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基于斯坦因无偏风险估计器的用于基于相位的磁共振电阻抗断层成像的深度网络正则化

Deep Network Regularization for Phase-Based Magnetic Resonance Electrical Properties Tomography With Stein's Unbiased Risk Estimator.

作者信息

Cui Chuanjiang, Jung Kyu-Jin, Al-Masni Mohammed A, Kim Jun-Hyeong, Kim Soo-Yeon, Park Mina, Huang Shao Ying, Chun Se Young, Kim Dong-Hyun

出版信息

IEEE Trans Biomed Eng. 2025 Jan;72(1):43-55. doi: 10.1109/TBME.2024.3438270. Epub 2025 Jan 15.

DOI:10.1109/TBME.2024.3438270
PMID:39102318
Abstract

Magnetic resonance imaging (MRI) can estimate tissue conductivity values using phase-based magnetic resonance electrical properties tomography (MR-EPT). However, this method is prone to noise amplification due to the Laplacian operator's sensitivity. To address this issue, we propose a novel unsupervised preprocessing denoiser for MRI transceive phase images. Our approach draws inspiration from the deep image prior (DIP) technique, utilizing the random initialization of a convolutional neural network (CNN) to enforce implicit regularization. Additionally, we incorporate Stein.s unbiased risk estimator (SURE) to optimize the network, which serves as an unbiased estimator of mean square error, thereby eliminating the need for labeled data. This modification mitigates the overfitting commonly associated with the DIP approach, enabling a fully unsupervised framework. Furthermore, we process real and imaginary images instead of phase images, aligning more closely with the theoretical basis of the risk estimator. Our generative model does not require pre-training or extensive training datasets, maintaining adaptability across different resolutions and signal-to-noise ratio levels. In our evaluations, the proposed method significantly reduced residual noise in phase maps, improving both quantitative and qualitative outcomes in phantom and simulated brain data. It also outperformed existing denoising techniques by reducing noise amplification and boundary errors. Applied to data from healthy volunteers and patients, our method yielded conductivity maps with reduced errors and values consistent with established literature. To our knowledge, this is the first blind, fully unsupervised approach capable of implementing a 2D phase-based MR-EPT reconstruction algorithm.

摘要

磁共振成像(MRI)可以使用基于相位的磁共振电特性断层扫描(MR-EPT)来估计组织电导率值。然而,由于拉普拉斯算子的敏感性,这种方法容易出现噪声放大。为了解决这个问题,我们提出了一种用于MRI收发相位图像的新型无监督预处理去噪器。我们的方法借鉴了深度图像先验(DIP)技术,利用卷积神经网络(CNN)的随机初始化来强制进行隐式正则化。此外,我们纳入了斯坦因无偏风险估计器(SURE)来优化网络,它作为均方误差的无偏估计器,从而无需标记数据。这种修改减轻了通常与DIP方法相关的过拟合问题,实现了一个完全无监督的框架。此外,我们处理实部和虚部图像而不是相位图像,使其更符合风险估计器的理论基础。我们的生成模型不需要预训练或大量的训练数据集,在不同分辨率和信噪比水平下都保持适应性。在我们的评估中,所提出的方法显著降低了相位图中的残余噪声,改善了体模和模拟脑数据中的定量和定性结果。它还通过减少噪声放大和边界误差优于现有的去噪技术。应用于健康志愿者和患者的数据时,我们的方法生成的电导率图误差减小,值与现有文献一致。据我们所知,这是第一种能够实现基于二维相位的MR-EPT重建算法的盲法、完全无监督方法。

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Deep Network Regularization for Phase-Based Magnetic Resonance Electrical Properties Tomography With Stein's Unbiased Risk Estimator.基于斯坦因无偏风险估计器的用于基于相位的磁共振电阻抗断层成像的深度网络正则化
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