Deckers Roel H R, van Gelderen Peter, Ries Mario, Barret Olivier, Duyn Jeff H, Ikonomidou Vasiliki N, Fukunaga Masaki, Glover Gary H, de Zwart Jacco A
Advanced MRI section, LFMI, NINDS, National Institutes of Health, Bldg. 10, Rm. B1D-728, MSC 1065, 9000 Rockville Pike, Bethesda, MD 20892-1065, USA.
Neuroimage. 2006 Dec;33(4):1072-81. doi: 10.1016/j.neuroimage.2006.08.006. Epub 2006 Sep 29.
The quality of MRI time series data, which allows the study of dynamic processes, is often affected by confounding sources of signal fluctuation, including the cardiac and respiratory cycle. An adaptive filter is described, reducing these signal fluctuations as long as they are repetitive and their timing is known. The filter, applied in image domain, does not require temporal oversampling of the artifact-related fluctuations. Performance is demonstrated for suppression of cardiac and respiratory artifacts in 10-minute brain scans on 6 normal volunteers. Experimental parameters resemble a typical fMRI experiment (17 slices; 1700 ms TR). A second dataset was acquired at a rate well above the Nyquist frequency for both cardiac and respiratory cycle (single slice; 100 ms TR), allowing identification of artifacts specific to the cardiac and respiratory cycles, aiding assessment of filtering performance. Results show significant reduction in temporal standard deviation (SD(t)) in all subjects. For all 6 datasets with 1700 ms TR combined, the filtering method resulted in an average reduction in SD(t) of 9.2% in 2046 voxels substantially affected by respiratory artifacts, and 12.5% for the 864 voxels containing substantial cardiac artifacts. The maximal SD(t) reduction achieved was 52.7% for respiratory and 55.3% for cardiac filtering. Performance was found to be at least equivalent to the previously published RETROICOR method. Furthermore, the interaction between the filter and fMRI activity detection was investigated using Monte Carlo simulations, demonstrating that filtering algorithms introduce a systematic error in the detected BOLD-related signal change if applied sequentially. It is demonstrated that this can be overcome by combining physiological artifact filtering and detection of BOLD-related signal changes simultaneously. Visual fMRI data from 6 volunteers were analyzed with and without the filter proposed here. Inclusion of the cardio-respiratory regressors in the design matrix yielded a 4.6% t-score increase and 4.0% increase in the number of significantly activated voxels.
磁共振成像(MRI)时间序列数据的质量对于研究动态过程至关重要,但该数据质量常常受到包括心脏和呼吸周期在内的信号波动混杂源的影响。本文描述了一种自适应滤波器,只要信号波动具有重复性且其时间已知,就能减少这些信号波动。该滤波器应用于图像域,不需要对与伪影相关的波动进行时间过采样。在对6名正常志愿者进行的10分钟脑部扫描中,展示了该滤波器抑制心脏和呼吸伪影的性能。实验参数类似于典型的功能磁共振成像(fMRI)实验(17层;1700毫秒重复时间(TR))。以高于心脏和呼吸周期奈奎斯特频率的速率获取了第二个数据集(单层;100毫秒TR),以便识别特定于心脏和呼吸周期的伪影,有助于评估滤波性能。结果显示,所有受试者的时间标准差(SD(t))均显著降低。对于所有6个TR为1700毫秒的数据集,滤波方法使受呼吸伪影严重影响的2046个体素的SD(t)平均降低了9.2%,使包含大量心脏伪影的864个体素的SD(t)平均降低了12.5%。呼吸滤波和心脏滤波实现的最大SD(t)降低分别为52.7%和55.3%。发现该滤波器的性能至少与先前发表的回顾性图像相关单次激发(RETROICOR)方法相当。此外,使用蒙特卡罗模拟研究了滤波器与fMRI活动检测之间的相互作用,结果表明,如果顺序应用滤波算法,会在检测到的与血氧水平依赖(BOLD)相关的信号变化中引入系统误差。结果表明,通过同时进行生理伪影滤波和检测与BOLD相关的信号变化可以克服这一问题。对6名志愿者的视觉fMRI数据在使用和不使用本文提出的滤波器的情况下进行了分析。在设计矩阵中纳入心肺回归变量后,t分数增加了4.6%,显著激活体素的数量增加了4.0%。