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无监督聚类分析临床和超声特征揭示独特的痛风亚型:来自埃及风湿病学院(ECR)的结果。

Unsupervised cluster analysis of clinical and ultrasound features reveals unique gout subtypes: Results from the Egyptian College of Rheumatology (ECR).

机构信息

Rheumatology Department, Faculty of Medicine, Assiut University, Egypt.

Internal Medicine, Rheumatology Unit, Mansoura University, Egypt.

出版信息

Diabetes Metab Syndr. 2023 Dec;17(12):102897. doi: 10.1016/j.dsx.2023.102897. Epub 2023 Nov 11.

Abstract

BACKGROUND

Gout comprises a heterogeneous group of disorders; however, comorbidities have been the focus of most efforts to classify disease subgroups.

OBJECTIVES

We applied cluster analysis using musculoskeletal ultrasound (MSUS) combined with clinical and laboratory findings in patients with gout to identify disease phenotypes, and differences across clusters were investigated.

PATIENTS AND METHODS

Patients with gout who complied with the ACR/EULAR classification criteria were enrolled in the Egyptian College of Rheumatology (ECR)-MSUS Study Group, a multicenter study. Selected variables included demographic, clinical, and laboratory findings. MSUS scans assessed the bilateral knee and first metatarsophalangeal joints. We performed a K-mean cluster analysis and compared the features of each cluster.

RESULTS

425 patients, 267 (62.8 %) males, mean age 54.2 ± 10.3 years were included. Three distinct clusters were identified. Cluster 1 (n = 138, 32.5 %) has the lowest burden of the disease and a lower frequency of MSUS characteristics than the other clusters. Cluster 2 (n = 140, 32.9 %) was mostly women, with a low rate of urate-lowering treatment (ULT). Cluster 3 (n = 147, 34.6 %) has the highest disease burden and the greatest proportion of comorbidities. Significant MSUS variations were found between clusters 2 and 3: joint effusion (p < 0.0001; highest: cluster 3), power Doppler signal (p < 0.0001; highest: clusters 2), and aggregates of crystal deposition (p < 0.0001; highest: cluster 3).

CONCLUSION

Cluster analysis using MSUS findings identified three gout subgroups. People with more MSUS features were more likely to receive ULT. Treatment should be tailored according to the cluster and MSUS features.

摘要

背景

痛风是一组异质性疾病;然而,合并症一直是大多数疾病亚组分类努力的重点。

目的

我们应用肌肉骨骼超声(MSUS)结合痛风患者的临床和实验室检查结果进行聚类分析,以确定疾病表型,并研究各聚类之间的差异。

患者和方法

符合 ACR/EULAR 分类标准的痛风患者纳入埃及风湿病学院(ECR)-MSUS 研究组,这是一项多中心研究。选择的变量包括人口统计学、临床和实验室检查结果。MSUS 扫描评估双侧膝关节和第一跖趾关节。我们进行了 K-均值聚类分析,并比较了每个聚类的特征。

结果

共纳入 425 例患者,其中男性 267 例(62.8%),平均年龄 54.2±10.3 岁。确定了三个不同的聚类。聚类 1(n=138,32.5%)疾病负担最低,MSUS 特征的频率低于其他聚类。聚类 2(n=140,32.9%)主要为女性,接受降尿酸治疗(ULT)的比例较低。聚类 3(n=147,34.6%)疾病负担最高,合并症比例最大。在聚类 2 和 3 之间发现了显著的 MSUS 差异:关节积液(p<0.0001;最高:聚类 3)、功率多普勒信号(p<0.0001;最高:聚类 2)和晶体沉积聚集(p<0.0001;最高:聚类 3)。

结论

应用 MSUS 结果的聚类分析确定了痛风的三个亚组。具有更多 MSUS 特征的患者更有可能接受 ULT。应根据聚类和 MSUS 特征进行个体化治疗。

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