Fox Christopher J, Iaria Giuseppe, Barton Jason J S
Graduate Program in Neuroscience, University of British Columbia, Vancouver, BC, Canada.
Hum Brain Mapp. 2009 May;30(5):1637-51. doi: 10.1002/hbm.20630.
Functional localizers that contrast brain signal when viewing faces versus objects are commonly used in functional magnetic resonance imaging studies of face processing. However, current protocols do not reliably show all regions of the core system for face processing in all subjects when conservative statistical thresholds are used, which is problematic in the study of single subjects. Furthermore, arbitrary variations in the applied thresholds are associated with inconsistent estimates of the size of face-selective regions-of-interest (ROIs). We hypothesized that the use of more natural dynamic facial images in localizers might increase the likelihood of identifying face-selective ROIs in individual subjects, and we also investigated the use of a method to derive the statistically optimal ROI cluster size independent of thresholds. We found that dynamic facial stimuli were more effective than static stimuli, identifying 98% (versus 72% for static) of ROIs in the core face processing system and 69% (versus 39% for static) of ROIs in the extended face processing system. We then determined for each core face processing ROI, the cluster size associated with maximum statistical face-selectivity, which on average was approximately 50 mm(3) for the fusiform face area, the occipital face area, and the posterior superior temporal sulcus. We suggest that the combination of (a) more robust face-related activity induced by a dynamic face localizer and (b) a cluster-size determination based on maximum face-selectivity increases both the sensitivity and the specificity of the characterization of face-related ROIs in individual subjects.
在面部处理的功能磁共振成像研究中,通常会使用功能定位器来对比观看面部与物体时的脑信号。然而,当使用保守的统计阈值时,当前的方案并不能在所有受试者中可靠地显示面部处理核心系统的所有区域,这在单受试者研究中是个问题。此外,所应用阈值的任意变化与对面部选择性感兴趣区域(ROI)大小的不一致估计相关。我们假设在定位器中使用更自然的动态面部图像可能会增加在个体受试者中识别面部选择性ROI的可能性,并且我们还研究了一种独立于阈值来推导统计最优ROI簇大小的方法的使用。我们发现动态面部刺激比静态刺激更有效,在核心面部处理系统中识别出98%的ROI(静态刺激为72%),在扩展面部处理系统中识别出69%的ROI(静态刺激为39%)。然后,我们为每个核心面部处理ROI确定了与最大统计面部选择性相关的簇大小,对于梭状回面部区、枕颞面部区和颞上沟后部,平均约为50立方毫米。我们建议,(a)动态面部定位器诱导的更强健的面部相关活动与(b)基于最大面部选择性的簇大小确定相结合,可提高个体受试者中面部相关ROI特征描述的敏感性和特异性。