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2019 | OriginalPaper | Chapter

Detection of Breast Cancer Using Infrared Thermography and Deep Neural Networks

Authors : Francisco Javier Fernández-Ovies, Edwin Santiago Alférez-Baquero, Enrique Juan de Andrés-Galiana, Ana Cernea, Zulima Fernández-Muñiz, Juan Luis Fernández-Martínez

Published in: Bioinformatics and Biomedical Engineering

Publisher: Springer International Publishing

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Abstract

We present a preliminary analysis about the use of convolutional neural networks (CNNs) for the early detection of breast cancer via infrared thermography. The two main challenges of using CNNs are having at disposal a large set of images and the required processing time. The thermographies were obtained from Vision Lab and the calculations were implemented using Fast.ai and Pytorch libraries, which offer excellent results in image classification. Different architectures of convolutional neural networks were compared and the best results were obtained with resnet34 and resnet50, reaching a predictive accuracy of 100% in blind validation. Other arquitectures also provided high classification accuracies. Deep neural networks provide excellent results in the early detection of breast cancer via infrared thermographies, with technical and computational resources that can be easily implemented in medical practice. Further research is needed to asses the probabilistic localization of the tumor regions using larger sets of annotated images and assessing the uncertainty of these techniques in the diagnosis.

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Metadata
Title
Detection of Breast Cancer Using Infrared Thermography and Deep Neural Networks
Authors
Francisco Javier Fernández-Ovies
Edwin Santiago Alférez-Baquero
Enrique Juan de Andrés-Galiana
Ana Cernea
Zulima Fernández-Muñiz
Juan Luis Fernández-Martínez
Copyright Year
2019
DOI
https://doi.org/10.1007/978-3-030-17935-9_46

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