Journal of Thoracic Disease | |
The role of clinical signs and spirometry in the diagnosis of obstructive airway diseases: a systematic analysis adapted to general practice settings | |
article | |
Neele Jankrift1  Christina Kellerer2  Helgo Magnussen3  Dennis Nowak2  Rudolf A. Jörres2  Antonius Schneider1  | |
[1] Technical University of Munich, School of Medicine, Institute of General Practice and Health Services Research;Instituteand Clinic for Occupational, Social and Environmental Medicine, LMU University Hospital, Comprehensive Pneumology Center (CPC) Munich, Member of the German Center for Lung Research (DZL);Pulmonary Research Institute at LungenClinic Grosshansdorf, Airway Research Center North (ARCN), Member of the German Center for Lung Research (DZL) | |
关键词: Asthma; chronic obstructive pulmonary disease (COPD); decision trees; Bayesian networks; diagnostic algorithms; | |
DOI : 10.21037/jtd-20-3539 | |
学科分类:呼吸医学 | |
来源: Pioneer Bioscience Publishing Company | |
【 摘 要 】
Background: In general practice (GP), the diagnosis of obstructive airway diseases much relies on diagnostic questions, in view of the limited availability of lung function. We systematically assessed the relative importance of such questions for diagnosing asthma and chronic obstructive pulmonary disease (COPD), either without or with information from spirometry. Methods: We used data obtained in a pulmonary practice to ensure the validity of diagnoses and assessments. Subjects with a diagnosis of COPD (n=260), or asthma (n=433), or other respiratory diseases (n=230), and subjects without respiratory diseases (n=364, controls) were included. The diagnostic questions comprised eight items, covering smoking history, self-attributed allergic rhinitis, dyspnea, cough, phlegm and wheeze. Optionally standard parameters of the flow-volume-curve were included. Decision trees for the diagnosis of COPD and asthma were constructed, moreover a probabilistic diagnostic network based on the results of path analyses describing the relationship between variables. Results: In the decision trees, age, sex, current smoking, wheezing, dyspnea upon mild exertion, self-attributed allergic rhinitis, phlegm, forced expiratory volume in one second (FEV 1 ), and expiratory flow rates were relevant, depending on the diagnostic comparison, while cough, dyspnea upon strong exertion and ex-smoker status were not relevant. In contrast, the probabilistic network for the diagnosis of COPD and asthma versus controls incorporated all diagnostic questions, i.e., dyspnea upon mild or strong exertion, current smoking, ex-smoking, wheezing, cough and phlegm but from spirometry only FEV 1 . Depending on the individual pattern, the probability for COPD could raise from 25% to 81%, while the diagnostic gain for asthma was lower. Conclusions: The study developed simple diagnostic algorithms for asthma and COPD that take into account the relative importance of clinical signs and history, as well as spirometric data if available. The diagnostic accuracy was especially high for COPD. These algorithms may be helpful as a starting point in the standardisation of diagnostic strategies in GP practices. Trial registration: The study is registered under DRKS00013935 at German Clinical Trials Register (DRKS, Date of registration 01/03/2018).
【 授权许可】
Unknown
【 预 览 】
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RO202108210003706ZK.pdf | 2312KB | download |