Astrand Elaine, Enel Pierre, Ibos Guilhem, Dominey Peter Ford, Baraduc Pierre, Ben Hamed Suliann
Centre de Neuroscience Cognitive, UMR 5529 CNRS-Université Claude Bernard Lyon I, Bron, France.
Stem Cell and Brain Research Institute, INSERM U846-Université Claude Bernard Lyon I, Bron, France.
PLoS One. 2014 Jan 23;9(1):e86314. doi: 10.1371/journal.pone.0086314. eCollection 2014.
Decoding neuronal information is important in neuroscience, both as a basic means to understand how neuronal activity is related to cerebral function and as a processing stage in driving neuroprosthetic effectors. Here, we compare the readout performance of six commonly used classifiers at decoding two different variables encoded by the spiking activity of the non-human primate frontal eye fields (FEF): the spatial position of a visual cue, and the instructed orientation of the animal's attention. While the first variable is exogenously driven by the environment, the second variable corresponds to the interpretation of the instruction conveyed by the cue; it is endogenously driven and corresponds to the output of internal cognitive operations performed on the visual attributes of the cue. These two variables were decoded using either a regularized optimal linear estimator in its explicit formulation, an optimal linear artificial neural network estimator, a non-linear artificial neural network estimator, a non-linear naïve Bayesian estimator, a non-linear Reservoir recurrent network classifier or a non-linear Support Vector Machine classifier. Our results suggest that endogenous information such as the orientation of attention can be decoded from the FEF with the same accuracy as exogenous visual information. All classifiers did not behave equally in the face of population size and heterogeneity, the available training and testing trials, the subject's behavior and the temporal structure of the variable of interest. In most situations, the regularized optimal linear estimator and the non-linear Support Vector Machine classifiers outperformed the other tested decoders.
在神经科学中,解码神经元信息非常重要,它既是理解神经元活动与脑功能之间关系的一种基本手段,也是驱动神经假体效应器过程中的一个处理阶段。在此,我们比较了六种常用分类器在解码由非人灵长类动物额叶眼区(FEF)的尖峰活动编码的两个不同变量时的读出性能:视觉线索的空间位置,以及动物注意力的指示方向。第一个变量由环境外源性驱动,而第二个变量对应于线索所传达指令的解读;它是内源性驱动的,并且对应于对线索视觉属性执行的内部认知操作的输出。使用显式形式的正则化最优线性估计器、最优线性人工神经网络估计器、非线性人工神经网络估计器、非线性朴素贝叶斯估计器、非线性储层循环网络分类器或非线性支持向量机分类器对这两个变量进行解码。我们的结果表明,诸如注意力方向等内源性信息可以从FEF中以与外源性视觉信息相同的精度进行解码。面对群体大小和异质性、可用的训练和测试试验、受试者的行为以及感兴趣变量的时间结构时,所有分类器的表现并不相同。在大多数情况下,正则化最优线性估计器和非线性支持向量机分类器的性能优于其他测试的解码器。