Department of General Practice and Primary Health Care, University of Auckland.
Auckland Hospital, University of Auckland.
Age Ageing. 2018 Mar 1;47(2):261-268. doi: 10.1093/ageing/afx184.
multi-morbidity is associated with poor outcomes and increased healthcare utilisation. We aim to identify multi-morbidity patterns and associations with potentially inappropriate prescribing (PIP), subsequent hospitalisation and mortality in octogenarians.
life and Living in Advanced Age; a Cohort Study in New Zealand (LiLACS NZ) examined health outcomes of 421 Māori (indigenous to New Zealand), aged 80-90 and 516 non-Māori, aged 85 years in 2010. Presence of 14 chronic conditions was ascertained from self-report, general practice and hospitalisation records and physical assessments. Agglomerative hierarchical cluster analysis identified clusters of participants with co-existing conditions. Multivariate regression models examined the associations between clusters and PIP, 48-month hospitalisations and mortality.
six clusters were identified for Māori and non-Māori, respectively. The associations between clusters and outcomes differed between Māori and non-Māori. In Māori, those in the complex multi-morbidity cluster had the highest prevalence of inappropriately prescribed medications and in cluster 'diabetes' (20% of sample) had higher risk of hospitalisation and mortality at 48-month follow-up. In non-Māori, those in the 'depression-arthritis' (17% of the sample) cluster had both highest prevalence of inappropriate medications and risk of hospitalisation and mortality.
in octogenarians, hospitalisation and mortality are better predicted by profiles of clusters of conditions rather than the presence or absence of a specific condition. Further research is required to determine if the cluster approach can be used to target patients to optimise resource allocation and improve outcomes.
多种疾病与不良结局和增加的医疗保健利用有关。我们的目的是确定 80 岁以上老年人的多种疾病模式及其与潜在不适当处方(PIP)、随后住院和死亡的关联。
生活和高级年龄研究;新西兰队列研究(LiLACS NZ)检查了 2010 年 421 名毛利人(新西兰本土人)和 516 名非毛利人(85 岁)的健康结果。通过自我报告、全科医生和住院记录以及身体评估确定了 14 种慢性疾病的存在。聚集层次聚类分析确定了同时存在疾病的参与者群集。多变量回归模型研究了群集与 PIP、48 个月住院和死亡率之间的关联。
为毛利人和非毛利人分别确定了六个群集。群集与结局之间的关联在毛利人和非毛利人之间存在差异。在毛利人中,复杂多种疾病群集的药物不适当处方的患病率最高,而在“糖尿病”群集(占样本的 20%)中,48 个月随访时住院和死亡的风险更高。在非毛利人中,“抑郁-关节炎”(占样本的 17%)群集的药物不适当处方患病率和住院及死亡风险均最高。
在 80 岁以上的老年人中,住院和死亡的预测因素是疾病群集的特征,而不是特定疾病的存在与否。需要进一步研究以确定群集方法是否可用于针对患者,以优化资源分配并改善结局。