Chronic condition clusters and associated disability over time.

Journal of multimorbidity and comorbidity Pub Date : 2022-04-18 eCollection Date: 2022-01-01 DOI:10.1177/26335565221093569
Tara C Klinedinst, Lauren Terhorst, Juleen Rodakowski
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Abstract

Objectives: Recent evidence shows that more complex clusters of chronic conditions are associated with poorer health outcomes. Less clear is the extent to which these clusters are associated with different types of disability (activities of daily living (ADL) and functional mobility (FM)) over time; the aim of this study was to investigate this relationship.

Methods: This was a longitudinal analysis using the National Health and Aging Trends Study (NHATS) (n = 6179). Using latent class analysis (LCA), we determined the optimal clusters of chronic conditions, then assigned each person to a best-fit class. Next, we used mixed-effects models with repeated measures to examine the effects of group (best-fit class), time (years from baseline), and the group by time interaction on each of the outcomes in separate models over 4 years.

Results: We identified six chronic condition clusters: Minimal Disease, Cognitive/Affective, Multiple Morbidity, Osteoporosis, Vascular, and Cancer. Chronic condition cluster was related to ADL and FM outcomes, indicating that groups experienced differential disability over time. At time point 4, all chronic condition groups had worse FM than Minimal Disease.

Discussion: The clusters of conditions identified here are plausible when considered clinically and in the context of previous research. All groups with chronic conditions carry risk for disability in FM and ADL; increased screening for disability in primary care could identify early disability and prevent decline.

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慢性疾病集群和相关的残疾随着时间的推移
目的最近的证据表明,更复杂的慢性病集群与较差的健康结果有关。不太清楚的是,随着时间的推移,这些集群与不同类型的残疾(日常生活活动(ADL)和功能性移动性(FM))的关联程度;本研究的目的是调查这种关系。方法采用国家健康和老龄化趋势研究(NHATS)进行纵向分析(n=6179)。使用潜在类别分析(LCA),我们确定了慢性病的最佳类别,然后将每个人分配到最适合的类别。接下来,我们使用具有重复测量的混合效应模型来检查组(最适合的类别)、时间(从基线算起的年数)和逐组交互作用对4年内单独模型中每个结果的影响。结果我们确定了六个慢性疾病集群:轻微疾病、认知/情感、多发性疾病、骨质疏松症、血管性疾病和癌症。慢性疾病集群与ADL和FM结果相关,表明随着时间的推移,各组经历了不同的残疾。在时间点4,所有慢性病组的FM都比最小疾病组差。讨论当在临床上和以前的研究中考虑时,这里确定的一组条件是合理的。所有患有慢性病的群体都有FM和ADL残疾的风险;在初级保健中加强残疾筛查可以识别早期残疾并防止残疾下降。
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