School of Biomedical Engineering, Faculty of Medicine, Dalian University of Technology, Dalian 116024, People's Republic of China.
Department of Orthopaedics, Daping Hospital, Army Medical University, Chongqing, People's Republic of China.
Phys Med Biol. 2023 Nov 6;68(22). doi: 10.1088/1361-6560/ad04aa.
Precise hip joint morphometry measurement from CT images is crucial for successful preoperative arthroplasty planning and biomechanical simulations. Although deep learning approaches have been applied to clinical bone surgery planning, there is still a lack of relevant research on quantifying hip joint morphometric parameters from CT images.This paper proposes a deep learning workflow for CT-based hip morphometry measurement. For the first step, a coarse-to-fine deep learning model is designed for accurate reconstruction of the hip geometry (3D bone models and key landmark points). Based on the geometric models, a robust measurement method is developed to calculate a full set of morphometric parameters, including the acetabular anteversion and inclination, the femoral neck shaft angle and the inclination, etc. Our methods were validated on two datasets with different imaging protocol parameters and further compared with the conventional 2D x-ray-based measurement method.. The proposed method yields high bone segmentation accuracies (Dice coefficients of 98.18% and 97.85%, respectively) and low landmark prediction errors (1.55 mm and 1.65 mm) on both datasets. The automated measurements agree well with the radiologists' manual measurements (Pearson correlation coefficients between 0.47 and 0.99 and intraclass correlation coefficients between 0.46 and 0.98). This method provides more accurate measurements than the conventional 2D x-ray-based measurement method, reducing the error of acetabular cup size from over 2 mm to less than 1 mm. Moreover, our morphometry measurement method is robust against the error of the previous bone segmentation step. As we tested different deep learning methods for the prerequisite bone segmentation, our method produced consistent final measurement results, with only a 0.37 mm maximum inter-method difference in the cup size.. This study proposes a deep learning approach with improved robustness and accuracy for pelvis arthroplasty planning.
从 CT 图像中精确测量髋关节形态对于成功的术前关节置换规划和生物力学模拟至关重要。虽然深度学习方法已应用于临床骨外科手术规划,但在从 CT 图像定量测量髋关节形态参数方面,仍缺乏相关研究。本文提出了一种基于 CT 的髋关节形态测量深度学习工作流程。在第一步中,设计了一种从粗到精的深度学习模型,用于精确重建髋关节的几何形状(3D 骨骼模型和关键地标点)。基于几何模型,开发了一种稳健的测量方法,用于计算一整套形态参数,包括髋臼前倾角和倾斜度、股骨颈干角和倾斜度等。我们的方法在具有不同成像协议参数的两个数据集上进行了验证,并与传统的 2D X 射线测量方法进行了比较。在两个数据集上,该方法都取得了较高的骨骼分割精度(Dice 系数分别为 98.18%和 97.85%)和较低的地标预测误差(分别为 1.55mm 和 1.65mm)。自动化测量与放射科医生的手动测量吻合良好(Pearson 相关系数在 0.47 到 0.99 之间,组内相关系数在 0.46 到 0.98 之间)。与传统的 2D X 射线测量方法相比,该方法提供了更准确的测量结果,将髋臼杯尺寸的误差从超过 2mm 减小到小于 1mm。此外,我们的形态测量方法对前序骨骼分割步骤的误差具有较强的鲁棒性。在对骨骼分割的前置步骤测试了不同的深度学习方法后,我们的方法产生了一致的最终测量结果,在杯尺寸上的最大方法间差异仅为 0.37mm。本研究提出了一种具有改进的稳健性和准确性的深度学习方法,用于骨盆置换规划。