NON-CARTESIAN SELF-SUPERVISED PHYSICS-DRIVEN DEEP LEARNING RECONSTRUCTION FOR HIGHLY-ACCELERATED MULTI-ECHO SPIRAL FMRI.

Hongyi Gu, Chi Zhang, Zidan Yu, Christoph Rettenmeier, V Andrew Stenger, Mehmet Akçakaya
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Abstract

Functional MRI (fMRI) is an important tool for non-invasive studies of brain function. Over the past decade, multi-echo fMRI methods that sample multiple echo times has become popular with potential to improve quantification. While these acquisitions are typically performed with Cartesian trajectories, non-Cartesian trajectories, in particular spiral acquisitions, hold promise for denser sampling of echo times. However, such acquisitions require very high acceleration rates for sufficient spatiotemporal resolutions. In this work, we propose to use a physics-driven deep learning (PD-DL) reconstruction to accelerate multi-echo spiral fMRI by 10-fold. We modify a self-supervised learning algorithm for optimized training with non-Cartesian trajectories and use it to train the PD-DL network. Results show that the proposed self-supervised PD-DL reconstruction achieves high spatio-temporal resolution with meaningful BOLD analysis.

非笛卡尔自监督物理驱动的深度学习重建,用于高度加速的多回波螺旋 FMRI。
功能磁共振成像(fMRI)是无创脑功能研究的重要工具。在过去的十年中,采样多次回波时间的多回波fMRI方法已经变得流行,有可能提高量化。虽然这些采集通常是用笛卡尔轨迹进行的,但非笛卡尔轨迹,特别是螺旋采集,有望对回声时间进行更密集的采样。然而,这样的获取需要非常高的加速速率才能获得足够的时空分辨率。在这项工作中,我们建议使用物理驱动的深度学习(PD-DL)重建将多回声螺旋fMRI加速10倍。我们修改了一种自监督学习算法,用于非笛卡尔轨迹的优化训练,并将其用于PD-DL网络的训练。结果表明,本文提出的自监督PD-DL重建方法具有较高的时空分辨率和有意义的BOLD分析。
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