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基于多智能体强化学习和数据变换的数字断层合成去噪模型。

A denoising model based on multi-agent reinforcement learning with data transformation for digital tomosynthesis.

机构信息

Department of Medical Science, Konyang University, Daejoen, Republic of Korea.

Department of Radiological Science, Konyang University, Daejoen, Republic of Korea.

出版信息

Phys Med Biol. 2023 Jun 12;68(12). doi: 10.1088/1361-6560/acd615.

Abstract

. Denoising models based on the supervised learning have been proposed for medical imaging. However, its clinical availability in digital tomosynthesis (DT) imaging is limited due to the necessity of a large amount of training data for providing acceptable image quality and the difficulty in minimizing a loss. Reinforcement learning (RL) can provide the optimal pollicy, which maximizes a reward, with a small amount of training data for implementing a task. In this study, we presented a denoising model based on the multi-agent RL for DT imaging in order to improve the performance of the machine learning-based denoising model.. The proposed multi-agent RL network consisted of shared sub-network, value sub-network with a reward map convolution (RMC) technique and policy sub-network with a convolutional gated recurrent unit (convGRU). Each sub-network was designed for implementing feature extraction, reward calculation and action execution, respectively. The agents of the proposed network were assigned to each image pixel. The wavelet and Anscombe transformations were applied to DT images for delivering precise noise features during network training. The network training was implemented with the DT images obtained from the three-dimensional digital chest phantoms, which were constructed by using clinical CT images. The performance of the proposed denoising model was evaluated in terms of signal-to-noise ratio (SNR), structural similarity (SSIM) and peak signal-to-noise ratio (PSNR).. Comparing the supervised learning, the proposed denoising model improved the SNRs of the output DT images by 20.64% while maintaining the similar SSIMs and PSNRs. In addition, the SNRs of the output DT images with the wavelet and Anscombe transformations were 25.88 and 42.95% higher than that for the supervised learning, respectively.. The denoising model based on the multi-agent RL can provide high-quality DT images, and the proposed method enables the performance improvement of machine learning-based denoising models.

摘要

. 基于监督学习的去噪模型已被提出用于医学成像。然而,由于需要大量的训练数据来提供可接受的图像质量,并且难以最小化损失,因此其在数字断层合成(DT)成像中的临床可用性受到限制。强化学习(RL)可以提供最佳策略,该策略使用少量训练数据来实现任务,从而最大化奖励。在这项研究中,我们提出了一种基于多代理 RL 的 DT 成像去噪模型,以提高基于机器学习的去噪模型的性能。所提出的多代理 RL 网络由共享子网络、带有奖励图卷积(RMC)技术的价值子网络和带有卷积门控循环单元(convGRU)的策略子网络组成。每个子网络分别用于实现特征提取、奖励计算和动作执行。网络中的代理被分配给每个图像像素。对 DT 图像应用小波和安斯库姆变换,以便在网络训练过程中提供精确的噪声特征。使用从三维数字胸部体模获得的 DT 图像来实现网络训练,该体模是使用临床 CT 图像构建的。该去噪模型的性能是根据信噪比(SNR)、结构相似性(SSIM)和峰值信噪比(PSNR)来评估的。与监督学习相比,所提出的去噪模型将输出 DT 图像的 SNR 提高了 20.64%,同时保持了相似的 SSIM 和 PSNR。此外,使用小波和安斯库姆变换的输出 DT 图像的 SNR 分别比监督学习高 25.88%和 42.95%。基于多代理 RL 的去噪模型可以提供高质量的 DT 图像,并且所提出的方法可以提高基于机器学习的去噪模型的性能。

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