Measurement of Spinous Process Angles on Ultrasound Spine Images using HR-Net Method
The conventional method to evaluate spinous process angles (SPAs) is to obtain the spinous processes (SP) curve by manually locating spinous processes on radiographs. HR-Net is a deep neural network which uses a multi-feature fusion strategy for keypoints detection. The objectives of this study are...
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Published in | IEEE International Ultrasonics Symposium (Online) pp. 1 - 4 |
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Main Authors | , , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
11.09.2021
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ISSN | 1948-5727 |
DOI | 10.1109/IUS52206.2021.9593791 |
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Abstract | The conventional method to evaluate spinous process angles (SPAs) is to obtain the spinous processes (SP) curve by manually locating spinous processes on radiographs. HR-Net is a deep neural network which uses a multi-feature fusion strategy for keypoints detection. The objectives of this study are to automatically locate the SP on the ultrasound (US) transverse images by applying the High-Resolution network (HR-Net) and then to measure the SPAs on the reconstructed coronal image. The HR-Net model was trained on 1200 US transverse images and tested on 386 images to locate the spinous process. Twenty-five scoliotic subjects were scanned for the evaluation of SPAs measurement. After detecting the SP positions on each frame using HR-Net, the 3D image volumes were reconstructed, and the SPAs were measured on the coronal planes. HR-Net predicted the five keypoints on the test set with the average accuracy of 74.09% with the SP accuracy of 80.05%. The mean absolute difference (MAD) of SPAs between US and radiographic measurement was 2. 7±2.0°, and the correlation was 0.89. The results showed that the HR-Net method could automatically locate the spinous processes on US transverse images and moreover provide accurate estimation of SPAs for scoliotic subjects. |
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AbstractList | The conventional method to evaluate spinous process angles (SPAs) is to obtain the spinous processes (SP) curve by manually locating spinous processes on radiographs. HR-Net is a deep neural network which uses a multi-feature fusion strategy for keypoints detection. The objectives of this study are to automatically locate the SP on the ultrasound (US) transverse images by applying the High-Resolution network (HR-Net) and then to measure the SPAs on the reconstructed coronal image. The HR-Net model was trained on 1200 US transverse images and tested on 386 images to locate the spinous process. Twenty-five scoliotic subjects were scanned for the evaluation of SPAs measurement. After detecting the SP positions on each frame using HR-Net, the 3D image volumes were reconstructed, and the SPAs were measured on the coronal planes. HR-Net predicted the five keypoints on the test set with the average accuracy of 74.09% with the SP accuracy of 80.05%. The mean absolute difference (MAD) of SPAs between US and radiographic measurement was 2. 7±2.0°, and the correlation was 0.89. The results showed that the HR-Net method could automatically locate the spinous processes on US transverse images and moreover provide accurate estimation of SPAs for scoliotic subjects. |
Author | Zheng, Rui Shao, Wenjie Zeng, Hongye Gao, Yuchong Zhang, Kang |
Author_xml | – sequence: 1 givenname: Wenjie surname: Shao fullname: Shao, Wenjie organization: ShanghaiTech University,School of Information Science and Technology,Shanghai,China – sequence: 2 givenname: Hongye surname: Zeng fullname: Zeng, Hongye organization: ShanghaiTech University,School of Information Science and Technology,Shanghai,China – sequence: 3 givenname: Yuchong surname: Gao fullname: Gao, Yuchong organization: ShanghaiTech University,School of Information Science and Technology,Shanghai,China – sequence: 4 givenname: Kang surname: Zhang fullname: Zhang, Kang organization: ShanghaiTech University,School of Information Science and Technology,Shanghai,China – sequence: 5 givenname: Rui surname: Zheng fullname: Zheng, Rui organization: ShanghaiTech University,School of Information Science and Technology,Shanghai,China |
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Snippet | The conventional method to evaluate spinous process angles (SPAs) is to obtain the spinous processes (SP) curve by manually locating spinous processes on... |
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SubjectTerms | Estimation HR-Net Measurement uncertainty Scoliosis Solid modeling Spinous Process Angle Three-dimensional displays Ultrasonic imaging Ultrasonic variables measurement US transverse images Volume measurement |
Title | Measurement of Spinous Process Angles on Ultrasound Spine Images using HR-Net Method |
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