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Apply support vector regression to extract the potential susceptibility genes of chronic obstructive pulmonary disease

机译:应用支持向量回归提取慢性阻塞性肺疾病的潜在易感基因

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Chronic obstructive pulmonary disease (COPD) is a complex disorder classified as the 3rd cause of the death worldwide. So far, we know that this disease is progressive and can not be cured. In recent years, although some genes have been reported to be associated with COPD, the overlapped genetic associations can't be replicated. Therefore, it is difficult to synthesize and interpret these different findings. To address this issue, we conducted an integrated data analysis by combining network topological properties with support vector regression (SVR) to extract the potential susceptibility genes of COPD. As a result, COPD-related risk genes such as BBS9, ADAM19 and TGFB1 were identified, and these genes were supported by some previous and recent evidences. Our approach can help improve the accuracy in identifying COPD-related risk genes.
机译:慢性阻塞性肺疾病(COPD)是一种复杂的疾病,被列为世界范围内第三大死亡原因。到目前为止,我们知道这种疾病是进行性的,无法治愈。近年来,尽管有报道称某些基因与COPD有关,但是重叠的遗传关联却无法复制。因此,很难综合和解释这些不同的发现。为解决此问题,我们通过将网络拓扑特性与支持向量回归(SVR)相结合进行了综合数据分析,以提取COPD的潜在易感基因。结果,鉴定了COPD相关的风险基因,例如BBS9,ADAM19和TGFB1,这些基因得到了一些先前和最近的证据的支持。我们的方法可以帮助提高识别COPD相关风险基因的准确性。

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