Benameur Said, Mignotte Max, Labelle Hubert, De Guise Jacques A
Imagery and Orthopedics Research Laboratory, Research Center, University of Montreal Hospital Center CRCHUM, Montreal, QC H2L 4M1, Canada.
IEEE Trans Biomed Eng. 2005 Dec;52(12):2041-57. doi: 10.1109/TBME.2005.857665.
This paper presents a new and accurate three-dimensional (3-D) reconstruction technique for the scoliotic spine from a pair of planar and conventional (postero-anterior with normal incidence and lateral) calibrated radiographic images. The proposed model uses a priori hierarchical global knowledge, both on the geometric structure of the whole spine and of each vertebra. More precisely, it relies on the specification of two 3-D statistical templates. The first, a rough geometric template on which rigid admissible deformations are defined, is used to ensure a crude registration of the whole spine. An accurate 3-D reconstruction is then performed for each vertebra by a second template on which nonlinear admissible global, as well as local deformations, are defined. Global deformations are modeled using a statistical modal analysis of the pathological deformations observed on a representative scoliotic vertebra population. Local deformations are represented by a first-order Markov process. This unsupervised coarse-to-fine 3-D reconstruction procedure leads to two separate minimization procedures efficiently solved in our application with evolutionary stochastic optimization algorithms. In this context, we compare the results obtained with a classical genetic algorithm (GA) and a recent Exploration Selection (ES) technique. This latter optimization method with the proposed 3-D reconstruction model, is tested on several pairs of biplanar radiographic images with scoliotic deformities. The experiments reported in this paper demonstrate that the discussed method is comparable in terms of accuracy with the classical computed-tomography-scan technique while being unsupervised and while requiring only two radiographic images and a lower amount of radiation for the patient.
本文提出了一种全新且精确的三维(3-D)重建技术,用于从一对平面且传统的(后前位,垂直入射以及侧位)校准X线影像重建脊柱侧弯的脊柱。所提出的模型使用了关于整个脊柱和每个椎体几何结构的先验分层全局知识。更确切地说,它依赖于两个三维统计模板的设定。第一个是粗糙的几何模板,在其上定义了刚性允许变形,用于确保整个脊柱的粗略配准。然后通过第二个模板对每个椎体进行精确的三维重建,在该模板上定义了非线性允许全局变形以及局部变形。全局变形通过对在一组具有代表性的脊柱侧弯椎体上观察到的病理变形进行统计模态分析来建模。局部变形由一阶马尔可夫过程表示。这种无监督的从粗到细的三维重建过程导致两个独立的最小化过程,在我们的应用中通过进化随机优化算法有效地求解。在此背景下,我们比较了使用经典遗传算法(GA)和最近的探索选择(ES)技术获得的结果。后一种优化方法与所提出的三维重建模型一起,在几对具有脊柱侧弯畸形的双平面X线影像上进行了测试。本文报道的实验表明,所讨论的方法在准确性方面与经典计算机断层扫描技术相当,同时是无监督的,并且只需要两张X线影像,对患者的辐射量也更低。