Li Lening, Zhang Teng, Lin Fan, Li Yuting, Wong Man-Sang
Department of Biomedical Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
School of Artificial Intelligence, Nanjing University of Information Science and Technology, Nanjing, China.
J Imaging Inform Med. 2025 Feb;38(1):309-317. doi: 10.1007/s10278-024-01211-w. Epub 2024 Aug 8.
To propose a deep learning framework "SpineCurve-net" for automated measuring the 3D Cobb angles from computed tomography (CT) images of presurgical scoliosis patients. A total of 116 scoliosis patients were analyzed, divided into a training set of 89 patients (average age 32.4 ± 24.5 years) and a validation set of 27 patients (average age 17.3 ± 5.8 years). Vertebral identification and curve fitting were achieved through U-net and NURBS-net and resulted in a Non-Uniform Rational B-Spline (NURBS) curve of the spine. The 3D Cobb angles were measured in two ways: the predicted 3D Cobb angle (PRED-3D-CA), which is the maximum value in the smoothed angle map derived from the NURBS curve, and the 2D mapping Cobb angle (MAP-2D-CA), which is the maximal angle formed by the tangent vectors along the projected 2D spinal curve. The model segmented spinal masks effectively, capturing easily missed vertebral bodies. Spoke kernel filtering distinguished vertebral regions, centralizing spinal curves. The SpineCurve Network method's Cobb angle (PRED-3D-CA and MAP-2D-CA) measurements correlated strongly with the surgeons' annotated Cobb angle (ground truth, GT) based on 2D radiographs, revealing high Pearson correlation coefficients of 0.983 and 0.934, respectively. This paper proposed an automated technique for calculating the 3D Cobb angle in preoperative scoliosis patients, yielding results that are highly correlated with traditional 2D Cobb angle measurements. Given its capacity to accurately represent the three-dimensional nature of spinal deformities, this method shows potential in aiding physicians to develop more precise surgical strategies in upcoming cases.
提出一种深度学习框架“SpineCurve-net”,用于从术前脊柱侧弯患者的计算机断层扫描(CT)图像中自动测量三维Cobb角。共分析了116例脊柱侧弯患者,分为89例患者的训练集(平均年龄32.4±24.5岁)和27例患者的验证集(平均年龄17.3±5.8岁)。通过U-net和NURBS-net实现椎体识别和曲线拟合,得到脊柱的非均匀有理B样条(NURBS)曲线。三维Cobb角通过两种方式测量:预测三维Cobb角(PRED-3D-CA),即从NURBS曲线导出的平滑角度图中的最大值;二维映射Cobb角(MAP-2D-CA),即沿投影二维脊柱曲线的切线向量形成的最大角度。该模型有效地分割了脊柱掩码,捕捉到容易遗漏的椎体。辐条核滤波区分了椎体区域,使脊柱曲线居中。SpineCurve Network方法的Cobb角(PRED-3D-CA和MAP-2D-CA)测量值与外科医生基于二维X线片标注的Cobb角(地面真值,GT)高度相关,Pearson相关系数分别为0.983和0.934。本文提出了一种自动计算术前脊柱侧弯患者三维Cobb角的技术,其结果与传统二维Cobb角测量高度相关。鉴于其能够准确呈现脊柱畸形的三维性质,该方法在帮助医生为未来病例制定更精确的手术策略方面显示出潜力。