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Fast Dynamic Perfusion and Angiography Reconstruction Using an End-to-End 3D Convolutional Neural Network

机译:使用端到端3D卷积神经网络快速动态灌注和血管造影重建

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Hadamard time-encoded pseudo-continuous arterial spin labeling (te-pCASL) is a signal-to-noise ratio (SNR)-efficient MRI technique for acquiring dynamic pCASL signals that encodes the temporal information into the labeling according to a Hadamard matrix. In the decoding step, the contribution of each sub-bolus can be isolated resulting in dynamic perfusion scans. When acquiring te-ASL both with and without flow-crushing, the ASL-signal in the arteries can be isolated resulting in 4D-angiographic information. However, obtaining multi-timepoint perfusion and angiographic data requires two acquisitions. In this study, we propose a 3D Dense-Unet convolutional neural network with a multi-level loss function for reconstructing multi-timepoint perfusion and angiographic information from an interleaved 50%-sampled crushed and 50%-sampled non-crushed data, thereby negating the additional scan time. We present a framework to generate dynamic pCASL training and validation data, based on models of the intravascular and extravascular te-pCASL signals. The proposed network achieved SSIM values of 97.3 ± 1.1 and 96.2 ± 11.1 respectively for 4D perfusion and angiographic data reconstruction for 313 test data-sets.
机译:阿达玛时间编码的伪连续动脉自旋标记(TE-pCASL)是信噪比(SNR)MRI效率高达用于获取编码的时间信息为根据一个Hadamard矩阵标记动态pCASL信号的技术。在解码步骤中,每个子推注的贡献可被分离,导致动态灌注扫描。当在没有流粉的情况下获取TE-ASL时,可以隔离动脉中的ASL信号,从而产生4D血管造影信息。但是,获得多次时间点灌注和血管造影数据需要两个采集。在这项研究中,我们提出了一种三维密集-UNET卷积神经网络用于从重构的多时间点的灌注和血管造影的信息的多电平的损失函数交错50%-sampled压碎和50%-sampled非压扁数据,从而消除额外的扫描时间。我们提出了一个框架来生成动态pCASL训练和验证数据的基础上,血管内和血管外TE-pCASL信号的模型。所提出的网络实现的97.3±1.1和96.2±11.1 4D灌注和血管造影数据重建为313的测试数据集SSIM值。

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