学龄前喘息的表型和内型治疗。

Expert review of respiratory medicine Pub Date : 2023-07-01 Epub Date: 2023-11-24 DOI:10.1080/17476348.2023.2271832
Sormeh Salehian, Louise Fleming, Sejal Saglani, Adnan Custovic
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引用次数: 0

摘要

引言:学龄前喘息(PSW)是一个重要的公共卫生问题,急诊科的发病率很高,症状复发,严重恶化。PSW是一种异质性疾病,包括几种可能与一系列病理生物学机制有关的表型。然而,治疗PSW在很大程度上仍被推广到吸入皮质类固醇和短效β激动剂,这是由基于症状的标签指导的,这些标签通常不能反映潜在的疾病途径。涵盖的领域:我们回顾了用于确定PSW儿童表型的可观察特征和特征,以及确定可能的内型的可用病理生物学证据。这些都是在治疗选择和未来研究方向的背景下考虑的。还探讨了机器学习(ML)和现代分析技术在识别区分表型的疾病模式方面的作用。专家意见:严重PSW的不同集群(表型)具有不同的潜在机制,有些是共享的,有些是独特的。应用于临床、生物标志物和环境数据的基于ML的方法可以帮助设计工具,将持续到成年的PSW儿童与喘息消失的儿童区分开来,从而确定持久性和解决的机制。这可能有助于确定新的治疗靶点,为机制研究提供信息,并为未来介入治疗试验的分层奠定基础。
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Phenotype and endotype based treatment of preschool wheeze.

Introduction: Preschool wheeze (PSW) is a significant public health issue, with a high presentation rate to emergency departments, recurrent symptoms, and severe exacerbations. A heterogenous condition, PSW comprises several phenotypes that may relate to a range of pathobiological mechanisms. However, treating PSW remains largely generalized to inhaled corticosteroids and a short acting beta agonist, guided by symptom-based labels that often do not reflect underlying pathways of disease.

Areas covered: We review the observable features and characteristics used to ascribe phenotypes in children with PSW and available pathobiological evidence to identify possible endotypes. These are considered in the context of treatment options and future research directions. The role of machine learning (ML) and modern analytical techniques to identify patterns of disease that distinguish phenotypes is also explored.

Expert opinion: Distinct clusters (phenotypes) of severe PSW are characterized by different underlying mechanisms, some shared and some unique. ML-based methodologies applied to clinical, biomarker, and environmental data can help design tools to differentiate children with PSW that continues into adulthood, from those in whom wheezing resolves, identifying mechanisms underpinning persistence and resolution. This may help identify novel therapeutic targets, inform mechanistic studies, and serve as a foundation for stratification in future interventional therapeutic trials.

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