Cluster analysis and clinical asthma phenotypes

被引:1496
|
作者
Haldar, Pranab [1 ]
Pavord, Ian D. [1 ]
Shaw, Dominic E. [1 ]
Berry, Michael A. [1 ]
Thomas, Michael [2 ]
Brightling, Christopher E. [1 ]
Wardlaw, Andrew I. [1 ]
Green, Ruth H. [1 ]
机构
[1] Inst Lung Hlth, Glenfield Hosp, Leicester LE3 9QP, Leics, England
[2] Univ Aberdeen, Dept Gen Practice, Aberdeen AB9 1FX, Scotland
基金
英国惠康基金;
关键词
taxonomy; corticosteroid response; multivariate classification;
D O I
10.1164/rccm.200711-1754OC
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Rationale Heterogeneity in asthma expression is multidimensional, including variability in clinical, physiologic, and pathologic parameters. Classification requires consideration of these disparate domains in a unified model. Objectives: To explore the application of a multivariate mathematical technique, k-means cluster analysis, for identifying distinct phenotypic groups. Methods: We performed k-means cluster analysis in three independent asthma populations. Clusters of a population managed in primary care (n = 184) with predominantly mild to moderate disease, were compared with a refractory asthma population managed in secondary care (n = 187). We then compared differences in asthma outcomes (exacerbation frequency and change in corticosteroid dose at 12 mo) between clusters in a third population of 68 subjects with predominantly refractory asthma, clustered at entry into a randomized trial comparing a strategy of minimizing eosinophilic inflammation (inflammation-guided strategy) with standard care. Measurements and Main Results: Two clusters (early-onset atopic and obese, noneosinophilic) were common to both asthma populations. Two clusters characterized by marked discordance between symptom expression and eosinophilic airway inflammation (early-onset symptom predominant and late-onset inflammation predominant) were specific to refractory asthma. Inflammation-guided management was superior for both discordant subgroups leading to a reduction in exacerbation frequency in the inflammation-predominant cluster (3.53 [SD, 1.18] vs. 0.38 [SD, 0.13] exacerbation/patient/yr, P = 0.002) and a dose reduction of inhaled corticosteroid in the symptom-predominant cluster (mean difference, 1,829 mu g beclomethasone equivalent/d [95% confidence interval, 307-3,349 mu g]; P = 0.02). Conclusions: Cluster analysis offers a novel multidimensional approach for identifying asthma phenotypes that exhibit differences in clinical response to treatment algorithms.
引用
收藏
页码:218 / 224
页数:7
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