MRC Biostatistics Unit, Institute of Public Health, University of Cambridge, Cambridge, U.K.
Int Psychogeriatr. 2010 Mar;22(2):291-9. doi: 10.1017/S1041610209990937. Epub 2009 Nov 12.
Cognitive decline in old age varies among individuals. The identification of groups of individuals with similar patterns of cognitive change over time may improve our ability to see whether the effect of risk factors is consistent across groups.
Whilst accounting for the missing data, growth mixture models (GMM) were fitted to data from four interview waves of a population-based longitudinal study of aging, the Cambridge City over 75 Cohort Study (CC75C). At all interviews global cognition was assessed using the Mini-mental State Examination (MMSE).
Three patterns were identified: a slow decline with age from a baseline of cognitive ability (41% of sample), an accelerating decline from a baseline of cognitive impairment (54% of sample) and a steep constant decline also from a baseline of cognitive impairment (5% of sample). Lower cognitive scores in those with less education were seen at baseline for the first two groups. Only in those with good performance and steady decline was the effect of education strong, with an increased rate of decline associated with poor education. Good mobility was associated with higher initial score in the group with accelerating change but not with rate of decline.
Using these analytical methods it is possible to detect different patterns of cognitive change with age. In this investigation the effect of education differs with group. To understand the relationship of potential risk factors for cognitive decline, careful attention to dropout and appropriate analytical methods, in addition to long-term detailed studies of the population points, are required.
老年人的认知能力衰退因人而异。识别具有相似认知变化模式的人群,可能有助于我们观察风险因素的影响是否在不同人群中一致。
在考虑缺失数据的情况下,使用基于人群的老龄化纵向研究——剑桥市 75 岁以上队列研究(CC75C)的四次访谈数据拟合增长混合模型(GMM)。在所有访谈中,使用简易精神状态检查(MMSE)评估整体认知能力。
识别出三种模式:从认知能力基线(样本的 41%)缓慢下降、从认知障碍基线(样本的 54%)加速下降和从认知障碍基线(样本的 5%)急剧持续下降。在前两组中,受教育程度较低的人在基线时认知得分较低。只有在表现良好且稳定下降的人群中,教育的影响才较强,与较差的教育相关联的是认知下降率增加。良好的流动性与加速变化组的初始得分较高有关,但与下降率无关。
使用这些分析方法,可以检测到与年龄相关的不同认知变化模式。在本研究中,教育的影响因组而异。要了解认知衰退的潜在风险因素的关系,需要仔细关注辍学情况,并采用适当的分析方法,此外,还需要对人群进行长期详细的研究。