SPARSITY-DRIVEN PARALLEL IMAGING CONSISTENCY FOR IMPROVED SELF-SUPERVISED MRI RECONSTRUCTION.

ArXiv Pub Date : 2025-05-30
Yaşar Utku Alçalar, Mehmet Akçakaya
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Abstract

Physics-driven deep learning (PD-DL) models have proven to be a powerful approach for improved reconstruction of rapid MRI scans. In order to train these models in scenarios where fully-sampled reference data is unavailable, self-supervised learning has gained prominence. However, its application at high acceleration rates frequently introduces artifacts, compromising image fidelity. To mitigate this shortcoming, we propose a novel way to train PD-DL networks via carefully-designed perturbations. In particular, we enhance the k-space masking idea of conventional self-supervised learning with a novel consistency term that assesses the model's ability to accurately predict the added perturbations in a sparse domain, leading to more reliable and artifact-free reconstructions. The results obtained from the fastMRI knee and brain datasets show that the proposed training strategy effectively reduces aliasing artifacts and mitigates noise amplification at high acceleration rates, outperforming state-of-the-art self-supervised methods both visually and quantitatively.

稀疏驱动并行成像一致性改进自监督MRI重建。
物理驱动的深度学习(PD-DL)模型已被证明是一种改进快速MRI扫描重建的强大方法。为了在无法获得全采样参考数据的情况下训练这些模型,自监督学习已经得到了突出的应用。然而,它的应用在高加速率经常引入伪影,损害图像保真度。为了减轻这一缺点,我们提出了一种通过精心设计的扰动来训练PD-DL网络的新方法。特别是,我们用一个新的一致性项增强了传统自监督学习的k空间掩蔽思想,该一致性项评估了模型在稀疏域中准确预测附加扰动的能力,从而导致更可靠和无伪像的重建。从fastMRI膝关节和大脑数据集获得的结果表明,所提出的训练策略有效地减少了混叠伪影,并在高加速速率下减轻了噪声放大,在视觉和定量上都优于最先进的自监督方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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