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Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network

Breathomics is the metabolomics study of exhaled air. It is a powerful emerging metabolomics research field that mainly focuses on health-related volatile organic compounds (VOCs). Since the quantity of these compounds varies with health status, breathomics assures to deliver noninvasive diagnostic...

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Autores principales: Daniel, D. Arul Pon, Thangavel, K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Medknow Publications & Media Pvt Ltd 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4973461/
https://www.ncbi.nlm.nih.gov/pubmed/27563574
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author Daniel, D. Arul Pon
Thangavel, K.
author_facet Daniel, D. Arul Pon
Thangavel, K.
author_sort Daniel, D. Arul Pon
collection PubMed
description Breathomics is the metabolomics study of exhaled air. It is a powerful emerging metabolomics research field that mainly focuses on health-related volatile organic compounds (VOCs). Since the quantity of these compounds varies with health status, breathomics assures to deliver noninvasive diagnostic tools. Thus, the main aim of breathomics is to discover patterns of VOCs related to abnormal metabolic processes occurring in the human body. Classification systems, however, are not designed for cost-sensitive classification domains. Therefore, they do not work on the gastric carcinoma (GC) domain where the benefit of correct classification of early stages is more than that of later stages, and also the cost of wrong classification is different for all pairs of predicted and actual classes. The aim of this work is to demonstrate the basic principles for the breathomics to classify the GC, for that the determination of VOCs such as acetone, carbon disulfide, 2-propanol, ethyl alcohol, and ethyl acetate in exhaled air and stomach tissue emission for the detection of GC has been analyzed. The breath of 49 GC and 30 gastric ulcer patients were collected for the study to distinguish the normal, suspected, and positive cases using back-propagation neural network (BPN) and produced the accuracy of 93%, sensitivity of 94.38%, and specificity of 89.93%. This study carries out the comparative study of the result obtained by the single- and multi-layer cascade-forward and feed-forward BPN with different activation functions. From this study, the multilayer cascade-forward outperforms the classification of GC from normal and benign cases.
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spelling pubmed-49734612016-08-25 Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network Daniel, D. Arul Pon Thangavel, K. J Med Signals Sens Methodology Article Breathomics is the metabolomics study of exhaled air. It is a powerful emerging metabolomics research field that mainly focuses on health-related volatile organic compounds (VOCs). Since the quantity of these compounds varies with health status, breathomics assures to deliver noninvasive diagnostic tools. Thus, the main aim of breathomics is to discover patterns of VOCs related to abnormal metabolic processes occurring in the human body. Classification systems, however, are not designed for cost-sensitive classification domains. Therefore, they do not work on the gastric carcinoma (GC) domain where the benefit of correct classification of early stages is more than that of later stages, and also the cost of wrong classification is different for all pairs of predicted and actual classes. The aim of this work is to demonstrate the basic principles for the breathomics to classify the GC, for that the determination of VOCs such as acetone, carbon disulfide, 2-propanol, ethyl alcohol, and ethyl acetate in exhaled air and stomach tissue emission for the detection of GC has been analyzed. The breath of 49 GC and 30 gastric ulcer patients were collected for the study to distinguish the normal, suspected, and positive cases using back-propagation neural network (BPN) and produced the accuracy of 93%, sensitivity of 94.38%, and specificity of 89.93%. This study carries out the comparative study of the result obtained by the single- and multi-layer cascade-forward and feed-forward BPN with different activation functions. From this study, the multilayer cascade-forward outperforms the classification of GC from normal and benign cases. Medknow Publications & Media Pvt Ltd 2016 /pmc/articles/PMC4973461/ /pubmed/27563574 Text en Copyright: © 2016 Journal of Medical Signals & Sensors http://creativecommons.org/licenses/by-nc-sa/3.0 This is an open access article distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 3.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as the author is credited and the new creations are licensed under the identical terms.
spellingShingle Methodology Article
Daniel, D. Arul Pon
Thangavel, K.
Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title_full Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title_fullStr Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title_full_unstemmed Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title_short Breathomics for Gastric Cancer Classification Using Back-propagation Neural Network
title_sort breathomics for gastric cancer classification using back-propagation neural network
topic Methodology Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4973461/
https://www.ncbi.nlm.nih.gov/pubmed/27563574
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