Breath VOC analysis and machine learning approaches for disease screening: a review.

IF 3.7 4区 医学 Q1 BIOCHEMICAL RESEARCH METHODS
Haripriya P, Madhavan Rangarajan, Hardik J Pandya
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引用次数: 4

Abstract

Early disease detection is often correlated with a reduction in mortality rate and improved prognosis. Currently, techniques like biopsy and imaging that are used to screen chronic diseases are invasive, costly or inaccessible to a large population. Thus, a non-invasive disease screening technology is the need of the hour. Existing non-invasive methods like gas chromatography-mass spectrometry, selected-ion flow-tube mass spectrometry, and proton transfer reaction-mass-spectrometry are expensive. These techniques necessitate experienced operators, making them unsuitable for a large population. Various non-invasive sources are available for disease detection, of which exhaled breath is preferred as it contains different volatile organic compounds (VOCs) that reflect the biochemical reactions in the human body. Disease screening by exhaled breath VOC analysis can revolutionize the healthcare industry. This review focuses on exhaled breath VOC biomarkers for screening various diseases with a particular emphasis on liver diseases and head and neck cancer as examples of diseases related to metabolic disorders and diseases unrelated to metabolic disorders, respectively. Single sensor and sensor array-based (Electronic Nose) approaches for exhaled breath VOC detection are briefly described, along with the machine learning techniques used for pattern recognition.

呼吸挥发性有机化合物分析和机器学习方法用于疾病筛查:综述。
早期发现疾病往往与降低死亡率和改善预后相关。目前,用于筛查慢性疾病的活检和成像等技术是侵入性的、昂贵的,或者对大量人群来说是难以获得的。因此,一种无创的疾病筛查技术是当务之急。现有的非侵入性方法,如气相色谱-质谱法、选择离子流管质谱法和质子转移反应-质谱法都是昂贵的。这些技术需要经验丰富的操作人员,因此不适合大量人群使用。疾病检测有多种非侵入性来源,其中呼气是首选,因为它含有不同的挥发性有机化合物(VOCs),反映了人体内的生化反应。通过呼气挥发性有机化合物分析进行疾病筛查可以彻底改变医疗保健行业。本文综述了呼气VOC生物标志物在筛选各种疾病中的应用,特别强调肝脏疾病和头颈癌作为与代谢紊乱相关的疾病和与代谢紊乱无关的疾病的例子。简要描述了用于呼气VOC检测的单传感器和基于传感器阵列的(电子鼻)方法,以及用于模式识别的机器学习技术。
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来源期刊
Journal of breath research
Journal of breath research BIOCHEMICAL RESEARCH METHODS-RESPIRATORY SYSTEM
CiteScore
7.60
自引率
21.10%
发文量
49
审稿时长
>12 weeks
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.
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