Prediction of Mortalityinthe Hemodialysis Patient with Diabetes using Support Vector Machine

Hemodialysis is one of modality to treat end stage kidney disease. This study is aimed to predict the mortality risk of hemodialysis patients. A total of 665 prevalent hemodialysis patients were enrolled in one hemodialysis center in Taiwan. The prediction is based on Support Vector Machine (SVM) wh...

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Published inRevista argentina de clínica psicológica Vol. 29; no. 4; p. 219
Main Authors Cheng-Hong, Yang, Dony Novaliendry, Jin-Bor, Chen, Fegie, Wattimena, Renyaan, Axelon S, Lizar, Yaslinda, Guci, Asriwan, Ariyon, Muhammad, Dochi Ramadhani, Verawardina, Unung, Irwan, Desnelita, Yenny, Susanti, Wilda, Gustientiedina, Hastuti Marlina
Format Journal Article
LanguageEnglish
Published Buenos Aires FUNDACIÓN AIGLÉ 01.08.2020
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Summary:Hemodialysis is one of modality to treat end stage kidney disease. This study is aimed to predict the mortality risk of hemodialysis patients. A total of 665 prevalent hemodialysis patients were enrolled in one hemodialysis center in Taiwan. The prediction is based on Support Vector Machine (SVM) which developed under MATLAB. Based on the obtained results, SVM performs better accuracy compared to K-Nearest Neighbor, logistic regression, a lineardiscriminant,Treeand ensemble. In addition, the F1-score of SVM is higher than that from other methods. The highest mortality risk factor is diabetes; the second is cardiovascular diseaseand small influence of related medical variables such as parathyroid surgery, urea reduction ratio,etc.
ISSN:0327-6716
1851-7951
DOI:10.24205/03276716.2020.823