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Propensity Score Matching Using Support Vector Machine in Case of Type 2 Diabetes Mellitus (DM)

机译:在2型糖尿病(DM)的情况下使用支持向量机进行倾向得分匹配

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Randomization in the treatment and control group was not appropriate for non-experimental studies because it will produced bias estimation of treatment effects. In addition to randomization, the presence of confounding variables will also produce bias estimation of treatment effect. This bias estimation of treatment effect can be handled using Propensity Score (PS) method. One of the methods that have been developed from the propensity score is Propensity Score Matching (PSM). In this study, the propensity score is estimated using Support Vector Machine (SVM). Confounding variables that used in this study is exercise activities. The purpose of this study is to apply the PSM using SVM method and calculate the accuracy and Percent Bias Reduction (PBR) on type 2 Diabetes mellitus (DM) disease complications case. The data used in this study is type 2 Diabetes Mellitus (DM) patients data treated at Pasuruan regional public hospital on March 2017. The results of PSM-SVM analysis shows that there are 40 of 96 patients with type 2 DM who have enough exercise activities paired with patients who have less exercise activities. Average Treatment of Treated (ATT) estimation result shows that exercise activity variables (Z) has significant effect on disease complication variables (Y). The accuracy of the PSM-SVM method is 70.00% and 16.65% of the bias can be reduced.
机译:治疗和对照组的随机分组不适用于非实验研究,因为这将产生治疗效果的偏倚估计。除随机化外,混杂变量的存在还将产生治疗效果的偏倚估计。可以使用倾向评分(PS)方法处理这种对治疗效果的偏倚估计。从倾向得分发展出的一种方法是倾向得分匹配(PSM)。在这项研究中,倾向得分是使用支持向量机(SVM)估算的。在这项研究中使用的混杂变量是运动活动。这项研究的目的是使用SVM方法应用PSM并计算2型糖尿病(DM)疾病并发症病例的准确性和减少偏倚百分比(PBR)。本研究中使用的数据是2017年3月在Pasuruan地区公立医院接受治疗的2型糖尿病(DM)患者数据。PSM-SVM分析的结果显示,在96名2型DM患者中,有40名具有足够的运动能力与运动量较少的患者配对。 “治疗的平均治疗”(ATT)估计结果表明,运动活动变量(Z)对疾病并发症变量(Y)有显着影响。 PSM-SVM方法的精度为70.00%,可以减少16.65%的偏差。

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