基于数据挖掘方法和支持向量机的慢性肾脏病预测

Muhamad Huzaimi Bin Abdul Ghafar, Nurul Aleena Binti Abdullah, Abdul Hadi Abdul Razak, Megat Syahirul Amin Bin Megat Ali, Syed Abdul Mutalib Al-Junid
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引用次数: 0

摘要

慢性肾脏疾病(CKD)是指肾脏不再像以前那样正常工作,过滤血液是它们的职责之一。这种情况被归类为“慢性”,因为肾脏损害是随着时间逐渐发生的。这会导致废物在体内堆积。本研究旨在预测慢性肾脏病患者所经历的阶段,这可能有助于早期发现和预防。支持向量机(SVM)作为MathWorks开发的预测系统的基础,缺失数据分析将使用IBM SPSS Statistic 21进行。该工作将展示基于特征选择和分类的方法,以提高算法在对慢性肾脏疾病进行有效分析和预测方面的性能准确性。综上所述,在数据集分析所涉及的其他类型的验证中,使用50% holdout验证的SVM获得的准确率最高,为93.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chronic Kidney Disease Prediction based on Data Mining Method and Support Vector Machine
Chronic Kidney Disease (CKD) is when the kidneys are no longer working normally as they used to be, and filtering the blood was one of their obligations. The condition is classified as "chronic" since the kidney damage occurs gradually over time. This will cause waste to build up in the body. This study is aimed to predict the stages suffered by Chronic Kidney Disease patients, which might help in early detection and prevention. A Support Vector Machine (SVM) serves as the foundation for the prediction system developed by MathWorks and the missing data analysis will be done by using IBM SPSS Statistic 21. The work will show the feature selection and classification-based methods to enhance the performance accuracy of the algorithm in giving effective analysis and prediction of Chronic Kidney Disease. In conclusion, the accuracy achieved by using SVM with 50% holdout validation had the highest accuracy percentage of 93.5% out of other types of validation involved for the analysis of the datasets.
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