Tobin Joshua, Black Michaela, Ng James, Rankin Debbie, Wallace Jonathan, Hughes Catherine, Hoey Leane, Moore Adrian, Wang Jinling, Horigan Geraldine, Carlin Paul, McNulty Helene, Molloy Anne M, Zhang Mimi
School of Computer Science & Statistics, Trinity College Dublin, Dublin, Ireland.
School of Computing, Engineering & Intelligent Systems, Ulster University, Derry ∼ Londonderry, Northern Ireland, UK.
BMC Geriatr. 2025 Apr 9;25(1):235. doi: 10.1186/s12877-025-05815-x.
As global life expectancy increases, understanding mental health patterns and their associated risk factors in older adults becomes increasingly critical. Using data from the cross-sectional Trinity Ulster Department of Agriculture study (TUDA, 2008-2012; ; mean age 74.0 years) and a subset of participants followed-up longitudinally (TUDA 5+, 2014-2018; ), we perform a multi-view co-clustering analysis to identify distinct mental health profiles and their relationships with potential risk factors. The TUDA multi-view dataset consists of five views: (1) mental health, measured with Center for Epidemiologic Studies Depression Scale [CES-D] and Hospital Anxiety and Depression Scale [HADS], (2) cognitive and neuropsychological function, (3) illness diagnoses and medical prescription history, (4) lifestyle and nutritional attainment, and (5) physical well-being. That is, each participant is described by five distinct sets of features. The mental health view serves as the target feature set, while the other four views are analyzed as potential contributors to mental health risks. Under the multi-view co-clustering framework, for each view data, the participants (rows) are partitioned into different row-clusters, and the features (columns) are partitioned into different column-clusters. Each row-cluster is most effectively explained by the features in one or two column-clusters. Notably, the row-clusterings across views are dependent. By analyzing the associations between row clusters in the mental health view and those in each of the other four views, we can identify which risk factors co-occur and contribute to an increased risk of poor mental health. We identify five distinct row-clusters in the mental-health view data, characterized by varying levels of depression and anxiety: Group 1, mild depressive symptoms and no symptoms of anxiety; Group 2, acute depression and anxiety; Group 3, less severe but persistent depression and anxiety symptoms; Group 4, symptoms of anxiety with no depressive symptoms; and Group 5, no symptoms of either depression or anxiety. Cross-view association analysis revealed the following key insights: Participants in Group 3 exhibit lower neuropsychological function, are older, more likely to live alone, come from more deprived regions, and have reduced physical independence. Contrasting Group 3, participants in Group 2 show better neuropsychological function, greater physical independence, and higher socioeconomic status. Participants in Group 5 report fewer medical diagnoses and prescriptions, more affluent backgrounds, less solitary living, and stronger physical independence. A significant portion of this group aligns with cognitive health row-clusters 1 and 3, suggesting a strong link between cognitive and mental health in older age. Participants with only depressive (Group 1) or anxiety symptoms (Group 4) exhibit notable differences. Those with anxiety symptoms are associated with healthier clusters across other views. The co-clustering methodology also categorizes the questions in the CES-D and HADS scales into meaningful clusters, providing valuable insights into the underlying dimensions of mental health assessment. In the CES-D scale, the questions are divided into four clusters: those related to loneliness and energy, those addressing feelings of insecurity, worthlessness, and fear, those concerning concentration and effort, and those focused on sleep disturbances. Similarly, the HADS questions are grouped into clusters that reflect themes such as a strong sense of impending doom, nervousness or unease, and feelings of tension or restlessness. By organizing the questions from both scales into these smaller groups, the methodology highlights distinct symptom patterns and their varying severity among participants. This approach could be leveraged to develop abridged versions of the assessment scales, enabling faster and more efficient triage in clinical practice.
随着全球预期寿命的增加,了解老年人的心理健康模式及其相关风险因素变得越来越重要。利用横断面的阿尔斯特三一农业系研究(TUDA,2008 - 2012年;平均年龄74.0岁)的数据以及纵向随访的一部分参与者(TUDA 5 +,2014 - 2018年)的数据,我们进行了多视图共聚类分析,以识别不同的心理健康概况及其与潜在风险因素的关系。TUDA多视图数据集由五个视图组成:(1)心理健康,用流行病学研究中心抑郁量表[CES - D]和医院焦虑抑郁量表[HADS]测量;(2)认知和神经心理功能;(3)疾病诊断和药物处方史;(4)生活方式和营养状况;(5)身体健康。也就是说,每个参与者由五组不同的特征来描述。心理健康视图作为目标特征集,而其他四个视图则作为心理健康风险的潜在影响因素进行分析。在多视图共聚类框架下,对于每个视图的数据,参与者(行)被划分为不同的行聚类,特征(列)被划分为不同的列聚类。每个行聚类最有效地由一两个列聚类中的特征来解释。值得注意的是,跨视图的行聚类是相关的。通过分析心理健康视图中的行聚类与其他四个视图中每个视图的行聚类之间的关联,我们可以确定哪些风险因素同时出现并导致心理健康状况不佳的风险增加。我们在心理健康视图数据中识别出五个不同的行聚类,其特征是抑郁和焦虑程度不同:第1组,轻度抑郁症状且无焦虑症状;第2组,急性抑郁和焦虑;第3组,不太严重但持续的抑郁和焦虑症状;第4组,有焦虑症状但无抑郁症状;第5组,无抑郁或焦虑症状。跨视图关联分析揭示了以下关键见解:第3组的参与者神经心理功能较低,年龄较大,更有可能独居,来自更贫困地区,身体独立性降低。与第3组形成对比的是,第2组的参与者神经心理功能较好,身体独立性更强,社会经济地位更高。第5组的参与者报告的疾病诊断和处方较少,背景更富裕,独居较少,身体独立性更强。这一组中的很大一部分与认知健康行聚类1和3一致,表明老年人认知与心理健康之间存在紧密联系。仅患有抑郁(第1组)或焦虑症状(第4组)的参与者表现出显著差异。有焦虑症状的参与者在其他视图中与更健康的聚类相关。共聚类方法还将CES - D和HADS量表中的问题分类为有意义的聚类,为心理健康评估的潜在维度提供了有价值的见解。在CES - D量表中,问题分为四个聚类:与孤独和精力相关的问题、涉及不安全感、无价值感和恐惧情绪的问题、关于注意力和努力的问题以及关注睡眠障碍的问题。同样,HADS问题被分组为反映诸如强烈的厄运即将来临感、紧张或不安以及紧张或烦躁情绪等主题的聚类。通过将两个量表中的问题组织成这些较小的组,该方法突出了参与者中不同的症状模式及其不同的严重程度。这种方法可用于开发评估量表的简化版本,以便在临床实践中进行更快、更有效的分诊。