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纵向变化与生存的联合建模:记忆分数变化与死亡之间关联的调查

Joint Modeling of Longitudinal Change and Survival: An Investigation of the Association Between Change in Memory Scores and Death.

作者信息

Terrera Graciela Muniz, Piccinin Andrea M, Johansson Boo, Matthews Fiona, Hofer Scott M

机构信息

Medical Research Council, Biostatistics Unit, UK.

出版信息

GeroPsych (Bern). 2011 Dec 1;24(4):177-185. doi: 10.1024/1662-9647/a000047.

DOI:10.1024/1662-9647/a000047
PMID:23626569
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3634372/
Abstract

Joint longitudinal-survival models are useful when repeated measures and event time data are available and possibly associated. The application of this joint model in aging research is relatively rare, albeit particularly useful, when there is the potential for nonrandom dropout. In this article we illustrate the method and discuss some issues that may arise when fitting joint models of this type. Using prose recall scores from the Swedish OCTO-Twin Longitudinal Study of Aging, we fitted a joint longitudinal-survival model to investigate the association between risk of mortality and individual differences in rates of change in memory. A model describing change in memory scores as following an accelerating decline trajectory and a Weibull survival model was identified as the best fitting. This model adjusted for random effects representing individual variation in initial memory performance and change in rate of decline as linking terms between the longitudinal and survival models. Memory performance and change in rate of memory decline were significant predictors of proximity to death. Joint longitudinal-survival models permit researchers to gain a better understanding of the association between change functions and risk of particular events, such as disease diagnosis or death. Careful consideration of computational issues may be required because of the complexities of joint modeling methodologies.

摘要

当重复测量数据和事件时间数据可用且可能相关时,联合纵向生存模型很有用。尽管在存在非随机失访可能性时,这种联合模型在衰老研究中的应用特别有用,但相对较少见。在本文中,我们阐述了该方法,并讨论了拟合此类联合模型时可能出现的一些问题。利用瑞典老年双胞胎纵向研究中的散文回忆分数,我们拟合了一个联合纵向生存模型,以研究死亡率风险与记忆变化率个体差异之间的关联。一个将记忆分数变化描述为加速下降轨迹的模型和一个威布尔生存模型被确定为最佳拟合模型。该模型针对代表初始记忆表现个体差异和下降率变化的随机效应进行了调整,作为纵向模型和生存模型之间的连接项。记忆表现和记忆下降率变化是接近死亡的显著预测因素。联合纵向生存模型使研究人员能够更好地理解变化函数与特定事件(如疾病诊断或死亡)风险之间的关联。由于联合建模方法的复杂性,可能需要仔细考虑计算问题。