This paper discusses a proposed approach for classifying chronic kidney disease (CKD) in the presence of missing medical test data, implementing various techniques to address this issue, such as deletion and mean imputation. The study employs k-nearest neighbors, naïve Bayes, decision trees, and support vector machines to identify effective classifiers, ultimately achieving a high accuracy of 99% using the decision tree method with mean-imputed data. The research highlights the importance of handling missing data correctly to ensure accurate disease diagnosis.
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