为人群分配疾病群:一项队列研究,旨在了解多种长期疾病患者的健康结果。

Journal of multimorbidity and comorbidity Pub Date : 2024-04-17 eCollection Date: 2024-01-01 DOI:10.1177/26335565241247430
Thomas Beaney, Jonathan Clarke, David Salman, Thomas Woodcock, Azeem Majeed, Mauricio Barahona, Paul Aylin
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引用次数: 0

摘要

背景:识别并发疾病群可能有助于描述多重长期病症(MLTC)的不同表型。要了解疾病群与健康相关结果之间的关联,就需要制定一种将疾病群分配给患者的策略,但目前还不清楚各种策略的效果比较。目的:首先,比较将疾病群分配给患者的方法在解释一年内死亡率、急诊就诊率和入院率方面的效果。其次,确定群组之间和群组内部与每种结果的关联差异程度:我们对英格兰的初级保健电子健康记录进行了一项队列研究,其中包括患有多发性硬化症的成年人。我们对七种策略进行了测试,以将患者分配到代表 212 种 LTC 的 15 个疾病群组中,这些疾病群组是在我们之前的工作中确定的。我们使用逻辑回归法测试了每种策略在解释一年内三种结果的关联性方面的表现,并与使用单个 LTCs 的策略进行了比较:共纳入 6,286,233 名多发性硬化症患者。在测试的七种策略中,在解释所有三种结果时,分配每个群组中的病症计数的策略表现最佳,但不如使用单个 LTCs 信息的策略。同一群组内单个 LTC 的效应大小范围大于群组之间的效应大小范围:结论:在解释与健康相关的结果时,将并发疾病群组分配给个人的策略不如个人的单个疾病有效。此外,聚类并不代表其内部长期治疗疾病之间的一致关系,这可能会限制其在临床研究中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assigning disease clusters to people: A cohort study of the implications for understanding health outcomes in people with multiple long-term conditions.

Background: Identifying clusters of co-occurring diseases may help characterise distinct phenotypes of Multiple Long-Term Conditions (MLTC). Understanding the associations of disease clusters with health-related outcomes requires a strategy to assign clusters to people, but it is unclear how the performance of strategies compare.

Aims: First, to compare the performance of methods of assigning disease clusters to people at explaining mortality, emergency department attendances and hospital admissions over one year. Second, to identify the extent of variation in the associations with each outcome between and within clusters.

Methods: We conducted a cohort study of primary care electronic health records in England, including adults with MLTC. Seven strategies were tested to assign patients to fifteen disease clusters representing 212 LTCs, identified from our previous work. We tested the performance of each strategy at explaining associations with the three outcomes over 1 year using logistic regression and compared to a strategy using the individual LTCs.

Results: 6,286,233 patients with MLTC were included. Of the seven strategies tested, a strategy assigning the count of conditions within each cluster performed best at explaining all three outcomes but was inferior to using information on the individual LTCs. There was a larger range of effect sizes for the individual LTCs within the same cluster than there was between the clusters.

Conclusion: Strategies of assigning clusters of co-occurring diseases to people were less effective at explaining health-related outcomes than a person's individual diseases. Furthermore, clusters did not represent consistent relationships of the LTCs within them, which might limit their application in clinical research.

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