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Direct Imaging of Functional Networks

机译:功能网络的直接成像

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摘要

In blood-oxygenation-level-dependent functional magnetic resonance imaging (fMRI), current methods typically acquire ∼500,000 imaging voxels at each time point, and then use computer algorithms to reduce this data to the coefficients of a few hundred parcels or networks. This suggests that the amount of relevant information present in the fMRI signal is relatively small, and presents an opportunity to greatly improve the speed and signal to noise ratio (SNR) of the fMRI process. In this work, a theoretical framework is presented for calculating the coefficients of functional networks directly from highly undersampled fMRI data. Using predefined functional parcellations or networks and a compact k-space trajectory that samples data at optimal spatial scales, the problem of estimating network coefficients is reformulated to allow for direct least squares estimation, without Fourier encoding. By simulation, this approach is shown to allow for acceleration of the imaging process under ideal circumstances by nearly three orders of magnitude.
机译:在依赖于血液氧合水平的功能磁共振成像(fMRI)中,当前的方法通常在每个时间点获取约500,000个成像体素,然后使用计算机算法将该数据缩减为数百个包裹或网络的系数。这表明fMRI信号中存在的相关信息量相对较小,并且为大大提高fMRI过程的速度和信噪比(SNR)提供了机会。在这项工作中,提出了一个理论框架,用于直接从高度欠采样的fMRI数据中直接计算功能网络的系数。使用预定义的功能单元或网络以及以最佳空间比例对数据进行采样的紧凑k空间轨迹,可以重新构造估算网络系数的问题,从而无需傅立叶编码即可直接进行最小二乘估算。通过仿真,表明该方法允许在理想情况下将成像过程加速近三个数量级。

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