论文标题
用粗扫描的MR图像对肩关节的递归3D分割
Recursive 3D Segmentation of Shoulder Joint with Coarse-scanned MR Image
论文作者
论文摘要
为了诊断肩部疾病,必须查看肩cap骨和肱骨与从磁共振(MR)成像中获得的医学图像的形态偏差。但是,采取高分辨率MR图像是耗时且昂贵的,因为图像切片之间的物理距离的减少会导致延长的扫描时间。此外,由于缺乏训练图像,必须利用来自各种来源的图像,这会在整个数据集中造成较高的差异问题。同样,图像之间存在人类错误,因为在低分辨率以低分辨率标记3D图像时,很难考虑到空间关系。为了打击上面所述的所有障碍,我们开发了一种完全自动化的算法,用于从粗扫描和低分辨率的MR图像和递归学习框架中分割出肱骨和肩cap骨骨骼,并使用迭代的递归学习框架利用生成的标签来减少分段中的错误并增加我们的数据集网络,以增加我们的数据集进行培训。在这项研究中,从几个机构收集了50个MR图像,并分为五个互斥的集合,用于携带五倍的交叉验证。与地面真相和传统方法相比,由提出的方法产生的轮廓表现出很高的准确性。提出的神经网络和递归学习计划提高了对低分辨率数据集对肱骨和肩cap骨的整体质量,并减少了地面真理中的不正确分段,这可能会对寻找肩部疼痛和患者早期缓解的原因产生积极影响。
For diagnosis of shoulder illness, it is essential to look at the morphology deviation of scapula and humerus from the medical images that are acquired from Magnetic Resonance (MR) imaging. However, taking high-resolution MR images is time-consuming and costly because the reduction of the physical distance between image slices causes prolonged scanning time. Moreover, due to the lack of training images, images from various sources must be utilized, which creates the issue of high variance across the dataset. Also, there are human errors among the images due to the fact that it is hard to take the spatial relationship into consideration when labeling the 3D image in low resolution. In order to combat all obstacles stated above, we develop a fully automated algorithm for segmenting the humerus and scapula bone from coarsely scanned and low-resolution MR images and a recursive learning framework that iterative utilize the generated labels for reducing the errors among segmentations and increase our dataset set for training the next round network. In this study, 50 MR images are collected from several institutions and divided into five mutually exclusive sets for carrying five-fold cross-validation. Contours that are generated by the proposed method demonstrated a high level of accuracy when compared with ground truth and the traditional method. The proposed neural network and the recursive learning scheme improve the overall quality of the segmentation on humerus and scapula on the low-resolution dataset and reduced incorrect segmentation in the ground truth, which could have a positive impact on finding the cause of shoulder pain and patient's early relief.