Health Economics Unit, Institute of Applied Health Research, University of Birmingham, Edgbaston, Birmingham, UK; Department of Health Sciences, Centre for Medicine, University of Leicester, Leicester, UK.
Department of Health Sciences, Centre for Medicine, University of Leicester, Leicester, UK.
Mayo Clin Proc. 2018 Jul;93(7):857-866. doi: 10.1016/j.mayocp.2018.02.012. Epub 2018 May 22.
To assess the prevalence, disease clusters, and patterns of multimorbidity using a novel 2-stage approach in middle-aged and older adults from the United Kingdom.
Data on 36 chronic conditions from 502,643 participants aged 40 to 69 years with baseline measurements between March 13, 2006, and October 1, 2010, from the UK Biobank were extracted. We combined cluster analysis and association rule mining to assess patterns of multimorbidity overall and by age, sex, and ethnicity. A maximum of 3 clusters and 30 disease patterns were mined. Comparisons were made using lift as the main measure of association.
Ninety-five thousand seven hundred-ten participants (19%) had 2 or more chronic conditions. The first cluster included only myocardial infarction and angina (lift=13.3), indicating that the likelihood of co-occurrence of these conditions is 13 times higher than in isolation. The second cluster consisted of 26 conditions, including cardiovascular, musculoskeletal, respiratory, and neurodegenerative diseases. The strongest association was found between heart failure and atrial fibrillation (lift=23.6). Diabetes was at the center of this cluster with strong associations with heart failure, chronic kidney disease, liver failure, and stroke (lift>2). The third cluster contained 8 highly prevalent conditions, including cancer, hypertension, asthma, and depression, and the strongest association was observed between anxiety and depression (lift=5.0).
Conditions such as diabetes, hypertension, and asthma are the epicenter of disease clusters for multimorbidity. A more integrative multidisciplinary approach focusing on better management and prevention of these conditions may help prevent other conditions in the clusters.
使用一种新的两阶段方法评估英国中年和老年人的患病率、疾病簇和多种疾病模式。
从英国生物银行 2006 年 3 月 13 日至 2010 年 10 月 1 日期间基线测量的 502643 名 40 至 69 岁参与者中提取了 36 种慢性疾病的数据。我们结合聚类分析和关联规则挖掘来评估多种疾病的总体模式以及按年龄、性别和种族的模式。挖掘了最多 3 个簇和 30 种疾病模式。使用提升作为主要关联度量进行比较。
95110 名参与者(19%)患有 2 种或多种慢性疾病。第一个簇仅包括心肌梗死和心绞痛(提升=13.3),表明这些疾病同时发生的可能性是单独发生的 13 倍。第二个簇包含 26 种疾病,包括心血管、肌肉骨骼、呼吸和神经退行性疾病。心力衰竭和心房颤动之间发现了最强的关联(提升=23.6)。糖尿病是该簇的中心,与心力衰竭、慢性肾脏病、肝功能衰竭和中风(提升>2)有很强的关联。第三个簇包含 8 种高患病率的疾病,包括癌症、高血压、哮喘和抑郁症,焦虑症和抑郁症之间观察到最强的关联(提升=5.0)。
糖尿病、高血压和哮喘等疾病是多种疾病簇的中心。更综合的多学科方法侧重于更好地管理和预防这些疾病可能有助于预防簇中的其他疾病。