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Double temporal sparsity based accelerated reconstruction of compressively sensed resting-state fMRI

机译:基于双颞伤害的加速重建压缩感测休息状态FMRI

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摘要

Abstract A number of reconstruction methods have been proposed recently for accelerated functional Magnetic Resonance Imaging (fMRI) data collection. However, existing methods suffer with the challenge of greater artifacts at high acceleration factors. This paper addresses the issue of accelerating fMRI collection via undersampled k -space measurements combined with the proposed method based on l 1 ? l 1 norm constraints, wherein we impose first l 1 -norm sparsity on the voxel time series (temporal data) in the transformed domain and the second l 1 -norm sparsity on the successive difference of the same temporal data. Hence, we name the proposed method as Double Temporal Sparsity based Reconstruction (DTSR) method. The robustness of the proposed DTSR method has been thoroughly evaluated both at the subject level and at the group level on real fMRI data. Results are presented at various acceleration factors. Quantitative analysis in terms of Peak Signal-to-Noise Ratio (PSNR) and other metrics, and qualitative analysis in terms of reproducibility of brain Resting State Networks (RSNs) demonstrate that the proposed method is accurate and robust. In addition, the proposed DTSR method preserves brain networks that are important for studying fMRI data. Compared to the existing methods, the DTSR method shows promising potential with an improvement of 10-12?dB in PSNR with acceleration factors upto 3.5 on resting state fMRI data. Simulation results on real data demonstrate that DTSR method can be used to acquire accelerated fMRI with accurate detection of RSNs.
机译:摘要最近提出了许多重建方法,用于加速功能磁共振成像(FMRI)数据收集。然而,现有方法对高加速因子的更大伪影遭受挑战。本文解决了通过基于L 1的提出的方法加速FMRI集合的问题,基于L 1? L 1 NORM约束,其中我们在变换域中的体素时间序列(时间数据)上施加第一L 1 -NOMM稀疏性,并且第二L 1 -NOMM稀疏性在相同的时间数据的连续差异上。因此,我们将所提出的方法命名为基于双颞稀疏的重建(DTSR)方法。所提出的DTSR方法的稳健性已经在真实的FMRI数据上彻底评估了主题水平和组级别。结果显示在各种加速度因素处。在峰值信噪比(PSNR)和其他度量方面的定量分析,以及大脑休息状态网络的再现性(RSNS)的定性分析表明,所提出的方法是准确和鲁棒的。此外,所提出的DTSR方法保留了对研究FMRI数据很重要的脑网络。与现有方法相比,DTSR方法显示了有希望的潜力,在PSNR中提高了10-12·DB,加速因子高达3.5上休息状态FMRI数据。实际数据的仿真结果表明,DTSR方法可用于通过精确地检测RSN来获取加速的FMRI。

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