Computational Phenotyping of Obstructive Airway Diseases: A Systematic Review.

IF 3.7 3区 医学 Q2 ALLERGY
Journal of Asthma and Allergy Pub Date : 2025-02-06 eCollection Date: 2025-01-01 DOI:10.2147/JAA.S463572
Muwada Bashir Awad Bashir, Gregorio Paolo Milani, Valentina De Cosmi, Alessandra Mazzocchi, Guoqiang Zhang, Rani Basna, Linnea Hedman, Anne Lindberg, Linda Ekerljung, Malin Axelsson, Lowie E G W Vanfleteren, Eva Rönmark, Helena Backman, Hannu Kankaanranta, Bright I Nwaru
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引用次数: 0

Abstract

Introduction: Computational sciences have significantly contributed to characterizing airway disease phenotypes, complementing medical expertise. However, comparing studies that derive phenotypes is challenging due to varying decisions made during phenotyping. We conducted a systematic review to describe studies that utilized unsupervised computational approaches for phenotyping obstructive airway diseases in children and adults.

Methods: We searched for relevant papers published between 2010 and 2020 in PubMed, EMBASE, Scopus, Web of Science, and Google Scholar. Additional sources included conference proceedings, reference lists, and expert recommendations. Two reviewers independently screened studies for eligibility, extracted data, and assessed study quality. Disagreements were resolved by a third reviewer. An in-house quality appraisal tool was used. Evidence was synthesized, focusing on populations, variables, and computational approaches used for deriving phenotypes.

Results: Of 120 studies included in the review, 60 focused on asthma, 19 on severe asthma, 28 on COPD, 4 on asthma-COPD overlap (ACO), and 9 on rhinitis. Among asthma studies, 31 focused on adults and 9 on children, with phenotypes related to atopy, age at onset, and disease severity. Severe asthma phenotypes were characterized by symptomatology, atopy, and age at onset. COPD phenotypes involved lung function, emphysematous changes, smoking, comorbidities, and daily life impairment. ACO and rhinitis phenotypes were mostly defined by symptoms, lung function, and sensitization, respectively. Most studies used hierarchical clustering, with some employing latent class modeling, mixture models, and factor analysis. The comprehensiveness of variable reporting was the best quality indicator, while reproducibility measures were often lacking.

Conclusion: Variations in phenotyping methods, study settings, participant profiles, and variables contribute to significant differences in characterizing asthma, severe asthma, COPD, ACO, and rhinitis phenotypes across studies. Lack of reproducibility measures limits the evaluation of computational phenotyping in airway diseases, underscoring the need for consistent approaches to defining outcomes and selecting variables to ensure reliable phenotyping.

阻塞性气道疾病的计算表型:系统综述。
引言:计算科学在表征气道疾病表型方面做出了重大贡献,补充了医学专业知识。然而,比较得出表型的研究是具有挑战性的,因为在表型过程中做出了不同的决定。我们进行了一项系统综述,描述了利用无监督计算方法对儿童和成人阻塞性气道疾病进行表型分析的研究。方法:检索PubMed、EMBASE、Scopus、Web of Science、谷歌Scholar等网站2010 - 2020年间发表的相关论文。其他来源包括会议记录、参考书目和专家建议。两位审稿人独立筛选研究的合格性、提取数据并评估研究质量。分歧由第三位审稿人解决。使用了内部质量评估工具。证据是综合的,重点是群体,变量和计算方法用于派生表型。结果:在纳入的120项研究中,60项针对哮喘,19项针对严重哮喘,28项针对COPD, 4项针对哮喘-COPD重叠(ACO), 9项针对鼻炎。在哮喘研究中,31项针对成人,9项针对儿童,表型与特应性、发病年龄和疾病严重程度相关。严重哮喘表型以症状学、特应性和发病年龄为特征。COPD表型包括肺功能、肺气肿改变、吸烟、合并症和日常生活障碍。ACO和鼻炎表型主要分别由症状、肺功能和致敏性来定义。大多数研究采用层次聚类,一些研究采用潜在类建模、混合模型和因子分析。变量报告的全面性是最好的质量指标,但往往缺乏可重复性措施。结论:表型方法、研究环境、参与者概况和变量的差异导致哮喘、重度哮喘、COPD、ACO和鼻炎表型在研究中的显著差异。缺乏可重复性测量限制了气道疾病计算表型的评估,强调需要一致的方法来定义结果和选择变量以确保可靠的表型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Asthma and Allergy
Journal of Asthma and Allergy Medicine-Immunology and Allergy
CiteScore
5.30
自引率
6.20%
发文量
185
审稿时长
16 weeks
期刊介绍: An international, peer-reviewed journal publishing original research, reports, editorials and commentaries on the following topics: Asthma; Pulmonary physiology; Asthma related clinical health; Clinical immunology and the immunological basis of disease; Pharmacological interventions and new therapies. Although the main focus of the journal will be to publish research and clinical results in humans, preclinical, animal and in vitro studies will be published where they shed light on disease processes and potential new therapies.
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