Seghier Mohamed L, Price Cathy J
Wellcome Trust Centre for Neuroimaging, Wellcome Department of Imaging Neuroscience, Institute of Neurology, UCL, 12 Queen Square, London WC1N 3BG, UK.
Neuroimage. 2009 Apr 1;45(2):349-59. doi: 10.1016/j.neuroimage.2008.12.017. Epub 2008 Dec 25.
In this study we illustrate how the functional networks involved in a single task (e.g. the sensory, cognitive and motor components) can be segregated without cognitive subtractions at the second-level. The method used is based on meaningful variability in the patterns of activation between subjects with the assumption that regions belonging to the same network will have comparable variations from subject to subject. fMRI data were collected from thirty nine healthy volunteers who were asked to indicate with a button press if visually presented words were semantically related or not. Voxels were classified according to the similarity in their patterns of between-subject variance using a second-level unsupervised fuzzy clustering algorithm. The results were compared to those identified by cognitive subtractions of multiple conditions tested in the same set of subjects. This illustrated that the second-level clustering approach (on activation for a single task) was able to identify the functional networks observed using cognitive subtractions (e.g. those associated with vision, semantic associations or motor processing). In addition the fuzzy clustering approach revealed other networks that were not dissociated by the cognitive subtraction approach (e.g. those associated with high- and low-level visual processing and oculomotor movements). We discuss the potential applications of our method which include the identification of "hidden" or unpredicted networks as well as the identification of systems level signatures for different subgroupings of clinical and healthy populations.
在本研究中,我们阐述了如何在不进行二级认知相减的情况下,分离参与单一任务(如感觉、认知和运动成分)的功能网络。所采用的方法基于受试者之间激活模式的有意义变异性,假设属于同一网络的区域在受试者之间具有可比的变异性。从39名健康志愿者收集功能磁共振成像(fMRI)数据,要求他们通过按键来表明视觉呈现的单词在语义上是否相关。使用二级无监督模糊聚类算法,根据体素在受试者间方差模式的相似性对其进行分类。将结果与通过对同一组受试者测试的多种条件进行认知相减所识别的结果进行比较。这表明二级聚类方法(针对单一任务的激活)能够识别使用认知相减所观察到的功能网络(如与视觉、语义关联或运动处理相关的网络)。此外,模糊聚类方法还揭示了认知相减方法未分离出的其他网络(如与高低水平视觉处理和眼球运动相关的网络)。我们讨论了我们方法的潜在应用,包括识别“隐藏”或未预测到的网络,以及为临床和健康人群的不同亚组识别系统水平特征。