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Bone Feature Segmentation in Ultrasound Spine Image with Robustness to Speckle and Regular Occlusion Noise | IEEE Conference Publication | IEEE Xplore

Bone Feature Segmentation in Ultrasound Spine Image with Robustness to Speckle and Regular Occlusion Noise


Abstract:

3D ultrasound imaging shows great promise for scoliosis diagnosis thanks to its low-costing, radiation-free and real-time characteristics. The key to accessing scoliosis ...Show More

Abstract:

3D ultrasound imaging shows great promise for scoliosis diagnosis thanks to its low-costing, radiation-free and real-time characteristics. The key to accessing scoliosis by ultrasound imaging is to accurately segment the bone area and measure the scoliosis degree based on the symmetry of the bone features. The ultrasound images tend to contain many speckles and regular occlusion noise which is difficult, tedious and time-consuming for experts to find out the bony feature. In this paper, we propose a robust bone feature segmentation method based on the U-net structure for ultrasound spine Volume Projection Imaging (VPI) images. The proposed segmentation method introduces a total variance loss to reduce the sensitivity of the model to small-scale and regular occlusion noise. The proposed approach improves 2.3% of Dice score and 1% of AUC score as compared with the u-net model and shows high robustness to speckle and regular occlusion noise.
Date of Conference: 11-14 October 2020
Date Added to IEEE Xplore: 14 December 2020
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Conference Location: Toronto, ON, Canada
Citations are not available for this document.

I. Introduction

Scoliosis is a condition in which the spinal cord gets severely deformed over time. The process of detection and diagnosis of the condition has been around for a long time [1]. A detection process involves scanning the spinal area of a patient with a suitable modality and accessing the curvature of the spine. This process is repeated over time and if, at any stage, the curvature of spine is detected to exceed 10°, the patient is categorized for potential scoliosis treatment.

Cites in Papers - |

Cites in Papers - IEEE (6)

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1.
Anna Nur Nazilah Chamim, Hasimah Ali, Yessi Jusman, Muhammad Ariffudin, Asy-Syifa Febya Ananta, Mohd Imran Yusof, "Segmentation for Lenke Scoliosis X-Ray Images Using Machine Learning", 2024 International Conference on Information Technology and Computing (ICITCOM), pp.30-35, 2024.
2.
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3.
Hao Xie, Zixun Huang, Frank H. F. Leung, Yakun Ju, Yong-Ping Zheng, Sai Ho Ling, "A Structure-Affinity Dual Attention-based Network to Segment Spine for Scoliosis Assessment", 2023 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pp.1567-1574, 2023.
4.
Benjamin Hohlmann, Peter Broessner, Lovis Phlippen, Thorsten Rohde, Klaus Radermacher, "Knee Bone Models From Ultrasound", IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control, vol.70, no.9, pp.1054-1063, 2023.
5.
Zixun Huang, Rui Zhao, Frank H. F. Leung, Sunetra Banerjee, Timothy Tin-Yan Lee, De Yang, Daniel P. K. Lun, Kin-Man Lam, Yong-Ping Zheng, Sai Ho Ling, "Joint Spine Segmentation and Noise Removal From Ultrasound Volume Projection Images With Selective Feature Sharing", IEEE Transactions on Medical Imaging, vol.41, no.7, pp.1610-1624, 2022.
6.
Pratik Shrestha, Aachal Singh, Riya Garg, Ishika Sarraf, T R Mahesh, G Sindhu Madhuri, "Early Stage Detection of Scoliosis Using Machine Learning Algorithms", 2021 International Conference on Forensics, Analytics, Big Data, Security (FABS), vol.1, pp.1-4, 2021.

Cites in Papers - Other Publishers (6)

1.
Sunetra Banerjee, Zixun Huang, Juan Lyu, Frank H.F. Leung, Timothy Lee, De Yang, Yongping Zheng, Jeb McAviney, Sai Ho Ling, "Automatic Assessment of Ultrasound Curvature Angle for Scoliosis Detection Using 3-D Ultrasound Volume Projection Imaging", Ultrasound in Medicine & Biology, 2024.
2.
Benjamin Hohlmann, Peter Broessner, Klaus Radermacher, "Ultrasound-based 3D bone modelling in computer assisted orthopedic surgery – a review and future challenges", Computer Assisted Surgery, vol.29, no.1, 2024.
3.
Chen Jin, Shengru Wang, Guodong Yang, En Li, Zize Liang, "A Review of the Methods on Cobb Angle Measurements for Spinal Curvature", Sensors, vol.22, no.9, pp.3258, 2022.
4.
Sunetra Banerjee, Juan Lyu, Zixun Huang, Frank H.F. Leung, Timothy Lee, De Yang, Steven Su, Yongping Zheng, Sai Ho Ling, "Ultrasound spine image segmentation using multi-scale feature fusion Skip-Inception U-Net (SIU-Net)", Biocybernetics and Biomedical Engineering, vol.42, no.1, pp.341, 2022.
5.
Sunetra Banerjee, Juan Lyu, Zixun Huang, Hung Fat Frank Leung, Timothy Tin-Yan Lee, De Yang, Steven Su, Yongping Zheng, Sai-Ho Ling, "Light-Convolution Dense Selection U-Net (LDS U-Net) for Ultrasound Lateral Bony Feature Segmentation", Applied Sciences, vol.11, no.21, pp.10180, 2021.
6.
De Yang, Timothy Tin-Yan Lee, Kelly Ka-Lee Lai, Tsz-Ping Lam, Winnie Chiu-Wing Chu, René Marten Castelein, Jack Chun-Yiu Cheng, Yong-Ping Zheng, "Semi-automatic ultrasound curve angle measurement for adolescent idiopathic scoliosis", Spine Deformity, 2021.
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References

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