Department of Epidemiology, Biostatistics and Occupational Health, McGill University, Montreal, Canada.
Int Psychogeriatr. 2011 Dec;23(10):1659-70. doi: 10.1017/S1041610211000871. Epub 2011 Jun 20.
The study of mental disorders in the elderly presents substantial challenges due to population heterogeneity, coexistence of different mental disorders, and diagnostic uncertainty. While reliable tools have been developed to collect relevant data, new approaches to study design and analysis are needed. We focus on a new analytic approach.
Our framework is based on latent class analysis and hidden Markov chains. From repeated measurements of a multivariate disease index, we extract the notion of underlying state of a patient at a time point. The course of the disorder is then a sequence of transitions among states. States and transitions are not observable; however, the probability of being in a state at a time point, and the transition probabilities from one state to another over time can be estimated.
Data from 444 patients with and without diagnosis of delirium and dementia were available from a previous study. The Delirium Index was measured at diagnosis, and at 2 and 6 months from diagnosis. Four latent classes were identified: fairly healthy, moderately ill, clearly sick, and very sick. Dementia and delirium could not be separated on the basis of these data alone. Indeed, as the probability of delirium increased, so did the probability of decline of mental functions. Eight most probable courses were identified, including good and poor stable courses, and courses exhibiting various patterns of improvement.
Latent class analysis and hidden Markov chains offer a promising tool for studying mental disorders in the elderly. Its use may show its full potential as new data become available.
老年人精神障碍的研究存在很大的挑战,因为人口异质性、不同精神障碍的共存以及诊断的不确定性。虽然已经开发出可靠的工具来收集相关数据,但需要新的研究设计和分析方法。我们关注一种新的分析方法。
我们的框架基于潜在类别分析和隐马尔可夫链。从多维疾病指数的重复测量中,我们提取出患者在某个时间点的潜在状态概念。疾病的过程是状态之间的一系列转变。状态和转变是不可观察的;然而,可以估计在某个时间点处于某个状态的概率,以及随着时间从一个状态到另一个状态的转变概率。
来自先前一项研究的 444 名患有和不患有谵妄和痴呆症的患者的数据可用。谵妄指数在诊断时以及诊断后 2 个月和 6 个月进行测量。确定了四个潜在类别:相当健康、中度患病、明显患病和非常患病。仅基于这些数据,无法将痴呆症和谵妄分开。事实上,随着谵妄的概率增加,精神功能下降的概率也随之增加。确定了八种最可能的病程,包括良好和较差的稳定病程,以及表现出各种改善模式的病程。
潜在类别分析和隐马尔可夫链为研究老年人的精神障碍提供了一种很有前途的工具。随着新数据的出现,它的使用可能会显示出其全部潜力。