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Automatic Lumbar Vertebrae Detection Based on Feature Fusion Deep Learning for Partial Occluded C-arm X-ray Images

机译:基于特征融合深度学习的部分闭塞C臂X射线图像自动腰椎检测

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Automatic and accurate lumbar vertebrae detection is an essential step of image-guided minimally invasive spine surgery (IG-MISS). However, traditional methods still require human intervention due to the similarity of vertebrae, abnormal pathological conditions and uncertain imaging angle. In this paper, we present a novel convolutional neural network (CNN) model to automatically detect lumbar vertebrae for C-arm X-ray images. Training data is augmented by DRR and automatic segmentation of ROI is able to reduce the computational complexity. Furthermore, a feature fusion deep learning (FFDL) model is introduced to combine two types of features of lumbar vertebrae X-ray images, which uses sobel kernel and Gabor kernel to obtain the contour and texture of lumbar vertebrae, respectively. Comprehensive qualitative and quantitative experiments demonstrate that our proposed model performs more accurate in abnormal cases with pathologies and surgical implants in multi-angle views.
机译:自动和准确的腰椎检测是图像引导的微创脊柱外科手术(IG-MISS)的重要步骤。然而,由于椎骨的相似性,异常的病理状况和不确定的成像角度,传统方法仍然需要人工干预。在本文中,我们提出了一种新颖的卷积神经网络(CNN)模型来自动检测C型臂X射线图像的腰椎。 DRR增强了训练数据,ROI的自动分段能够降低计算复杂性。此外,引入了特征融合深度学习(FFDL)模型,以结合腰椎X射线图像的两种类型的特征,分别使用sobel核和Gabor核获得腰椎的轮廓和纹理。全面的定性和定量实验表明,我们提出的模型在异常情况下(在多角度视图中具有病理学和外科植入物的情况下)表现更为准确。

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