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Using data mining techniques for multi-diseases prediction modeling of hypertension and hyperlipidemia by common risk factors

机译:使用数据挖掘技术通过常见危险因素对高血压和高脂血症的多病预测模型

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摘要

Many previous studies have employed predictive models for a specific disease, but fail to note that humans often suffer from not only one disease, but associated diseases as well. Because these associated multiple diseases might have reciprocal effects, and abnormalities in physiological indicators can indicate multiple associated diseases, common risk factors can be used to predict the multiple associated diseases. This approach provides a more effective and comprehensive forecasting mechanism for preventive medicine. This paper proposes a two-phase analysis procedure to simultaneously predict hypertension and hyperlipidemia. Firstly, we used six data mining approaches to select the individual risk factors of these two diseases, and then determined the common risk factors using the voting principle. Next, we used the Multivariate Adaptive Regression Splines (MARS) method to construct a multiple predictive model for hypertension and hyperlipidemia. This study uses data from a physical examination center database in Taiwan that includes 2048 subjects. The proposed analysis procedure shows that the common risk factors of hypertension and hyperlipidemia are Systolic Blood Pressure (SBP), Triglycerides, Uric Acid (UA), Glu-tamate Pyruvate Transaminase (GPT), and gender. The proposed multi-diseases predictor method has a classification accuracy rate of 93.07%. The results of this paper provide an effective and appropriate methodology for simultaneously predicting hypertension and hyperlipidemia.
机译:先前的许多研究已针对特定疾病采用了预测模型,但未能注意到人类通常不仅患有一种疾病,而且还患有相关疾病。由于这些相关的多种疾病可能具有相互影响,并且生理指标异常可以指示多种相关的疾病,因此可以使用常见的危险因素来预测多种相关的疾病。这种方法为预防医学提供了更有效,更全面的预测机制。本文提出了一个两阶段分析程序来同时预测高血压和高脂血症。首先,我们使用六种数据挖掘方法来选择这两种疾病的个体危险因素,然后使用投票原理确定共同的危险因素。接下来,我们使用多元自适应回归样条(MARS)方法构建高血压和高脂血症的多预测模型。这项研究使用来自台湾身体检查中心数据库的数据,其中包括2048个科目。拟议的分析程序表明,高血压和高脂血症的常见危险因素是收缩压(SBP),甘油三酸酯,尿酸(UA),谷氨酸丙酮酸转氨酶(GPT)和性别。提出的多病害预测方法分类准确率为93.07%。本文的结果为同时预测高血压和高脂血症提供了一种有效而适当的方法。

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