Optimal Kidney Exchange with Immunosuppressants

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Abstract

Algorithms for exchange of kidneys is one of the key successful applications in market design, artificial intelligence, and operations research. Potent immunosuppressant drugs suppress the body's ability to reject a transplanted organ up to the point that a transplant across blood- or tissue-type incompatibility becomes possible. In contrast to the standard kidney exchange problem, we consider a setting that also involves the decision about which recipients receive from the limited supply of immunosuppressants that make them compatible with originally incompatible kidneys. We firstly present a general computational framework to model this problem. Our main contribution is a range of efficient algorithms that provide flexibility in terms of meeting meaningful objectives. Motivated by the current reality of kidney exchanges using sophisticated mathematical-programming-based clearing algorithms, we then present a general but scalable approach to optimal clearing with immunosuppression; we validate our approach on realistic data from a large fielded exchange.

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APA

Aziz, H., Cseh, Á., Dickerson, J. P., & McElfresh, D. C. (2021). Optimal Kidney Exchange with Immunosuppressants. In 35th AAAI Conference on Artificial Intelligence, AAAI 2021 (Vol. 1, pp. 21–29). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aaai.v35i1.16073

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