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Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring

This work develops a method for automatically extracting temperature data from prespecified anatomical regions of interest from thermal images of human hands, feet, and shins for the monitoring of peripheral arterial disease in diabetic patients. Binarisation, morphological operations, and geometric...

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Autores principales: Gauci, Jean, Falzon, Owen, Formosa, Cynthia, Gatt, Alfred, Ellul, Christian, Mizzi, Stephen, Mizzi, Anabelle, Sturgeon Delia, Cassandra, Cassar, Kevin, Chockalingam, Nachiappan, Camilleri, Kenneth P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6311825/
https://www.ncbi.nlm.nih.gov/pubmed/30651943
http://dx.doi.org/10.1155/2018/5092064
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author Gauci, Jean
Falzon, Owen
Formosa, Cynthia
Gatt, Alfred
Ellul, Christian
Mizzi, Stephen
Mizzi, Anabelle
Sturgeon Delia, Cassandra
Cassar, Kevin
Chockalingam, Nachiappan
Camilleri, Kenneth P.
author_facet Gauci, Jean
Falzon, Owen
Formosa, Cynthia
Gatt, Alfred
Ellul, Christian
Mizzi, Stephen
Mizzi, Anabelle
Sturgeon Delia, Cassandra
Cassar, Kevin
Chockalingam, Nachiappan
Camilleri, Kenneth P.
author_sort Gauci, Jean
collection PubMed
description This work develops a method for automatically extracting temperature data from prespecified anatomical regions of interest from thermal images of human hands, feet, and shins for the monitoring of peripheral arterial disease in diabetic patients. Binarisation, morphological operations, and geometric transformations are applied in cascade to automatically extract the required data from 44 predefined regions of interest. The implemented algorithms for region extraction were tested on data from 395 participants. A correct extraction in around 90% of the images was achieved. The process of automatically extracting 44 regions of interest was performed in a total computation time of approximately 1 minute, a substantial improvement over 10 minutes it took for a corresponding manual extraction of the regions by a trained individual. Interrater reliability tests showed that the automatically extracted ROIs are similar to those extracted by humans with minimal temperature difference. This set of algorithms provides a sufficiently accurate and reliable method for temperature extraction from thermal images at par with human raters with a tenfold reduction in time requirement. The automated process may replace the manual human extraction, leading to a faster process, making it feasible to carry out large-scale studies and to increase the regions of interest with minimal cost. The code for the developed algorithms, to extract the 44 ROIs from thermal images of hands, feet, and shins, has been made available online in the form of MATLAB functions and can be accessed from http://www.um.edu.mt/cbc/tipmid.
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spelling pubmed-63118252019-01-16 Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring Gauci, Jean Falzon, Owen Formosa, Cynthia Gatt, Alfred Ellul, Christian Mizzi, Stephen Mizzi, Anabelle Sturgeon Delia, Cassandra Cassar, Kevin Chockalingam, Nachiappan Camilleri, Kenneth P. J Healthc Eng Research Article This work develops a method for automatically extracting temperature data from prespecified anatomical regions of interest from thermal images of human hands, feet, and shins for the monitoring of peripheral arterial disease in diabetic patients. Binarisation, morphological operations, and geometric transformations are applied in cascade to automatically extract the required data from 44 predefined regions of interest. The implemented algorithms for region extraction were tested on data from 395 participants. A correct extraction in around 90% of the images was achieved. The process of automatically extracting 44 regions of interest was performed in a total computation time of approximately 1 minute, a substantial improvement over 10 minutes it took for a corresponding manual extraction of the regions by a trained individual. Interrater reliability tests showed that the automatically extracted ROIs are similar to those extracted by humans with minimal temperature difference. This set of algorithms provides a sufficiently accurate and reliable method for temperature extraction from thermal images at par with human raters with a tenfold reduction in time requirement. The automated process may replace the manual human extraction, leading to a faster process, making it feasible to carry out large-scale studies and to increase the regions of interest with minimal cost. The code for the developed algorithms, to extract the 44 ROIs from thermal images of hands, feet, and shins, has been made available online in the form of MATLAB functions and can be accessed from http://www.um.edu.mt/cbc/tipmid. Hindawi 2018-12-13 /pmc/articles/PMC6311825/ /pubmed/30651943 http://dx.doi.org/10.1155/2018/5092064 Text en Copyright © 2018 Jean Gauci et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Gauci, Jean
Falzon, Owen
Formosa, Cynthia
Gatt, Alfred
Ellul, Christian
Mizzi, Stephen
Mizzi, Anabelle
Sturgeon Delia, Cassandra
Cassar, Kevin
Chockalingam, Nachiappan
Camilleri, Kenneth P.
Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title_full Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title_fullStr Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title_full_unstemmed Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title_short Automated Region Extraction from Thermal Images for Peripheral Vascular Disease Monitoring
title_sort automated region extraction from thermal images for peripheral vascular disease monitoring
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6311825/
https://www.ncbi.nlm.nih.gov/pubmed/30651943
http://dx.doi.org/10.1155/2018/5092064
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