呼出空气鉴别仪器

Paulo H. Santos, V. Vassilenko, P. C. Moura, Carolina Conduto, Jorge M. Fernandes, Paulo Bonifácio
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引用次数: 4

摘要

呼吸分析是一个新兴的研究领域,在个性化、非侵入性健康筛查和诊断方面具有巨大的潜力,同时新的采样仪器工具和分析检测方法也在不断发展。尽管商业化和研究人员制造的实验采样器发展迅速,但尚未有可靠且可重复的VOCs分析技术得到临床验证。这是由于缺乏选择性呼吸取样的最佳标准程序,最终导致广泛的相互矛盾的报告结果。大多数呼吸采样器面临的挑战还与物质浓度依赖于来源(口腔、食道和肺泡)及其低值(ppbv - pptv范围)有关。在这里,我们提出了一种合适的新技术,可以根据受试者的年龄、性别、二氧化碳代谢产生、吸烟习惯、营养和健康状况,对呼出的空气进行选择性采样。该技术旨在进行实时流量测量,并通过将先前模拟的呼吸周期与用户的呼吸周期同步,收集预先确定的呼出空气部分。通过呼吸周期的实时同步,通过基于机器学习的算法检测出最佳采样时刻。为了评估软件抽样算法的稳健性和效率,我们对两组不同年龄组(分别为2-5岁和18-27岁)的参与者(n=15和n=30)进行了第一组测试。通过收集和后验分析从一个独立的大学生队列(n=31)中获得的食管和肺泡空气样本,也测试了选择性区分呼出空气的能力。虽然需要仪器改进和优化呼气采样技术以及高效的分析仪设备(GC-IMS),但本文的研究结果表明,在适应用户年龄、类型和生理状况的呼气采样方面迈出了有希望的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instrumentation for differentiation of exhaled air
Breath analysis is an emerging research field with tremendous potential for advance personalized, non-invasive health screening and diagnostics,while new sampling instrumentation tools andanalytical detection methods are developed. Notwithstanding of the quick development of commercially and researcher-built experimental samplers, no robust and repeatable VOCs’ profile technologies have been clinically validated. Such is due to lack of an optimal standard procedure for selective breath sampling which ends in a wide range of contradictory reported results. Challenges of most breath samplers are also related to the substances’ concentrations that are source (oral cavity, oesophageal and alveolar) dependent and their low values (in ppbv - pptv range). Here, we present a suitable and novel technology for selectively sampling exhaled air regarding the subject’s: age, gender, metabolic production of CO2, smoking habits, nutrition and health conditions. The technology was aimed to perform real time flow measurements and collect a pre-determined portion of exhaled air by synchronizing a previously modelled respiratory cycle with the breathing cycle of the user. Through real-time synchronization of breathing cycles, the system can detect optimized sampling instants by machine learning-based algorithm. A first set of tests was conducted to evaluate the robustness and efficiency of the software’s sampling algorithm with two cohorts of participants (n=15 and n=30) with different age groups (2-5 years old and 18-27 years old, respectively). The ability to selectively differentiate exhaled air was also tested through collection and posterior analysis of oesophageal and alveolar air samples obtained from an independent cohort of university students (n=31). Although it requires instrumentation improvements and optimization the breath sampling technology coupled with an efficient analyser device (GC-IMS), the results herein presented suggest a promise step forward in breath sampling adapted to users’ age, genre and physiological condition.
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