Decoding of single-trial auditory mismatch responses for online perceptual monitoring and neurofeedback
Publication year
2013Number of pages
21 p.
Source
Frontiers in Neuroscience, 7, (2013), article 265ISSN
Publication type
Article / Letter to editor

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Organization
SW OZ DCC AI
SW OZ BSI OLO
Journal title
Frontiers in Neuroscience
Volume
vol. 7
Languages used
English (eng)
Subject
Cognitive artificial intelligence; DI-BCB_DCC_Theme 1: Language and Communication; DI-BCB_DCC_Theme 4: Brain Networks and Neuronal Communication; Learning and Plasticity; PsycholinguisticsAbstract
Multivariate pattern classification methods are increasingly applied to neuroimaging data in the context of both fundamental research and in brain-computer interfacing approaches. Such methods provide a framework for interpreting measurements made at the single-trial level with respect to a set of two or more distinct mental states. Here, we define an approach in which the output of a binary classifier trained on data from an auditory mismatch paradigm can be used for online tracking of perception and as a neurofeedback signal. The auditory mismatch paradigm is known to induce distinct perceptual states related to the presentation of high- and low-probability stimuli, which are reflected in event-related potential (ERP) components such as the mismatch negativity (MMN). The first part of this paper illustrates how pattern classification methods can be applied to data collected in an MMN paradigm, including discussion of the optimization of preprocessing steps, the interpretation of features and how the performance of these methods generalizes across individual participants and measurement sessions. We then go on to show that the output of these decoding methods can be used in online settings as a continuous index of single-trial brain activation underlying perceptual discrimination. We conclude by discussing several potential domains of application, including neurofeedback, cognitive monitoring and passive brain-computer interfaces.
This item appears in the following Collection(s)
- Academic publications [227244]
- Electronic publications [108520]
- Faculty of Social Sciences [28499]
- Open Access publications [77771]
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