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Predicting Chronic Kidney Disease of Diabetes Patients using Ensemble Learning

机译:使用集合学习预测糖尿病患者的慢性肾病

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Chronic kidney disease is the reason for many deaths all over the world every year. Chronic kidney disease has troubled almost 753 million people all over the world in 2016, wherein 417 million are females and 336 million are males. In the year 2015, it was the reason for 1.2 million deaths all over the world. When CKD is detected in the later stage of a diabetes patient, it is very harmful to them. Sometimes it leads them to death. But if it is possible to detect chronic kidney disease at an early stage of diabetes patients, the damage can be minimized. This research paper has shown a comparative analysis on the performance of some algorithms - Multilayer Perceptron, Bagging, and Adaboost. And this research work has also used some algorithms such as Bagging (J48), Bagging (Random Tree), Bagging (Decision Stump), Bagging (LMT), Adaboost (Random Tree), Adaboost (Decision Stump), Adaboost (J48), Adaboost (Random Forest). Our comparison of different algorithms will help people having diabetes to figure out whether they will have CKD or not in the future. From all these algorithms Bagging (Random Tree) and AdaBoost (Random Forest) have the best result. By comparing the results of all algorithms, the best algorithm can be detected for predicting the chronic kidney disease. This study can save many people's lives and money. Doctors can also be benefitted from this research.
机译:慢性肾病是每年全世界许多死亡的原因。慢性肾病在2016年陷入了世界上近753万人,其中41700万是女性,3.36亿人是男性。在2015年,这是世界各地120万人死亡的原因。当在糖尿病患者的后期检测到CKD时,它对它们非常有害。有时它会导致他们死亡。但如果可以在糖尿病患者的早期检测慢性肾病,则可以最小化损坏。本研究论文显示了一些算法的性能的比较分析 - Multidayer Perceptron,Bagging和Adaboost。这项研究工作还使用了一些算法(J48),装袋(随机树),装袋(决定树桩),袋装(LMT),Adaboost(随机树),Adaboost(决策树桩),Adaboost(J48), Adaboost(随机森林)。我们对不同算法的比较将有助于患有糖尿病的人来弄清楚他们是否会在未来或不是CKD。从所有这些算法袋装(随机树)和Adaboost(随机森林)具有最佳结果。通过比较所有算法的结果,可以检测到最佳算法以预测慢性肾病。这项研究可以节省许多人的生命和金钱。医生也可以从这项研究中受益。

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