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Replace2Self:基于体素替换和图像混合的自监督去噪用于扩散磁共振成像

Replace2Self: Self-Supervised Denoising Based on Voxel Replacing and Image Mixing for Diffusion MRI.

作者信息

Wu Linhai, Wang Lihui, Deng Zeyu, Zhu Yuemin, Wei Hongjiang

出版信息

IEEE Trans Med Imaging. 2025 Jul;44(7):2878-2891. doi: 10.1109/TMI.2025.3552611.

DOI:10.1109/TMI.2025.3552611
PMID:40100650
Abstract

Low signal to noise ratio (SNR) remains one of the limitations of diffusion weighted (DW) imaging. How to suppress the influence of noise on the subsequent analysis about the tissue microstructure is still challenging. This work proposed a novel self-supervised learning model, Replace2Self, to effectively reduce spatial correlated noise in DW images. Specifically, a voxel replacement strategy based on similar block matching in Q-space was proposed to destroy the correlations of noise in DW image along one diffusion gradient direction. To alleviate the signal gap caused by the voxel replacement, an image mixing strategy based on complementary mask was designed to generate two different noisy DW images. After that, these two noisy DW images were taken as input, and the non-correlated noisy DW image after voxel replacement was taken as learning target, a denoising network was trained for denoising. To promote the denoising performance, a complementary mask mixing consistency loss and an inverse replacement regularization loss were also proposed. Through the comparisons against several existing DW image denoising methods on extensive simulation data with different noise distributions, noise levels and b-values, as well as the acquisition datasets and the ablation experiments, we verified the effectiveness of the proposed method. Regardless of the noise distribution and noise level, the proposed method achieved the highest PSNR, which was at least 1.9% higher than the suboptimal method when the noise level reaches 10%. Furthermore, our method has superior generalization ability due to the use of the proposed strategies.

摘要

低信噪比(SNR)仍然是扩散加权(DW)成像的局限性之一。如何抑制噪声对后续组织微观结构分析的影响仍然具有挑战性。这项工作提出了一种新颖的自监督学习模型Replace2Self,以有效降低DW图像中的空间相关噪声。具体而言,提出了一种基于Q空间中相似块匹配的体素替换策略,以破坏DW图像中沿一个扩散梯度方向的噪声相关性。为了减轻体素替换引起的信号间隙,设计了一种基于互补掩码的图像混合策略,以生成两个不同的有噪声DW图像。之后,将这两个有噪声DW图像作为输入,并将体素替换后的不相关有噪声DW图像作为学习目标,训练一个去噪网络进行去噪。为了提高去噪性能,还提出了互补掩码混合一致性损失和逆替换正则化损失。通过在具有不同噪声分布、噪声水平和b值的大量模拟数据上与几种现有的DW图像去噪方法进行比较,以及在采集数据集和消融实验中的比较,我们验证了所提方法的有效性。无论噪声分布和噪声水平如何,所提方法都实现了最高的峰值信噪比(PSNR),当噪声水平达到10%时,比次优方法至少高1.9%。此外,由于使用了所提策略,我们的方法具有卓越的泛化能力。

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