Kadoury Samuel, Labelle Hubert, Parent Stefan
Med Image Comput Comput Assist Interv. 2014;17(Pt 3):361-8. doi: 10.1007/978-3-319-10443-0_46.
The quantitative assessment of surgical outcomes using personalized anatomical models is an essential task for the treatment of spinal deformities such as adolescent idiopathic scoliosis. However an accurate 3D reconstruction of the spine from postoperative X-ray images remains challenging due to presence of instrumentation (metallic rods and screws) occluding vertebrae on the spine. In this paper, we formulate the reconstruction problem as an optimization over a manifold of articulated spine shapes learned from pathological training data. The manifold itself is represented using a novel data structure, a multi-level manifold ensemble, which contains links between nodes in a single hierarchical structure, as well as links between different hierarchies, representing overlapping partitions. We show that this data structure allows both efficient localization and navigation on the manifold, for on-the-fly building of local nonlinear models (manifold charting). Our reconstruction framework was tested on pre- and postoperative X-ray datasets from patients who underwent spinal surgery. Compared to manual ground-truth, our method achieves a 3D reconstruction accuracy of 2.37 +/- 0.85 mm for postoperative spine models and can deal with severe cases of scoliosis.
使用个性化解剖模型对手术结果进行定量评估是治疗脊柱畸形(如青少年特发性脊柱侧凸)的一项重要任务。然而,由于存在器械(金属棒和螺钉)遮挡脊柱上的椎骨,从术后X射线图像中准确重建脊柱的三维模型仍然具有挑战性。在本文中,我们将重建问题表述为对从病理训练数据中学到的关节脊柱形状流形的优化。该流形本身使用一种新颖的数据结构——多级流形集合来表示,它在单个层次结构中的节点之间包含链接,以及不同层次之间的链接,代表重叠分区。我们表明,这种数据结构允许在流形上进行高效的定位和导航,以便即时构建局部非线性模型(流形映射)。我们的重建框架在接受脊柱手术患者的术前和术后X射线数据集上进行了测试。与手动标注的真值相比,我们的方法对于术后脊柱模型实现了2.37±0.85毫米的三维重建精度,并且能够处理严重的脊柱侧凸病例。