Personalized Donor-Recipient Matching for Organ Transplantation
Jinsung Yoon, Ahmed M. Alaa, Martin Cadeiras, and Mihaela van der, Schaar

TL;DR
This paper introduces ConfidentMatch, a data-driven system that predicts organ transplant success by modeling donor-recipient compatibility at a granular level, improving prediction confidence and personalization using electronic health records.
Contribution
ConfidentMatch is a novel system that clusters donor-recipient traits and builds tailored predictive models, enhancing transplant success prediction accuracy and confidence over existing benchmarks.
Findings
ConfidentMatch outperforms benchmarks in predicting transplant success.
It provides 95% confidence predictions for more patients than previous methods.
The system demonstrates significant improvements on the UNOS heart transplant dataset.
Abstract
Organ transplants can improve the life expectancy and quality of life for the recipient but carries the risk of serious post-operative complications, such as septic shock and organ rejection. The probability of a successful transplant depends in a very subtle fashion on compatibility between the donor and the recipient but current medical practice is short of domain knowledge regarding the complex nature of recipient-donor compatibility. Hence a data-driven approach for learning compatibility has the potential for significant improvements in match quality. This paper proposes a novel system (ConfidentMatch) that is trained using data from electronic health records. ConfidentMatch predicts the success of an organ transplant (in terms of the 3 year survival rates) on the basis of clinical and demographic traits of the donor and recipient. ConfidentMatch captures the heterogeneity of the…
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Taxonomy
TopicsTransplantation: Methods and Outcomes · Machine Learning in Healthcare
