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一项针对尘肺病队列中慢性阻塞性肺疾病的聚类分析确定了三个亚组。

A cluster analysis of chronic obstructive pulmonary disease in dusty areas cohort identified three subgroups.

机构信息

Department of Internal Medicine, Seoul Medical Center, Seoul, Korea.

Kangwon National University Data Analytics Center, Chuncheon, Korea.

出版信息

BMC Pulm Med. 2017 Dec 16;17(1):209. doi: 10.1186/s12890-017-0553-9.

Abstract

BACKGROUND

Chronic obstructive pulmonary disease (COPD) is a heterogeneous disease with variable clinical manifestations, structural changes, and treatment responses. In a cohort study, we performed a baseline cluster analysis to identify the subgroups of COPD and to assess the clinical outcomes of each subgroup during a 1-year follow-up.

METHODS

We analyzed dusty areas cohort comprising 272 patients with COPD. The main factors with the highest loading in 15 variables were selected using principal component analysis (PCA) at baseline. The COPD patients were classified by hierarchical cluster analysis using clinical, physiological, and imaging data based on PCA-transformed data. The clinical parameters and outcomes during the 1-year follow-up were evaluated among the subgroups.

RESULTS

PCA revealed that six independent components accounted for 77.3% of variance. Three distinct subgroups were identified through the cluster analysis. Subgroup 1 included younger subjects with fewer symptoms and mild airflow obstruction, and they had fewer exacerbations during the 1-year follow-up. Subgroup 2 comprised subjects with additional symptoms and moderate airflow obstruction, and they most frequently experienced exacerbations requiring hospitalization during the 1-year follow-up. Subgroup 3 included subjects with additional symptoms and mild airflow obstruction; this group had more female patients and a modest frequency of exacerbations requiring hospitalization.

CONCLUSIONS

Cluster analysis using the baseline data of a COPD cohort identified three distinct subgroups with different clinical parameters and outcomes. These findings suggest that the identified subgroups represent clinically meaningful subtypes of COPD.

摘要

背景

慢性阻塞性肺疾病(COPD)是一种具有不同临床表现、结构改变和治疗反应的异质性疾病。在一项队列研究中,我们进行了基线聚类分析,以确定 COPD 的亚组,并评估每个亚组在 1 年随访期间的临床结局。

方法

我们分析了包含 272 例 COPD 患者的尘区队列。在基线时使用主成分分析(PCA)选择具有最高负荷的 15 个变量中的主要因素。根据 PCA 转换后的数据,使用临床、生理和影像学数据对 COPD 患者进行层次聚类分析,对亚组进行分类。评估了亚组在 1 年随访期间的临床参数和结局。

结果

PCA 显示,6 个独立成分占方差的 77.3%。通过聚类分析确定了 3 个不同的亚组。第 1 组包括症状较少、气流阻塞较轻的年轻患者,他们在 1 年随访期间发生的恶化次数较少。第 2 组包括有额外症状和中度气流阻塞的患者,他们在 1 年随访期间最常经历需要住院治疗的恶化。第 3 组包括有额外症状和轻度气流阻塞的患者;该组女性患者较多,需要住院治疗的恶化次数适中。

结论

使用 COPD 队列的基线数据进行聚类分析,确定了具有不同临床参数和结局的 3 个不同亚组。这些发现表明,所确定的亚组代表了 COPD 的有临床意义的亚型。

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