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Sequential Patterns of Multimorbidity in a Nationally Representative Cohort Study of Aging

机译:衰老全国代表队列研究中的多重多功能的连续模式

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摘要

Multimorbidity – the presence of two or more chronic health conditions – is common among older adults. Despite this, relatively little is known about the epidemiology of specific sequences of disease onset that occurs in mid-life and older adults over time. This may be attributed to the sheer number of possible permutations, which is difficult to handle with traditional methods. This is a retrospective cohort study using the Health & Retirement Study (HRS), a nationally-representative panel survey of aging. The study population included all adults age 50 and older that had no reported chronic disease at baseline (n=5567). We use a data mining algorithm, Sequential Pattern Discovery using Equivalence classes (SPADE), to identify all possible sequences of eight self-reported age-related chronic diseases: hypertension, arthritis, diabetes, cancer, stroke, heart disease, chronic lung disease, and psychiatric disorders. There were 67 unique sequences of disease identified that occurred in at least 1% of the study population. The most common two event sequence was Arthritis=>Hypertension (15.5% of all subjects), and the second most common was Hypertension=>Arthritis (9.6%). The most common three-way sequence was Arthritis=>Hypertension=>Heart Disease (1.8%). Arthritis=>Stroke occurred in 1.5% of subjects and was associated with the highest mortality rate (71.3% of subjects died). Sequential pattern mining allows for the discovery of longitudinal patterns of disease that frequently occur in older adults and advancements in our understanding of the epidemiology of multimorbidity. Future applications may include predicting a given patient's disease trajectory based on their life course and disease history.
机译:多重药物 - 两种或更多种慢性健康状况的存在 - 在老年人中是常见的。尽管如此,关于随着时间的推移在中生和老年人的特定疾病发作的特定序列流行病学,相对较少。这可能归因于纯粹的可能排列数量,这很难处理传统方法。这是一种回顾性队列研究,使用健康和退休研究(HRS),是对老龄化的全国代表性小组调查。该研究人群包括50岁及以上的所有成年人,在基线上没有报告的慢性疾病(n = 5567)。我们使用数据挖掘算法,使用等价类(SPade)的顺序模式发现,以识别八个自我报告的年龄相关的慢性病的所有可能序列:高血压,关节炎,糖尿病,癌症,中风,心脏病,慢性肺病,和精神病疾病。有67个独特的疾病序列,其中至少有1%的研究人群发生。最常见的两个事件序列是关节炎=>高血压(所有受试者的15.5%),第二个最常见的高血压=>关节炎(9.6%)。最常见的三向序列是关节炎=>高血压=>心脏病(1.8%)。关节炎=>中风发生在1.5%的受试者中,与最高的死亡率有关(71.3%的受试者死亡)。顺序模式挖掘允许发现经常发生在老年人的纵向疾病和我们对多重无水流行病学的进步。未来的应用可以包括根据其寿命和疾病史来预测给定的患者的疾病轨迹。

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