Parameter estimation of breast tumour using dynamic neural network from thermal pattern
This article presents a new approach for estimating the depth, size, and metabolic heat generation rate of a tumour. For this purpose, the surface temperature distribution of a breast thermal image and the dynamic neural network was used. The research consisted of two steps: forward and inverse. For...
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doaj-2869d4d360e744c9bb68967061be80f22020-11-24T21:44:59ZengElsevierJournal of Advanced Research2090-12322090-12242016-11-01761045105510.1016/j.jare.2016.05.005Parameter estimation of breast tumour using dynamic neural network from thermal patternElham Saniei0Saeed Setayeshi1Mohammad Esmaeil Akbari2Mitra Navid3Energy Engineering and Physics Faculty, Amirkabir University of Technology, Tehran, IranEnergy Engineering and Physics Faculty, Amirkabir University of Technology, Tehran, IranCancer Research Center, Shahid Beheshti University of Medical Sciences, Tehran, IranMedical Thermography Dept., Fanavaran Madoon Ghermez Co. Ltd., Tehran, IranThis article presents a new approach for estimating the depth, size, and metabolic heat generation rate of a tumour. For this purpose, the surface temperature distribution of a breast thermal image and the dynamic neural network was used. The research consisted of two steps: forward and inverse. For the forward section, a finite element model was created. The Pennes bio-heat equation was solved to find surface and depth temperature distributions. Data from the analysis, then, were used to train the dynamic neural network model (DNN). Results from the DNN training/testing confirmed those of the finite element model. For the inverse section, the trained neural network was applied to estimate the depth temperature distribution (tumour position) from the surface temperature profile, extracted from the thermal image. Finally, tumour parameters were obtained from the depth temperature distribution. Experimental findings (20 patients) were promising in terms of the model’s potential for retrieving tumour parameters.http://www.sciencedirect.com/science/article/pii/S209012321630039XBreast tumourNeural networkThermal patternFinite element modelPennes bio-heat equationImage |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Elham Saniei Saeed Setayeshi Mohammad Esmaeil Akbari Mitra Navid |
spellingShingle |
Elham Saniei Saeed Setayeshi Mohammad Esmaeil Akbari Mitra Navid Parameter estimation of breast tumour using dynamic neural network from thermal pattern Journal of Advanced Research Breast tumour Neural network Thermal pattern Finite element model Pennes bio-heat equation Image |
author_facet |
Elham Saniei Saeed Setayeshi Mohammad Esmaeil Akbari Mitra Navid |
author_sort |
Elham Saniei |
title |
Parameter estimation of breast tumour using dynamic neural network from thermal pattern |
title_short |
Parameter estimation of breast tumour using dynamic neural network from thermal pattern |
title_full |
Parameter estimation of breast tumour using dynamic neural network from thermal pattern |
title_fullStr |
Parameter estimation of breast tumour using dynamic neural network from thermal pattern |
title_full_unstemmed |
Parameter estimation of breast tumour using dynamic neural network from thermal pattern |
title_sort |
parameter estimation of breast tumour using dynamic neural network from thermal pattern |
publisher |
Elsevier |
series |
Journal of Advanced Research |
issn |
2090-1232 2090-1224 |
publishDate |
2016-11-01 |
description |
This article presents a new approach for estimating the depth, size, and metabolic heat generation rate of a tumour. For this purpose, the surface temperature distribution of a breast thermal image and the dynamic neural network was used. The research consisted of two steps: forward and inverse. For the forward section, a finite element model was created. The Pennes bio-heat equation was solved to find surface and depth temperature distributions. Data from the analysis, then, were used to train the dynamic neural network model (DNN). Results from the DNN training/testing confirmed those of the finite element model. For the inverse section, the trained neural network was applied to estimate the depth temperature distribution (tumour position) from the surface temperature profile, extracted from the thermal image. Finally, tumour parameters were obtained from the depth temperature distribution. Experimental findings (20 patients) were promising in terms of the model’s potential for retrieving tumour parameters. |
topic |
Breast tumour Neural network Thermal pattern Finite element model Pennes bio-heat equation Image |
url |
http://www.sciencedirect.com/science/article/pii/S209012321630039X |
work_keys_str_mv |
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