Department of Neurology, School of Medicine, University of New Mexico, Albuquerque, NM, USA.
Magn Reson Imaging. 2013 Feb;31(2):247-61. doi: 10.1016/j.mri.2012.07.010. Epub 2012 Aug 16.
In previous works, boosting aggregation of classifier outputs from discrete brain areas has been demonstrated to reduce dimensionality and improve the robustness and accuracy of functional magnetic resonance imaging (fMRI) classification. However, dimensionality reduction and classification of mixed activation patterns of multiple classes remain challenging. In the present study, the goals were (a) to reduce dimensionality by combining feature reduction at the voxel level and backward elimination of optimally aggregated classifiers at the region level, (b) to compare region selection for spatially aggregated classification using boosting and partial least squares regression methods and (c) to resolve mixed activation patterns using probabilistic prediction of individual tasks. Brain activation maps from interleaved visual, motor, auditory and cognitive tasks were segmented into 144 functional regions. Feature selection reduced the number of feature voxels by more than 50%, leaving 95 regions. The two aggregation approaches further reduced the number of regions to 30, resulting in more than 75% reduction of classification time and misclassification rates of less than 3%. Boosting and partial least squares (PLS) were compared to select the most discriminative and the most task correlated regions, respectively. Successful task prediction in mixed activation patterns was feasible within the first block of task activation in real-time fMRI experiments. This methodology is suitable for sparsifying activation patterns in real-time fMRI and for neurofeedback from distributed networks of brain activation.
在以前的研究中,已经证明通过组合离散脑区分类器输出的增强聚合来减少维度,可以提高功能磁共振成像 (fMRI) 分类的稳健性和准确性。然而,混合激活模式的降维和分类仍然具有挑战性。在本研究中,目标是:(a) 通过在体素水平进行特征降维和在区域水平进行最优聚合分类器的后向消除来降低维度;(b) 使用提升和偏最小二乘回归方法比较空间聚合分类的区域选择;(c) 使用个体任务的概率预测来解决混合激活模式。将交替的视觉、运动、听觉和认知任务的脑激活图分割成 144 个功能区域。特征选择将特征体素的数量减少了 50%以上,留下了 95 个区域。两种聚合方法进一步将区域数量减少到 30 个,从而将分类时间减少了 75%以上,错误分类率低于 3%。提升和偏最小二乘(PLS)分别用于选择最具判别力和最相关的任务区域。在实时 fMRI 实验中,在任务激活的第一个块内实现混合激活模式下的任务预测是可行的。该方法适用于实时 fMRI 中稀疏激活模式和来自脑激活分布式网络的神经反馈。