Weighted gene co-expression network analysis in biomedicine research
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National Natural Science Foundation of China (No. 81502091), Zhejiang Provincial Natural Science Foundation of China (No. LQ14H030001), and Ningbo Natural Science Foundation Grant (No. 2013A610232).

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    Abstract:

    High-throughput biological technologies are now widely applied in biology and medicine, allowing scientists to monitor thousands of parameters simultaneously in a specific sample. However, it is still an enormous challenge to mine useful information from high-throughput data. The emergence of network biology provides deeper insights into complex bio-system and reveals the modularity in tissue/cellular networks. Correlation networks are increasingly used in bioinformatics applications. Weighted gene co-expression network analysis (WGCNA) tool can detect clusters of highly correlated genes. Therefore, we systematically reviewed the application of WGCNA in the study of disease diagnosis, pathogenesis and other related fields. First, we introduced principle, workflow, advantages and disadvantages of WGCNA. Second, we presented the application of WGCNA in disease, physiology, drug, evolution and genome annotation. Then, we indicated the application of WGCNA in newly developed high-throughput methods. We hope this review will help to promote the application of WGCNA in biomedicine research.

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刘伟,李立,叶桦,屠伟. 权重基因共表达网络分析在生物医学中的应用[J]. Chinese Journal of Biotechnology, 2017, 33(11): 1791-1801

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  • Received:January 06,2017
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  • Online: November 09,2017
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