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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >Nonlinear PCA: characterizing interactions between modes of brain activity
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Nonlinear PCA: characterizing interactions between modes of brain activity

机译:非线性PCA:表征大脑活动模式之间的相互作用

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摘要

This paper presents a nonlinear principal component analysis (PCA) that identifies underlying sources causing the expression of spatial modes or patterns of activity in neuroimaging time-series. The critical aspect of this technique is that, in relation to conventional PCA, the sources can interact to produce (second-order) spatial modes that represent the modulation of one (first-order) spatial mode by another. This nonlinear PCA uses a simple neural network architecture that embodies a specific form for the nonlinear mixing of sources that cause observed data. This form is motivated by a second-order approximation to any general nonlinear mixing and emphasizes interactions among pairs of sources. By introducing these nonlinearities principal components obtain with a unique rotation and scaling that does not depend on the biologically implausible constraints adopted by conventional PCA. The technique is illustrated by application to functional (positron emission tomography and functional magnetic resonance imaging) imaging data where the ensuing first- and second-order modes can be interpreted in terms of distributed brain systems. The interactions among sources render the expression of any one mode context-sensitive, where that context is established by the expression of other modes. The examples considered include interactions between cognitive states and time (i.e. adaptation or plasticity in PET data) and among functionally specialized brain systems (using a fMRI study of colour and motion processing). [References: 24]
机译:本文提出了一种非线性主成分分析(PCA),它可以识别引起神经影像时间序列中空间模式或活动模式表达的潜在来源。该技术的关键方面是,相对于常规PCA,源可以进行交互以生成(第二阶)空间模式,该模式表示另一个对一个(一阶)空间模式的调制。这种非线性PCA使用简单的神经网络架构,为导致观察数据的源的非线性混合体现了一种特定形式。这种形式是由对任何一般非线性混合的二阶近似激发的,并且强调了源对之间的相互作用。通过引入这些非线性,可以获得不依赖常规PCA采用的生物学上难以置信的约束的独特旋转和缩放比例的主要成分。该技术通过应用于功能性(正电子发射断层扫描和功能性磁共振成像)成像数据进行说明,其中随后的一阶和二阶模式可以根据分布式大脑系统进行解释。源之间的交互使任何一种模式的表达都与上下文相关,而该上下文是由其他模式的表达所建立的。所考虑的示例包括认知状态与时间之间的交互作用(即PET数据中的适应性或可塑性)以及功能特定的大脑系统之间的交互作用(使用颜色和运动处理的fMRI研究)。 [参考:24]

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