基于编码几何模型的青少年特发性脊柱侧凸手术患者的三维形态学研究
Three-dimensional morphology study of surgical adolescent idiopathic scoliosis patient from encoded geometric models.
作者信息
Thong William, Parent Stefan, Wu James, Aubin Carl-Eric, Labelle Hubert, Kadoury Samuel
机构信息
Polytechnique Montréal, P.O. Box 6079, Succursale Centre-ville, Montreal, QC, H3C 3A7, Canada.
Sainte-Justine University Hospital Centre, 3175 Cote-Sainte-Catherine, Montreal, QC, H3T 1C5, Canada.
出版信息
Eur Spine J. 2016 Oct;25(10):3104-3113. doi: 10.1007/s00586-016-4426-3. Epub 2016 Feb 6.
PURPOSE
The classification of three-dimensional (3D) spinal deformities remains an open question in adolescent idiopathic scoliosis. Recent studies have investigated pattern classification based on explicit clinical parameters. An emerging trend however seeks to simplify complex spine geometries and capture the predominant modes of variability of the deformation. The objective of this study is to perform a 3D characterization and morphology analysis of the thoracic and thoraco/lumbar scoliotic spines (cross-sectional study). The presence of subgroups within all Lenke types will be investigated by analyzing a simplified representation of the geometric 3D reconstruction of a patient's spine, and to establish the basis for a new classification approach based on a machine learning algorithm.
METHODS
Three-dimensional reconstructions of coronal and sagittal standing radiographs of 663 patients, for a total of 915 visits, covering all types of deformities in adolescent idiopathic scoliosis (single, double and triple curves) and reviewed by the 3D Classification Committee of the Scoliosis Research Society, were analyzed using a machine learning algorithm based on stacked auto-encoders. The codes produced for each 3D reconstruction would be then grouped together using an unsupervised clustering method. For each identified cluster, Cobb angle and orientation of the plane of maximum curvature in the thoracic and lumbar curves, axial rotation of the apical vertebrae, kyphosis (T4-T12), lordosis (L1-S1) and pelvic incidence were obtained. No assumptions were made regarding grouping tendencies in the data nor were the number of clusters predefined.
RESULTS
Eleven groups were revealed from the 915 visits, wherein the location of the main curve, kyphosis and lordosis were the three major discriminating factors with slight overlap between groups. Two main groups emerge among the eleven different clusters of patients: a first with small thoracic deformities and large lumbar deformities, while the other with large thoracic deformities and small lumbar curvature. The main factor that allowed identifying eleven distinct subgroups within the surgical patients (major curves) from Lenke type-1 to type-6 curves, was the location of the apical vertebra as identified by the planes of maximum curvature obtained in both thoracic and thoraco/lumbar segments. Both hypokyphotic and hyperkypothic clusters were primarily composed of Lenke 1-4 curve type patients, while a hyperlordotic cluster was composed of Lenke 5 and 6 curve type patients.
CONCLUSION
The stacked auto-encoder analysis technique helped to simplify the complex nature of 3D spine models, while preserving the intrinsic properties that are typically measured with explicit parameters derived from the 3D reconstruction.
目的
在青少年特发性脊柱侧凸中,三维(3D)脊柱畸形的分类仍是一个悬而未决的问题。近期研究已基于明确的临床参数对模式分类进行了调查。然而,一种新趋势是力求简化复杂的脊柱几何形状,并捕捉变形的主要变异模式。本研究的目的是对胸段和胸腰段脊柱侧凸的脊柱进行3D特征描述和形态学分析(横断面研究)。将通过分析患者脊柱几何3D重建的简化表示来研究所有Lenke类型中是否存在亚组,并为基于机器学习算法的新分类方法奠定基础。
方法
使用基于堆叠自动编码器的机器学习算法,对663例患者的冠状位和矢状位站立位X线片的三维重建图像进行分析,共计915次就诊,涵盖青少年特发性脊柱侧凸的所有类型畸形(单曲线、双曲线和三曲线),并由脊柱侧凸研究学会的3D分类委员会进行审查。然后,使用无监督聚类方法将为每个3D重建生成的代码分组在一起。对于每个识别出的聚类,获取胸段和腰段曲线的Cobb角、最大曲率平面的方向、顶椎的轴向旋转、后凸(T4 - T12)、前凸(L1 - S1)和骨盆入射角。对数据中的分组趋势未作任何假设,聚类数量也未预先定义。
结果
从915次就诊中发现了11个组,其中主曲线的位置、后凸和前凸是三个主要判别因素,各分组之间略有重叠。在11个不同的患者聚类中出现了两个主要组:第一组胸段畸形小而腰段畸形大,另一组胸段畸形大而腰段弯曲小。能够在手术患者(主曲线)中从Lenke 1型到6型曲线识别出11个不同亚组的主要因素,是通过胸段和胸腰段获得的最大曲率平面所确定的顶椎位置。低后凸和高后凸聚类主要由Lenke 1 - 4曲线类型的患者组成,而一个高前凸聚类由Lenke 5和6曲线类型的患者组成。
结论
堆叠自动编码器分析技术有助于简化3D脊柱模型的复杂性质,同时保留通常用从3D重建得出的明确参数测量的内在属性。