论文标题

低剂量牙齿CBCT的两阶段方法,用于减少伪影的梁硬化

A two-stage approach for beam hardening artifact reduction in low-dose dental CBCT

论文作者

Bayaraa, T., Hyun, C. M., Jang, T. J., Lee, S. M., Seo, J. K.

论文摘要

本文提出了一种两阶段的方法,用于对牙锥计算机断层扫描(CBCT)的伪影校正。所提出的伪影减少方法旨在提高颌面成像的质量,其中不需要软组织细节。与标准CT相比,牙齿CBCT的额外难度来自偏移检测器,FOV截断和由于低X射线照射而引起的较低信噪比。为了解决这些问题,提出的方法主要根据FOV截断和偏移探测器来考虑情况,以增强数据一致性的方向进行正弦图调整。该辛克图校正算法显着减少了由高密度材料(如牙齿,骨骼和金属植入物)引起的束硬化伪像,同时倾向于扩大特殊类型的噪声。为了抑制这种噪声,使用了深层卷积神经网络,其中使用了通过曲《 Contraction校正调整的CT图像》作为神经网络的输入。许多实验验证了所提出的方法成功地减少了光束硬化的伪像,尤其具有改善与上颌面CBCT成像相关的牙齿图像质量的优势。

This paper presents a two-stage method for beam hardening artifact correction of dental cone beam computerized tomography (CBCT). The proposed artifact reduction method is designed to improve the quality of maxillofacial imaging, where soft tissue details are not required. Compared to standard CT, the additional difficulty of dental CBCT comes from the problems caused by offset detector, FOV truncation, and low signal-to-noise ratio due to low X-ray irradiation. To address these problems, the proposed method primarily performs a sinogram adjustment in the direction of enhancing data consistency, considering the situation according to the FOV truncation and offset detector. This sinogram correction algorithm significantly reduces beam hardening artifacts caused by high-density materials such as teeth, bones, and metal implants, while tending to amplify special types of noise. To suppress such noise, a deep convolutional neural network is complementarily used, where CT images adjusted by the sinogram correction are used as the input of the neural network. Numerous experiments validate that the proposed method successfully reduces beam hardening artifacts and, in particular, has the advantage of improving the image quality of teeth, associated with maxillofacial CBCT imaging.

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