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« Previous AbstractDesign and development of an e-nose system for the diagnosis of pulmonary diseases    Next Abstract"Modulation of reproductive behaviors by non-host volatiles in the polyphagous Egyptian cotton leafworm, Spodoptera littoralis" »

J Breath Res


Title:Discrimination of COPD and lung cancer from controls through breath analysis using a self-developed e-nose
Author(s):Binson VA; Subramoniam M; Mathew L;
Address:"Department of Electronics Engineering, Sathyabama Institute of Science and Technology, Chennai, Tamil Nadu, India. Department of Electronics Engineering, Saintgits College of Engineering, Kottayam, Kerala, India. Department of Pulmonology, Believers Church Medical College Hospital, Thiruvalla, Kerala, India"
Journal Title:J Breath Res
Year:2021
Volume:20210803
Issue:4
Page Number: -
DOI: 10.1088/1752-7163/ac1326
ISSN/ISBN:1752-7163 (Electronic) 1752-7155 (Linking)
Abstract:"This work details the application of a metal oxide semiconductor (MOS) sensor based electronic nose (e-nose) system in the discrimination of lung cancer and chronic obstructive pulmonary disease (COPD) from healthy controls. The sensor array integrated with supervised classification algorithms was able to detect and classify exhaled breath samples from healthy controls, patients with COPD, and lung cancer by recognizing the amount of volatile organic compounds present in it. This paper details the e-nose design, participant selection, sampling methods, and data analysis. The clinical feasibility of the system was checked in 32 lung cancer patients, 38 COPD patients, and 72 healthy controls including smokers and non-smokers. One of the advantages of the equipment design was portability and robustness since the system was conditioned with elements that allowed its easy movement. In the discrimination of lung cancer from controls, the k-nearest neighbors gave an acceptable accuracy, sensitivity, and specificity of 91.3%, 84.4%, and 94.4% respectively. The support vector machine gave better results for COPD discrimination from controls with 90.9% accuracy, 81.6% sensitivity, and 95.8% specificity. Even though the attained results were good, further examinations are essential to enhance the sensor array system, investigate the long-run reproducibility, repeatability, and enlarge its relevancy"
Keywords:"Breath Tests Electronic Nose Humans *Lung Neoplasms/diagnosis *Pulmonary Disease, Chronic Obstructive/diagnosis Reproducibility of Results *Volatile Organic Compounds Copd lung cancer machine learning sensor array;"
Notes:"MedlineBinson, V A Subramoniam, M Mathew, Luke eng England 2021/07/10 J Breath Res. 2021 Aug 3; 15(4). doi: 10.1088/1752-7163/ac1326"

 
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