Cucco Alex, Simpson Angela, Haider Sadia, Murray Clare, Turner Stephen, Cullinan Paul, Filippi Sarah, Fontanella Sara, Custovic Adnan
National Heart and Lung Institute, Imperial College London, London, UK.
Department of Socio-Economic, Managerial, and Statistical Studies, G. d'Annunzio University Chieti-Pescara, Chieti, Italy.
Allergy. 2025 Jul;80(7):1923-1934. doi: 10.1111/all.16617. Epub 2025 Jun 12.
Many studies used information on wheeze presence/absence to determine asthma-related phenotypes. We investigated whether clinically intuitive asthma subtypes can be identified by applying data-driven semi-supervised techniques to information on frequency and triggers of different respiratory symptoms.
Partitioning Around Medoids clustering was applied to data on multiple symptoms and their triggers in school-age children from three birth cohorts: MAAS (n = 947, age 8 years), SEATON (n = 763, age 10) and ASHFORD (n = 584, age 8). 'Guided' clustering, incorporating asthma diagnosis, was used to select the optimal number of clusters.
Five-cluster solution was optimal. Based on their clinical characteristics, including frequency of asthma diagnosis, we interpreted one cluster as 'Healthy'. Two clusters were characterised by high asthma prevalence (95.89% and 78.13%). We assigned children with asthma in these two clusters as 'persistent, multiple-trigger, more severe' (PMTS) and 'persistent, triggered by infection, milder' (PIM). Children with asthma in the remaining two clusters were assigned as 'mild-remitting wheeze' (MRW) and 'post-bronchiolitis resolving asthma' (PBRA). PBRA was associated with RSV bronchiolitis in infancy. In most children with asthma in this cluster wheezing resolved by age 5-6, and predominant symptoms were shortness of breath and chest tightness. Children in PBRA had the highest hospitalisation rates and wheeze exacerbations in infancy. From age 8 years (cluster derivation) to early adulthood (18-20 years), lung function was significantly lower, and FeNO and airway hyperreactivity significantly higher in PMTS compared to all other clusters.
Patterns of coexisting symptoms identified by semi-supervised data-driven methods may reflect pathophysiological mechanisms of distinct subtypes of childhood wheezing disorders.
许多研究使用喘息存在与否的信息来确定哮喘相关表型。我们研究了通过将数据驱动的半监督技术应用于不同呼吸道症状的频率和触发因素信息,是否能够识别出临床上直观的哮喘亚型。
围绕中心点划分法聚类应用于来自三个出生队列的学龄儿童多种症状及其触发因素的数据:MAAS(n = 947,8岁)、SEATON(n = 763,10岁)和ASHFORD(n = 584,8岁)。采用纳入哮喘诊断的“引导式”聚类来选择最佳聚类数。
五聚类解决方案是最优的。根据其临床特征,包括哮喘诊断频率,我们将一个聚类解释为“健康”。两个聚类的特点是哮喘患病率高(分别为95.89%和78.13%)。我们将这两个聚类中患有哮喘的儿童分别归为“持续性、多触发因素、病情更严重”(PMTS)和“持续性、由感染触发、病情较轻”(PIM)。其余两个聚类中患有哮喘的儿童被归为“轻度缓解性喘息”(MRW)和“毛细支气管炎后缓解性哮喘”(PBRA)。PBRA与婴儿期呼吸道合胞病毒毛细支气管炎相关。在该聚类中,大多数患有哮喘的儿童在5 - 6岁时喘息症状缓解,主要症状为呼吸急促和胸闷。PBRA组儿童在婴儿期的住院率和喘息加重率最高。从8岁(聚类推导时)到成年早期(18 - 20岁),与所有其他聚类相比,PMTS组的肺功能显著更低,呼出一氧化氮(FeNO)和气道高反应性显著更高。
通过半监督数据驱动方法识别出的共存症状模式可能反映儿童喘息性疾病不同亚型的病理生理机制。