有效和公平的移植心脏分配政策。

IF 1.7
MDM policy & practice Pub Date : 2017-05-25 eCollection Date: 2017-01-01 DOI:10.1177/2381468317709475
Farhad Hasankhani, Amin Khademi
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引用次数: 3

摘要

背景:将有限的捐献心脏分配给等待名单上的患者是心脏移植管理的首要任务之一。我们开发了一个美国心脏移植等待名单的模拟模型,以研究分配政策对移植前和移植后死亡率等几个结果的潜在影响。方法:我们使用来自器官共享联合网络(UNOS)和移植受体科学登记(SRTR)的数据来模拟心脏分配系统。将仿真结果与历史数据进行对比,验证了模型的有效性。我们还改编了福利经济学中研究的公平方案,为评估移植分配政策的公平性提供了一个框架。我们考虑了三种分配策略,每一种都是对当前UNOS分配策略的修改,并通过模拟分析了它们的性能。第一项政策扩大了地理分配区域,第二项政策修改了接受心脏的健康状况顺序,第三项政策根据患者的等待时间对患者进行优先排序。结果:我们的结果表明,分配政策类似于目前UNOS的做法,除了它汇总了三个直接地理分配区,改善了健康结果,并且与本研究中考虑的所有其他政策相比,更接近于最优公平政策。具体而言,在2006年至2014年期间,这项政策可以平均挽救319人(在3738人死亡中)的死亡。该策略与目前的UNOS分配策略略有不同,便于实施。结论:我们建立了一个模型来比较心脏分配政策的结果。在当前的分配算法中结合三个直接地理区域可能会降低死亡率,并且更接近于最优公平政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Efficient and Fair Heart Allocation Policies for Transplantation.

Efficient and Fair Heart Allocation Policies for Transplantation.

Efficient and Fair Heart Allocation Policies for Transplantation.

Efficient and Fair Heart Allocation Policies for Transplantation.

Background: The optimal allocation of limited donated hearts to patients on the waiting list is one of the top priorities in heart transplantation management. We developed a simulation model of the US waiting list for heart transplantation to investigate the potential impacts of allocation policies on several outcomes such as pre- and posttransplant mortality. Methods: We used data from the United Network for Organ Sharing (UNOS) and the Scientific Registry of Transplant Recipient (SRTR) to simulate the heart allocation system. The model is validated by comparing the outcomes of the simulation with historical data. We also adapted fairness schemes studied in welfare economics to provide a framework to assess the fairness of allocation policies for transplantation. We considered three allocation policies, each a modification to the current UNOS allocation policy, and analyzed their performance via simulation. The first policy broadens the geographical allocation zones, the second modifies the health status order for receiving hearts, and the third prioritizes patients according to their waiting time. Results: Our results showed that the allocation policy similar to the current UNOS practice except that it aggregates the three immediate geographical allocation zones, improves the health outcomes, and is "closer" to an optimal fair policy compared to all other policies considered in this study. Specifically, this policy could have saved 319 total deaths (out of 3738 deaths) during the 2006 to 2014 time horizon, in average. This policy slightly differs from the current UNOS allocation policy and allows for easy implementation. Conclusion: We developed a model to compare the outcomes of heart allocation policies. Combining the three immediate geographical zones in the current allocation algorithm could potentially reduce mortality rate and is closer to an optimal fair policy.

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