Diagnosis of respiratory conditions using exhaled breath condensate using Inflammacheck® and advanced analytics: insights from the VICTORY study.

IF 3.7 4区 医学 Q1 BIOCHEMICAL RESEARCH METHODS
L Fox, L G D'Cruz, M Chauhan, J Gates, N Szarazova, R De Vos, A Hicks, T Brown, R Stores, A J Chauhan
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Abstract

Lung cancer, the third leading cause of death in England, is challenging to diagnose early. Traditional methods are costly, time-consuming and uncomfortable. Exhaled breath condensate (EBC) analysis with the Inflammacheck® device offers a non-invasive alternative, employing advanced analytics like t-distributed stochastic neighbour embedding (t-SNE), Bhattacharyya distances and network maps to differentiate respiratory conditions. The VICTORY study recruited participants (age ⩾ 16) with physician-confirmed respiratory conditions (asthma, chronic obstructive pulmonary disease, bronchiectasis, interstitial lung disease, lung cancer, pneumonia or a breathing pattern disorder) from inpatient and outpatient settings at a single NHS university hospital. EBC was collected using the Inflammacheck® device, to assess seven parameters: H2O2levels, peak CO2percentage, peak breath humidity, peak breath temperature, exhalation flow rate, exhalation duration and sample collection time. After standardisation of EBC data, t-SNE was employed, Bhattacharyya distances calculated on tSNE components, network maps generated, and hierarchical clustering performed to illustrate the distinct classifications of the respiratory conditions based on the EBC parameters. The study included 282 participants. Multinomial logistic regression revealed elevated exhaled H2O2increased the odds of pneumonia (25.7-fold) and lung cancer (3.6-fold). t-SNE analysis showed distinct disease clusters, with Bhattacharyya distances for lung cancer and pneumonia demonstrating good separability from other conditions. Hierarchical clustering confirmed clear group distinctions, as visualised in heatmaps and dendrograms. The integration of advanced dimensionality reduction techniques t-SNE, combined with Bhattacharyya distance-based network mapping to interpret the EBC results facilitated discrimination between respiratory diseases. These methods were chosen over standard machine-learning classifiers due to their ability to provide intuitive, interpretable visualisations of complex data relationships, complementing their strong discriminatory power. Harnessing these analytical tools facilitated disease discrimination, particularly for lung cancer and pneumonia, suggesting promise as a diagnostic aid, paving the way for improved clinical decision-making and patient care.

使用Inflammacheck®呼气冷凝物和高级分析技术诊断呼吸系统疾病:来自VICTORY研究的见解。
肺癌是英国第三大死因,早期诊断具有挑战性。传统的方法成本高,耗时长,而且不舒服。使用Inflammacheck®设备进行呼气冷凝水(EBC)分析提供了一种非侵入性的替代方案,采用t分布随机邻居嵌入(t-SNE)、Bhattacharyya距离和网络地图等高级分析来区分呼吸状况。VICTORY研究招募了在单一NHS大学医院的住院和门诊环境中患有医生确认的呼吸系统疾病(哮喘,慢性阻塞性肺病,支气管扩张,间质性肺病,肺癌,肺炎或呼吸模式障碍)的参与者(年龄大于或等于16岁)。使用Inflammacheck®设备采集EBC,评估七个参数:h2o2水平、峰值co2百分比、峰值呼吸湿度、峰值呼吸温度、呼气流速、呼气持续时间和样本采集时间。在标准化EBC数据后,采用t-SNE,在tSNE分量上计算Bhattacharyya距离,生成网络图,并进行分层聚类,以说明基于EBC参数的呼吸条件的不同分类。这项研究包括282名参与者。多项logistic回归分析显示,呼出的h2o2浓度升高使肺炎(25.7倍)和肺癌(3.6倍)的发生几率增加。t-SNE分析显示不同的疾病群,肺癌和肺炎的巴塔查里亚距离与其他疾病具有良好的可分离性。在热图和树状图中,分层聚类证实了明显的群体差异。整合先进的降维技术t-SNE,结合Bhattacharyya基于距离的网络映射来解释EBC结果,促进了呼吸系统疾病之间的区分。之所以选择这些方法而不是标准的机器学习分类器,是因为它们能够提供直观的、可解释的复杂数据关系的可视化,并补充了它们强大的区分能力。利用这些分析工具促进了疾病的辨别,特别是肺癌和肺炎的辨别,表明有望成为一种诊断辅助工具,为改进临床决策和患者护理铺平道路。
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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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