Efficient PCA denoising of spatially correlated redundant MRI data

R. Henriques, A. Ianuş, Lisa Novello, Jorge Jovicich, S. Jespersen, N. Shemesh
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Abstract

Abstract Marčenko-Pastur PCA (MPPCA) denoising is emerging as an effective means for noise suppression in MR imaging (MRI) acquisitions with redundant dimensions. However, MPPCA performance can be severely compromised by spatially correlated noise—an issue typically affecting most modern MRI acquisitions—almost to the point of returning the original images with little or no noise removal. In this study, we explore different threshold criteria for principal component analysis (PCA) component classification that enable efficient and robust denoising of MRI data even when noise exhibits high spatial correlations, especially in cases where data are acquired with Partial Fourier and when only magnitude data are available. We show that efficient denoising can be achieved by incorporating a-priori information about the noise variance into PCA denoising thresholding. Based on this, two denoising strategies developed here are: 1) General PCA (GPCA) denoising that uses a-priori noise variance estimates without assuming specific noise distributions; and 2) Threshold PCA (TPCA) denoising which removes noise components with a threshold computed from a-priori estimated noise variance to determine the upper bound of the Marčenko-Pastur (MP) distribution. These strategies were tested in simulations with known ground truth and applied for denoising diffusion MRI data acquired using pre-clinical (16.4T) and clinical (3T) MRI scanners. In synthetic phantoms, MPPCA denoising failed to denoise spatially correlated data, while GPCA and TPCA better classified components as dominated by signal/noise. In cases where the noise variance was not accurately estimated (as can be the case in many practical scenarios), TPCA still provides excellent denoising performance. Our experiments in pre-clinical diffusion data with highly corrupted by spatial correlated noise revealed that both GPCA and TPCA robustly denoised the data while MPPCA denoising failed. In in vivo diffusion MRI data acquired on a clinical scanner in healthy subjects, MPPCA weakly removed noised, while TPCA was found to have the best performance, likely due to misestimations of the noise variance. Thus, our work shows that these novel denoising approaches can strongly benefit future pre-clinical and clinical MRI applications.
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空间相关冗余磁共振成像数据的高效 PCA 去噪
摘要 在具有冗余维度的磁共振成像(MRI)采集中,Marčenko-Pastur PCA(MPPCA)去噪正在成为一种有效的噪声抑制手段。然而,MPPCA 的性能可能会受到空间相关噪声的严重影响--这个问题通常会影响到大多数现代 MRI 采集--几乎到了几乎不去除或根本不去除噪声就能返回原始图像的地步。在这项研究中,我们探索了主成分分析(PCA)成分分类的不同阈值标准,即使在噪声表现出高度空间相关性的情况下,也能对磁共振成像数据进行高效、稳健的去噪,尤其是在使用部分傅立叶获取数据以及只有幅值数据可用的情况下。我们的研究表明,通过将噪声方差的先验信息纳入 PCA 去噪阈值,可以实现高效的去噪。在此基础上,我们开发了两种去噪策略:1) 通用 PCA(GPCA)去噪,使用先验噪声方差估计值,而不假定特定的噪声分布;以及 2) 阈值 PCA(TPCA)去噪,使用先验噪声方差估计值计算出的阈值去除噪声成分,以确定 Marčenko-Pastur (MP) 分布的上限。这些策略在已知地面实况的模拟中进行了测试,并应用于使用临床前(16.4T)和临床(3T)磁共振成像扫描仪获取的扩散磁共振成像数据的去噪。在合成模型中,MPPCA 去噪无法对空间相关数据进行去噪,而 GPCA 和 TPCA 则能更好地对信号/噪声占主导地位的成分进行分类。在噪声方差估计不准确的情况下(很多实际情况都是如此),TPCA 仍能提供出色的去噪性能。我们在高度受空间相关噪声干扰的临床前弥散数据中进行的实验表明,GPCA 和 TPCA 都能对数据进行稳健的去噪,而 MPPCA 去噪则失败了。在临床扫描仪上获取的健康受试者体内弥散 MRI 数据中,MPPCA 的去噪效果较弱,而 TPCA 的去噪效果最好,这可能是由于对噪声方差的错误估计造成的。因此,我们的工作表明,这些新颖的去噪方法对未来的临床前和临床 MRI 应用大有裨益。
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