首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Deep learning-based noise reduction algorithm using patch group technique in cadmium zinc telluride fusion imaging system: A Monte Carlo simulation study
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Deep learning-based noise reduction algorithm using patch group technique in cadmium zinc telluride fusion imaging system: A Monte Carlo simulation study

机译:基于深度学习的降噪算法利用豆荚碲化镉融合成像系统中的贴片组技术:蒙特卡罗仿真研究

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摘要

Anatomical and functional fusion imaging systems using cadmium zinc telluride (CZT) are widely used in the field of medical imaging and nuclear-medicine. However, noise is inevitable in the CZT images, and reducing noise is thus crucial for accurate diagnosis of diseases. Among various available techniques for noise reduction in images, deep learning-based noise reduction algorithm using patch group is considered the most efficient method. Therefore, this study is focused on designing deep learning-based noise reduction algorithm using patch group and evaluating it using simulated CZT fusion images with X-ray and gamma ray. We used the Geant4 Application for Tomographic Emission (version 6), which is a Monte Carlo simulation tool, and the normalized noise power spectrum, coefficient of variation (COV), and contrast to noise ratio (CNR) were evaluated. Furthermore, the proposed deep learning-based noise reduction algorithm exhibited better values compared with the conventional noise reduction algorithms. In particular, the COV and CNR values of our algorithm were approximately 8.46 and 1.85 times better than that of the original CZT image. Thus, we successfully demonstrated the feasibility of the proposed deep learning-based noise reduction algorithm using the patch group technique in a CZT fusion imaging system.
机译:使用碲化镉(CZT)的解剖学和功能融合成像系统广泛应用于医学成像和核医学领域。然而,CZT图像中的噪声是不可避免的,因此降低噪声对于准确诊断疾病至关重要。在图像的各种可用技术中,使用补丁组的基于深度学习的降噪算法被认为是最有效的方法。因此,本研究专注于使用贴片组设计基于深度学习的降噪算法,并使用X射线和伽马射线的模拟CZT融合图像评估它。我们使用了GEANT4应用程序进行断层发射(版本6),即蒙特卡罗仿真工具,评价归一化噪声功率谱,变异系数(COV)和与噪声比(CNR)对比度。此外,与传统的降噪算法相比,所提出的深度基于学习的降噪算法表现出更好的值。特别地,我们算法的COV和CNR值大约比原始CZT图像的8.46%和1.85倍。因此,我们通过CZT融合成像系统中的补丁组技术成功地证明了所提出的深度学习的降噪算法的可行性。

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