Costa Patrício Soares, Santos Nadine Correia, Cunha Pedro, Cotter Jorge, Sousa Nuno
Life and Health Sciences Research Institute (ICVS), School of Health Sciences, University of Minho, 4710-057 Braga, Portugal ; ICVS/3B's, PT Government Associate Laboratory, Guimarães, 4710-057 Braga, Portugal.
J Aging Res. 2013;2013:302163. doi: 10.1155/2013/302163. Epub 2013 Oct 9.
The main focus of this study was to illustrate the applicability of multiple correspondence analysis (MCA) in detecting and representing underlying structures in large datasets used to investigate cognitive ageing. Principal component analysis (PCA) was used to obtain main cognitive dimensions, and MCA was used to detect and explore relationships between cognitive, clinical, physical, and lifestyle variables. Two PCA dimensions were identified (general cognition/executive function and memory), and two MCA dimensions were retained. Poorer cognitive performance was associated with older age, less school years, unhealthier lifestyle indicators, and presence of pathology. The first MCA dimension indicated the clustering of general/executive function and lifestyle indicators and education, while the second association was between memory and clinical parameters and age. The clustering analysis with object scores method was used to identify groups sharing similar characteristics. The weaker cognitive clusters in terms of memory and executive function comprised individuals with characteristics contributing to a higher MCA dimensional mean score (age, less education, and presence of indicators of unhealthier lifestyle habits and/or clinical pathologies). MCA provided a powerful tool to explore complex ageing data, covering multiple and diverse variables, showing if a relationship exists and how variables are related, and offering statistical results that can be seen both analytically and visually.
本研究的主要重点是说明多重对应分析(MCA)在检测和呈现用于研究认知衰老的大型数据集中潜在结构方面的适用性。主成分分析(PCA)用于获取主要认知维度,而MCA用于检测和探索认知、临床、身体和生活方式变量之间的关系。确定了两个PCA维度(一般认知/执行功能和记忆),并保留了两个MCA维度。较差的认知表现与年龄较大、受教育年限较少、生活方式指标不健康以及存在病理状况有关。第一个MCA维度表明一般/执行功能与生活方式指标和教育的聚类,而第二个关联是记忆与临床参数和年龄之间的关联。使用带对象得分法的聚类分析来识别具有相似特征的组。在记忆和执行功能方面较弱的认知聚类包括那些具有导致MCA维度平均得分较高特征的个体(年龄、教育程度较低以及存在不健康生活方式习惯和/或临床病理指标)。MCA提供了一个强大的工具来探索复杂的衰老数据,涵盖多个不同变量,显示是否存在关系以及变量如何相关,并提供可通过分析和可视化方式查看的统计结果。