Ultrasound spine imaging technique has been applied to the assessment of spine deformity. However, manual measurements of scoliotic angles on ultrasound images are time-consuming and heavily rely on raters experience. The objectives of this study are to construct a fully automatic framework based on Faster R-CNN for detecting vertebral lamina and to measure the fitting spinal curves from the detected lamina pairs. The framework consisted of two closely linked modules: 1) the lamina detector for identifying and locating each lamina pairs on ultrasound coronal images, and 2) the spinal curvature estimator for calculating the scoliotic angles based on the chain of detected lamina. Two hundred ultrasound images obtained from AIS patients were identified and used for the training and evaluation of the proposed method. The experimental results showed the 0.76 AP on the test set, and the Mean Absolute Difference (MAD) between automatic and manual measurement which was within the clinical acceptance error. Meanwhile the correlation between automatic measurement and Cobb angle from radiographs was 0.79. The results revealed that our proposed technique could provide accurate and reliable automatic curvature measurements on ultrasound spine images for spine deformities.
翻译:超声波成像技术的超超声波成像技术已被应用于脊椎畸形评估,然而,对超声波图像的毛细角的人工测量耗时且严重依赖授精者的经验。本研究的目标是在更快的R-CNN的基础上建立一个完全自动的框架,用于检测脊椎花膜,并测量从检测到的 Lamina 对应的脊椎曲线。框架由两个紧密相连的模块组成:1)用于在超声波焦线图像上辨别和定位每对lamina成对的拉米纳检测器,2)用于计算所检测到的拉米纳链上的毛细角的脊椎曲线测量仪。从AIS 病人那里获得的200幅超声波图像被确定并用于对拟议方法的培训和评价。实验结果显示,测试集中的0.76 AP 和在临床接受误差范围内的自动和人工测量之间的平均绝对值差。同时,辐射测量的自动测量和科布角度之间的关联是0.79。结果显示,我们拟议的技术能够提供精确和可靠的旋转成型图像的极限。