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Prediction of chronic kidney disease using different classification algorithms

机译:不同分类算法预测慢性肾病

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Chronical kidney disease (CKD) is a common kidney function problem that causes deterioration of kidney performance and leads to kidney failure. An early diagnostic methodology to determine kidney functionality is essential and extremely important in many cases. In this study, different classifiers were applied for the classification of a CKD dataset. The algorithms were applied using random tree, decision table (DT), K-nearest neighbor (K-NN), J48, stochastic gradient descent (SGD) and Na?ve Bayes classifiers, and a prediction model was proposed based on feature selection to efficiently predict CKD cases. Results showed that the J48 and decision table classifiers outperformed the other classifiers with accuracies of 99%, ROCs equal to 0.999 and 0.992, MAEs of 0.0225 and 0.1815, and RMSEs of 0.0807 and 0.2507, respectively. A sensitivity analysis of selected classifiers was implemented to evaluate the performance of these classifiers with changes in their parameters. The J48 and decision table classifiers outperformed all other classifiers with an accuracy of 99% and RMSEs of 0.0807 and 0.2507, respectively. Additionally, the results showed an enhanced classification performance for K-NN (K?=?1). Na?ve Bayes and decision table classification were enhanced to 99.75%, 98.25% and 99.25%, respectively, when feature selection methods were applied, and only a handful of features were used for classification of the CKD dataset, in which such an enhancement can add value and support healthcare provided to identify certain CKD cases at early stages using the presented selected features.
机译:慢性肾病(CKD)是一种常见的肾功能问题,导致肾脏性能恶化并导致肾功能衰竭。在许多情况下,确定肾功能的早期诊断方法是必不可少的,非常重要。在本研究中,应用不同的分类器用于CKD数据集的分类。使用随机树,决定表(DT),K最近邻(K-NN),J48,随机梯度下降(SGD)和NAΔVe贝雷斯分类器,以及基于特征选择的预测模型应用该算法。有效地预测CKD病例。结果表明,J48和判定表分类器的表现优于99%的准确度,等于0.999和0.992,MAE为0.0225和0.1815,以及0.0807和0.2507的准确度的其他分类器。实施了所选分类器的灵敏度分析,以评估这些分类器的性能随着参数的变化。 J48和决策表分类器的表现优于所有其他分类器,精度为99%和0.0807和0.2507的RMSE。另外,结果表明了K-NN的增强的分类性能(K?=?1)。当采用特征选择方法时,Na ve贝雷斯和决策表分类分别增强至99.75%,98.25%和99.25%,并且仅用于CKD数据集的少数功能,其中包括这种增强添加价值和支持医疗保健,以使用所选择的特征在早期阶段识别某些CKD病例。

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