Cerveri Pietro, Belfatto Antonella, Manzotti Alfonso
a Department of Electronics, Information and Bioengineering , Politecnico di Milano , Milan , Italy.
b Orthopaedic and Trauma Department , Luigi Sacco Hospital, ASST FBF-Sacco , Milan , Italy.
Comput Methods Biomech Biomed Engin. 2019 May;22(7):772-787. doi: 10.1080/10255842.2019.1592378. Epub 2019 Apr 1.
Statistical shape models (SSM) of bony surfaces have been widely proposed in orthopedics, especially for anatomical bone modeling, joint kinematic analysis, staging of morphological abnormality, and pre- and intra-operative shape reconstruction. In the SSM computation, reference shape selection, shape registration and point correspondence computation are fundamental aspects determining the quality (generality, specificity and compactness) of the SSM. Such procedures can be made critical by the presence of large morphological dissimilarities within the surfaces, not only because of anthropometrical variability but also mainly due to pathological abnormalities. In this work, we proposed a SW pipeline for SSM construction based on pair-wise (PW) shape registration, which requires the a-priori selection of the reference shape, and on a custom iterative point correspondence algorithm. We addressed large morphological deformations in five different bony surface sets, namely proximal femur, distal femur, patella, proximal fibula and proximal tibia, extracted from a retrospective patient dataset. The technique was compared to a method from the literature, based on group-wise (GW) shape registration. As a main finding, the proposed technique provided generalization and specificity median errors, for all the five bony regions, lower than 2 mm. The comparative analysis provided basically similar results. Particularly, for the distal femur that was the shape affected by the largest pathological deformations, the differences in generalization, specificity and compactness were lower than 0.5 mm, 0.5 mm, and 1%, respectively. We can argue the proposed pipeline, along with the robust correspondence algorithm, is able to compute high-quality SSM of bony shapes, even affected by large morphological variability.
骨表面的统计形状模型(SSM)在骨科领域已被广泛提出,尤其用于解剖骨建模、关节运动学分析、形态异常分期以及术前和术中形状重建。在SSM计算中,参考形状选择、形状配准和点对应计算是决定SSM质量(通用性、特异性和紧凑性)的基本方面。由于表面存在较大的形态差异,这些过程可能变得至关重要,这不仅是由于人体测量学的变异性,主要还因为病理异常。在这项工作中,我们提出了一种基于成对(PW)形状配准的SSM构建软件管道,该管道需要先验选择参考形状,并基于一种自定义的迭代点对应算法。我们处理了从回顾性患者数据集中提取的五个不同骨表面集的大形态变形,即股骨近端、股骨远端、髌骨、腓骨近端和胫骨近端。该技术与文献中基于组对(GW)形状配准的方法进行了比较。作为主要发现,所提出的技术在所有五个骨区域提供的通用性和特异性中值误差均低于2毫米。比较分析得出了基本相似的结果。特别是,对于受最大病理变形影响的股骨远端形状,通用性、特异性和紧凑性的差异分别低于0.5毫米、0.5毫米和1%。我们可以认为,所提出的软件管道连同强大的对应算法能够计算高质量的骨形状SSM,即使受到大的形态变异性影响。