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Self-Calibrating Nonlinear Reconstruction Algorithms for Variable Density Sampling and Parallel Reception MRI

机译:可变密度采样和平行接收MRI自校准非线性重建算法

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Compressed Sensing has allowed a significant reduction of acquisition times in MRI, especially in the high resolution (e.g., 400 μm) context. However, in this setting CS must be combined with parallel reception as multichannel coil acquisitions maintain high input signal-to-noise ratio (SNR). To get rid of usual parallel imaging limitations (output SNR loss), non-Cartesian trajectories provide a gain in sampling efficiency in the CS context. In this paper, we propose a self-calibrating MRI reconstruction framework that handles variable density sampling. Low resolution sensitivity maps are estimated from the low frequency k-space content using an original and fast method while MR images are reconstructed using a nonlinear iterative algorithm, which promotes sparsity in the wavelet domain. As regards the optimization task, we compare three first-order proximal gradient methods: Forward Backward (FB), Fast Iterative Soft Thresolding Algorithm (FISTA) and Proximal Optimized Gradient Method (POGM) and evaluate their respective convergence speed. Comparison with state-of-the-art (i.e., ?l-ESPIRiT) suggests that our self-calibrating POGM-based algorithm outperforms current approaches both in terms of image quality and computing time on several acquired data collected at 7 Tesla and we will focus more specifically on prospective non-Cartesian 8-fold accelerated in vivo Human brain data.
机译:压缩传感已经允许在MRI一个显著减少采集时间,尤其是在高分辨率(例如,400微米)上下文。然而,在此设置CS必须用并行接收多声道线圈收购保持高输入信噪比(SNR)相结合。摆脱通常平行成像的限制(输出SNR损失),非笛卡尔轨迹提供在CS上下文采样效率的增益。在本文中,我们提出了一个自校准MRI重建框架,手柄变密度采样。低分辨率灵敏度映射从使用原始和快速的方法,同时的MR图像是使用非线性迭代算法,这促进了在小波域中重构稀疏度的低频k空间内容估计。至于优化任务,我们比较三个一阶近端梯度法:向前向后(FB),快速迭代软Thresolding算法(FISTA)和近端优化梯度法(POGM)和评估各自的收敛速度。比较与国家的最先进的(即,? l -ESPIRiT)表明,我们的自校准基于POGM-算法优于当前在在几个获取的数据在7特斯拉收集的图像质量和计算时间方面接近两者,我们会更具体地集中于预期的非笛卡尔8倍加速体内人脑数据。

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