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DeepASL: Kinetic Model Incorporated Loss for Denoising Arterial Spin Labeled MRI via Deep Residual Learning

机译:DeepASL:通过深度残差学习对动脉自旋标记MRI去噪的动力学模型合并损失

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Arterial spin labeling (ASL) allows to quantify the cerebral blood flow (CBF) by magnetic labeling of the arterial blood water. ASL is increasingly used in clinical studies due to its noninvasiveness, repeatability and benefits in quantification. However, ASL suffers from an inherently low-signal-to-noise ratio (SNR) requiring repeated measurements of control/spin-labeled (C/L) pairs to achieve a reasonable image quality, which in return increases motion sensitivity. This leads to clinically prolonged scanning times increasing the risk of motion artifacts. Thus, there is an immense need of advanced imaging and processing techniques in ASL. In this paper, we propose a novel deep learning based approach to improve the perfusion-weighted image quality obtained from a subset of all available pairwise C/L subtractions. Specifically, we train a deep fully convolutional network (FCN) to learn a mapping from noisy perfusion-weighted image and its subtraction (residual) from the clean image. Additionally, we incorporate the CBF estimation model in the loss function during training, which enables the network to produce high quality images while simultaneously enforcing the CBF estimates to be as close as reference CBF values. Extensive experiments on synthetic and clinical ASL datasets demonstrate the effectiveness of our method in terms of improved ASL image quality, accurate CBF parameter estimation and considerably small computation time during testing.
机译:动脉自旋标记(ASL)可以通过对动脉血水进行磁性标记来量化脑血流量(CBF)。由于ASL的无创性,可重复性和量化优势,在临床研究中越来越多地使用它。但是,ASL具有固有的低信噪比(SNR),需要对控制/自旋标记(C / L)对进行重复测量才能获得合理的图像质量,从而提高了运动灵敏度。这导致临床上延长的扫描时间增加了运动伪影的风险。因此,在ASL中非常需要先进的成像和处理技术。在本文中,我们提出了一种新颖的基于深度学习的方法,以改善从所有可用成对C / L减法子集中获得的灌注加权图像质量。具体来说,我们训练了一个深度全卷积网络(FCN),以从嘈杂的灌注加权图像中学习映射,并从干净的图像中减去(残差)。此外,我们在训练过程中将CBF估计模型纳入损失函数中,从而使网络能够生成高质量图像,同时将CBF估计值强制与参考CBF值保持接近。在合成和临床ASL数据集上进行的大量实验证明了我们的方法在改善ASL图像质量,准确的CBF参数估计和测试过程中的计算时间方面均有效。

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