Prospective Early Detection of Lung Cancer in COPD Patients by Electronic Nose Analysis of Exhaled Breath

Author(s):  
R. de Vries ◽  
J.M. van den Heuvel ◽  
Y.W.F. Dagelet ◽  
E. Dijkers ◽  
T. Fabius ◽  
...  
Chemosensors ◽  
2021 ◽  
Vol 9 (8) ◽  
pp. 209
Author(s):  
Davide Marzorati ◽  
Luca Mainardi ◽  
Giulia Sedda ◽  
Roberto Gasparri ◽  
Lorenzo Spaggiari ◽  
...  

Lung cancer is characterized by a tremendously high mortality rate and a low 5-year survival rate when diagnosed at a late stage. Early diagnosis of lung cancer drastically reduces its mortality rate and improves survival. Exhaled breath analysis could offer a tool to clinicians to improve the ability to detect lung cancer at an early stage, thus leading to a reduction in the associated survival rate. In this paper, we present an electronic nose for the automatic analysis of exhaled breath. A total of five a-specific gas sensors were embedded in the electronic nose, making it sensitive to different volatile organic compounds (VOCs) contained in exhaled breath. Nine features were extracted from each gas sensor response to exhaled breath, identifying the subject breathprint. We tested the electronic nose on a cohort of 80 subjects, equally split between lung cancer and at-risk control subjects. Including gas sensor features and clinical features in a classification model, recall, precision, and accuracy of 78%, 80%, and 77% were reached using a fourfold cross-validation approach. The addition of other a-specific gas sensors, or of sensors specific to certain compounds, could improve the classification accuracy, therefore allowing for the development of a clinical tool to be integrated in the clinical pipeline for exhaled breath analysis and lung cancer early diagnosis.


Author(s):  
Marc P. C. van der Schee ◽  
Jasper Boschmans ◽  
Rob Smith ◽  
Russell Parris ◽  
Billy Boyle ◽  
...  

Author(s):  
Francisco Sanz ◽  
Enrique De Casimiro ◽  
Carmen María Cortés ◽  
Marisa Tárrega ◽  
Francisco Dasi ◽  
...  

2021 ◽  
Vol Volume 12 ◽  
pp. 81-92
Author(s):  
Nir Peled ◽  
Vered Fuchs ◽  
Emily H Kestenbaum ◽  
Elron Oscar ◽  
Raul Bitran

BMJ Open ◽  
2019 ◽  
Vol 9 (8) ◽  
pp. e028448 ◽  
Author(s):  
Wenwen Li ◽  
Wei Dai ◽  
Mingxin Liu ◽  
Yijing Long ◽  
Chunyan Wang ◽  
...  

IntroductionLung cancer is the most common cancer and the leading cause of cancer death in China, as well as in the world. Late diagnosis is the main obstacle to improving survival. Currently, early detection methods for lung cancer have many limitations, for example, low specificity, risk of radiation exposure and overdiagnosis. Exhaled breath analysis is one of the most promising non-invasive techniques for early detection of lung cancer. The aim of this study is to identify volatile organic compound (VOC) biomarkers in lung cancer and to construct a predictive model for lung cancer based on exhaled breath analysis.Methods and analysisThe study will recruit 389 lung cancer patients in one cancer centre and 389 healthy subjects in two lung cancer screening centres. Bio-VOC breath sampler and Tedlar bag will be used to collect breath samples. Gas chromatography-mass spectrometry coupled with solid phase microextraction technique will be used to analyse VOCs in exhaled breath. VOC biomarkers with statistical significance and showing abilities to discriminate lung cancer patients from healthy subjects will be selected for the construction of predictive model for lung cancer.Ethics and disseminationThe study was approved by the Ethics Committee of Sichuan Cancer Hospital on 6 April 2017 (No. SCCHEC-02-2017-011). The results of this study will be disseminated in presentations at academic conferences, publications in peer-reviewed journals and the news media.Trial registration numberChiCTR-DOD-17011134; Pre-results.


Author(s):  
András Bikov ◽  
Zsófia Lázár ◽  
Nóra Gyulai ◽  
Eszter Őri ◽  
Dorottya Kovács ◽  
...  

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