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Early Prediction of Chronic Kidney Disease Using Machine Learning Supported by Predictive Analytics

机译:预测分析支持的机器学习对慢性肾脏病的早期预测

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Chronic Kidney Disease is a serious lifelong condition that induced by either kidney pathology or reduced kidney functions. Early prediction and proper treatments can possibly stop, or slow the progression of this chronic disease to end-stage, where dialysis or kidney transplantation is the only way to save patient's life. In this study, we examine the ability of several machine-learning methods for early prediction of Chronic Kidney Disease. This matter has been studied widely; however, we are supporting our methodology by the use of predictive analytics, in which we examine the relationship in between data parameters as well as with the target class attribute. Predictive analytics enables us to introduce the optimal subset of parameters to feed machine learning to build a set of predictive models. This study starts with 24 parameters in addition to the class attribute, and ends up by 30 % of them as ideal sub set to predict Chronic Kidney Disease. A total of 4 machine learning based classifiers have been evaluated within a supervised learning setting, achieving highest performance outcomes of AUC 0.995, sensitivity 0.9897, and specificity 1. The experimental procedure concludes that advances in machine learning, with assist of predictive analytics, represent a promising setting by which to recognize intelligent solutions, which in turn prove the ability of predication in the kidney disease domain and beyond.
机译:慢性肾脏病是一种严重的终生疾病,由肾脏病理或肾功能下降引起。早期的预测和适当的治疗可能会阻止或延缓这种慢性病发展到最终阶段,在这种情况下,透析或肾脏移植是挽救患者生命的唯一途径。在这项研究中,我们检查了几种机器学习方法对慢性肾脏病的早期预测的能力。这个问题已经被广泛研究。但是,我们通过使用预测分析来支持我们的方法,在该方法中,我们检查了数据参数之间以及与目标类属性之间的关系。预测分析使我们能够引入参数的最佳子集,从而为机器学习提供参考,从而构建出一组预测模型。这项研究除类别属性外,还从24个参数开始,最后以30%作为预测慢性肾脏病的理想子集。在有监督的学习环境中,总共对基于机器学习的4个分类器进行了评估,获得了AUC 0.995,灵敏度0.9897和特异性1的最高性能结果。实验程序得出的结论是,借助预测分析,机器学习的进步代表了一种认识智能解决方案的良好前景,进而证明了在肾脏疾病领域及其他领域的预测能力。

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