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Exploiting similarity in adjacent slices for compressed sensing MRI

机译:利用相邻切片的相似性进行压缩感测MRI

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Due to fundamental characteristics of MRI that limit scan speedup, sub-sampling techniques such as compressed sensing (CS) have been developed for rapid MRI. Current CS MRI approaches utilize sparsity of the image in the wavelet or other transform domains to speed-up acquisition. Another drawback of MRI is its poor signal-to-noise ratio (SNR), which is proportional to the image slice thickness. In this paper, we use the difference between adjacent slices as the sparse domain for CS MRI. We propose to acquire thick MRI slices and to reconstruct the thin slices from the thick slices' data, utilizing the similarity between adjacent thin slices. The acquisition of thick slices, instead of thin ones, improves the total SNR of the reconstructed image. Experimental results show that the image reconstruction quality of the proposed method outperforms existing CS MRI methods using the same number of measurements.
机译:由于MRI的基本特征限制了扫描速度,因此已开发了诸如快速传感(CS)的子采样技术。当前的CS MRI方法利用小波或其他变换域中图像的稀疏性来加快采集速度。 MRI的另一个缺点是其差的信噪比(SNR),它与图像切片的厚度成正比。在本文中,我们将相邻切片之间的差异用作CS MRI的稀疏域。我们建议利用相邻薄片之间的相似性来获取较厚的MRI切片,并根据该厚薄片的数据重建薄片。厚切片而不是薄切片的采集提高了重建图像的总SNR。实验结果表明,在相同数量的测量条件下,该方法的图像重建质量优于现有的CS MRI方法。

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