An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability
Breast cancer is the second most common cause of death among women. An early diagnosis is vital for reducing the fatality rate in the fight against breast cancer. Thermography could be suggested as a safe, non-invasive, non-contact supplementary method to diagnose breast cancer and can be the most p...
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sg-ntu-dr.10356-1700742023-08-24T01:52:15Z An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability Aidossov, Nurduman Zarikas, Vasilios Zhao, Yong Mashekova, Aigerim Ng, Eddie Yin Kwee Mukhmetov, Olzhas Mirasbekov, Yerken Omirbayev, Aldiyar School of Mechanical and Aerospace Engineering Engineering::Mechanical engineering Thermography Convolutional Neural Network Breast cancer is the second most common cause of death among women. An early diagnosis is vital for reducing the fatality rate in the fight against breast cancer. Thermography could be suggested as a safe, non-invasive, non-contact supplementary method to diagnose breast cancer and can be the most promising method for breast self-examination as envisioned by the World Health Organization (WHO). Moreover, thermography could be combined with artificial intelligence and automated diagnostic methods towards a diagnosis with a negligible number of false positive or false negative results. In the current study, a novel intelligent integrated diagnosis system is proposed using IR thermal images with Convolutional Neural Networks and Bayesian Networks to achieve good diagnostic accuracy from a relatively small dataset of images and data. We demonstrate the juxtaposition of transfer learning models such as ResNet50 with the proposed combination of BNs with artificial neural network methods such as CNNs which provides a state-of-the-art expert system with explainability. The novelties of our methodology include: (i) the construction of a diagnostic tool with high accuracy from a small number of images for training; (ii) the features extracted from the images are found to be the appropriate ones leading to very good diagnosis; (iii) our expert model exhibits interpretability, i.e., one physician can understand which factors/features play critical roles for the diagnosis. The results of the study showed an accuracy that varies for the most successful models amongst four implemented approaches from approximately 91% to 93%, with a precision value of 91% to 95%, sensitivity from 91% to 92 %, and with specificity from 91% to 97%. In conclusion, we have achieved accurate diagnosis with understandability with the novel integrated approach. This research is funded by the Ministry of Education and Science of the Republic of Kazakhstan, AP08857347. 2023-08-24T01:52:15Z 2023-08-24T01:52:15Z 2023 Journal Article Aidossov, N., Zarikas, V., Zhao, Y., Mashekova, A., Ng, E. Y. K., Mukhmetov, O., Mirasbekov, Y. & Omirbayev, A. (2023). An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability. SN Computer Science, 4(2), 184-. https://dx.doi.org/10.1007/s42979-022-01536-9 2661-8907 https://hdl.handle.net/10356/170074 10.1007/s42979-022-01536-9 36742416 2 4 184 en SN Computer Science © The Author(s), under exclusive licence to Springer Nature Singapore Pte Ltd 2022. All rights reserved. |
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Engineering::Mechanical engineering Thermography Convolutional Neural Network Aidossov, Nurduman Zarikas, Vasilios Zhao, Yong Mashekova, Aigerim Ng, Eddie Yin Kwee Mukhmetov, Olzhas Mirasbekov, Yerken Omirbayev, Aldiyar An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
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Breast cancer is the second most common cause of death among women. An early diagnosis is vital for reducing the fatality rate in the fight against breast cancer. Thermography could be suggested as a safe, non-invasive, non-contact supplementary method to diagnose breast cancer and can be the most promising method for breast self-examination as envisioned by the World Health Organization (WHO). Moreover, thermography could be combined with artificial intelligence and automated diagnostic methods towards a diagnosis with a negligible number of false positive or false negative results. In the current study, a novel intelligent integrated diagnosis system is proposed using IR thermal images with Convolutional Neural Networks and Bayesian Networks to achieve good diagnostic accuracy from a relatively small dataset of images and data. We demonstrate the juxtaposition of transfer learning models such as ResNet50 with the proposed combination of BNs with artificial neural network methods such as CNNs which provides a state-of-the-art expert system with explainability. The novelties of our methodology include: (i) the construction of a diagnostic tool with high accuracy from a small number of images for training; (ii) the features extracted from the images are found to be the appropriate ones leading to very good diagnosis; (iii) our expert model exhibits interpretability, i.e., one physician can understand which factors/features play critical roles for the diagnosis. The results of the study showed an accuracy that varies for the most successful models amongst four implemented approaches from approximately 91% to 93%, with a precision value of 91% to 95%, sensitivity from 91% to 92 %, and with specificity from 91% to 97%. In conclusion, we have achieved accurate diagnosis with understandability with the novel integrated approach. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Aidossov, Nurduman Zarikas, Vasilios Zhao, Yong Mashekova, Aigerim Ng, Eddie Yin Kwee Mukhmetov, Olzhas Mirasbekov, Yerken Omirbayev, Aldiyar |
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Article |
author |
Aidossov, Nurduman Zarikas, Vasilios Zhao, Yong Mashekova, Aigerim Ng, Eddie Yin Kwee Mukhmetov, Olzhas Mirasbekov, Yerken Omirbayev, Aldiyar |
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Aidossov, Nurduman |
title |
An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
title_short |
An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
title_full |
An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
title_fullStr |
An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
title_full_unstemmed |
An integrated intelligent system for breast cancer detection at early stages using IR images and machine learning methods with explainability |
title_sort |
integrated intelligent system for breast cancer detection at early stages using ir images and machine learning methods with explainability |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/170074 |
_version_ |
1779156767634096128 |