Medical Image Processing Laboratory, Ecole Polytechnique Fédérale de Lausanne, Lausanne, Switzerland.
Neuroimage. 2011 May 15;56(2):616-26. doi: 10.1016/j.neuroimage.2010.05.081. Epub 2010 Jun 9.
Functional connectivity analysis of fMRI data can reveal synchronised activity between anatomically distinct brain regions. Here, we extract the characteristic connectivity signatures of different brain states to perform classification, allowing us to decode the different states based on the functional connectivity patterns. Our approach is based on polythetic decision trees, which combine powerful discriminative ability with interpretability of results. We also propose to use ensemble of classifiers within specific frequency subbands, and show that they bring systematic improvement in classification accuracy. Exploiting multi-band classification of connectivity graphs is also proposed, and we explain theoretical reasons why the technique could bring further improvement in classification performance. The choice of decision trees as classifier is shown to provide a practical way to identify a subset of connections that distinguishes best between the conditions, permitting the extraction of very compact representations for differences between brain states, which we call discriminative graphs. Our experimental results based on strict train/test separation at all stages of processing show that the method is applicable to inter-subject brain decoding with relatively low error rates for the task considered.
功能磁共振成像 (fMRI) 数据的功能连接分析可以揭示大脑不同区域之间的同步活动。在这里,我们提取不同脑状态的特征连接特征来进行分类,从而根据功能连接模式对不同状态进行解码。我们的方法基于多元决策树,它将强大的判别能力与结果的可解释性相结合。我们还建议在特定频带子带内使用分类器的集合,并表明它们可以系统地提高分类准确性。还提出了利用连接图的多频带分类,我们解释了该技术为何能够在分类性能方面带来进一步提高的理论原因。选择决策树作为分类器被证明是一种实用的方法,可以识别出在条件之间区分最好的连接子集,从而可以提取出用于区分脑状态差异的非常紧凑的表示形式,我们称之为鉴别图。我们的实验结果基于在处理的所有阶段严格的训练/测试分离,表明该方法适用于具有相对较低错误率的跨主体脑解码任务。