Population Data Science, Swansea University Medical School, Swansea University, Swansea, United Kingdom.
Division of Informatics, Imaging and Data Science, School of Health Sciences, The University of Manchester, Manchester, United Kingdom.
PLoS One. 2023 Dec 15;18(12):e0295300. doi: 10.1371/journal.pone.0295300. eCollection 2023.
Rates of Multimorbidity (also called Multiple Long Term Conditions, MLTC) are increasing in many developed nations. People with multimorbidity experience poorer outcomes and require more healthcare intervention. Grouping of conditions by health service utilisation is poorly researched. The study population consisted of a cohort of people living in Wales, UK aged 20 years or older in 2000 who were followed up until the end of 2017. Multimorbidity clusters by prevalence and healthcare resource use (HRU) were modelled using hypergraphs, mathematical objects relating diseases via links which can connect any number of diseases, thus capturing information about sets of diseases of any size. The cohort included 2,178,938 people. The most prevalent diseases were hypertension (13.3%), diabetes (6.9%), depression (6.7%) and chronic obstructive pulmonary disease (5.9%). The most important sets of diseases when considering prevalence generally contained a small number of diseases, while the most important sets of diseases when considering HRU were sets containing many diseases. The most important set of diseases taking prevalence and HRU into account was diabetes & hypertension and this combined measure of importance featured hypertension most often in the most important sets of diseases. We have used a single approach to find the most important sets of diseases based on co-occurrence and HRU measures, demonstrating the flexibility of the hypergraph approach. Hypertension, the most important single disease, is silent, underdiagnosed and increases the risk of life threatening co-morbidities. Co-occurrence of endocrine and cardiovascular diseases was common in the most important sets. Combining measures of prevalence with HRU provides insights which would be helpful for those planning and delivering services.
许多发达国家的多种疾病(也称为多种长期疾病,MLTC)的发病率正在上升。患有多种疾病的人预后较差,需要更多的医疗保健干预。按卫生服务利用情况对疾病进行分组的研究很少。研究人群由居住在英国威尔士的 2000 年年龄在 20 岁或以上的队列组成,随访至 2017 年底。使用超图对基于患病率和医疗资源利用(HRU)的多种疾病聚类进行建模,超图是通过链接将疾病联系起来的数学对象,可以连接任意数量的疾病,从而捕获有关任意大小疾病集的信息。该队列包括 2178938 人。最常见的疾病是高血压(13.3%)、糖尿病(6.9%)、抑郁症(6.7%)和慢性阻塞性肺疾病(5.9%)。当考虑患病率时,最重要的疾病集通常包含少数几种疾病,而当考虑 HRU 时,最重要的疾病集是包含许多疾病的疾病集。考虑到患病率和 HRU,最重要的疾病集是糖尿病和高血压,这种综合重要性衡量标准最常将高血压列为最重要的疾病集之一。我们使用单一方法根据共现和 HRU 措施来寻找最重要的疾病集,证明了超图方法的灵活性。高血压是最重要的单一疾病,它无声无息、诊断不足且会增加危及生命的合并症的风险。最重要的疾病集中经常出现内分泌和心血管疾病的共现。将患病率与 HRU 相结合的措施提供了有价值的见解,这对那些规划和提供服务的人会有帮助。