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Automated anatomical landmark detection ondistal femur surface using convolutional neural network

机译:卷积神经网络在股骨远端表面的自动解剖界标检测

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Accurate localization of the anatomical landmarks on distal femur bone in the 3D medical images is very important for knee surgery planning and biomechanics analysis. However, the landmark identification process is often conducted manually or by using the inserted auxiliaries, which is time-consuming and lacks of accuracy. In this paper, an automatic localization method is proposed to determine positions of initial geometric landmarks on femur surface in the 3D MR images. Based on the results from the convolutional neural network (CNN) classifiers and shape statistics, we use the narrow-band graph cut optimization to achieve the 3D segmentation of femur surface. Finally, the anatomical landmarks are located on the femur according to the geometric cues of surface mesh. Experiments demonstrate that the proposed method is effective, efficient, and reliable to segment femur and locate the anatomical landmarks.
机译:在3D医学图像中,股骨远端骨骼的解剖标志的准确定位对于膝盖手术计划和生物力学分析非常重要。但是,地标识别过程通常是手动执行的,或者使用插入的辅助工具进行,这既耗时又缺乏准确性。在本文中,提出了一种自动定位方法来确定3D MR图像中股骨表面上初始几何界标的位置。基于卷积神经网络(CNN)分类器和形状统计数据的结果,我们使用窄带图切割优化来实现股骨表面的3D分割。最后,根据地表网格的几何提示,将解剖学界标定位在股骨上。实验表明,该方法对分割股骨和定位解剖标志是有效,高效和可靠的。

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