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SVM Multi-classification of T2D/CVD Patients Using Biomarker Features

机译:使用生物标记功能对T2D / CVD患者进行SVM多分类

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Cardiovascular disease (CVD) is considered as the leading cause of morbidity and mortality in type 2 diabetes (T2D) patients. In 2008 the US FDA issued a Guidance to Industry statement, recognizing the conjoined nature of CVD and T2D and emphasizing the need to monitor cardiovascular risk during new diabetic drug trials. This led researchers to work towards identifying panels of markers that are able to distinguish subtypes of CVD in the context of T2D. Immunoassays are used to detect and quantify biomolecules in a solution. Mass spectrometric immunoassay analysis of various proteins in the blood serum of 212 subjects belonging to multiple disease groups resulted in the identification of 41 molecular species as potential biomarkers. In this paper, support vector machines are used to measure the effectiveness of using these species as a diagnosis tool. We suggest an any-vs-rest SVM multiclass classification method by dividing the problem into a series of binary SVM classification problems and using a MAP decision rule to predict the correct class. One-vs-rest and discriminant analysis approaches are also evaluated for comparison.
机译:心血管疾病(CVD)被认为是2型糖尿病(T2D)患者发病和死亡的主要原因。 2008年,美国FDA发布了《行业指南》声明,承认CVD和T2D的共同性质,并强调在新的糖尿病药物试验中需要监测心血管风险。这导致研究人员致力于鉴定能够区分T2D背景下CVD亚型的标记物组。免疫测定法用于检测和定量溶液中的生物分子。质谱免疫分析法分析了212个属于多个疾病组的受试者血清中的各种蛋白质,从而鉴定出41种分子种类作为潜在的生物标记物。在本文中,支持向量机用于测量将这些物种用作诊断工具的有效性。通过将问题划分为一系列二进制SVM分类问题并使用MAP决策规则来预测正确的分类,我们建议了一种任意休息的SVM多类分类方法。还评估了一对静止和判别分析方法以进行比较。

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