Dragonieri Silvano, Schot Robert, Mertens Bart J A, Le Cessie Saskia, Gauw Stefanie A, Spanevello Antonio, Resta Onofrio, Willard Nico P, Vink Teunis J, Rabe Klaus F, Bel Elisabeth H, Sterk Peter J
Department of Pulmonology, Leiden University Medical Center, Leiden, The Netherlands.
J Allergy Clin Immunol. 2007 Oct;120(4):856-62. doi: 10.1016/j.jaci.2007.05.043. Epub 2007 Jul 20.
Exhaled breath contains thousands of volatile organic compounds (VOCs) that could serve as biomarkers of lung disease. Electronic noses can distinguish VOC mixtures by pattern recognition.
We hypothesized that an electronic nose can discriminate exhaled air of patients with asthma from healthy controls, and between patients with different disease severities.
Ten young patients with mild asthma (25.1 +/- 5.9 years; FEV(1), 99.9 +/- 7.7% predicted), 10 young controls (26.8 +/- 6.4 years; FEV(1), 101.9 +/- 10.3), 10 older patients with severe asthma (49.5 +/- 12.0 years; FEV(1), 62.3 +/- 23.6), and 10 older controls (57.3 +/- 7.1 years; FEV(1), 108.3 +/- 14.7) joined a cross-sectional study with duplicate sampling of exhaled breath with an interval of 2 to 5 minutes. Subjects inspired VOC-filtered air by tidal breathing for 5 minutes, and a single expiratory vital capacity was collected into a Tedlar bag that was sampled by electronic nose (Cyranose 320) within 10 minutes. Smellprints were analyzed by linear discriminant analysis on principal component reduction. Cross-validation values (CVVs) were calculated.
Smellprints of patients with mild asthma were fully separated from young controls (CVV, 100%; Mahalanobis distance [M-distance], 5.32), and patients with severe asthma could be distinguished from old controls (CVV, 90%; M-distance, 2.77). Patients with mild and severe asthma could be less well discriminated (CVV, 65%; M-distance, 1.23), whereas the 2 control groups were indistinguishable (CVV, 50%; M-distance, 1.56). The duplicate samples replicated these results.
An electronic nose can discriminate exhaled breath of patients with asthma from controls but is less accurate in distinguishing asthma severities.
These findings warrant validation of electronic noses in diagnosing newly presented patients with asthma.
呼出气体中含有数千种挥发性有机化合物(VOCs),这些化合物可作为肺部疾病的生物标志物。电子鼻可通过模式识别来区分VOC混合物。
我们假设电子鼻能够区分哮喘患者与健康对照者的呼出气体,以及不同疾病严重程度的哮喘患者之间的呼出气体。
10名轻度哮喘年轻患者(25.1±5.9岁;第一秒用力呼气容积[FEV(1)]为预测值的99.9±7.7%)、10名年轻对照者(26.8±6.4岁;FEV(1)为101.9±10.3)、10名重度哮喘老年患者(49.5±12.0岁;FEV(1)为62.3±23.6)和10名老年对照者(57.3±7.1岁;FEV(1)为108.3±14.7)参与了一项横断面研究,以2至5分钟的间隔对呼出气体进行重复采样。受试者通过潮式呼吸吸入经过VOC过滤的空气5分钟,然后将一次呼气肺活量收集到一个Tedlar袋中,并在10分钟内用电子鼻(Cyranose 320)对其进行采样。通过对主成分降维后的线性判别分析来分析气味指纹图谱。计算交叉验证值(CVV)。
轻度哮喘患者的气味指纹图谱与年轻对照者完全分开(CVV为100%;马氏距离[M距离]为5.32),重度哮喘患者可与老年对照者区分开(CVV为90%;M距离为2.77)。轻度和重度哮喘患者之间的区分度较差(CVV为65%;M距离为1.23),而两个对照组之间无法区分(CVV为50%;M距离为1.56)。重复采样复制了这些结果。
电子鼻能够区分哮喘患者与对照者的呼出气体,但在区分哮喘严重程度方面准确性较低。
这些发现值得对电子鼻在诊断新出现的哮喘患者中的应用进行验证。