VA Nebraska-Western Iowa Health Care System and University of Nebraska Medical Center, Omaha.
University of Nebraska Medical Center, Omaha.
Arthritis Care Res (Hoboken). 2023 Feb;75(2):220-230. doi: 10.1002/acr.24956. Epub 2022 Oct 19.
Recognizing that the interrelationships between chronic conditions that complicate rheumatoid arthritis (RA) are poorly understood, we aimed to identify patterns of multimorbidity and to define their prevalence in RA through machine learning.
We constructed RA and age- and sex-matched (1:1) non-RA cohorts within a large commercial insurance database (MarketScan) and the Veterans Health Administration (VHA). Chronic conditions (n = 44) were identified from diagnosis codes from outpatient and inpatient encounters. Exploratory factor analysis was performed separately in both databases, stratified by RA diagnosis and sex, to identify multimorbidity patterns. The association of RA with different multimorbidity patterns was determined using conditional logistic regression.
We studied 226,850 patients in MarketScan (76% female) and 120,780 patients in the VHA (89% male). The primary multimorbidity patterns identified were characterized by the presence of cardiopulmonary, cardiometabolic, and mental health and chronic pain disorders. Multimorbidity patterns were similar between RA and non-RA patients, female and male patients, and patients in MarketScan and the VHA. RA patients had higher odds of each multimorbidity pattern (odds ratios [ORs] 1.17-2.96), with mental health and chronic pain disorders being the multimorbidity pattern most strongly associated with RA (ORs 2.07-2.96).
Cardiopulmonary, cardiometabolic, and mental health and chronic pain disorders represent predominant multimorbidity patterns, each of which is overrepresented in RA. The identification of multimorbidity patterns occurring more frequently in RA is an important first step in progressing toward a holistic approach to RA management and warrants assessment of their clinical and predictive utility.
鉴于类风湿关节炎(RA)并发的慢性疾病之间的相互关系尚未被充分了解,我们旨在通过机器学习来确定多种合并症的模式,并定义其在 RA 中的患病率。
我们在一个大型商业保险数据库(MarketScan)和退伍军人健康管理局(VHA)中构建了 RA 和年龄及性别匹配(1:1)的非 RA 队列。从门诊和住院就诊的诊断代码中确定慢性疾病(n=44)。分别在两个数据库中按 RA 诊断和性别进行探索性因子分析,以确定多种合并症模式。使用条件逻辑回归确定 RA 与不同多种合并症模式之间的关联。
我们在 MarketScan 中研究了 226850 名患者(76%为女性),在 VHA 中研究了 120780 名患者(89%为男性)。确定的主要多种合并症模式的特征是存在心肺、心血管代谢和心理健康及慢性疼痛障碍。RA 和非 RA 患者、女性和男性患者以及 MarketScan 和 VHA 的患者之间的多种合并症模式相似。RA 患者具有每种多种合并症模式的更高可能性(比值比[ORs]1.17-2.96),心理健康和慢性疼痛障碍是与 RA 相关性最强的多种合并症模式(ORs 2.07-2.96)。
心肺、心血管代谢和心理健康及慢性疼痛障碍代表主要的多种合并症模式,每种模式在 RA 中都更为常见。确定在 RA 中更频繁发生的多种合并症模式是迈向 RA 管理整体方法的重要第一步,值得评估其临床和预测效用。