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首页> 外文期刊>NeuroImage >Reduction of across-run variability of temporal SNR in accelerated EPI time-series data through FLEET-based robust autocalibration
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Reduction of across-run variability of temporal SNR in accelerated EPI time-series data through FLEET-based robust autocalibration

机译:通过基于舰队的鲁棒自动坐标减少加速EPI时间序列数据中的时间SNR的跨越变异性

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摘要

Abstract Temporal signal-to-noise ratio (tSNR) is a key metric for assessing the ability to detect brain activation in fMRI data. A recent study has shown substantial variation of tSNR between multiple runs of accelerated EPI acquisitions reconstructed with the GRAPPA method using protocols commonly used for fMRI experiments. Across-run changes in the location of high-tSNR regions could lead to misinterpretation of the observed brain activation patterns, reduced sensitivity of the fMRI studies, and biased results. We compared conventional EPI autocalibration (ACS) methods with the recently-introduced FLEET ACS method, measuring their tSNR variability, as well as spatial overlap and displacement of high-tSNR clusters across runs in datasets acquired from human subjects at 7T and 3T. FLEET ACS reconstructed data had higher tSNR levels, as previously reported, as well as better temporal consistency and larger overlap of the high-tSNR clusters across runs compared with reconstructions using conventional multi-shot (ms) EPI ACS data. tSNR variability across two different runs of the same protocol using ms-EPI ACS data was about two times larger than for the protocol using FLEET ACS for acceleration factors ( R ) 2 and 3, and one and half times larger for R =4. The level of across-run tSNR consistency for data reconstructed with FLEET ACS was similar to within-run tSNR consistency. The displacement of high-tSNR clusters across two runs (inter-cluster distance) decreased from ~8 mm in the time-series reconstructed using conventional ms-EPI ACS data to ~4 mm for images reconstructed using FLEET ACS. However, the performance gap between conventional ms-EPI ACS and FLEET ACS narrowed with increasing parallel imaging acceleration factor. Overall, the FLEET ACS method provides a simple solution to the problem of varying tSNR across runs, and therefore helps ensure that an assumption of fMRI analysis—that tSNR is largely consistent across runs—is met for accelerated acquisitions. Graphical abstract Display Omitted Highlights ? Improved across-run tSNR consistency using FLEET ACS reconstruction vs. ms-EPI ACS. ? High-tSNR cluster displacement decreased by factor of two by using FLEET ACS. ? FLEET ACS reconstructed data increases sensitivity of BOLD fMRI measurements.
机译:抽象时空信噪比(TSNR)是用于评估检测fMRI数据脑激活的能力的关键度量。最近的研究已经显示出,使用通常用于fMRI的实验协议的GRAPPA方法重建加速EPI收购的多次运行之间TSNR的实质变化。跨运行在高TSNR区域的位置的变化可导致所观察到的脑激活模式的误解,降低了fMRI研究的灵敏度和偏置的结果。我们比较了最近推出FLEET ACS方法常规EPI自动校准(ACS)的方法,测定它们的TSNR可变性,以及空间重叠和整个运行高TSNR簇的位移在从7T和3T人受试者获得的数据集。 FLEET ACS重建的数据具有更高的水平TSNR,如先前报道,以及更好的时间一致性,并与利用常规的多拍(ms)的EPI ACS数据重建相比跨越运行高TSNR簇的较大的重叠。使用MS-EPI ACS数据跨两个不同的相同的协议的运行TSNR变性比使用FLEET ACS加速因子(R)对于R = 4时2和3,和一个半倍协议约大2倍。用于与FLEET ACS重建的数据跨越运行TSNR一致性水平类似于内运行TSNR一致性。跨两个运行(群集间的距离)的高TSNR簇的位移从约8毫米的时间序列减少使用常规的MS-EPI ACS数据至〜4毫米使用FLEET ACS用于图像重建重建。然而,传统的MS-EPI ACS和车队ACS之间的性能差距缩小了与增加平行成像加速因子。总体而言,舰队ACS方法提供了一种简单的解决方案在整个运行不同TSNR的问题,因此有助于确保功能磁共振成像的假设分析,这TSNR是整个基本一致运行,满足加速收购。图形抽象显示省略了亮点?利用改进FLEET ACS重建与MS-EPI ACS跨运行TSNR一致性。还是高TSNR簇位移减少了两个因子通过使用FLEET ACS。还是FLEET ACS重构BOLD fMRI的测量的数据的增加的敏感性。

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