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Survey on Diagnosis of Chronic Kidney Disease UsingMachine Learning Algorithms

机译:用机器学习算法诊断慢性肾病诊断调查

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Kidney Damage is otherwise known as Chronic Kidney Disease (CKD) which is a common term for various heterogeneous diseases in the kidneys. There are many cases with an imprecise diagnosis and extensively organized medical procedures may lead to many difficulties in the patient health. Hence, it is advisable to go for early diagnosis and prediction of kidney disease. The main aim of this research is to predict whether the patient is affected with CKD or not whereas the Machine Learning (ML) classification algorithms have been utilized to predict the value. The patient with CKD and non-CKD status can be predicted using various classification algorithms. This survey has discussed about various ML algorithms which utilized to diagnose kidney disease as well as the significant issues are explained briefly. Hence, this review about current study of ML applications in kidney disease is well recognized by clinicians and greatly enhances the clinical practice in future.
机译:肾脏损伤被称为慢性肾脏疾病(CKD),这是肾脏中各种异质疾病的常规术语。有许多案例具有不精确的诊断和广泛组织的医疗程序可能导致患者健康中的许多困难。因此,建议进行早期诊断和预测肾病。该研究的主要目的是预测患者是否受CKD的影响,而是已经利用了机器学习(ML)分类算法来预测该价值。可以使用各种分类算法预测具有CKD和非CKD状态的患者。该调查讨论了用于诊断肾病的各种ML算法以及简要解释了重要问题。因此,关于临床疾病中ML应用的目前研究的综述得到了临床医生的公认,并大大提高了未来的临床实践。

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