Mitnitski Arnold B, Fallah Nader, Dean Charmaine B, Rockwood Kenneth
Department of Medicine, Capital Health & Dalhousie University, Halifax, NS, Canada Department of Mathematics and Statistics, Dalhousie University, Halifax, NS, Canada
Geriatric Medicine Research Unit, Department of Medicine, Capital Health & Dalhousie University, Halifax, NS, Canada.
Stat Methods Med Res. 2014 Jun;23(3):244-56. doi: 10.1177/0962280211406470. Epub 2011 Sep 20.
In this article, we present the novel approach of using a multi-state model to describe longitudinal changes in cognitive test scores. Scores are modelled according to a truncated Poisson distribution, conditional on survival to a fixed endpoint, with the Poisson mean dependent upon the baseline score and covariates. The model provides a unified treatment of the distribution of cognitive scores, taking into account baseline scores and survival. It offers a simple framework for the simultaneous estimation of the effect of covariates modulating these distributions, over different baseline scores. A distinguishing feature is that this approach permits estimation of the probabilities of transitions in different directions: improvements, declines and death. The basic model is characterised by four parameters, two of which represent cognitive transitions in survivors, both for individuals with no cognitive errors at baseline and for those with non-zero errors, within the range of test scores. The two other parameters represent corresponding likelihoods of death. The model is applied to an analysis of data from the Canadian Study of Health and Aging (1991-2001) to identify the risk of death, and of changes in cognitive function as assessed by errors in the Modified Mini-Mental State Examination. The model performance is compared with more conventional approaches, such as multivariate linear and polytomous regressions. This model can also be readily applied to a wide variety of other cognitive test scores and phenomena which change with age.
在本文中,我们提出了一种使用多状态模型来描述认知测试分数纵向变化的新方法。分数根据截断泊松分布进行建模,条件是存活至固定终点,泊松均值取决于基线分数和协变量。该模型对认知分数的分布进行了统一处理,同时考虑了基线分数和存活情况。它为在不同基线分数下同时估计调节这些分布的协变量的效应提供了一个简单的框架。一个显著特点是,这种方法允许估计不同方向转变的概率:改善、下降和死亡。基本模型由四个参数表征,其中两个参数代表幸存者中的认知转变,对于基线时无认知错误的个体以及在测试分数范围内有非零错误的个体均是如此。另外两个参数代表相应的死亡可能性。该模型应用于对加拿大健康与老龄化研究(1991 - 2001年)数据的分析,以确定死亡风险以及通过改良简易精神状态检查中的错误评估的认知功能变化。将该模型的性能与更传统的方法进行比较,如多元线性回归和多分类回归。该模型也可以很容易地应用于各种各样其他随年龄变化的认知测试分数和现象。