Prediction of 1-year Graft Survival Rates in Kidney Transplantation: A Bayesian Network Model

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A Bayesian network model was developed to predict 1-year graft survival rates after kidney transplantation. The data from a random sample of 90% of 35,366 kidney transplants performed in the United States between 1987 and 1991 were used to build a Bayesian network model. The discriminating power and the accuracy of the model predicting 1-year graft survival rates was demonstrated using the remaining 10% test sample. By more accurately predicting graft survival, such models may be used to refine existing rule-based transplant-allocation systems and, thus, improve patient and transplant outcomes.
Publisher
The Korean Operations Research and Management Science Society
Issue Date
2000
Language
ENG
Description

This article is confirmed to be submitted through the review and edition of the Korean Operations Research and Management Science Society. Please enter the title (Journal/Proceedings), volume, number, and pages properly when citing the article.

Citation

INFORMS-KORMS International conference, Seoul 2000, pp.505 - 513

URI
http://hdl.handle.net/10203/4209
Appears in Collection
MT-Conference Papers(학술회의논문)
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