Developing a Novel Continuous Metabolic Syndrome Score: A Data Mining Based Model

M. Saffarian, V. Babaiyan, K. Namakin, F. Taheri, T. Kazemi
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引用次数: 1

Abstract

Today, Metabolic Syndrome in the age group of children and adolescents has become a global concern. In this paper, a data mining model is used to determine a continuous Metabolic Syndrome (cMetS) score using Linear Discriminate Analysis (cMetS-LDA). The decision tree model is used to specify the calculated optimal cut-off point cMetS-LDA. In order to evaluate the method, multilayer perceptron neural network (NN) and Support Vector Machine (SVM) models were used and statistical significance of the results was tested with Wilcoxon signed-rank test. According to the results of this test, the proposed CART is significantly better than the NN and SVM models. The ranking results in this study showed that the most important risk factors in making cMetS-LDA were WC, SBP, HDL and TG for males and WC, TG, HDL and SBP for females. Our research results show that high TG and central obesity have the greatest impact on MetS and FBS has no effect on the final prognosis. The results also indicate that in the preliminary stages of MetS, WC, HDL and SBP are the most important influencing factors that play an important role in forecasting.
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开发一种新的连续代谢综合征评分:一个基于数据挖掘的模型
今天,儿童和青少年年龄段的代谢综合征已成为全球关注的问题。本文采用线性判别分析(Linear discrimination Analysis, cMetS- lda)方法,利用数据挖掘模型确定连续代谢综合征(cMetS)评分。采用决策树模型指定计算出的最优截断点cMetS-LDA。为了评估该方法,采用多层感知器神经网络(NN)和支持向量机(SVM)模型,并采用Wilcoxon符号秩检验对结果进行统计显著性检验。从测试结果来看,所提出的CART模型明显优于NN和SVM模型。本研究的排序结果显示,cMetS-LDA的最重要危险因素为男性WC、SBP、HDL和TG,女性WC、TG、HDL和SBP。我们的研究结果表明,高TG和中心性肥胖对MetS的影响最大,FBS对最终预后没有影响。结果还表明,在MetS的早期阶段,WC、HDL和SBP是最重要的影响因素,在预测中起重要作用。
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