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使用深度卷积神经网络(DeepLab)和U-Net进行肩胛骨分割

Shoulder Bone Segmentation with DeepLab and U-Net.

作者信息

Carl Michael, Lall Kaustubh, Pai Darren, Chang Eric, Statum Sheronda, Brau Anja, Chung Christine B, Fung Maggie, Bae Won C

机构信息

General Electric Healthcare, Menlo Park, CA.

Dept. of Electrical and Computer Engineering, University of California-San Diego, CA.

出版信息

Osteology (Basel). 2024 Jun;4(2):98-110. doi: 10.3390/osteology4020008. Epub 2024 Jun 11.

Abstract

Evaluation of 3D bone morphology of the glenohumeral joint is necessary for pre-surgical planning. Zero echo time (ZTE) magnetic resonance imaging (MRI) provides excellent bone contrast and can potentially be used in place of computed tomography. Segmentation of shoulder anatomy, particularly humeral head and acetabulum, is needed for detailed assessment of each anatomy and for pre-surgical preparation. In this study we compared performance of two popular deep learning models based on Google's DeepLab and U-Net to perform automated segmentation on ZTE MRI of human shoulders. Axial ZTE images of normal shoulders (n=31) acquired at 3-Tesla were annotated for training with a DeepLab and 2D U-Net, and the trained model was validated with testing data (n=13). While both models showed visually satisfactory results for segmenting the humeral bone, U-Net slightly over-estimated while DeepLab under-estimated the segmented area compared to the ground truth. Testing accuracy quantified by Dice score was significantly higher (p<0.05) for U-Net (88%) than DeepLab (81%) for the humeral segmentation. We have also implemented the U-Net model onto an MRI console for a push-button DL segmentation processing. Although this is an early work with limitations, our approach has the potential to improve shoulder MR evaluation hindered by manual post-processing and may provide clinical benefit for quickly visualizing bones of the glenohumeral joint.

摘要

评估盂肱关节的三维骨形态对于术前规划是必要的。零回波时间(ZTE)磁共振成像(MRI)提供了出色的骨对比度,并且有可能用于替代计算机断层扫描。为了详细评估每个解剖结构并进行术前准备,需要对肩部解剖结构进行分割,特别是肱骨头和髋臼。在本研究中,我们比较了基于谷歌的DeepLab和U-Net的两种流行深度学习模型在人类肩部ZTE MRI上进行自动分割的性能。对在3特斯拉下获取的正常肩部(n = 31)的轴向ZTE图像用DeepLab和二维U-Net进行注释以用于训练,并且用测试数据(n = 13)对训练后的模型进行验证。虽然两种模型在分割肱骨时在视觉上都显示出令人满意的结果,但与真实情况相比,U-Net对分割区域略有高估,而DeepLab则低估了分割区域。对于肱骨分割,通过Dice分数量化的测试准确性,U-Net(88%)显著高于DeepLab(81%)(p<0.05)。我们还将U-Net模型应用于MRI控制台以进行一键式深度学习分割处理。虽然这是一项存在局限性的早期工作,但我们的方法有可能改善因手动后处理而受阻的肩部MR评估,并可能为快速可视化盂肱关节的骨骼提供临床益处。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/614c/11520815/27b06dbea44f/nihms-2030611-f0002.jpg

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