DocumentCode :
1761587
Title :
Sex and Smoking Status Effects on the Early Detection of Early Lung Cancer in High-Risk Smokers Using an Electronic Nose
Author :
McWilliams, Annette ; Beigi, Parmida ; Srinidhi, Akhila ; Lam, Stephen ; MacAulay, Calum E.
Volume :
62
Issue :
8
fYear :
2015
fDate :
Aug. 2015
Firstpage :
2044
Lastpage :
2054
Abstract :
Objective: Volatile organic compounds (VOCs) in exhaled breath as measured by electronic nose (e-nose) have utility as biomarkers to detect subjects at risk of having lung cancer in a screening setting. We hypothesize that breath analysis using an e-nose chemo-resistive sensor array could be used as a screening tool to discriminate patients diagnosed with lung cancer from high-risk smokers. Methods: Breath samples from 191 subjects-25 lung cancer patients and 166 high-risk smoker control subjects without cancer-were analyzed. For clinical relevancy, subjects in both groups were matched for age, sex, and smoking histories. Classification and regression trees and discriminant functions classifiers were used to recognize VOC patterns in e-nose data. Cross-validated results were used to assess classification accuracy. Repeatability and reproducibility of e-nose data were assessed by measuring subject-exhaled breath in parallel across two e-nose devices. Results : e-Nose measurements could distinguish lung cancer patients from high-risk control subjects, with a better than 80% classification accuracy. Subject sex and smoking status impacted classification as area under the curve results (ex-smoker males 0.846, ex-smoker female 0.816, current smoker male 0.745, and current smoker female 0.725) demonstrated. Two e-nose systems could be calibrated to give equivalent readings across subject-exhaled breath measured in parallel. Conclusions: e-Nose technology may have significant utility as a noninvasive screening tool for detecting individuals at increased risk for lung cancer. Significance: The results presented further the case that VOC patterns could have real clinical utility to screen for lung cancer in the important growing ex-smoker population.
Keywords :
biomedical electronics; cancer; data analysis; lung; patient diagnosis; pattern classification; pneumodynamics; regression analysis; VOC pattern; breath analysis; classification tree; e-nose chemoresistive sensor array; e-nose data repeatability; e-nose data reproducibility; e-nose device; e-nose measurement; e-nose system; e-nose technology; electronic nose; high-risk smoker; lung cancer; regression tree; sex status effect; smoking history; smoking status effect; volatile organic compound; Accuracy; Arrays; Biomedical measurement; Cancer; Lungs; Predictive models; Training; Breath analysis; Volatile Organic Compounds; electronic nose; electronic nose (e-nose); lung cancer; pattern recognition; sensor array; volatile organic compounds (VOCs);
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2015.2409092
Filename :
7058387
Link To Document :
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