Novel machine learning methods for ERP analysis: a validation from research on infants at-risk for autism
Stahl, D. and Pickles, A. and Elsabbagh, Mayada and Johnson, Mark H. and BASIS Team, The (2012) Novel machine learning methods for ERP analysis: a validation from research on infants at-risk for autism. Developmental Neuropsychology 37 (3), pp. 274-298. ISSN 8756-5641.
Machine learning and other computer intensive pattern recognition methods are successfully applied to a variety of fields that deal with high-dimensional data and often small sample sizes such as genetic microarray, functional magnetic resonance imaging (fMRI) and, more recently, electroencephalogram (EEG) data. The aim of this article is to discuss the use of machine learning and discrimination methods and their possible application to the analysis of infant event-related potential (ERP) data. The usefulness of two methods, regularized discriminant function analyses and support vector machines, will be demonstrated by reanalyzing an ERP dataset from infants (Elsabbagh et al., 2009). Using cross-validation, both methods successfully discriminated above chance between groups of infants at high and low risk of a later diagnosis of autism. The suitability of machine learning methods for the use of single trial or averaged ERP data is discussed.
|School:||Birkbeck Schools and Departments > School of Science > Psychological Sciences|
|Research Centre:||Brain and Cognitive Development, Centre for (CBCD)|
|Depositing User:||Sarah Hall|
|Date Deposited:||02 Jul 2015 14:09|
|Last Modified:||02 Dec 2016 11:45|
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