Invernizzi Azzurra, Gravel Nicolas, Haak Koen V, Renken Remco J, Cornelissen Frans W
Laboratory for Experimental Ophthalmology, University of Groningen, University Medical Center Groningen, Groningen, Netherlands.
Cognitive Neuroscience Center, Department of Biomedical Sciences of Cells and Systems, University Medical Center Groningen, Groningen, Netherlands.
Front Neurosci. 2021 Feb 22;15:625309. doi: 10.3389/fnins.2021.625309. eCollection 2021.
Connective Field (CF) modeling estimates the local spatial integration between signals in distinct cortical visual field areas. As we have shown previously using 7T data, CF can reveal the visuotopic organization of visual cortical areas even when applied to BOLD activity recorded in the absence of external stimulation. This indicates that CF modeling can be used to evaluate cortical processing in participants in which the visual input may be compromised. Furthermore, by using Bayesian CF modeling it is possible to estimate the co-variability of the parameter estimates and therefore, apply CF modeling to single cases. However, no previous studies evaluated the (Bayesian) CF model using 3T resting-state fMRI data. This is important since 3T scanners are much more abundant and more often used in clinical research compared to 7T scanners. Therefore in this study, we investigate whether it is possible to obtain meaningful CF estimates from 3T resting state (RS) fMRI data. To do so, we applied the standard and Bayesian CF modeling approaches on two RS scans, which were separated by the acquisition of visual field mapping data in 12 healthy participants. Our results show good agreement between RS- and visual field (VF)- based maps using either the standard or Bayesian CF approach. In addition to quantify the uncertainty associated with each estimate in both RS and VF data, we applied our Bayesian CF framework to provide the underlying marginal distribution of the CF parameters. Finally, we show how an additional CF parameter, , can be used as a data-driven threshold on the RS data to further improve CF estimates. We conclude that Bayesian CF modeling can characterize local functional connectivity between visual cortical areas from RS data at 3T. Moreover, observations obtained using 3T scanners were qualitatively similar to those reported for 7T. In particular, we expect the ability to assess parameter uncertainty in individual participants will be important for future clinical studies.
连接场(CF)建模可估计不同皮质视野区域中信号之间的局部空间整合。正如我们之前使用7T数据所表明的那样,即使将CF应用于在无外部刺激情况下记录的BOLD活动,CF也能揭示视觉皮质区域的视拓扑组织。这表明CF建模可用于评估视觉输入可能受损的参与者的皮质处理情况。此外,通过使用贝叶斯CF建模,可以估计参数估计的协变性,因此可将CF建模应用于单个病例。然而,以前没有研究使用3T静息态功能磁共振成像(fMRI)数据评估(贝叶斯)CF模型。这很重要,因为与7T扫描仪相比,3T扫描仪在临床研究中更为常见且使用频率更高。因此,在本研究中,我们调查是否有可能从3T静息态(RS)fMRI数据中获得有意义的CF估计值。为此,我们在12名健康参与者中,将标准和贝叶斯CF建模方法应用于两次RS扫描,这两次扫描之间采集了视野映射数据。我们的结果表明,使用标准或贝叶斯CF方法时,基于RS和视野(VF)的图谱之间具有良好的一致性。除了量化RS和VF数据中每个估计值相关的不确定性外,我们还应用贝叶斯CF框架来提供CF参数的潜在边际分布。最后,我们展示了如何将另一个CF参数用作RS数据上的数据驱动阈值,以进一步改善CF估计。我们得出结论,贝叶斯CF建模可以表征3T时RS数据中视觉皮质区域之间的局部功能连接。此外,使用3T扫描仪获得的观察结果在质量上与7T报告的结果相似。特别是,我们预计评估个体参与者参数不确定性的能力对未来的临床研究将很重要。