首页> 美国卫生研究院文献>Journal of Clinical Medicine >Exploring the Ability of Electronic Nose Technology to Recognize Interstitial Lung Diseases (ILD) by Non-Invasive Breath Screening of Exhaled Volatile Compounds (VOC): A Pilot Study from the European IPF Registry (eurIPFreg) and Biobank
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Exploring the Ability of Electronic Nose Technology to Recognize Interstitial Lung Diseases (ILD) by Non-Invasive Breath Screening of Exhaled Volatile Compounds (VOC): A Pilot Study from the European IPF Registry (eurIPFreg) and Biobank

机译:通过无创呼吸筛查呼出的挥发性化合物(VOC)探索电子鼻技术识别间质性肺疾病(ILD)的能力:欧洲IPF注册机构(eurIPFreg)和生物库的一项初步研究

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摘要

Background: There is an increasing interest in employing electronic nose technology in the diagnosis and monitoring of lung diseases. Interstitial lung diseases (ILD) are challenging in regard to setting an accurate diagnosis in a timely manner. Thus, there is a high unmet need in non-invasive diagnostic tests. This single-center explorative study aimed to evaluate the usefulness of electronic nose (Aeonose ) in the diagnosis of ILDs. Methods: Exhaled volatile organic compound (VOC) signatures were obtained by Aeonose in 174 ILD patients, 23 patients with chronic obstructive pulmonary disease (COPD), and 33 healthy controls (HC). Results: By dichotomous comparison of VOC’s between ILD, COPD, and HC, a discriminating algorithm was established. In addition, direct analyses between the ILD subgroups, e.g., cryptogenic organizing pneumonia (COP, = 28), idiopathic pulmonary fibrosis (IPF, = 51), and connective tissue disease-associated ILD (CTD-ILD, = 25) were performed. Area under the Curve (AUC) and Matthews’s correlation coefficient (MCC) were used to interpret the data. In direct comparison of the different ILD subgroups to HC, the algorithms developed on the basis of the Aeonose signatures allowed safe separation between IPF vs. HC (AUC of 0.95, MCC of 0.73), COP vs. HC (AUC 0.89, MCC 0.67), and CTD-ILD vs. HC (AUC 0.90, MCC 0.69). Additionally, to a case-control study design, the breath patterns of ILD subgroups were compared to each other. Following this approach, the sensitivity and specificity showed a relevant drop, which results in a poorer performance of the algorithm to separate the different ILD subgroups (IPF vs. COP with MCC 0.49, IPF vs. CTD-ILD with MCC 0.55, and COP vs. CT-ILD with MCC 0.40). Conclusions: The Aeonose showed some potential in separating ILD subgroups from HC. Unfortunately, when applying the algorithm to distinguish ILD subgroups from each other, the device showed low specificity. We suggest that artificial intelligence or principle compound analysis-based studies of a much broader data set of patients with ILDs may be much better suited to train these devices.
机译:背景:使用电子鼻技术来诊断和监测肺部疾病的兴趣日益浓厚。间质性肺疾病(ILD)在及时进行准确诊断方面具有挑战性。因此,在非侵入性诊断测试中存在高度未满足的需求。这项单中心探索性研究旨在评估电子鼻(Aeonose)在ILD诊断中的实用性。方法:Aeonose在174例ILD患者,23例慢性阻塞性肺疾病(COPD)和33例健康对照(HC)中获得了呼出的挥发性有机化合物(VOC)签名。结果:通过对ILD,COPD和HC之间的VOC进行二分比较,建立了一种区分算法。此外,在ILD亚组之间进行了直接分析,例如隐源性组织性肺炎(COP,= 28),特发性肺纤维化(IPF,= 51)和结缔组织疾病相关的ILD(CTD-ILD,= 25)。曲线下的面积(AUC)和马修斯的相关系数(MCC)用于解释数据。在直接比较不同ILD子群与HC的过程中,基于Aeonose签名开发的算法允许IPF与HC(AUC为0.95,MCC为0.73),COP与HC(AUC 0.89,MCC 0.67)之间进行安全分离,以及CTD-ILD与HC(AUC 0.90,MCC 0.69)。此外,在一项病例对照研究设计中,将ILD亚组的呼吸模式进行了相互比较。按照这种方法,敏感性和特异性显示出相关的下降,这导致分离不同ILD亚组的算法性能较差(IPC与COP,MCC为0.49; IPF与CTD-ILD,MCC为0.55,COP与(MCC为0.40的CT-ILD)。结论:永恒之瓶显示出从HC分离ILD亚组的潜力。不幸的是,当应用该算法将ILD子群彼此区分开时,该设备显示出低特异性。我们建议对更广泛的ILD患者数据集进行基于人工智能或原理化合物分析的研究可能更适合于训练这些设备。

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