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Toward Automated 3D Spine Reconstruction from Biplanar Radiographs Using CNN for Statistical Spine Model Fitting

机译:使用CNN对双平面X光片进行自动3D脊柱重建以进行统计脊柱模型拟合

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To date, 3D spine reconstruction from biplanar radiographs involves intensive user supervision and semi-automated methods that are time-consuming and not effective in clinical routine. This paper proposes a new, fast, and automated 3D spine reconstruction method through which a realistic statistical shape model of the spine is fitted to images using convolutional neural networks (CNN). The CNNs automatically detect the anatomical landmarks controlling the spine model deformation through a hierarchical and gradual iterative process. The performance assessment used a set of 68 biplanar radiographs, composed of both asymptomatic subjects and adolescent idiopathic scoliosis patients, in order to compare automated reconstructions with ground truths build using multiple experts-supervised reconstructions. The mean (SD) errors of landmark locations (3D Euclidean distances) were 1.6 (1.3) mm, 1.8 (1.3) mm, and 2.3 (1.4) mm for the vertebral body center, endplate centers, and pedicle centers, respectively. The clinical parameters extracted from the automated 3D reconstruction (reconstruction time is less than oneminute) presented an absolutemean error between 2.8 degrees and 4.7 degrees for the main spinal parameters and between 1 degrees and 2.1 degrees for pelvic parameters. Automated and expert's agreement analysis reported that, on average, 89% of automated measurements were inside the expert's confidence intervals. The proposed automated 3D spine reconstruction method provides an important step that should help the dissemination and adoption of 3D measurements in clinical routine.
机译:迄今为止,从双平面X射线照片重建3D脊柱需要大量的用户监督和半自动方法,这些方法既耗时又在临床常规中无效。本文提出了一种新的,快速且自动化的3D脊柱重建方法,通过该方法,可以使用卷积神经网络(CNN)将逼真的脊柱统计形状模型拟合到图像上。 CNN通过分层和逐步的迭代过程自动检测控制脊柱模型变形的解剖标志。绩效评估使用了一组由无症状受试者和青少年特发性脊柱侧凸患者组成的68张双平面X射线照片,以比较自动重建与使用多个专家监督的重建建立的基础事实。椎体中心,终板中心和椎弓根中心的界标位置(3D欧几里得距离)的平均(SD)误差分别为1.6(1.3)mm,1.8(1.3)mm和2.3(1.4)mm。从自动3D重建中提取的临床参数(重建时间少于一分钟)对主要脊柱参数呈现2.8至4.7度的绝对平均误差,对于骨盆参数呈现1至2.1度的绝对平均误差。自动化和专家协议分析报告称,平均而言,有89%的自动化测量值在专家的置信区间内。提出的自动3D脊柱重建方法提供了重要的步骤,应该有助于在临床常规中传播和采用3D测量。

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