Neukom Institute for Computational Science, HB 6255, Dartmouth College, Hanover, NH 03755, USA.
Neuroimage. 2010 May 15;51(1):462-71. doi: 10.1016/j.neuroimage.2010.01.080. Epub 2010 Feb 2.
A key goal of cognitive neuroscience is to find simple and direct connections between brain and behaviour. However, fMRI analysis typically involves choices between many possible options, with each choice potentially biasing any brain-behaviour correlations that emerge. Standard methods of fMRI analysis assess each voxel individually, but then face the problem of selection bias when combining those voxels into a region-of-interest, or ROI. Multivariate pattern-based fMRI analysis methods use classifiers to analyse multiple voxels together, but can also introduce selection bias via data-reduction steps as feature selection of voxels, pre-selecting activated regions, or principal components analysis. We show here that strong brain-behaviour links can be revealed without any voxel selection or data reduction, using just plain linear regression as a classifier applied to the whole brain at once, i.e. treating each entire brain volume as a single multi-voxel pattern. The brain-behaviour correlations emerged despite the fact that the classifier was not provided with any information at all about subjects' behaviour, but instead was given only the neural data and its condition-labels. Surprisingly, more powerful classifiers such as a linear SVM and regularised logistic regression produce very similar results. We discuss some possible reasons why the very simple brain-wide linear regression model is able to find correlations with behaviour that are as strong as those obtained on the one hand from a specific ROI and on the other hand from more complex classifiers. In a manner which is unencumbered by arbitrary choices, our approach offers a method for investigating connections between brain and behaviour which is simple, rigorous and direct.
认知神经科学的一个主要目标是在大脑和行为之间找到简单直接的联系。然而,fMRI 分析通常涉及到许多可能的选择之间的选择,每个选择都有可能使出现的大脑-行为相关性产生偏差。fMRI 分析的标准方法逐个评估每个体素,但在将这些体素组合成感兴趣区域(ROI)时,会面临选择偏差的问题。基于多元模式的 fMRI 分析方法使用分类器一起分析多个体素,但通过体素的特征选择、预先选择激活区域或主成分分析等数据减少步骤,也会引入选择偏差。我们在这里表明,无需进行任何体素选择或数据减少,仅使用分类器作为分类器,即可应用于整个大脑,即可揭示出强大的大脑-行为联系,该分类器是一种简单的线性回归。尽管分类器根本没有提供有关受试者行为的任何信息,而是仅提供了神经数据及其条件标签,但仍然出现了大脑-行为相关性。令人惊讶的是,更强大的分类器(例如线性 SVM 和正则化逻辑回归)产生的结果非常相似。我们讨论了一些可能的原因,即非常简单的全脑线性回归模型能够找到与行为的相关性,其强度与从特定 ROI 获得的相关性以及从更复杂的分类器获得的相关性一样强。我们的方法不受任意选择的限制,为研究大脑与行为之间的联系提供了一种简单,严格和直接的方法。