Department of Mechanical and Industrial Engineering, University of Toronto, Toronto, ON, Canada.
Institute of Medical Science, University of Toronto, Toronto, ON, Canada.
Can Assoc Radiol J. 2023 Nov;74(4):667-675. doi: 10.1177/08465371231163187. Epub 2023 Mar 22.
Scoliosis is a deformity of the spine, and as a measure of scoliosis severity, Cobb angle is fundamental to the diagnosis of deformities that require treatment. Conventional Cobb angle measurement and assessment is usually done manually, which is inherently time-consuming, and associated with high inter- and intra-observer variability. While there exist automatic scoliosis measurement methods, they suffer from insufficient accuracy. In this work, we propose a two-step segmentation-based deep learning architecture to automate Cobb angle measurement for scoliosis assessment using X-Ray images. The proposed architecture involves two steps. In the first step, we utilize a novel Augmented U-Net architecture to generate segmentations of vertebrae. The second step includes a non-learning-based pipeline to extract landmark coordinates from the segmented vertebrae and filter undesirable landmarks. Our proposed Augmented U-Net architecture achieved a Symmetric Mean Absolute Percentage Error of 9.2%, with approximately 90% of estimations having less than 10 degrees difference compared with the AASCE-MICCAI challenge 2019 dataset ground truths. We further validated the model using an internal dataset and achieved almost the same level of performance. The proposed architecture is robust in providing automated spinal vertebrae segmentations and Cobb angle measurement, and is potentially generalizable to real-world clinical settings.
脊柱侧凸是脊柱的一种畸形,Cobb 角作为脊柱侧凸严重程度的衡量标准,对于诊断需要治疗的畸形至关重要。传统的 Cobb 角测量和评估通常是手动进行的,这 inherently 是耗时的,并且存在高度的 inter- 和 intra-observer 变异性。虽然存在自动脊柱侧凸测量方法,但它们的准确性不足。在这项工作中,我们提出了一种基于两步分割的深度学习架构,用于使用 X 射线图像自动测量 Cobb 角以进行脊柱侧凸评估。所提出的架构包括两个步骤。在第一步中,我们利用新颖的增强型 U-Net 架构生成椎骨的分割。第二步包括一个基于非学习的管道,用于从分割的椎骨中提取地标坐标并过滤不理想的地标。我们提出的增强型 U-Net 架构实现了 9.2%的对称均方根误差,与 AASCE-MICCAI 挑战 2019 数据集地面实况相比,约 90%的估计值相差不到 10 度。我们进一步使用内部数据集验证了该模型,并且几乎达到了相同的性能水平。所提出的架构在提供自动脊柱椎骨分割和 Cobb 角测量方面具有鲁棒性,并且有可能推广到实际的临床环境中。