Optimization of Prediction Method of Chronic Kidney Disease Using Machine Learning Algorithm

Pronab Ghosh, F M Javed Mehedi Shamrat, Shahana Shultana, Saima Afrin, A. Anjum, Aliza Ahmed Khan
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引用次数: 33

Abstract

Chronic Kidney disease (CKD), a slow and late-diagnosed disease, is one of the most important problems of mortality rate in the medical sector nowadays. Based on this critical issue, a significant number of men and women are now suffering due to the lack of early screening systems and appropriate care each year. However, patients’ lives can be saved with the fast detection of disease in the earliest stage. In addition, the evaluation process of machine learning algorithm can detect the stage of this deadly disease much quicker with a reliable dataset. In this paper, the overall study has been implemented based on four reliable approaches, such as Support Vector Machine (henceforth SVM), AdaBoost (henceforth AB), Linear Discriminant Analysis (henceforth LDA), and Gradient Boosting (henceforth GB) to get highly accurate results of prediction. These algorithms are implemented on an online dataset of UCI machine learning repository. The highest predictable accuracy is obtained from Gradient Boosting (GB) Classifiers which is about to 99.80% accuracy. Later, different performance evaluation metrics have also been displayed to show appropriate outcomes. To end with, the most efficient and optimized algorithms for the proposed job can be selected depending on these benchmarks.
基于机器学习算法的慢性肾病预测方法优化
慢性肾脏疾病(CKD)是一种慢性和晚期诊断疾病,是当今医学界最重要的死亡率问题之一。基于这一关键问题,每年都有相当数量的男性和女性由于缺乏早期筛查系统和适当护理而遭受痛苦。然而,在早期阶段快速发现疾病可以挽救患者的生命。此外,机器学习算法的评估过程可以通过可靠的数据集更快地检测到这种致命疾病的阶段。本文整体研究基于支持向量机(Support Vector Machine,以下简称SVM)、AdaBoost(以下简称AB)、线性判别分析(Linear Discriminant Analysis,以下简称LDA)、梯度提升(Gradient Boosting,以下简称GB)四种可靠的方法实现,得到了高度准确的预测结果。这些算法在UCI机器学习库的在线数据集上实现。梯度增强(Gradient Boosting, GB)分类器的预测准确率最高,达到99.80%左右。稍后,还将显示不同的性能评估指标,以显示适当的结果。最后,可以根据这些基准来为所建议的作业选择最有效和优化的算法。
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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