A Comparative Analysis of Machine Learning Models for Prediction of Chronic Kidney Disease

Nariman Khalil, Mohamed Elkholy, Mohamed Eassa
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Abstract

Prediction of chronic kidney disease (CKD) has emerged as a useful technique for early detection of at-risk persons and the introduction of appropriate management strategies. Machine learning and data-driven methods have been used in predictive modeling to examine massive databases of patient demographics, medical histories, test findings, and genetic information. These cutting-edge methods allow for the profiling of high-risk patients and the tailoring of healthcare administration approaches. Patient outcomes, complication rates, and healthcare system efficiency may all benefit greatly from CKD screening and prediction. Responsible use of CKD prediction algorithms, however, requires resolving issues with data availability, integration, and ethics. The area of medicine has benefited greatly from the use of Machine Learning (ML) methods, which have played an increasingly central role in illness prediction. In this study, we use a strategy that makes use of ML methods to construct effective tools for predicting the development of CKD. Multiple ML models are trained, and their results are compared using a variety of criteria. We applied five ML methods such as logistic regression (LR), Decision tree (DT), random forest (RF), support vector machine (SVM), and k-nearest neighbor (KNN). The LR and KNN have the highest accuracy with 99%.
慢性肾脏疾病预测机器学习模型的比较分析
慢性肾脏疾病(CKD)的预测已经成为早期发现高危人群和引入适当管理策略的有用技术。机器学习和数据驱动的方法已被用于预测建模,以检查大量的患者人口统计、病史、测试结果和遗传信息数据库。这些尖端的方法允许高风险患者的分析和医疗管理方法的剪裁。患者预后、并发症发生率和医疗保健系统效率都可以从CKD筛查和预测中获益。然而,负责任地使用CKD预测算法需要解决数据可用性、集成和伦理问题。医学领域从机器学习(ML)方法的使用中受益匪浅,机器学习(ML)方法在疾病预测中发挥着越来越重要的作用。在这项研究中,我们使用了一种策略,利用ML方法构建有效的工具来预测CKD的发展。训练多个ML模型,并使用各种标准对其结果进行比较。我们应用了五种机器学习方法,如逻辑回归(LR)、决策树(DT)、随机森林(RF)、支持向量机(SVM)和k近邻(KNN)。LR和KNN的准确率最高,达到99%。
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