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Using Convolutional Neural Network for Edge Detection in Musculoskeletal Ultrasound Images

Jabbar, Shaima I.; Day, Charles R.; Heinz, Nicholas; Chadwick, Edward K.

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Authors

Shaima I. Jabbar

Nicholas Heinz

Edward K. Chadwick



Abstract

Fast and accurate segmentation of musculoskeletal ultrasound images is an on-going challenge. Two principal factors make this task difficult: firstly, the presence of speckle noise arising from the interference that accompanies all coherent imaging approaches; secondly, the sometimes subtle interaction between musculoskeletal components that leads to non-uniformity of the image intensity. Our work presents an investigation of the potential of Convolutional Neural Networks (CNNs) to address both of these problems. CNNs are an effective tool that has previously been used in image processing of several biomedical imaging modalities. However, there is little published material addressing the processing of musculoskeletal ultrasound images. In our work we explore the effectiveness of CNNs when trained to act as a pre-segmentation pixel classifier that determines whether a pixel is an edge or non-edge pixel. Our CNNs are trained using two different ground truth interpretations. The first one uses an automatic Canny edge detector to provide the ground truth image; the second ground truth was obtained using the same image marked-up by an expert anatomist. In this initial study the CNNs have been trained using half of the prepared data from one image, using the other half for testing; validation was also carried out using three unseen ultrasound images. CNN performance was assessed using Mathew's Correlation Coefficient, Sensitivity, Specificity and Accuracy. The results show that CNN performance when using expert ground truth image is better than using Canny ground truth image. Our technique is promising and has the potential to speed-up the image processing pipeline using appropriately trained CNNs.

Conference Name International Joint Conference on Neural Networks
Conference Location Vancouver
Start Date Jul 25, 2016
End Date Jul 29, 2016
Acceptance Date Mar 15, 2016
Online Publication Date Nov 3, 2016
Publication Date Nov 3, 2016
Publicly Available Date May 26, 2023
Publisher Institute of Electrical and Electronics Engineers (IEEE)
Series Title International Joint Conference on Neural Networks 2016
Book Title 2016 International Joint Conference on Neural Networks (IJCNN)
ISBN 978-1-5090-0619-9
Keywords Segmentation, Convolutional Neural Networks, Musculoskeletal model, Ultrasound image
Publisher URL http://dx.doi.org/10.1109/IJCNN.2016.7727805

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