An Early Prediction Model for Chronic Kidney Disease Using Machine Learning

R. Deepa, R. Priscilla, A. Pandi, B. Renukadevi
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Abstract

Chronic kidney disease (CKD) or chronic renal disease-has become a major issue with a steady growth rate. A person can survive for a maximum of 18 days, which makes a huge demand for a kidney transplant and dialysis. It is necessary to have a good model to predict this disease at an earlier stage. It can be identified using ML models. This proposal proposes a workflow to predict CKD status based on the pre-processing steps of clinical data collection, incorporating data, handling missing values with collaborative filters, and attribute selection. This proposal used seven machine models and will compare all the models and the extra tree classifier and decision tree to ensure high accuracy and minimal bias for the attribute. This research also focuses on the real-time aspects of data collection and highlights the importance of domain knowledge when using machine learning for CKD status prediction. The evolution of the proposed model shows that the model can predict CKD with an accuracy of 98.65%.
使用机器学习的慢性肾脏疾病早期预测模型
慢性肾脏疾病(CKD)或慢性肾脏疾病已成为一个主要问题,并稳步增长。一个人最多可以存活18天,这使得肾脏移植和透析的需求很大。有一个良好的模型在早期阶段预测这种疾病是必要的。它可以使用ML模型来识别。本文提出了一种基于临床数据收集的预处理步骤,结合数据,用协同过滤器处理缺失值,以及属性选择来预测CKD状态的工作流。该建议使用了7个机器模型,并将所有模型与额外的树分类器和决策树进行比较,以确保高精度和最小的属性偏差。本研究还侧重于数据收集的实时方面,并强调了在使用机器学习进行CKD状态预测时领域知识的重要性。模型的演化表明,该模型预测CKD的准确率为98.65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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