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      PyMVPA: A Unifying Approach to the Analysis of Neuroscientific Data

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          Abstract

          The Python programming language is steadily increasing in popularity as the language of choice for scientific computing. The ability of this scripting environment to access a huge code base in various languages, combined with its syntactical simplicity, make it the ideal tool for implementing and sharing ideas among scientists from numerous fields and with heterogeneous methodological backgrounds. The recent rise of reciprocal interest between the machine learning (ML) and neuroscience communities is an example of the desire for an inter-disciplinary transfer of computational methods that can benefit from a Python-based framework. For many years, a large fraction of both research communities have addressed, almost independently, very high-dimensional problems with almost completely non-overlapping methods. However, a number of recently published studies that applied ML methods to neuroscience research questions attracted a lot of attention from researchers from both fields, as well as the general public, and showed that this approach can provide novel and fruitful insights into the functioning of the brain. In this article we show how PyMVPA, a specialized Python framework for machine learning based data analysis, can help to facilitate this inter-disciplinary technology transfer by providing a single interface to a wide array of machine learning libraries and neural data-processing methods. We demonstrate the general applicability and power of PyMVPA via analyses of a number of neural data modalities, including fMRI, EEG, MEG, and extracellular recordings.

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          Most cited references32

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          An Introduction to the Bootstrap

          Statistics is a subject of many uses and surprisingly few effective practitioners. The traditional road to statistical knowledge is blocked, for most, by a formidable wall of mathematics. The approach in An Introduction to the Bootstrap avoids that wall. It arms scientists and engineers, as well as statisticians, with the computational techniques they need to analyze and understand complicated data sets.
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            Distributed and overlapping representations of faces and objects in ventral temporal cortex.

            The functional architecture of the object vision pathway in the human brain was investigated using functional magnetic resonance imaging to measure patterns of response in ventral temporal cortex while subjects viewed faces, cats, five categories of man-made objects, and nonsense pictures. A distinct pattern of response was found for each stimulus category. The distinctiveness of the response to a given category was not due simply to the regions that responded maximally to that category, because the category being viewed also could be identified on the basis of the pattern of response when those regions were excluded from the analysis. Patterns of response that discriminated among all categories were found even within cortical regions that responded maximally to only one category. These results indicate that the representations of faces and objects in ventral temporal cortex are widely distributed and overlapping.
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              Information-based functional brain mapping.

              The development of high-resolution neuroimaging and multielectrode electrophysiological recording provides neuroscientists with huge amounts of multivariate data. The complexity of the data creates a need for statistical summary, but the local averaging standardly applied to this end may obscure the effects of greatest neuroscientific interest. In neuroimaging, for example, brain mapping analysis has focused on the discovery of activation, i.e., of extended brain regions whose average activity changes across experimental conditions. Here we propose to ask a more general question of the data: Where in the brain does the activity pattern contain information about the experimental condition? To address this question, we propose scanning the imaged volume with a "searchlight," whose contents are analyzed multivariately at each location in the brain.
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                Author and article information

                Journal
                Front Neuroinformatics
                Front. Neuroinform.
                Frontiers in Neuroinformatics
                Frontiers Research Foundation
                1662-5196
                20 October 2008
                04 February 2009
                2009
                : 3
                : 3
                Affiliations
                [1] 1Department of Psychology, University of Magdeburg Magdeburg, Germany
                [2] 2Center for Advanced Imaging Magdeburg, Germany
                [3] 3Psychology Department, Rutgers Newark New Jersey, USA
                [4] 4Computer Science Department, New Jersey Institute of Technology, Newark New Jersey, USA
                [5] 5Rutgers University Mind Brain Analysis, Rutgers Newark New Jersey, USA
                [6] 6Department of Psychology, Princeton University, Princeton New Jersey, USA
                [7] 7Princeton Neuroscience Institute, Princeton University, Princeton New Jersey, USA
                [8] 8Center for Information Technology (Irst), Fondazione Bruno Kessler Trento, Italy
                [9] 9Center for Mind/Brain Sciences (CIMeC/NILab), University of Trento Italy
                [10] 10Leibniz Institute for Neurobiology Magdeburg, Germany
                [11] 11Bernstein Group for Computational Neuroscience Magdeburg, Germany
                [12] 12Department of Neurology, University of Magdeburg Magdeburg, Germany
                [13] 13Center for Behavioral Brain Sciences Magdeburg, Germany
                [14] 14Center for Cognitive Neuroscience, Dartmouth College, Hanover New Hampshire, USA
                [15] 15Department of Psychological and Brain Sciences, Dartmouth College, Hanover New Hampshire, USA
                Author notes

                Edited by: Rolf Kötter, Radboud University Nijmegen, The Netherlands

                Reviewed by: Martin A. Spacek, The University of British Columbia, Canada; Samuel Garcia, Université Claude Bernard Lyon I, France

                *Correspondence: Stefan Pollmann, Institut für Psychologie II, Otto-von-Guericke-Universität Magdeburg, PF 4120, D-39016 Magdeburg, Germany. e-mail: stefan.pollmann@ 123456ovgu.de

                Hanke and Halchenko contributed equally to this article.

                Article
                10.3389/neuro.11.003.2009
                2638552
                19212459
                7e91b68b-48f7-4ba9-8a59-54f7a4ad57a7
                Copyright © 2009 Hanke, Halchenko, Sederberg, Olivetti, Fründ, Rieger, Herrmann, Haxby, Hanson and Pollmann.

                This is an open-access article subject to an exclusive license agreement between the authors and the Frontiers Research Foundation, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are credited.

                History
                : 14 September 2008
                : 20 January 2009
                Page count
                Figures: 6, Tables: 1, Equations: 0, References: 38, Pages: 13, Words: 8700
                Categories
                Neuroscience
                Original Research

                Neurosciences
                machine learning,functional magnetic resonance imaging,magnetoencephalography,extracellular recordings,python,electroencephalography

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