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Bayesian reconstruction of R-fMRI from K-T undersampled data using a robust, subject-invariant, spatially-regularized dictionary prior

机译:使用强大的主题不变,在k-t under采样的数据中从k-t under采样的数据重建R-FMRI的重建

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Faster resting-state functional magnetic resonance imaging (R-fMRI) can improve spatiotemporal resolution and functional sensitivity. To speedup scans, current methods rely on complex pulse-sequence design or straightforward undersampling along with (weak) priors on the signal. We propose a Bayesian graphical R-fMRI reconstruction framework relying on learning data-adaptive prior models through dictionaries that we design to be robust to large physiological fluctuations typical in R-fMRI signals. Our dictionary adapts to multiple subjects through an optimal similarity transform. Our reconstructions on simulated and real-world R-fMRI give more accurate functional networks and better spatial resolution than the state of the art.
机译:更快的休息状态功能磁共振成像(R-FMRI)可以提高时尚分辨率和功能性敏感性。加速扫描,目前的方法依赖于复杂的脉冲序列设计或直接的欠采样以及信号上的(弱)前提。我们提出了一种贝叶斯图形R-FMRI重建框架,依赖于学习数据适应性的先前模型,通过我们设计对R-FMRI信号中典型的大规模生理波动稳健。我们的字典通过最佳相似性转换适应多个受试者。我们对模拟和现实世界R-FMRI的重建提供更准确的功能网络和比现有技术更精确的空间分辨率。

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