SVMRFE based approach for prediction of most discriminatory gene target for type II diabetes

Atul Kumar , D. Jeya Sundara Sharmila , Sachidanand Singh
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引用次数: 9

Abstract

Type II diabetes is a chronic condition that affects the way our body metabolizes sugar. The body's important source of fuel is now becoming a chronic disease all over the world. It is now very necessary to identify the new potential targets for the drugs which not only control the disease but also can treat it. Support vector machines are the classifier which has a potential to make a classification of the discriminatory genes and non-discriminatory genes. SVMRFE a modification of SVM ranks the genes based on their discriminatory power and eliminate the genes which are not involved in causing the disease. A gene regulatory network has been formed with the top ranked coding genes to identify their role in causing diabetes. To further validate the results pathway study was performed to identify the involvement of the coding genes in type II diabetes. The genes obtained from this study showed a significant involvement in causing the disease, which may be used as a potential drug target.

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基于SVMRFE的2型糖尿病最具歧视性基因靶标预测方法
II型糖尿病是一种慢性疾病,影响我们身体代谢糖的方式。人体重要的燃料来源现在正在成为全世界的一种慢性病。现在非常有必要寻找新的潜在靶点,开发既能控制疾病又能治疗疾病的药物。支持向量机是一种分类器,具有对歧视性基因和非歧视性基因进行分类的潜力。SVMRFE是对SVM的一种改进,它根据基因的区分能力对基因进行排序,剔除与疾病无关的基因。一个基因调控网络已经与排名靠前的编码基因形成,以确定它们在引起糖尿病中的作用。为了进一步验证这一结果,我们进行了途径研究,以确定编码基因在II型糖尿病中的作用。从这项研究中获得的基因显示了引起疾病的重要参与,这可能被用作潜在的药物靶点。
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