Wellcome Trust Centre for Neuroimaging at UCL, Institute of Neurology, University College London, London, UK.
Curr Opin Neurol. 2010 Dec;23(6):649-55. doi: 10.1097/WCO.0b013e32834028c7.
Multivariate pattern analysis (MVPA) is an emerging technique for analysing functional imaging data that is capable of a much closer approximation of neuronal activity than conventional methods. This review will outline the advantages, applications and limitations of MVPA in understanding the neural correlates of consciousness.
MVPA has provided important insights into the processing of perceptual information by revealing content-specific information at early stages of perceptual processing. It has also shed light on the processing of memories and decisions. In combination with techniques to reconstruct viewed images, MVPA can also be used to reveal the contents of consciousness.
The development of multivariate pattern analysis techniques allows content-specific and detailed information to be extracted from functional MRI data. This may lead to new therapeutic applications but also raises important ethical considerations.
多元模式分析(MVPA)是一种新兴的分析功能成像数据的技术,能够比传统方法更接近地逼近神经元活动。本综述将概述 MVPA 在理解意识的神经相关性方面的优势、应用和局限性。
MVPA 通过在知觉处理的早期阶段揭示内容特异性信息,为知觉信息的处理提供了重要的见解。它还揭示了记忆和决策的处理过程。与重建观看图像的技术相结合,MVPA 也可用于揭示意识的内容。
多元模式分析技术的发展允许从功能磁共振成像数据中提取特定于内容的详细信息。这可能会带来新的治疗应用,但也引发了重要的伦理考虑。