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Computer-Aided Diagnosis of Chronic Kidney Disease in Developing Countries: A Comparative Analysis of Machine Learning Techniques

机译:发展中国家慢性肾病的计算机辅助诊断:机器学习技术的比较分析

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摘要

The high incidence and prevalence of chronic kidney disease (CKD), often caused by late diagnoses, is a critical public health problem, especially in developing countries such as Brazil. CKD treatment therapies, such as dialysis and kidney transplantation, increase the morbidity and mortality rates, besides the public health costs. This study analyses the usage of machine learning techniques to assist in the early diagnosis of CKD in developing countries. Qualitative and quantitative comparative analyses are, respectively, conducted using a systematic literature review and an experiment with machine learning techniques, with the k-fold cross-validation method based on the Weka (c) software and a CKD dataset. These analyses enable a discussion on the suitability of machine learning techniques for screening for CKD risk, focusing on low-income and hard-to-reach settings of developing countries, due to the specific problems faced by them, e.g., inadequate primary health care. The study results show that the J48 decision tree is a suitable machine learning technique for such screening in developing countries, due to the easy interpretation of its classification results, with 95.00% accuracy, reaching a nearly perfect agreement with an experienced nephrologist's opinion. Conversely, random forest, naive Bayes, support vector machine, multilayer perceptron, and k-nearest neighbor techniques, respectively, yield 93.33%, 88.33%, 76.66%, 75.00%, and 71.67% accuracy, presenting at least moderate agreement with the nephrologist, at the cost of a more difficult interpretation of the classification results.
机译:慢性肾病(CKD)的高发病率和患病率,通常由晚期诊断引起,是一个关键的公共卫生问题,特别是在巴西等发展中国家。除公共卫生成本外,CKD治疗疗法,如透析和肾移植,增加发病率和死亡率。本研究分析了机器学习技术的使用,协助发展中国家CKD的早期诊断。分别使用系统文献综述和具有机器学习技术的实验进行的定性和定量对比分析,基于Weka(C)软件和CKD数据集的K折叠交叉验证方法。这些分析能够讨论机器学习技术筛选CKD风险的适用性,侧重于发展中国家的低收入和难以达到的环境,这是由于它们所面临的具体问题,例如初级保健不足。研究结果表明,J48决策树是发展中国家在发展中国家这种筛查的合适机器学习技术,由于其分类结果轻松解释,精度为95.00%,达到了与经验丰富的肾病学家的意见近乎完美的协议。相反,随机森林,天真贝叶斯,支持向量机,多层感知者和k最近邻的技术,产量93.33%,88.3%,76.66%,75.00%和71.67%的准确性,呈现至少与肾病学家的中等协议,以更加困难的解释分类结果的成本为代价。

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