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A machine learning methodology for the selection and classification of spontaneous spinal cord dorsum potentials allows disclosure of structured (non-random) changes in neuronal connectivity induced by nociceptive stimulation
Authors
Alvarez
Anderson
+40 more
Arendt-Nielsen
Arthur
Biella
Bizzi
Bonnin
Chao
Chávez
Contreras-Hernández
Contreras-Hernández
Davis
Diógenes Chávez
Drdla-Schutting
Duda
Enrique Contreras-Hernández
Ertekin
Gan
García
Gennaro Esposito
Halkidi
Javier Béjar
Jolliffe
Lewicki
Liang
Lin
Lovász
Manjarrez
Mario Martin
Newcombe
Pablo Rudomin
Rodríguez
Rudomin
Rudomin
Rudomin
Rudomin
Rudomin
Silvio Glusman
Solodkin
Traub
Ulises Cortés
Vinh
Publication date
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'Frontiers Media SA'
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info:doi/10.3389%2Ffninf.2015....
Last time updated on 01/04/2019