Varoquaux Gael, Thirion Bertrand
Parietal, INRIA, NeuroSpin, bat 145 CEA Saclay, 91191 Gif sur Yvette, France.
Gigascience. 2014 Nov 17;3:28. doi: 10.1186/2047-217X-3-28. eCollection 2014.
Functional brain images are rich and noisy data that can capture indirect signatures of neural activity underlying cognition in a given experimental setting. Can data mining leverage them to build models of cognition? Only if it is applied to well-posed questions, crafted to reveal cognitive mechanisms. Here we review how predictive models have been used on neuroimaging data to ask new questions, i.e., to uncover new aspects of cognitive organization. We also give a statistical learning perspective on these progresses and on the remaining gaping holes.
功能性脑图像是丰富且有噪声的数据,在给定的实验环境中能够捕捉认知背后神经活动的间接特征。数据挖掘能否利用这些数据构建认知模型呢?只有将其应用于精心设计的、旨在揭示认知机制的恰当问题时才行。在此,我们回顾了预测模型如何被用于神经影像数据以提出新问题,即揭示认知组织的新方面。我们还从统计学习的角度审视了这些进展以及尚存的巨大差距。