Real Time Dynamic Magnetic Resonance Imaging Via Dictionary Learning And Combined Fourier Transform

IEEE ACCESS(2019)

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摘要
Real time dynamic magnetic resonance imaging (dMRI) requires that the image acquisition and reconstruction are carried out simultaneously and the reconstruction speed catches up with imaging speed. In this paper, a novel compressed sensing (CS) reconstruction algorithm for real time dynamic MRI is proposed. The first frame with more k-space measurements is reconstructed precisely as the reference image. Different from previous methods who start their reconstructions from zero-filled k-space measurements, a Combined Fourier Transform (CFT) algorithm is implemented in our method, which can dynamically aggregate the k-space measurements from previous sampled frames to create a highly accurate predictive image for the current frame. We then combine the CFT algorithm with a 3D path-based dictionary leaning algorithm, which is named as DLCFT in our work for fast real time dMRI reconstruction. The proposed algorithm is compared with four state-of-the-art online and offline methods on two real and complex perfusion MR sequences and a real functional brain MR sequence. Experimental results show that the proposed algorithm outperforms these methods with faster convergence and higher reconstruction accuracy.
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关键词
Image reconstruction, Machine learning, Magnetic resonance imaging, Heuristic algorithms, Compressed sensing, Dictionaries, Dynamic magnetic resonance imaging, compressed sensing, combined Fourier transform, dictionary leaning
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