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 inIEEE International Ultrasonics Symposium (Online) pp. 1 - 4
Main Authors Shao, Wenjie, Zeng, Hongye, Gao, Yuchong, Zhang, Kang, Zheng, Rui
Format Conference Proceeding
LanguageEnglish
Published IEEE 11.09.2021
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ISSN1948-5727
DOI10.1109/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.
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
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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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