IEEE Trans Med Imaging. 2017 May;36(5):1194-1204. doi: 10.1109/TMI.2017.2657225. Epub 2017 Jan 23.
We introduce a novel approach for predicting the progression of adolescent idiopathic scoliosis from 3-D spine models reconstructed from biplanar X-ray images. Recent progress in machine learning has allowed to improve classification and prognosis rates, but lack a probabilistic framework to measure uncertainty in the data. We propose a discriminative probabilistic manifold embedding where locally linear mappings transform data points from high-dimensional space to corresponding low-dimensional coordinates. A discriminant adjacency matrix is constructed to maximize the separation between progressive (P) and nonprogressive (NP) groups of patients diagnosed with scoliosis, while minimizing the distance in latent variables belonging to the same class. To predict the evolution of deformation, a baseline reconstruction is projected onto the manifold, from which a spatiotemporal regression model is built from parallel transport curves inferred from neighboring exemplars. Rate of progression is modulated from the spine flexibility and curve magnitude of the 3-D spine deformation. The method was tested on 745 reconstructions from 133 subjects using longitudinal 3-D reconstructions of the spine, with results demonstrating the discriminatory framework can identify between P and NP of scoliotic patients with a classification rate of 81% and the prediction differences of 2.1° in main curve angulation, outperforming other manifold learning methods. Our method achieved a higher prediction accuracy and improved the modeling of spatiotemporal morphological changes in highly deformed spines compared with other learning methods.
我们提出了一种新的方法,用于从双平面 X 射线图像重建的 3D 脊柱模型预测青少年特发性脊柱侧凸的进展。机器学习的最新进展使得分类和预后率得到了提高,但缺乏一种概率框架来衡量数据中的不确定性。我们提出了一种判别概率流形嵌入,其中局部线性映射将高维空间中的数据点转换为相应的低维坐标。构建判别邻接矩阵以最大化诊断为脊柱侧凸的进展(P)和非进展(NP)组患者之间的分离,同时最小化属于同一类的潜在变量之间的距离。为了预测变形的演变,从基线重建中投射到流形上,从该流形构建了时空回归模型,该模型是从推断出的相邻样本的平行传输曲线构建的。从脊柱的灵活性和 3D 脊柱变形的曲线幅度来调节进展率。该方法在 133 名受试者的 745 个重建中进行了测试,使用脊柱的纵向 3D 重建,结果表明判别框架可以识别脊柱侧凸患者的 P 和 NP,分类率为 81%,主要曲线角度的预测差异为 2.1°,优于其他流形学习方法。与其他学习方法相比,我们的方法在高度变形的脊柱中实现了更高的预测精度,并改进了时空形态变化的建模。