XGBoost-Driven Insights: Enhancing Chronic Kidney Disease Detection
Ritu Rani, Kanwarpartap Singh Gill, Deepak Upadhyay, Swati Devliyal
Abstract
Early detection and treatment of chronic kidney disease (CKD) are very vital to stop progression along with associated challenges, so CKD is a major global health issue. Recent developments in machine learning (ML) have greatly enhanced pattern detection and analysis of large datasets, hence improving CKD diagnosis and prediction. This work looks into early CKD recognition using the XGBoost algorithm, confirmed by cross-valuation and recursive feature reduction. By means of a comprehensive confusion matrix, we evaluate the performance of the model revealing an accuracy of 98.33%, precision of 100%, recall of 97.29%, and an F1 score of 98.63%. These measures underline the strong dependability and effectiveness of the model. focusing on the need of open estimation models in clinical decision-making, works by Kumar (2024) and Zheng et al. (2024) significantly contribute in the field. Research by Kale et al. (2024), Islam et al. (2023), and Chang et al. (2023) show the value of XGBoost in many CKD-related projections. Further improving CKD diagnosis models are research by Azam et al. (2023) and Gill et al. (2023), which highlights the need of comparison analysis and model development. Our work involves the integration of ML approaches-especially XGBoost-into CKD diagnosis and prognosis by means of enhanced accuracy in prediction and early intervention, therefore enhancing patient outcomes. The findings confirm the need of using these creative strategies in clinical practice since they offer an excellent chance to adequately control CKD.