Pessoa Luiz, Padmala Srikanth
Department of Psychology, Brown University, Providence, RI 02912, USA.
Cereb Cortex. 2007 Mar;17(3):691-701. doi: 10.1093/cercor/bhk020. Epub 2006 Apr 20.
Instead of contrasting functional magnetic resonance imaging (fMRI) signals associated with 2 conditions, as customarily done in neuroimaging, we reversed the direction of analysis and probed whether brain signals could be used to "predict" perceptual states. We probed the neural correlates of perceptual decisions by "decoding" brain states during near-threshold fear detection. Decoding was attempted by using support vector machines and other related techniques. Although previous decoding studies have employed relatively "blocked" data, our objective was to probe how the "moment-to-moment" fluctuation in fMRI signals across a population of voxels reflected the participant's perceptual decision. Accuracy increased from when 1 region was considered (approximately 64%) to when 10 regions were used (approximately 78%). When the best classifications per subject were averaged, accuracy levels ranged between 74% and 86% correct. An information theoretic analysis revealed that the information carried by pairs of regions reliably exceeded the sum of the information carried by individual regions, suggesting that information was combined "synergistically" across regions. Our results indicate that the representation of behavioral choice is "distributed" across several brain regions. Such distributed encoding may help prepare the organism to appropriately handle emotional stimuli and regulate the associated emotional response upon the conscious decision that a fearful face is present. In addition, the results show that challenging brain states can be decoded with high accuracy even when "single-trial" data are employed and suggest that multivariate analysis strategies have considerable potential in helping to elucidate the neural correlates of visual awareness and the encoding of perceptual decisions.
与神经成像中通常所做的那样对比与两种情况相关的功能磁共振成像(fMRI)信号不同,我们颠倒了分析方向,探究大脑信号是否可用于“预测”感知状态。我们通过在接近阈值的恐惧检测过程中“解码”大脑状态来探究感知决策的神经关联。尝试使用支持向量机和其他相关技术进行解码。尽管先前的解码研究采用了相对“分块”的数据,但我们的目标是探究体素群体中fMRI信号的“逐时刻”波动如何反映参与者的感知决策。当考虑1个区域时准确率约为64%,而使用10个区域时准确率提高到约78%。当对每个受试者的最佳分类结果进行平均时,准确率水平在正确的74%至86%之间。信息论分析表明,成对区域携带的信息可靠地超过了单个区域携带信息的总和,这表明信息在不同区域之间“协同”组合。我们的结果表明,行为选择的表征在多个脑区“分布式”存在。这种分布式编码可能有助于机体做好准备,以适当处理情绪刺激,并在有意识地判定出现恐惧面孔时调节相关的情绪反应。此外,结果表明,即使采用“单试次”数据,具有挑战性的大脑状态也能被高精度解码,这表明多变量分析策略在帮助阐明视觉意识的神经关联和感知决策的编码方面具有相当大的潜力。