Ruth P Cusack, Robyn Larracy, Christian B Morrell, Maral Ranjbar, Jennifer Le Roux, Christiane E Whetstone, Maxime Boudreau, Patrick F Poitras, Thiviya Srinathan, Eric Cheng, Karen Howie, Catie Obminski, Tim O'Shea, Rebecca J Kruisselbrink, Terence Ho, Erik Scheme, Stephen Graham, Gisia Beydaghyan, Gail M Gavreau, MyLinh Duong
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引用次数: 0
摘要
背景
严重急性呼吸系统综合症冠状病毒-2(SARS-CoV-2)的检测依赖于鼻咽拭子上的实时逆转录酶聚合酶链反应(RT-PCR)。当病毒负荷和感染位于下呼吸道和肺实质的远端时,RT-PCR 的假阴性率会很高。我们需要一种安全、简单、方便的下呼吸道取样方法,以帮助早期快速诊断 COVID-19 肺炎。健康人或 RT-PCR 阴性且无呼吸道症状的住院患者被纳入对照组。收集的呼吸样本通过激光吸收光谱 (LAS) 分析挥发性有机化合物 (VOC),并通过机器学习 (ML) 方法进行分类,以识别 SARS-CoV-2 的独特 LAS 光谱模式(呼吸样本)。使用 LAS 呼吸指纹训练 ML 分类器模型,在区分 SARS-CoV2 阳性组和阴性组方面的准确率为 72-2-81-7%。在不同年龄、性别、体重指数、SARS-CoV-2 变体、发病时间和需氧量的亚组中,准确率保持一致。总体性能高于 VOC 训练的分类器模型,后者的准确率为 63-74-7%。该技术和 ML 方法只需少量培训即可在任何环境中轻松部署。这将极大地提高可及性和可扩展性,以满足激增的容量;允许早期和快速检测,为治疗提供信息;并为快速开发新的分类器模型以应对未来的爆发提供了极大的通用性。
Machine learning enabled detection of COVID-19 pneumonia using exhaled breath analysis: a proof-of-concept study.
Detection of the severe acute respiratory syndrome coronavirus-2 (SARS-CoV-2) relies on real-time-reverse-transcriptase polymerase chain reaction (RT-PCR) on nasopharyngeal swabs. The false-negative rate of RT-PCR can be high when viral burden and infection is localized distally in the lower airways and lung parenchyma. An alternate safe, simple and accessible method for sampling the lower airways is needed to aid in the early and rapid diagnosis of COVID-19 pneumonia. In a prospective unblinded observational study, patients admitted with a positive RT-PCR and symptoms of SARS-CoV-2 infection were enrolled from three hospitals in Ontario, Canada. Healthy individuals or hospitalized patients with negative RT-PCR and without respiratory symptoms were enrolled into the control group. Breath samples were collected and analyzed by laser absorption spectroscopy (LAS) for volatile organic compounds (VOCs) and classified by machine learning (ML) approaches to identify unique LAS-spectra patterns (breathprints) for SARS-CoV-2. Of the 135 patients enrolled, 115 patients provided analyzable breath samples. Using LAS-breathprints to train ML classifier models resulted in an accuracy of 72.2%-81.7% in differentiating between SARS-CoV2 positive and negative groups. The performance was consistent across subgroups of different age, sex, body mass index, SARS-CoV-2 variants, time of disease onset and oxygen requirement. The overall performance was higher than compared to VOC-trained classifier model, which had an accuracy of 63%-74.7%. This study demonstrates that a ML-based breathprint model using LAS analysis of exhaled breath may be a valuable non-invasive method for studying the lower airways and detecting SARS-CoV-2 and other respiratory pathogens. The technology and the ML approach can be easily deployed in any setting with minimal training. This will greatly improve access and scalability to meet surge capacity; allow early and rapid detection to inform therapy; and offers great versatility in developing new classifier models quickly for future outbreaks.
期刊介绍:
Journal of Breath Research is dedicated to all aspects of scientific breath research. The traditional focus is on analysis of volatile compounds and aerosols in exhaled breath for the investigation of exogenous exposures, metabolism, toxicology, health status and the diagnosis of disease and breath odours. The journal also welcomes other breath-related topics.
Typical areas of interest include:
Big laboratory instrumentation: describing new state-of-the-art analytical instrumentation capable of performing high-resolution discovery and targeted breath research; exploiting complex technologies drawn from other areas of biochemistry and genetics for breath research.
Engineering solutions: developing new breath sampling technologies for condensate and aerosols, for chemical and optical sensors, for extraction and sample preparation methods, for automation and standardization, and for multiplex analyses to preserve the breath matrix and facilitating analytical throughput. Measure exhaled constituents (e.g. CO2, acetone, isoprene) as markers of human presence or mitigate such contaminants in enclosed environments.
Human and animal in vivo studies: decoding the ''breath exposome'', implementing exposure and intervention studies, performing cross-sectional and case-control research, assaying immune and inflammatory response, and testing mammalian host response to infections and exogenous exposures to develop information directly applicable to systems biology. Studying inhalation toxicology; inhaled breath as a source of internal dose; resultant blood, breath and urinary biomarkers linked to inhalation pathway.
Cellular and molecular level in vitro studies.
Clinical, pharmacological and forensic applications.
Mathematical, statistical and graphical data interpretation.