Who Is Using It?

If you are using PyMVPA or have published a study employing it, please leave a comment at the bottom of this page, if you want to be listed here as well.

Institutions Where PyMVPA Is Known To Be Used

  • Center for Mind/Brain Sciences, University of Trento, Italy
  • Department of Psychological and Brain Sciences, Dartmouth College, USA
  • Thayer School of Engineering, Dartmouth College, USA
  • Department of Psychology & Neuroscience, Duke University, USA
  • Fondazione Bruno Kessler, Italy
  • Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, USA
  • Department of Neurology, Max Planck Insititute for Neurological Research, Cologne, Germany
  • MRC Cognition and Brain Sciences Unit, Cambridge, UK
  • Department of Experimental Psychology, Otto-von-Guericke-University Magdeburg, Germany
  • Donders Center for Cognition, Radboud University Nijmegen, Netherlands
  • Department of Psychology, University of California at Los Angeles, USA
  • Center for Functional Neuroimaging, University of Pennsylvania, USA
  • Brain & Creativity Institute, University of Southern California, USA
  • Imaging Research Center, University of Texas at Austin, USA
  • Department of Psychiatry, University of Wisconsin, Madison, USA
  • Department of Psychology, Yale University, USA

...and many more (stopped extending this list in 2012).

Studies employing PyMVPA

2016

  • Guntupalli et al., Cerebral Cortex (2016). A Model of Representational Spaces in Human Cortex
  • Watson et al., NeuroImage (2016). Spatial properties of objects predict patterns of neural response in the ventral visual pathway
  • Watson et al., NeuroImage (2016). Patterns of neural response in scene-selective regions of the human brain are affected by low-level manipulations of spatial frequency

2015

  • Floren et al., Frontiers in Human Neuroscience (2015). Accurately decoding visual information from fMRI data obtained in a realistic virtual environment
  • Merkel et al, NeuroImage (2015). Neural correlates of multiple object tracking strategies
  • Pogoda, et al., Brain and Cognition (2015). Multivariate representation of food preferences in the human brain
  • Emmerling et al., NeuroImage (2015). Decoding the direction of imagined visual motion using 7 T ultra-high field fMRI
  • Danelli et al., Frontiers in Psychology (2015). Framing effects reveal discrete lexical-semantic and sublexical procedures in reading: an fMRI study
  • Schlegel et al., NeuroImage (2015). The artist emerges: Visual art learning alters neural structure and function
  • Maass et al., ELife (2015). Functional subregions of the human entorhinal cortex
  • Sha et al., Journal of Cognitive Neuroscience (2015). The Animacy Continuum in the Human Ventral Vision Pathway
  • Greisel et al., arXiv (2015). Photometric redshifts and model spectral energy distributions of galaxies from the SDSS-III BOSS DR10 data
  • McNamee et al., Journal of Neuroscience (2015). Characterizing the associative content of brain structures involved in habitual and goal-directed actions in humans: a multivariate fMRI study
  • Cole et al., Cerebral Cortex (2015). The behavioral relevance of task information in human prefrontal cortex
  • Guo and Meng, NeuroImage (2015). The encoding of category-specific versus nonspecific information in human inferior temporal cortex

2014

2013

2012

2011

2010

2009

Articles referring to PyMVPA

2014

  • Haxby et al, Annual review of neuroscience (2014). Decoding neural representational spaces using multivariate pattern analysis
  • Avants et al, NeuroImage (2014). Sparse canonical correlation analysis relates network-level atrophy to multivariate cognitive measures in a neurodegenerative population

2013

2012

2011

2010

2009