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Modified-CS-residual for recursive reconstruction of highly undersampled functional MRI sequences

机译:修正CS残差用于递归重建高度欠采样的功能MRI序列

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In this work, we study the application of compressive sensing (CS) based approaches for blood oxygenation level dependent (BOLD) contrast functional MR imaging (fMRI). In particular, we show, via exhaustive experiments on actual MR scanner data for brain fMRI, that our recently proposed approach for recursive reconstruction of sparse signal sequences, modified-CS-residual, outperforms other existing CS based approaches. Modified-CS-residual exploits the fact that the sparsity pattern of brain fMRI sequences and their signal values change slowly over time. It provides a fast, yet accurate, reconstruction approach that is able to accurately track the changes of the active pixels, while using only about 30% measurements per frame. Significantly improved performance over existing work is shown in terms of practically relevant metrics such as active pixel time courses, activation maps and receiver operating characteristic (ROC) curves.
机译:在这项工作中,我们研究基于压缩感测(CS)的方法在血液氧合水平依赖性(BOLD)对比功能MR成像(fMRI)中的应用。尤其是,我们通过对大脑fMRI的实际MR扫描器数据进行了详尽的实验,证明了我们最近提出的用于稀疏信号序列的递归重构的方法(改进的CS残差)优于其他现有的基于CS的方法。修饰CS残差利用了以下事实:大脑fMRI序列的稀疏模式及其信号值随时间缓慢变化。它提供了一种快速而准确的重建方法,该方法能够准确跟踪活动像素的变化,同时每帧仅使用约30%的测量值。与实际工作相关的指标(例如有效像素时间过程,激活图和接收器工作特性(ROC)曲线)显示出与现有工作相比显着改善的性能。

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