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全机构的 3D 脊柱曲率和整体对准参数的形态分析。

Institution-wide shape analysis of 3D spinal curvature and global alignment parameters.

机构信息

Department of Radiology and Biomedical Imaging, University of California, San Francisco, San Francisco, California, USA.

Berkeley Joint Graduate Group in Bioengineering, University of California, San Francisco & University of California, San Francisco, California, USA.

出版信息

J Orthop Res. 2022 Aug;40(8):1896-1908. doi: 10.1002/jor.25213. Epub 2021 Nov 29.

Abstract

The spine is an articulated, 3D structure with 6 degrees of translational and rotational freedom. Clinical studies have shown spinal deformities are associated with pain and functional disability in both adult and pediatric populations. Clinical decision making relies on accurate characterization of the spinal deformity and monitoring of its progression over time. However, Cobb angle measurements are time-consuming, are limited by interobserver variability, and represent a simplified 2D view of a 3D structure. Instead, spine deformities can be described by 3D shape parameters, addressing the limitations of current measurement methods. To this end, we develop and validate a deep learning algorithm to automatically extract the vertebral midline (from the upper endplate of S1 to the lower endplate of C7) for frontal and lateral radiographs. Our results demonstrate robust performance across datasets and patient populations. Approximations of 3D spines are reconstructed from the unit normalized midline curves of 20,118 pairs of full spine radiographs belonging to 15,378 patients acquired at our institution between 2008 and 2020. The resulting 3D dataset is used to describe global imbalance parameters in the patient population and to build a statistical shape model to describe global spine shape variations in preoperative deformity patients via eight interpretable shape parameters. The developed method can identify patient subgroups with similar shape characteristics without relying on an existing shape classification system.

摘要

脊柱是一个具有 6 个自由度的关节 3D 结构。临床研究表明,脊柱畸形与成人和儿童人群的疼痛和功能障碍有关。临床决策依赖于对脊柱畸形的准确描述及其随时间的进展的监测。然而,Cobb 角测量既耗时,又受到观察者间变异性的限制,并且仅代表 3D 结构的简化 2D 视图。相反,可以使用 3D 形状参数来描述脊柱畸形,从而解决当前测量方法的局限性。为此,我们开发并验证了一种深度学习算法,用于自动提取正位和侧位 X 光片的脊柱中线(从 S1 的上终板到 C7 的下终板)。我们的结果在多个数据集和患者群体中均表现出稳健的性能。从我们机构在 2008 年至 2020 年间获取的 20,118 对全脊柱 X 光片中的 15,378 名患者的单位归一化中线曲线重建了近似的 3D 脊柱。所得的 3D 数据集用于描述患者群体中的全局不平衡参数,并通过八个可解释的形状参数构建统计形状模型,以描述术前畸形患者的全局脊柱形状变化。该方法可以在不依赖现有形状分类系统的情况下识别具有相似形状特征的患者亚组。

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