Title :
Towards predicting persistent activity of neurons by statistical and fractal dimension-based features
Author :
Petrantonakis, Panagiotis C. ; Papoutsi, Athanasia ; Poirazi, Panayiota
Author_Institution :
Inst. of Mol. Biol. & Biotechnol., Found. for Res. & Technol. Hellas (FORTH), Heraklion, Greece
Abstract :
Persistent activity is the prolongation of neuronal firing that outlasts the presentation of a stimulus and has been recorded during the execution of working memory tasks in several cortical regions. The emergence of persistent activity is stimulus-specific: not all inputs lead to persistent firing, only `preferred´ ones. However, the features of a stimulus or the stimulus-induced response that determine whether it will ignite persistent activity remain unknown. In this paper, we propose various statistical and fractal dimension-based features derived from the activity of a detailed biophysical Prefrontal Cortex microcircuit model, for the efficient classification of the upcoming Persistent or Non-Persistent-activity state. Moreover, by introducing a novel majority voting classification framework we manage to achieve classification rates up to 92.5%, suggesting that selected features carry important predictive information that may be read out by the brain in order to identify `preferred´ vs. `no-preferred´ stimuli.
Keywords :
bioelectric phenomena; brain; digital simulation; fractals; neurophysiology; pattern classification; statistical analysis; support vector machines; SVM classifiers; biophysical prefrontal cortex microcircuit model; brain; cortical regions; fractal dimension-based features; majority voting classification framework; neuronal firing; no-preferred stimulus identification; nonpersistent-activity state classification; persistent activity prediction; persistent firing; persistent-activity state classification; preferred stimulus identification; statistical features; stimulus-induced response; working memory tasks; Firing; Fractals; Mathematical model; Neurons; Standards; Support vector machine classification;
Conference_Titel :
Neural Networks (IJCNN), The 2013 International Joint Conference on
Conference_Location :
Dallas, TX
Print_ISBN :
978-1-4673-6128-6
DOI :
10.1109/IJCNN.2013.6707083