利用新型电子鼻分析不同呼吸道疾病实体的呼出气体。

IF 4.6 2区 医学 Q1 RESPIRATORY SYSTEM
Lung Pub Date : 2025-01-03 DOI:10.1007/s00408-024-00776-1
Kai-Lun Yu, Han-Ching Yang, Chien-Feng Lee, Shang-Yu Wu, Zhong-Kai Ye, Sujeet Kumar Rai, Meng-Rui Lee, Kea-Tiong Tang, Jann-Yuan Wang
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引用次数: 0

摘要

目的:电子鼻(eNose)和气相色谱-质谱(GC-MS)是鉴别呼吸系统疾病的两种重要的呼吸分析方法。我们评估了一种新型电子鼻对不同呼吸道疾病的性能,并通过气相色谱-质谱分析了患者的呼出气体样本。材料与方法:招募肺癌、肺炎、结构性肺疾病患者和健康对照(2019年5月- 2022年7月)。采集呼出气体样本,进行气相色谱-质谱分析。采用支持向量机模型对eNose的呼吸指纹特征进行分析,并进行留一交叉验证。结果:共纳入263例受试者,其中肺癌95例,肺炎59例,结构性肺病71例,健康受试者38例。三维线性判别分析(LDA)显示呼吸指纹分布清晰。四组eNose的总体准确率为0.738(194/263)。结构性肺疾病组、肺癌组、肺炎组和对照组的准确率分别为0.86(61/71)、0.81(77/95)、0.53(31/59)和0.66(25/38)。两两诊断性能比较显示,四组间的鉴别能力(AUC: 1-0.813)均较好。结构性肺疾病与健康对照间表现最佳(AUC: 1),其次为肺癌与结构性肺疾病(AUC: 0.958)。挥发性有机物在肺炎患者中环己酮和N,N-二甲基乙酰胺的个体发生率较高,在结构性肺病患者中乙酸乙酯的个体发生率较高,在肺癌患者中2,3,4-三甲基己烷的个体发生率较高。结论:我们的研究表明,新型eNose可以有效区分呼吸系统疾病,并具有作为即时诊断工具的潜力,通过GC-MS鉴定候选VOC生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exhaled Breath Analysis Using a Novel Electronic Nose for Different Respiratory Disease Entities.

Purpose: Electronic noses (eNose) and gas chromatography mass spectrometry (GC-MS) are two important breath analysis approaches for differentiating between respiratory diseases. We evaluated the performance of a novel electronic nose for different respiratory diseases, and exhaled breath samples from patients were analyzed by GC-MS.

Materials and methods: Patients with lung cancer, pneumonia, structural lung diseases, and healthy controls were recruited (May 2019-July 2022). Exhaled breath samples were collected for eNose and GC-MS analysis. Breathprint features from eNose were analyzed using support vector machine model and leave-one-out cross-validation was performed.

Results: A total of 263 participants (including 95 lung cancer, 59 pneumonia, 71 structural lung disease, and 38 healthy participants) were included. Three-dimensional linear discriminant analysis (LDA) showed a clear distribution of breathprints. The overall accuracy of eNose for four groups was 0.738 (194/263). The accuracy was 0.86 (61/71), 0.81 (77/95), 0.53 (31/59), and 0.66 (25/38) for structural lung disease, lung cancer, pneumonia, and control groups respectively. Pair-wise diagnostic performance comparison revealed excellent discriminant power (AUC: 1-0.813) among four groups. The best performance was between structural lung disease and healthy controls (AUC: 1), followed by lung cancer and structural lung disease (AUC: 0.958). Volatile organic compounds revealed a high individual occurrence rate of cyclohexanone and N,N-dimethylacetamide in pneumonic patients, ethyl acetate in structural lung disease, and 2,3,4-trimethylhexane in lung cancer patients.

Conclusions: Our study showed that the novel eNose effectively distinguishes respiratory diseases and holds potential as a point-of-care diagnostic tool, with GC-MS identifying candidate VOC biomarkers.

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来源期刊
Lung
Lung 医学-呼吸系统
CiteScore
9.10
自引率
10.00%
发文量
95
审稿时长
6-12 weeks
期刊介绍: Lung publishes original articles, reviews and editorials on all aspects of the healthy and diseased lungs, of the airways, and of breathing. Epidemiological, clinical, pathophysiological, biochemical, and pharmacological studies fall within the scope of the journal. Case reports, short communications and technical notes can be accepted if they are of particular interest.
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