Title of article :
Classification Models to Predict Survival of Kidney Transplant Recipients Using Two Intelligent Techniques of Data Mining and Logistic Regression
Author/Authors :
Nematollahi, M Anesthesiology and Critical Care Research Center - Shiraz University of Medical Sciences , Akbari, R School of Computer Engineering & IT - Shiraz University of Technology , Nikeghbalian, S School of Medicine - Shiraz University of Medical Sciences , Salehnasab, C Shiraz University of Medical Sciences
Pages :
4
From page :
119
To page :
122
Abstract :
Kidney transplantation is the treatment of choice for patients with end-stage renal disease (ESRD). Prediction of the transplant survival is of paramount importance. The objective of this study was to develop a model for predicting survival in kidney transplant recipients. In a cross-sectional study, 717 patients with ESRD admitted to Nemazee Hospital during 2008–2012 for renal transplantation were studied and the transplant survival was predicted for 5 years. The multilayer perceptron of artificial neural networks (MLP-ANN), logistic regression (LR), Support Vector Machine (SVM), and evaluation tools were used to verify the determinant models of the predictions and determine the independent predictors. The accuracy, area under curve (AUC), sensitivity, and specificity of SVM, MLP-ANN, and LR models were 90.4%, 86.5%, 98.2%, and 49.6%; 85.9%, 76.9%, 97.3%, and 26.1%; and 84.7%, 77.4%, 97.5%, and 17.4%, respectively. Meanwhile, the independent predictors were discharge time creatinine level, recipient age, donor age, donor blood group, cause of ESRD, recipient hypertension after transplantation, and duration of dialysis before transplantation. SVM and MLP-ANN models could efficiently be used for determining survival prediction in kidney transplant recipients.
Keywords :
Kidney transplantation , Survival , Data mining , Neural networks , Support vector machine
Journal title :
International Journal of Organ Transplantation Medicine
Serial Year :
2017
Record number :
2521697
Link To Document :
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