Detecting Renal Disease using Meta-Classifiers

Lohitha B, Adithya V, Yasaswi Aparna N, H. R., Srithar S, Aravinth S S
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Abstract

Because of the elevated risk of illness and fatality, chronic renal disease is regarded as a serious health issue. Renal disease is also called kidney disease. Kidney infections are particularly challenging to diagnose since they progress slowly and continuously. For the same reason, a lot of patients wait until the very end stage to diagnose their condition. It’s critical to have trustworthy methods in the early stage of renal disease assessment. The ML (Machine Learning) approaches are crucial for illness diagnosis and early-stage diagnosis. This project’s primary goal is to evaluate the renal disease risk probability stages. It is created for classification methods that are used as meta multistage classifiers to define the danger stage. The techniques are broken up into different stages to complete the goal. The conventional data of the first module is preprocessed data. The methods used to calculate pre-processing are label encoding and standard scalar. Meta classifiers are used in extra tree classifiers to process the data along with some classifiers like K-Nearest neighbor and Random Forest. As a result, the kidney infection risk stage is known. By using meta classifiers to the Random Forest tree, a better accuracy has been obtained when compared to the existing methods.
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使用元分类器检测肾脏疾病
由于疾病和死亡的风险增加,慢性肾脏疾病被认为是一个严重的健康问题。肾脏疾病也叫肾脏疾病。肾脏感染是特别具有挑战性的诊断,因为他们的进展缓慢和持续。出于同样的原因,许多患者直到最后阶段才诊断出他们的病情。在肾脏疾病的早期评估中,有可靠的方法是至关重要的。机器学习方法对于疾病诊断和早期诊断至关重要。该项目的主要目标是评估肾脏疾病的风险概率阶段。它是为分类方法创建的,这些分类方法用作元多阶段分类器来定义危险阶段。这些技巧被分成不同的阶段来完成目标。第一模块的常规数据为预处理数据。计算预处理的方法是标签编码和标准标量。元分类器在额外的树分类器中使用,与k近邻和随机森林等分类器一起处理数据。因此,肾脏感染的风险阶段是已知的。将元分类器应用于随机森林树,与现有方法相比,获得了更好的准确率。
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