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Indirect estimation of a discrete-state discrete-time model using secondary data analysis of regression data

机译:使用回归数据的二次数据分析间接估计离散状态离散时间模型

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摘要

Multi-state models of chronic disease are becoming increasingly important in medical research to describe the progression of complicated diseases. However, studies seldom observe health outcomes over long time periods. Therefore, current clinical research focuses on the secondary data analysis of the published literature to estimate a single transition probability within the entire model. Unfortunately, there are many difficulties when using secondary data, especially since the states and transitions of published studies may not be consistent with the proposed multi-state model. Early approaches to reconciling published studies with the theoretical framework of a multi-state model have been limited to data available as cumulative counts of progression. This paper presents an approach that allows the use of published regression data in a multi-state model when the published study may have ignored intermediary states in the multi-state model. Colloquially, we call this approach the Lemonade Method since when study data give you lemons, make lemonade. The approach uses maximum likelihood estimation. An example is provided for the progression of heart disease in people with diabetes. Copyright © 2009 John Wiley & Sons, Ltd.
机译:在描述复杂疾病进展的医学研究中,慢性病的多状态模型变得越来越重要。但是,很少有研究可以长期观察健康状况。因此,当前的临床研究侧重于已发表文献的辅助数据分析,以估计整个模型中的单个转移概率。不幸的是,使用辅助数据时会遇到很多困难,特别是因为已发表研究的状态和转换可能与所提议的多状态模型不一致。使已发表的研究与多状态模型的理论框架保持一致的早期方法仅限于可作为进展累积计数的数据。本文提出了一种方法,当已发布的研究可能忽略了多状态模型中的中间状态时,该方法允许在多状态模型中使用已发布的回归数据。通俗地讲,我们将此方法称为柠檬水方法,因为当研究数据为您提供柠檬时,就制成柠檬水。该方法使用最大似然估计。提供了糖尿病患者心脏病发展的一个例子。版权所有©2009 John Wiley&Sons,Ltd.

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