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CHRONIC KIDNEY DISEASE DETECTION USING ENSEMBLE LEARNING TECHNIQUES AND COMPARATIVE STUDY

📘 Volume 9 📄 Issue 4 📅 april 2024

👤 Authors

A.Gowtham, Ch. Kesava Manikanta ,Ch. Prasanth Kumar, Ch. Sai Sundara Raghuram, B. Sai Jyothi 1
1. Department of Information Technology, Information Technology, Vasireddy Venkatadri Institute of Technology, Guntur, India.

📄 Abstract

A common health problem around the globe, chronic kidney disease (CKD) must be identified early in order to be effectively managed. The accuracy of CKD diagnosis may be increased with the use of machine learning approaches, especially ensemble learning. In order to determine which model performs best for CKD detection, this research will compare and contrast several ensemble learning strategies. Ten distinct models are evaluated in the study: Bagging, Random Forest, Gradient Boosting, Ada Boosting, XGBoost, K-Nearest Neighbours (KNN), Decision Tree, Decision Tree after Pruning, Logistic Regression, and Linear Discriminant Analysis. A CKD dataset is used to evaluate these models based on criteria including accuracy, precision score, and recall score. The comparative study results demonstrate how ensemble learning techniques might raise CKD detection accuracy. The findings provide crucial details about the optimal model for CKD detection, which can help with early diagnosis and better patient outcomes.

🏷️ Keywords

Chronic Kidney Disease (CKD) Ensemble Learning Machine Learning Accuracy Early Diagnosis

🔗 DOI

View DOI - (https://doi.org/10.36713/epra16316)

📚 How to Cite:

A.Gowtham, Ch. Kesava Manikanta ,Ch. Prasanth Kumar, Ch. Sai Sundara Raghuram, B. Sai Jyothi , CHRONIC KIDNEY DISEASE DETECTION USING ENSEMBLE LEARNING TECHNIQUES AND COMPARATIVE STUDY , Volume 9 , Issue 4, april 2024, EPRA International Journal of Research & Development (IJRD) , DOI: https://doi.org/10.36713/epra16316

🔗 PDF URL

https://cdn.eprapublishing.org/article/1108pm_8.EPRA JOURNALS 16316.pdf

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