Accurate segmentation of mandibular canals in lower jaws is important in dental implantology, in which the implant position and dimensions are currently determined manually from 3D CT images by medical experts to avoid damaging the mandibular nerve inside the canal. In this paper, we propose a novel dual-stage deep learning based scheme for automatic detection of mandibular canal. Particularly, we first we enhance the CBCT scans by employing the novel histogram-based dynamic windowing scheme which improves the visibility of mandibular canals. After enhancement, we design 3D deeply supervised attention U-Net architecture for localize the volume of interest (VOI) which contains the mandibular canals (i.e., left and right canals). Finally, we employed the multi-scale input residual U-Net architecture (MS-R-UNet) to accurately segment the mandibular canals. The proposed method has been rigorously evaluated on 500 scans and results demonstrate that our technique out performs the existing state-of-the-art methods in term of segmentation performance as well as robustness.
翻译:在牙科植入学中,植入位置和尺寸目前由医学专家从3DCT图像中手工确定,以避免损害运河内的人脑神经。在本文中,我们提出了一个新型的双阶段深学习计划,用于自动检测人脑运河。特别是,我们首先通过使用新的直方图动态窗口计划,提高人脑运河的可见度,加强CBCT扫描。在加强后,我们设计了3D深度监控U-Net结构,将兴趣量(即,左、右)本地化。最后,我们使用了多级输入剩余U-Net结构(MS-R-UNet)来准确分解人脑运河。在500次扫描中,对拟议方法进行了严格评价,结果显示,我们的技术在分解性性功能期间,以稳健健的方式运用了现有状态方法。