Journal ArticleOpen Access
ML-CKDP: Machine learning-based chronic kidney disease prediction with smart web application
Author Affiliations
Jagannath University, Deakin University, Bangabandhu Sheikh Mujibur Rahman Digital University, Bangabandhu Sheikh Mujibur Rahman Agricultural University, ...
Published InJournal of Pathology Informatics
Year2024
Citations73
Abstract
Chronic kidney diseases (CKDs) are a significant public health issue with potential for severe complications such as hypertension, anemia, and renal failure. Timely diagnosis is crucial for effective management. Leveraging machine learning within healthcare offers promising advancements in predictive diagnostics. In this paper, we developed a machine learning-based kidney diseases prediction (ML-CKDP) model with dual objectives: to enhance dataset preprocessing for CKD classification and to develop a web-based application for CKD prediction. The proposed model involves a comprehensive data preprocessing protocol, converting categorical variables to numerical values, imputing missing data, and normalizing via Min-Max scaling. Feature selection is executed using a variety of techniques including Correlation, Chi-Square, Variance Threshold, Recursive Feature Elimination, Sequential Forward Selection, Lasso Regression, and Ridge Regression…
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