Wei Qiang, Han Jungang, Jia Yang, Zhu Liyang, Zhang Shuai, Lu Yufeng, Yang Bin, Tang Shaojie
School of Computer, Xi'an University of Posts and Telecommunications, Xi'an, Shaanxi 710121, China.
Department of Orthopaedics, Xi'an Honghui Hospital, Xi'an, Shaanxi 710054, China.
Rev Sci Instrum. 2020 Jan 1;91(1):013706. doi: 10.1063/1.5089738.
Femoral neck-shaft angle (NSA) is the angle included by the femoral neck axis (FNA) and the femoral shaft axis (FSA), which is a critical anatomic measurement index for evaluating the biomechanics of the hip joint. Aiming at solving the problem that the physician's manual measurement of the NSA is time consuming and irreproducible, this paper proposes a fully automatic approach for evaluating the femoral NSA on radiographs. We first present an improved deep convolutional generative adversarial network to automatically segment the femoral region of interest on radiographs of the pelvis. Then based on the geometrical characteristic of the femoral shape, the FNA and FSA are fitted, respectively, and thus, the NSA can be evaluated conveniently. The average accuracy of the proposed approach for NSA evaluation is 97.24%, and the average deviation is 2.58° as compared to the measurements manually evaluated by experienced physicians. There is no significant statistical difference (P = 0.808) between the manual and automatic measurements, and Pearson's correlation coefficient is 0.904. It is validated that the proposed approach can provide an effective and reliable tool for automatically evaluating the NSA on radiographs.
股骨颈干角(NSA)是股骨颈轴线(FNA)与股骨干轴线(FSA)所夹的角度,是评估髋关节生物力学的关键解剖测量指标。针对医生手动测量NSA耗时且不可重复的问题,本文提出了一种在X线片上评估股骨NSA的全自动方法。我们首先提出一种改进的深度卷积生成对抗网络,以自动分割骨盆X线片上的股骨感兴趣区域。然后基于股骨形状的几何特征,分别拟合FNA和FSA,从而方便地评估NSA。所提NSA评估方法的平均准确率为97.24%,与经验丰富的医生手动测量结果相比,平均偏差为2.58°。手动测量与自动测量之间无显著统计学差异(P = 0.808),Pearson相关系数为0.904。验证了所提方法可为在X线片上自动评估NSA提供有效且可靠的工具。