network analysis of transcriptional regulation in murine embryonic stem cells | Q33484422 | ||
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The metabolic world of Escherichia coli is not small | Q36159873 | ||
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Incipient Alzheimer's disease: microarray correlation analyses reveal major transcriptional and tumor suppressor responses | Q36605276 | ||
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Molecular networks as sensors and drivers of common human diseases | Q37594580 | ||
Proteasome and oxidative phoshorylation changes may explain why aging is a risk factor for neurodegenerative disorders | Q37784874 | ||
Transcriptomics study of neurodegenerative disease: emphasis on synaptic dysfunction mechanism in Alzheimer's disease | Q38472450 | ||
Co-expression network analysis of differentially expressed genes associated with metastasis in prolactin pituitary tumors | Q38477735 | ||
Gene expression patterns combined with bioinformatics analysis identify genes associated with cholangiocarcinoma | Q39329718 | ||
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Coexpression network analysis in chronic hepatitis B and C hepatic lesions reveals distinct patterns of disease progression to hepatocellular carcinoma | Q42978926 | ||
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Topological and Functional Discovery in a Gene Coexpression Meta-Network of Gastric Cancer | Q62002234 | ||
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P4510 | describes a project that uses | Cytoscape | Q3699942 |
P433 | issue | 5 | |
P921 | main subject | Alzheimer's disease | Q11081 |
P304 | page(s) | 1707-1715 | |
P577 | publication date | 2016-03-03 | |
P1433 | published in | Experimental and Therapeutic Medicine | Q23979083 |
P1476 | title | Co-expression network-based analysis of hippocampal expression data associated with Alzheimer's disease using a novel algorithm | |
P478 | volume | 11 |
Q38384032 | THD-Module Extractor: An Application for CEN Module Extraction and Interesting Gene Identification for Alzheimer's Disease | cites work | P2860 |
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