Multimorbidity and mortality: A data science perspective

K. W. Siah, Chi Heem Wong, Jerry Gupta, A. Lo
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引用次数: 4

Abstract

Background With multimorbidity becoming the norm rather than the exception, the management of multiple chronic diseases is a major challenge facing healthcare systems worldwide. Methods Using a large, nationally representative database of electronic medical records from the United Kingdom spanning the years 2005–2016 and consisting over 4.5 million patients, we apply statistical methods and network analysis to identify comorbid pairs and triads of diseases and identify clusters of chronic conditions across different demographic groups. Unlike many previous studies, which generally adopt cross-sectional designs based on single snapshots of closed cohorts, we adopt a longitudinal approach to examine temporal changes in the patterns of multimorbidity. In addition, we perform survival analysis to examine the impact of multimorbidity on mortality. Results The proportion of the population with multimorbidity has increased by approximately 2.5 percentage points over the last decade, with more than 17% having at least two chronic morbidities. We find that the prevalence and the severity of multimorbidity, as quantified by the number of co-occurring chronic conditions, increase progressively with age. Stratifying by socioeconomic status, we find that people living in more deprived areas are more likely to be multimorbid compared to those living in more affluent areas at all ages. The same trend holds consistently for all years in our data. In general, hypertension, diabetes, and respiratory-related diseases demonstrate high in-degree centrality and eigencentrality, while cardiac disorders show high out-degree centrality. Conclusions We use data-driven methods to characterize multimorbidity patterns in different demographic groups and their evolution over the past decade. In addition to a number of strongly associated comorbid pairs (e.g., cardiac-vascular and cardiac-metabolic disorders), we identify three principal clusters: a respiratory cluster, a cardiovascular cluster, and a mixed cardiovascular-renal-metabolic cluster. These are supported by established pathophysiological mechanisms and shared risk factors, and largely confirm and expand on the results of existing studies in the medical literature. Our findings contribute to a more quantitative understanding of the epidemiology of multimorbidity, an important pre-requisite for developing more effective medical care and policy for multimorbid patients.
多发病率与死亡率:数据科学视角
背景随着多发性疾病成为常态而非例外,多种慢性病的管理是世界各地医疗系统面临的重大挑战。方法使用一个涵盖2005-2016年的英国具有全国代表性的大型电子医疗记录数据库,该数据库由450多万名患者组成,我们应用统计方法和网络分析来识别共病配对和三组疾病,并识别不同人口组的慢性病集群。与之前的许多研究不同,这些研究通常采用基于封闭队列的单个快照的横断面设计,我们采用纵向方法来检查多发病模式的时间变化。此外,我们还进行了生存分析,以检验多发病对死亡率的影响。结果在过去十年中,多发病人群的比例增加了约2.5个百分点,超过17%的人至少患有两种慢性病。我们发现,多发性疾病的患病率和严重程度,通过同时发生的慢性病的数量来量化,随着年龄的增长而逐渐增加。根据社会经济地位进行分层,我们发现,与生活在各个年龄段的富裕地区的人相比,生活在贫困地区的人更有可能患多发病。在我们的数据中,同样的趋势在所有年份都保持不变。一般来说,高血压、糖尿病和呼吸系统相关疾病表现出高度的中心性和特征中心性,而心脏病表现出高度中心性。结论我们使用数据驱动的方法来描述不同人口群体的多发病模式及其在过去十年中的演变。除了一些强烈相关的共病对(例如,心血管和心脏代谢紊乱)外,我们还确定了三个主要集群:呼吸集群、心血管集群和心血管-肾脏混合代谢集群。这些都得到了既定病理生理机制和共同风险因素的支持,并在很大程度上证实和扩展了医学文献中现有研究的结果。我们的发现有助于更定量地了解多发病的流行病学,这是为多发病患者制定更有效的医疗护理和政策的重要前提。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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