根据重复移植病例和新的二元泊松分布的不匹配初次移植病例水平

R. Shanmugam
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引用次数: 0

摘要

在他们的实践中,为了未来的预测,医疗保健管理人员和专业人员经常对移植中的不匹配水平的器官感到好奇。目前,还没有合适的方法来分析相关的移植数据和描述模式。文献中缺乏合适的方法源于一种错误的印象,即初次移植病例和重复移植病例是两个独立的泊松概率过程。事实上,2014年美国原发性和重复性移植病例的实际数据表明,两者之间存在高度相关性。有人想知道缺失的环节,正如本文所阐述的,它隐藏在他们的模型中。本文的目的是为数据找到一个合适的底层模型,然后构建一种分析方法。在这一研究过程中,发现了一种新颖而有用的二元概率分布,由于缺乏更好的标题,本文将其命名为“看似独立的二元泊松分布”。对其统计特性进行了推导、解释和说明。这种新的双变量分布不仅有助于估计移植病例中器官的不匹配水平,而且有助于在了解原发移植病例数量的基础上预测重复移植病例的数量,反之亦然。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Level of Non-Matching Primary Transplant Cases According to Repeat Transplants Cases and a New Bivariate Poisson Distribution
In their practice, healthcare administrators and professionals often wonder about the non-matching level organs in transplants for the sake of future forecasting. Currently, there is no appropriate methodology to analyze the pertinent transplant data and describe the patterns. The lack of a suitable methodology in the literature originates from an incorrect impression that the primary transplant cases and the repeat transplant cases are two separate and independent Poisson probability processes. In fact, the actual data on the primary and repeat transplant cases in USA during the year 2014 indicate otherwise with a high degree of correlation between them. One wonders about the missing link and it hides in their model as this article articulates. The aims of this article are set to find an appropriate underlying model for the data and then construct an analytic methodology. In this research process, a novel and useful bivariate probability distribution is discovered and it is named here "seemingly independent bivariate Poisson distribution" for a lack of better title. Its statistical properties are derived, explained and illustrated. This new bivariate distribution helps not only to estimate the non-matching level of organs in the transplant cases but also to project the number of repeat transplant cases based on knowing the number of primary transplant cases and vice versa.
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