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A Simulation-Based Optimization Model to Study the Impact of Multiple-Region Listing and Information Sharing on Kidney Transplant Outcomes

机译:一种基于模拟的优化模型用于研究多区列表和信息共享对肾移植成果的影响

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摘要

More than 8000 patients on the waiting list for kidney transplantation die or become ineligible to receive transplants due to health deterioration. At the same time, more than 4000 recovered kidneys from deceased donors are discarded each year in the United States. This paper develops a simulation-based optimization model that considers several crucial factors for a kidney transplantation to improve kidney utilization. Unlike most proposed models, the presented optimization model incorporates details of the offering process, the deterioration of patient health and kidney quality over time, the correlation between patients’ health and acceptance decisions, and the probability of kidney acceptance. We estimate model parameters using data obtained from the United Network of Organ Sharing (UNOS) and the Scientific Registry of Transplant Recipients (SRTR). Using these parameters, we illustrate the power of the simulation-based optimization model using two related applications. The former explores the effects of encouraging patients to pursue multiple-region waitlisting on post-transplant outcomes. Here, a simulation-based optimization model lets the patient select the best regions to be waitlisted in, given their demand-to-supply ratios. The second application focuses on a system-level aspect of transplantation, namely the contribution of information sharing on improving kidney discard rates and social welfare. We investigate the effects of using modern information technology to accelerate finding a matching patient to an available donor organ on waitlist mortality, kidney discard, and transplant rates. We show that modern information technology support currently developed by the United Network for Organ Sharing (UNOS) is essential and can significantly improve kidney utilization.
机译:肾移植死亡等候名单上有超过8000名患者,或者因健康恶化而导致移植物不必要。与此同时,每年在美国每年丢弃来自死者捐赠者的4000多个恢复的肾脏。本文开发了一种基于仿真的优化模型,旨在提高肾移植的几个关键因素,以提高肾利用。与大多数拟议的模型不同,所呈现的优化模型包括提供过程的细节,随着时间的推移,患者健康和肾脏质量的恶化,患者健康和接受决策之间的相关性以及肾脏接受的概率。我们使用从器官共享(UNOS)的联合网络和移植接收者(SRTR)的科学注册表获得的数据来估计模型参数。使用这些参数,我们使用两个相关的应用说明了基于仿真的优化模型的功率。前者探讨了令人鼓舞的患者在移植后的结果上追求多区域候补人的影响。这里,鉴于它们的需求比率,患者允许患者选择要待命的最佳区域。第二次申请重点介绍移植的系统级方面,即信息共享提高肾脏丢弃率和社会福利的贡献。我们调查使用现代信息技术加速在等候性死亡率,肾脏丢弃和移植率的可用供体器官找到匹配患者的影响。我们表明,目前由机组人分享(UNOS)开发的现代信息技术支持是必不可少的,可以显着提高肾利用。

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