基于模型的深度学习重建关节k-q欠采样高分辨率扩散MRI。

Merry P Mani, Hemant K Aggarwal, Sanjay Ghosh, Mathews Jacob
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引用次数: 11

摘要

我们提出了一种基于模型的深度学习架构,用于高加速扩散磁共振成像(MRI)的重建,从而实现高分辨率成像。本文提出的重建方法在一个步骤中从一个联合k-q欠采样采集中联合恢复所有扩散加权图像。我们提出在基于模型的重建中使用预训练的去噪器作为正则器,用于恢复高度欠采样数据。具体来说,我们设计了基于一般扩散MRI组织微观结构模型的去噪器,用于多室建模。通过使用广泛的生物学上合理的多室微结构模型参数值,我们模拟了跨越整个微结构参数空间的扩散信号。利用自编码器以无监督的方式训练神经网络学习扩散核磁共振信号子空间。我们在基于模型的重建中使用了自编码器,并表明自编码器在恢复q空间信号之前提供了强去噪。我们展示了模拟大脑数据集的重建结果,显示了所提出方法的高加速能力。
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Model-Based Deep Learning for Reconstruction of Joint k-q Under-sampled High Resolution Diffusion MRI.

We propose a model-based deep learning architecture for the reconstruction of highly accelerated diffusion magnetic resonance imaging (MRI) that enables high resolution imaging. The proposed reconstruction jointly recovers all the diffusion weighted images in a single step from a joint k-q under-sampled acquisition in a parallel MRI setting. We propose the novel use of a pre-trained denoiser as a regularizer in a model-based reconstruction for the recovery of highly under-sampled data. Specifically, we designed the denoiser based on a general diffusion MRI tissue microstructure model for multi-compartmental modeling. By using a wide range of biologically plausible parameter values for the multi-compartmental microstructure model, we simulated diffusion signal that spans the entire microstructure parameter space. A neural network was trained in an unsupervised manner using an autoencoder to learn the diffusion MRI signal subspace. We employed the autoencoder in a model-based reconstruction and show that the autoencoder provides a strong denoising prior to recover the q-space signal. We show reconstruction results on a simulated brain dataset that shows high acceleration capabilities of the proposed method.

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