Pinto Joana, Nunes Sandro, Bianciardi Marta, Dias Afonso, Silveira L Miguel, Wald Lawrence L, Figueiredo Patrícia
Institute for Systems and Robotics - Lisboa and Department of Bioengineering, Instituto Superior Técnico, Universidade de Lisboa, Lisbon, Portugal.
Department of Radiology, Athinoula A. Martinos Center for Biomedical Imaging, MGH and Harvard Medical School, Boston, MA, USA.
Neuroimage. 2017 Jun;153:262-272. doi: 10.1016/j.neuroimage.2017.04.009. Epub 2017 Apr 6.
Several strategies have been proposed to model and remove physiological noise from resting-state fMRI (rs-fMRI) data, particularly at ultrahigh fields (7 T), including contributions from respiratory volume (RV) and heart rate (HR) signal fluctuations. Recent studies suggest that these contributions are highly variable across subjects and that physiological noise correction may thus benefit from optimization at the subject or even voxel level. Here, we systematically investigated the impact of the degree of spatial specificity (group, subject, newly proposed cluster, and voxel levels) on the optimization of RV and HR models. For each degree of spatial specificity, we measured the fMRI signal variance explained (VE) by each model, as well as the functional connectivity underlying three well-known resting-state networks (RSNs) obtained from the fMRI data after removal of RV+HR contributions. Whole-brain, high-resolution rs-fMRI data were acquired from twelve healthy volunteers at 7 T, while simultaneously recording their cardiac and respiratory signals. Although VE increased with spatial specificity up to the voxel level, the accuracy of functional connectivity measurements improved only up to the cluster level, and subsequently decreased at the voxel level. This suggests that voxelwise modeling over-fits to local fluctuations with no physiological meaning. In conclusion, our results indicate that 7 T rs-fMRI connectivity measurements improve if a cluster-based physiological noise correction approach is employed in order to take into account the individual spatial variability in the HR and RV contributions.
已经提出了几种策略来对静息态功能磁共振成像(rs-fMRI)数据中的生理噪声进行建模和去除,特别是在超高场(7T)下,包括呼吸量(RV)和心率(HR)信号波动的影响。最近的研究表明,这些影响在不同受试者之间差异很大,因此生理噪声校正可能受益于在受试者甚至体素水平上的优化。在这里,我们系统地研究了空间特异性程度(组、受试者、新提出的簇和体素水平)对RV和HR模型优化的影响。对于每个空间特异性程度,我们测量了每个模型解释的功能磁共振成像信号方差(VE),以及在去除RV+HR影响后从功能磁共振成像数据中获得的三个著名静息态网络(RSN)的功能连接性。在7T下从12名健康志愿者获取全脑高分辨率rs-fMRI数据,同时记录他们的心脏和呼吸信号。尽管VE随着空间特异性增加到体素水平而增加,但功能连接性测量的准确性仅在簇水平之前有所提高,随后在体素水平下降。这表明体素级建模过度拟合到没有生理意义的局部波动。总之,我们的结果表明,如果采用基于簇的生理噪声校正方法以考虑HR和RV贡献中的个体空间变异性,7T rs-fMRI连接性测量将得到改善。