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基于保真度嵌入的口腔锥形束 CT 金属伪影降低学习方法

A fidelity-embedded learning for metal artifact reduction in dental CBCT.

机构信息

National Institute for Mathematical Sciences, Daejeon, South Korea.

School of Mathematics and Computing (Computational Science and Engineering), Yonsei University, Seoul, South Korea.

出版信息

Med Phys. 2022 Aug;49(8):5195-5205. doi: 10.1002/mp.15720. Epub 2022 May 26.

Abstract

PURPOSE

Dental cone-beam computed tomography (CBCT) has been increasingly used for dental and maxillofacial imaging. However, the presence of metallic inserts, such as implants, crowns, and dental braces, violates the CT model assumption, which leads to severe metal artifacts in the reconstructed CBCT image, resulting in the degradation of diagnostic performance. In this study, we used deep learning to reduce metal artifacts.

METHODS

The metal artifacts, appearing as streaks and shadows, are nonlocal and highly associated with various factors, including the geometry of metallic inserts, energy-dependent attenuation, and energy spectrum of the incident X-ray beam, making it difficult to learn their complicated structures directly. To provide a step-by-step environment in which deep learning can be trained, we propose an iterative learning approach in which the network at each iteration step learns the correction error caused by the previous network, while enforcing the data fidelity in the projection domain. To generate a realistic paired training dataset, metal-free CBCT scans were collected from patients without metallic inserts, and then simulated metal projection data were added to generate the corresponding metal-corrupted projection data.

RESULTS

The feasibility of the proposed method was investigated in clinical metal-affected CBCT scans, as well as simulated metal-affected CBCT scans. The results show that the proposed method significantly reduces metal artifacts while preserving the morphological structures near metallic objects and outperforms direct image domain learning.

CONCLUSION

The proposed fidelity-embedded learning can effectively reduce metal artifacts in dental CBCT compared with direct image domain learning.

摘要

目的

口腔锥形束 CT(CBCT)越来越多地用于口腔颌面成像。然而,金属植入物(如种植体、牙冠和牙套)的存在违反了 CT 模型假设,导致重建后的 CBCT 图像中出现严重的金属伪影,从而降低了诊断性能。本研究使用深度学习来减少金属伪影。

方法

金属伪影表现为条纹和阴影,是非局部的,与金属植入物的几何形状、与能量相关的衰减和入射 X 射线束的能谱等多种因素高度相关,因此很难直接学习其复杂的结构。为了提供一个深度学习可以逐步训练的环境,我们提出了一种迭代学习方法,在每个迭代步骤中,网络学习前一个网络引起的校正误差,同时在投影域强制执行数据保真度。为了生成逼真的配对训练数据集,从没有金属植入物的患者中收集了无金属 CBCT 扫描,然后添加模拟的金属投影数据以生成相应的金属污染投影数据。

结果

在所研究的临床受金属影响的 CBCT 扫描和模拟受金属影响的 CBCT 扫描中,研究了所提出方法的可行性。结果表明,与直接图像域学习相比,所提出的方法可以显著减少金属伪影,同时保留金属物体附近的形态结构。

结论

与直接图像域学习相比,所提出的保真度嵌入式学习可以有效地减少口腔 CBCT 中的金属伪影。

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