The pattern of deterioration in patients with Alzheimer's disease is highly variable within a given population. With recent speculation that the apolipoprotein E allele may influence rate of decline and claims that certain drugs may slow the course of the disease, there is a compelling need for sound statistical methodology to address these questions. Current statistical methods for describing decline do not adequately take into account between- patient variability and possible floor and/or ceiling effects in the scale measuring decline, and they fail to allow for uncertainty in disease onset. In this paper, the authors analyze longitudinal Mini-Mental State Examination scores from two groups of Alzheimer's disease subjects from Palo Alto, California, and Minneapolis, Minnesota, in 1981-1993 and 1986-1988, respectively. A Bayesian hierarchical model is introduced as an elegant means of simultaneously overcoming all of the difficulties referred to above.
CITATION STYLE
Joseph, L., Wolfson, D. B., Bélisle, P., Brooks, J. O., Mortimer, J. A., Tinklenberg, J. R., & Yesavage, J. A. (1999). Taking account of between-patient variability when modeling decline in Alzheimer’s disease. American Journal of Epidemiology, 149(10), 963–973. https://doi.org/10.1093/oxfordjournals.aje.a009741
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