Tsai Tsung-Yuan, Li Jing-Sheng, Wang Shaobai, Li Pingyue, Kwon Young-Min, Li Guoan
a Bioengineering Laboratory, Department of Orthopaedic Surgery , Massachusetts General Hospital, Harvard Medical School , 55 Fruit Street, GRJ-1215, Boston , MA 02114 , USA.
Comput Methods Biomech Biomed Engin. 2015;18(7):721-9. doi: 10.1080/10255842.2013.843676. Epub 2013 Oct 24.
The statistical shape model (SSM) method that uses 2D images of the knee joint to predict the three-dimensional (3D) joint surface model has been reported in the literature. In this study, we constructed a SSM database using 152 human computed tomography (CT) knee joint models, including the femur, tibia and patella and analysed the characteristics of each principal component of the SSM. The surface models of two in vivo knees were predicted using the SSM and their 2D bi-plane fluoroscopic images. The predicted models were compared to their CT joint models. The differences between the predicted 3D knee joint surfaces and the CT image-based surfaces were 0.30 ± 0.81 mm, 0.34 ± 0.79 mm and 0.36 ± 0.59 mm for the femur, tibia and patella, respectively (average ± standard deviation). The computational time for each bone of the knee joint was within 30 s using a personal computer. The analysis of this study indicated that the SSM method could be a useful tool to construct 3D surface models of the knee with sub-millimeter accuracy in real time. Thus, it may have a broad application in computer-assisted knee surgeries that require 3D surface models of the knee.
文献中已报道了使用膝关节二维图像预测三维(3D)关节表面模型的统计形状模型(SSM)方法。在本研究中,我们使用152个人类计算机断层扫描(CT)膝关节模型(包括股骨、胫骨和髌骨)构建了一个SSM数据库,并分析了SSM各主成分的特征。使用SSM及其二维双平面荧光透视图像预测了两个体内膝关节的表面模型。将预测模型与其CT关节模型进行比较。股骨、胫骨和髌骨的预测3D膝关节表面与基于CT图像的表面之间的差异分别为0.30±0.81毫米、0.34±0.79毫米和0.36±0.59毫米(平均值±标准差)。使用个人计算机时,膝关节各骨的计算时间在30秒以内。本研究分析表明,SSM方法可能是一种实时构建精度达亚毫米级的膝关节3D表面模型的有用工具。因此,它可能在需要膝关节3D表面模型的计算机辅助膝关节手术中具有广泛应用。