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基于证据的器官分配

Evidence-based organ allocation.

作者信息

Zenios S A, Wein L M, Chertow G M

机构信息

Graduate School of Business, Stanford University, CA, USA.

出版信息

Am J Med. 1999 Jul;107(1):52-61. doi: 10.1016/s0002-9343(99)00166-7.

Abstract

BACKGROUND

There are not enough cadaveric kidneys to meet the demands of transplant candidates. The equity and efficiency of alternative organ allocation strategies have not been rigorously compared.

METHODS

We developed a five-compartment Monte Carlo simulation model to compare alternative organ allocation strategies, accommodating dynamic changes in recipient and donor characteristics, patient and graft survival rates, and quality of life. The model simulated the operations of a single organ procurement organization and attempted to predict the evolution of the transplant waiting list for 10 years. Four allocation strategies were compared: a first-come first-transplanted system; a point system currently utilized by the United Network of Organ Sharing; an efficiency-based algorithm that incorporated correlates of patient and graft survival; and a distributive efficiency algorithm, which had an additional goal of promoting equitable allocation among African-American and other candidates.

RESULTS

A 10-year computer simulation was performed. The distributive efficiency policy was associated with a 3.5%+/-0.8% (mean +/- SD) increase in quality-adjusted life expectancy (33.9 months vs 32.7 months), a decrease in the median waiting time to transplantation among those who were transplanted (6.6 months vs 16.3 months), and an increase in the overall likelihood of transplantation (61% vs 45%), compared with the United Network of Organ Sharing algorithm. Improved equity and efficiency were also seen by race (African-American vs other), sex, and age (<50 or > or =50 years). Sensitivity analyses did not appreciably change the qualitative results.

CONCLUSION

Evidence-based organ allocation strategies in cadaveric kidney transplantation would yield improved equity and efficiency measures compared with existing algorithms.

摘要

背景

可供移植的尸体肾脏数量不足以满足等待移植者的需求。尚未对替代性器官分配策略的公平性和效率进行严格比较。

方法

我们开发了一个五室蒙特卡洛模拟模型,以比较替代性器官分配策略,该模型考虑了受者和供者特征、患者和移植物存活率以及生活质量的动态变化。该模型模拟了单个器官获取组织的运作,并试图预测移植等待名单未来10年的演变情况。比较了四种分配策略:先来先移植系统;器官共享联合网络目前使用的积分系统;一种纳入患者和移植物存活相关因素的基于效率的算法;以及一种分配效率算法,该算法还有促进非裔美国人和其他候选者之间公平分配的额外目标。

结果

进行了为期10年的计算机模拟。与器官共享联合网络的算法相比,分配效率政策使质量调整生命预期增加了3.5%±0.8%(均值±标准差)(33.9个月对32.7个月),接受移植者的移植等待中位时间缩短(6.6个月对16.3个月),总体移植可能性增加(61%对45%)。在种族(非裔美国人与其他种族)、性别和年龄(<50岁或≥50岁)方面,公平性和效率也有所改善。敏感性分析并未明显改变定性结果。

结论

与现有算法相比,尸体肾移植中基于证据的器官分配策略将产生更好的公平性和效率指标。

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