Hangfan Liu, Bo Li, Yiran Li, Rebecca Welsh, Ze Wang
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引用次数: 0
Abstract
Arterial spin labeling (ASL) perfusion MRI is the only non-invasive imaging technique for quantifying regional cerebral blood flow (CBF), which is a fundamental physiological variable. ASL MRI has a relatively low signal-to-noise-ratio (SNR). In this study, we proposed a novel ASL denoising method by simultaneously exploiting the inter- and intra-receive channel data correlations. MRI including ASL MRI data have been routinely acquired with multi-channel coils but current denoising methods are designed for denoising the coil-combined data. Indeed, the concurrently acquired multi-channel images differ only by coil sensitivity weighting and random noise, resulting in a strong low-rank structure of the stacked multi-channel data matrix. In our method, this matrix was formed by stacking the vectorized slices from different channels. Matrix rank was then approximately measured through the logarithm-determinant of the covariance matrix. Notably, our filtering technique is applied directly to complex data, avoiding the need to separate magnitude and phase or divide real and imaginary data, thereby ensuring minimal information loss. The degree of low-rank regularization is controlled based on the estimated noise level, striking a balance between noise removal and texture preservation. A noteworthy advantage of our framework is its freedom from parameter tuning, distinguishing it from most existing methods. Experimental results on real-world imaging data demonstrate the effectiveness of our proposed approach in significantly improving ASL perfusion quality. By effectively mitigating noise while preserving important textural information, our method showcases its potential for enhancing the utility and accuracy of ASL perfusion MRI, paving the way for improved neuroimaging studies and clinical diagnoses.
动脉自旋标记(ASL)灌注磁共振成像是量化区域脑血流(CBF)的唯一无创成像技术,而CBF是一个基本的生理变量。ASL MRI 的信噪比(SNR)相对较低。在这项研究中,我们提出了一种新型 ASL 去噪方法,同时利用接收通道间和接收通道内的数据相关性。磁共振成像(包括 ASL MRI)数据已常规采用多通道线圈采集,但目前的去噪方法都是针对线圈组合数据去噪设计的。事实上,同时获取的多通道图像仅因线圈灵敏度加权和随机噪声而不同,从而导致堆叠的多通道数据矩阵具有很强的低秩结构。在我们的方法中,该矩阵是通过堆叠不同通道的矢量化切片形成的。然后,通过协方差矩阵的对数决定式来近似测量矩阵秩。值得注意的是,我们的滤波技术直接应用于复数数据,无需分离幅度和相位或划分实数和虚数数据,从而确保信息损失最小。低秩正则化的程度是根据估计的噪声水平来控制的,从而在去除噪声和保持纹理之间取得平衡。我们的框架有一个值得注意的优点,那就是无需调整参数,这使它有别于大多数现有方法。在真实世界成像数据上的实验结果表明,我们提出的方法能有效改善 ASL 灌注质量。通过在保留重要纹理信息的同时有效降低噪声,我们的方法展示了其在提高 ASL 灌注 MRI 的实用性和准确性方面的潜力,为改进神经成像研究和临床诊断铺平了道路。