Background: Kidney transplantation had been evaluated in some
researches in Iran mainly with clinical approach. In this research we
evaluated graft survival in kidney recipients and factors impacting on
survival rate. Artificial neural networks have a good ability in
modeling complex relationships, so we used this ability to demonstrate
a model for prediction of 5yr graft survival after kidney
transplantation.
Methods: This retrospective study was done on 316 kidney
transplants from 1984 through 2006 in Isfahan. Graft survival was
calculated by Kaplan-meire method. Cox regression and artificial neural
networks were used for constructing a model for prediction of graft
survival.
Results: Body mass index (BMI) and type of transplantation
(living/cadaver) had significant effects on graft survival in cox
regression model. Effective variables in neural network model were
recipient age, recipient BMI, type of transplantation and donor age.
One year, 3 year and 5 year graft survival was 96%, 93% and 90%
respectively. Suggested artificial neural network model had good
accuracy (72%) with the area under the Receiver-Operating
Characteristic (ROC) curve 0.736 and appropriate results in goodness of
fit test (κ2=33.924). Sensitivity of model in identification of true
positive situations was more than false negative situations (72% Vs
61%).
Conclusion: Graft survival in living donors was
more than cadaver donors. Graft survival decreased when the BMI
increased at transplantation time. In traditional statistical approach
Cox regression analysis is used in survival analysis, this research
shows that artificial neural networks also can be used in constructing
models to predict graft survival in kidney transplantation.
Rights and permissions | |
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. |