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Improved Parallel Magnertic Resonance Imaging reconstruction with Complex Proximal Support Vector Regression

机译:用复杂的近端支持向量回归改进平行磁共振成像重建

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Generalized Auto-calibrating Partially Parallel Acquisitions (GRAPPA) has been widely used to reduce imaging time in Magnetic Resonance Imaging. GRAPPA synthesizes missing data by using a linear interpolation of neighboring measured data over all coils, thus accuracy of the interpolation weights fitting to the auto-calibrating signal data is crucial for the GRAPPA reconstruction. Conventional GRAPPA algorithms fitting the interpolation weights with a least squares solution are sensitive to interpolation window size. MKGRAPPA that estimates the interpolation weights with support vector machine reduces the sensitivity of the k-space reconstruction to interpolation window size, whereas it is computationally expensive. In this study, a robust GRAPPA reconstruction method is proposed that applies an extended proximal support vector regression (PSVR) to fit the interpolation weights with wavelet kernel mapping. Experimental results on in vivo MRI data show that the proposed PSVR-GRAPPA method visually improves overall quality compared to conventional GRAPPA methods, while it has faster reconstruction speed compared to MKGRAPPA.
机译:广义自动校准部分平行的采集(GRAPPA)已被广泛用于减少磁共振成像中的成像时间。 Grappa通过在所有线圈上使用相邻测量数据的线性插值来合成缺失的数据,因此插值权重配合到自动校准信号数据的精度对于Grappa重建至关重要。旨在具有最小二乘溶液的插值权重的传统格拉普算法对插值窗口大小敏感。 MKGRAPPA估计带支持向量机的插值权重降低了K空间重建对插值窗口大小的灵敏度,而计算非常昂贵。在该研究中,提出了一种稳健的格拉巴卡重建方法,其应用扩展的近端支持向量回归(PSVR)来符合小波核映射的插值权重。体内MRI数据的实验结果表明,与传统的PRAPPA方法相比,所提出的PSVR-Grappa方法直观地提高了整体质量,而与MKGRAPPA相比,它具有更快的重建速度。

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