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A Comprehensive Unsupervised Framework for Chronic Kidney Disease Prediction

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dc.contributor.author Antony, Linta
dc.contributor.author Azam, Sami
dc.contributor.author Ignatious, Eva
dc.contributor.author Quadir, Ryana
dc.contributor.author Beeravolu, Abhijith Reddy
dc.contributor.author Jonkman, Mirjam
dc.contributor.author De Boer, Friso
dc.date.accessioned 2022-03-06T04:14:05Z
dc.date.available 2022-03-06T04:14:05Z
dc.date.issued 2021
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/7408
dc.description.abstract The incidence, prevalence, and progression of chronic kidney disease (CKD) conditions have evolved over time, especially in countries that have varied social determinants of health. In most countries, diabetics and hypertension are the main causes of CKDs. The global guidelines classify CKD as a condition that results in decreased kidney function over time, as indicated by glomerular filtration rate (GFR) and markers of kidney damage. People with CKDs are likely to die at an early age. It is crucial for doctors to diagnose various conditions associated with CKD in an early stage because early detection may prevent or even reverse kidney damage. Early detection can provide better treatment and proper care to the patients. In many regional hospital/clinics, there is a shortage of nephrologists or general medical persons who diagnose the symptoms. This has resulted in patients waiting longer to get a diagnosis. Therefore, this research believes developing an intelligent system to classify a patient into classes of `CKD' or `Non-CKD' can help the doctors to deal with multiple patients and provide diagnosis faster. In time, organizations can implement the proposed machine learning framework in regional clinics that have lower medical expert retention, this can provide early diagnosis to patients in regional areas. Although, several researchers have tried to address the situation by developing intelligent systems using supervised machine learning methods, till date limited studies have used unsupervised machine learning algorithms. The primary aim of this research is to implement and compare the performance of various unsupervised algorithms and identify best possible combinations that can provide better accuracy and detection rate. This research has implemented five unsupervised algorithms, K-Means Clustering, DB-Scan, I-Forest, and Autoencoder. And integrating them with various feature selection methods. Integrating feature reduction methods with K-Means Clustering algo... en_US
dc.language.iso en_US en_US
dc.publisher Scopus en_US
dc.subject Chronic kidney disease en_US
dc.subject unsupervised learning techniques en_US
dc.subject auto encoder en_US
dc.subject isolation forest en_US
dc.subject DB-scan en_US
dc.subject K means clustering en_US
dc.subject feature selection en_US
dc.subject glomerular filtration rate en_US
dc.title A Comprehensive Unsupervised Framework for Chronic Kidney Disease Prediction en_US
dc.type Article en_US


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