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作者信息

Yie Si Young, Kang Seung Kwan, Hwang Donghwi, Lee Jae Sung

机构信息

Department of Nuclear Medicine, Seoul National University College of Medicine, 103 Daehak-ro, Jongno-gu, Seoul, 03080 South Korea.

Department of Mechanical Engineering, Seoul National University College of Engineering, Seoul, 08826 South Korea.

出版信息

Nucl Med Mol Imaging. 2020 Dec;54(6):299-304. doi: 10.1007/s13139-020-00667-2. Epub 2020 Oct 20.

Abstract

PURPOSE

Early deep-learning-based image denoising techniques mainly focused on a fully supervised model that learns how to generate a clean image from the noisy input (noise2clean: N2C). The aim of this study is to explore the feasibility of the self-supervised methods (noise2noise: N2N and noiser2noise: Nr2N) for PET image denoising based on the measured PET data sets by comparing their performance with the conventional N2C model.

METHODS

For training and evaluating the networks, F-FDG brain PET/CT scan data of 14 patients was retrospectively used (10 for training and 4 for testing). From the 60-min list-mode data, we generated a total of 100 data bins with 10-s duration. We also generated 40-s-long data by adding four non-overlapping 10-s bins and 300-s-long reference data by adding all list-mode data. We employed U-Net that is widely used for various tasks in biomedical imaging to train and test proposed denoising models.

RESULTS

All the N2C, N2N, and Nr2N were effective for improving the noisy inputs. While N2N showed equivalent PSNR to the N2C in all the noise levels, Nr2N yielded higher SSIM than N2N. N2N yielded denoised images similar to reference image with Gaussian filtering regardless of input noise level. Image contrast was better in the N2N results.

CONCLUSION

The self-supervised denoising method will be useful for reducing the PET scan time or radiation dose.

摘要

目的

早期基于深度学习的图像去噪技术主要集中在全监督模型上,该模型学习如何从噪声输入中生成干净图像(噪声到干净:N2C)。本研究的目的是通过将自监督方法(噪声到噪声:N2N和噪声器到噪声:Nr2N)与传统N2C模型的性能进行比较,探索基于测量的PET数据集进行PET图像去噪的可行性。

方法

为了训练和评估网络,回顾性使用了14例患者的F-FDG脑PET/CT扫描数据(10例用于训练,4例用于测试)。从60分钟的列表模式数据中,我们总共生成了100个持续时间为10秒的数据仓。我们还通过添加四个不重叠的10秒数据仓生成了40秒长的数据,并通过添加所有列表模式数据生成了300秒长的参考数据。我们采用了在生物医学成像中广泛用于各种任务的U-Net来训练和测试提出的去噪模型。

结果

所有的N2C、N2N和Nr2N都能有效改善噪声输入。虽然N2N在所有噪声水平下的PSNR与N2C相当,但Nr2N的SSIM高于N2N。无论输入噪声水平如何,N2N生成与高斯滤波参考图像相似的去噪图像。N2N结果中的图像对比度更好。

结论

自监督去噪方法将有助于减少PET扫描时间或辐射剂量。

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Nucl Med Mol Imaging. 2020 Dec;54(6):299-304. doi: 10.1007/s13139-020-00667-2. Epub 2020 Oct 20.

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