Predicate the Ability of Extracorporeal Shock Wave Lithotripsy (ESWL) to treat the Kidney Stones by used Combined Classifier

S. Hussein, Lubab Ahmed Tawfeeq, Sukaina Sh Altyar
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引用次数: 1

Abstract

Extracorporeal Shock Wave Lithotripsy (ESWL) is the most commonplace remedy for kidney stone. Shock waves from outside the body frame are centered at a kidney stone inflicting the stone to fragment. The success of the (ESWL) treatment is based on some variables such as age, sex, stone quantity stone period and so on. Thus, the prediction the success of remedy by this method is so important for professionals to make a decision to continue using (ESWL) or to using another remedy technique. In this study, a prediction system for (ESWL) treatment by used three techniques of mixing classifiers, which is Product Rule (PR), Neural Network (NN) and the proposed classifier called Nested Combined Classifier (NCC). The samples had been taken from 2850 actual sufferers cases that had been treated at Urology and Nephrology center of Iraq. The results from three cases have been compared to actual treatment results of (ESWL) for trained and non-trained cases and compared the results of three models. The results show that (NCC) approach is the most accurate method in prediction the efficient of uses (ESWL) remedy in treatment the kidney stone.
评价体外冲击波碎石术(ESWL)联合分级治疗肾结石的能力
体外冲击波碎石术(ESWL)是肾结石最常见的治疗方法。来自身体外部的冲击波以肾结石为中心,使结石碎裂。(ESWL)治疗的成功与否取决于一些变量,如年龄、性别、结石数量、结石周期等。因此,通过这种方法预测治疗的成功对于专业人员决定继续使用(ESWL)或使用其他治疗技术是非常重要的。本文采用积规则(PR)、神经网络(NN)和嵌套组合分类器(NCC)这三种混合分类器技术,构建了一个ESWL处理预测系统。样本取自在伊拉克泌尿科和肾脏病学中心接受治疗的2850例实际患者。将三个病例的结果与经过训练和未经过训练的ESWL的实际治疗结果进行了比较,并对三个模型的结果进行了比较。结果表明,NCC法是预测ESWL治疗肾结石疗效最准确的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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