论文标题

使用深度学习的语义分割,从轨道计算机断层扫描图像中提取总眼外肌肉和视神经

Semantic Segmentation Using Deep Learning to Extract Total Extraocular Muscles and Optic Nerve from Orbital Computed Tomography Images

论文作者

Zhu, Fubao, Gao, Zhengyuan, Zhao, Chen, Zhu, Zelin, Liu, Yanyun, Tang, Shaojie, Jiang, Chengzhi, Li, Xinhui, Zhao, Min, Zhou, Weihua

论文摘要

目的:总体外部肌肉(EOM)和视神经(ON)的精确分割对于评估甲状腺相关眼科(TAO)的解剖学发育和进展至关重要。我们旨在开发一种基于深度学习的语义分割方法,以提取可疑TAO患者的轨道CT图像。材料和方法:总共从97名受到轨道CT扫描的受试者获得的7,879张图像被纳入了本研究。将88名患者随机选择到培训/验证数据集中,其余的患者将其放入测试数据集中。全部EOM和所有患者的轮廓都由经验丰富的放射科医生手动描绘为地面真理。为我们的分割任务开发了一个三维(3D)的端到端完全卷积神经网络,称为语义V-NET(SV-NET)。测量了联合(IOU)的交叉点以评估分割结果的准确性,并使用Pearson相关分析来评估我们的分割结果与地面真相的量相对的量。结果:我们的测试数据集中的模型达到了0.8207的总体IOU;上直肠肌的IOU为0.7599,外侧直肌肌的0.8183为0.8183,内侧直肠肌肉的0.8481为0.8481,下肌下肌的0.8436为0.8436,光神经为0.8337。从我们的分割结果中测得的卷与地面真相的量非常吻合(所有r> 0.98,p <0.0001)。结论:定性和定量评估在自动提取轨道CT图像中的总EOM以及上并测量其体积时表明我们方法的表现出色。临床应用有一个很大的希望,可以评估Tao诊断和预后的这些解剖结构。

Objectives: Precise segmentation of total extraocular muscles (EOM) and optic nerve (ON) is essential to assess anatomical development and progression of thyroid-associated ophthalmopathy (TAO). We aim to develop a semantic segmentation method based on deep learning to extract the total EOM and ON from orbital CT images in patients with suspected TAO. Materials and Methods: A total of 7,879 images obtained from 97 subjects who underwent orbit CT scans due to suspected TAO were enrolled in this study. Eighty-eight patients were randomly selected into the training/validation dataset, and the rest were put into the test dataset. Contours of the total EOM and ON in all the patients were manually delineated by experienced radiologists as the ground truth. A three-dimensional (3D) end-to-end fully convolutional neural network called semantic V-net (SV-net) was developed for our segmentation task. Intersection over Union (IoU) was measured to evaluate the accuracy of the segmentation results, and Pearson correlation analysis was used to evaluate the volumes measured from our segmentation results against those from the ground truth. Results: Our model in the test dataset achieved an overall IoU of 0.8207; the IoU was 0.7599 for the superior rectus muscle, 0.8183 for the lateral rectus muscle, 0.8481 for the medial rectus muscle, 0.8436 for the inferior rectus muscle and 0.8337 for the optic nerve. The volumes measured from our segmentation results agreed well with those from the ground truth (all R>0.98, P<0.0001). Conclusion: The qualitative and quantitative evaluations demonstrate excellent performance of our method in automatically extracting the total EOM and ON and measuring their volumes in orbital CT images. There is a great promise for clinical application to assess these anatomical structures for the diagnosis and prognosis of TAO.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源