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Automatic pedicles detection using convolutional neural network in a 3D spine reconstruction from biplanar radiographs

机译:双脊柱重建中卷积神经网络的自动鞋类检测双脊柱射线照片

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The 3D analysis of the spine deformities (scoliosis) has a high potential in its clinical diagnosis and treatment. In a biplanar radiographs context, a 3D analysis requires a 3D reconstruction from a pair of 2D X-rays. Whether being fully-/semi-automatic or manual, this task is complex because of the noise, the structure superimposition and partial information due to a limited projections number. Being involved in the axial vertebra rotation (AVR), which is a fundamental clinical parameter for scoliosis diagnosis, pedicles are important landmarks for the 3D spine modeling and pre-operative planning. In this paper, we focus on the extension of a fully-automatic 3D spine reconstruction method where the Vertebral Body Centers (VBCs) are automatically detected using Convolutional Neural Network (CNN) and then regularized using a Statistical Shape Model (SSM) framework. In this global process, pedicles are inferred statistically during the SSM regularization. Our contribution is to add a CNN-based regression model for pedicle detection allowing a better pedicle localization and improving the clinical parameters estimation (e.g. AVR, Cobb angle). Having 476 datasets including healthy patients and Adolescent Idiopathic Scoliosis (AIS) cases with different scoliosis grades (Cobb angles up to 116°), we used 380 for training, 48 for testing and 48 for validation. Adding the local CNN-based pedicle detection decreases the mean absolute error of the AVR by 10%. The 3D mean Euclidian distance error between detected pedicles and ground truth decreases by 17% and the maximum error by 19%. Moreover, a general improvement is observed in the 3D spine reconstruction and reflected in lower errors on the Cobb angle estimation.
机译:脊柱畸形(脊柱侧凸)的3D分析在其临床诊断和治疗中具有很高的潜力。在Biplanar Xcoorpropls上下文中,3D分析需要来自一对2D X射线的3D重建。无论是完全/半自动还是手动,由于噪声,这项任务都很复杂,结构叠加和由于有限的投影编号而偏移。参与轴向椎骨旋转(AVR),这是脊柱侧凸诊断的基本临床参数,佩戴物是3D脊柱建模和术前规划的重要地标。在本文中,我们专注于使用卷积神经网络(CNN)自动检测椎体中心(VBC)的全自动3D脊柱重建方法的延伸,然后使用统计形状模型(SSM)框架进行正规化。在这一全局过程中,在SSM正规化期间统计推断佩特利。我们的贡献是为椎弓根检测添加基于CNN的回归模型,允许更好的椎弓根定位和改善临床参数估计(例如AVR,COBB角度)。拥有476个数据集,包括健康患者和青少年特发性脊柱侧凸(AIS)患者,具有不同的脊柱侧凸等级(Cobb角度高达116°),我们使用380用于训练,48用于测试和48次验证。添加本地CNN的椎弓根检测将AVR的平均绝对误差减少10%。检测到的椎弓根和地面真理之间的3D平均欧几里德距离误差减少了17%,最大误差为19%。此外,在3D脊柱重建中观察到一般改进,并反映在COBB角估计上的较低误差中。

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