Literature DB >> 24508754

NeuCube: a spiking neural network architecture for mapping, learning and understanding of spatio-temporal brain data.

Nikola K Kasabov1.   

Abstract

The brain functions as a spatio-temporal information processing machine. Spatio- and spectro-temporal brain data (STBD) are the most commonly collected data for measuring brain response to external stimuli. An enormous amount of such data has been already collected, including brain structural and functional data under different conditions, molecular and genetic data, in an attempt to make a progress in medicine, health, cognitive science, engineering, education, neuro-economics, Brain-Computer Interfaces (BCI), and games. Yet, there is no unifying computational framework to deal with all these types of data in order to better understand this data and the processes that generated it. Standard machine learning techniques only partially succeeded and they were not designed in the first instance to deal with such complex data. Therefore, there is a need for a new paradigm to deal with STBD. This paper reviews some methods of spiking neural networks (SNN) and argues that SNN are suitable for the creation of a unifying computational framework for learning and understanding of various STBD, such as EEG, fMRI, genetic, DTI, MEG, and NIRS, in their integration and interaction. One of the reasons is that SNN use the same computational principle that generates STBD, namely spiking information processing. This paper introduces a new SNN architecture, called NeuCube, for the creation of concrete models to map, learn and understand STBD. A NeuCube model is based on a 3D evolving SNN that is an approximate map of structural and functional areas of interest of the brain related to the modeling STBD. Gene information is included optionally in the form of gene regulatory networks (GRN) if this is relevant to the problem and the data. A NeuCube model learns from STBD and creates connections between clusters of neurons that manifest chains (trajectories) of neuronal activity. Once learning is applied, a NeuCube model can reproduce these trajectories, even if only part of the input STBD or the stimuli data is presented, thus acting as an associative memory. The NeuCube framework can be used not only to discover functional pathways from data, but also as a predictive system of brain activities, to predict and possibly, prevent certain events. Analysis of the internal structure of a model after training can reveal important spatio-temporal relationships 'hidden' in the data. NeuCube will allow the integration in one model of various brain data, information and knowledge, related to a single subject (personalized modeling) or to a population of subjects. The use of NeuCube for classification of STBD is illustrated in a case study problem of EEG data. NeuCube models result in a better accuracy of STBD classification than standard machine learning techniques. They are robust to noise (so typical in brain data) and facilitate a better interpretation of the results and understanding of the STBD and the brain conditions under which data was collected. Future directions for the use of SNN for STBD are discussed.
Copyright © 2014 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Associative memory; Computational neuro-genetic modeling; Data mining; EEG; FMRI; Finite automata for spatio-temporal data; Gene regulatory networks; Neurogenetic data; Pattern recognition; Spatio-temporal brain data; Spiking neural networks

Mesh:

Year:  2014        PMID: 24508754     DOI: 10.1016/j.neunet.2014.01.006

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  17 in total

1.  Identifying overlapping mutated driver pathways by constructing gene networks in cancer.

Authors:  Hao Wu; Lin Gao; Feng Li; Fei Song; Xiaofei Yang; Nikola Kasabov
Journal:  BMC Bioinformatics       Date:  2015-03-18       Impact factor: 3.169

2.  Design of MRI structured spiking neural networks and learning algorithms for personalized modelling, analysis, and prediction of EEG signals.

Authors:  Samaneh Alsadat Saeedinia; Mohammad Reza Jahed-Motlagh; Abbas Tafakhori; Nikola Kasabov
Journal:  Sci Rep       Date:  2021-06-08       Impact factor: 4.379

3.  Behavioral Outcomes and Neural Network Modeling of a Novel, Putative, Recategorization Sound Therapy.

Authors:  Mithila Durai; Zohreh Doborjeh; Philip J Sanders; Dunja Vajsakovic; Anne Wendt; Grant D Searchfield
Journal:  Brain Sci       Date:  2021-04-27

4.  A Retinotopic Spiking Neural Network System for Accurate Recognition of Moving Objects Using NeuCube and Dynamic Vision Sensors.

Authors:  Lukas Paulun; Anne Wendt; Nikola Kasabov
Journal:  Front Comput Neurosci       Date:  2018-06-12       Impact factor: 2.380

5.  Spiking Neural Network Modelling Approach Reveals How Mindfulness Training Rewires the Brain.

Authors:  Zohreh Doborjeh; Maryam Doborjeh; Tamasin Taylor; Nikola Kasabov; Grace Y Wang; Richard Siegert; Alex Sumich
Journal:  Sci Rep       Date:  2019-04-23       Impact factor: 4.379

6.  Application of a Brain-Inspired Spiking Neural Network Architecture to Odor Data Classification.

Authors:  Anup Vanarse; Josafath Israel Espinosa-Ramos; Adam Osseiran; Alexander Rassau; Nikola Kasabov
Journal:  Sensors (Basel)       Date:  2020-05-12       Impact factor: 3.576

7.  Prediction of Acoustic Residual Inhibition of Tinnitus Using a Brain-Inspired Spiking Neural Network Model.

Authors:  Philip J Sanders; Zohreh G Doborjeh; Maryam G Doborjeh; Nikola K Kasabov; Grant D Searchfield
Journal:  Brain Sci       Date:  2021-01-05

8.  Modelling Peri-Perceptual Brain Processes in a Deep Learning Spiking Neural Network Architecture.

Authors:  Zohreh Gholami Doborjeh; Nikola Kasabov; Maryam Gholami Doborjeh; Alexander Sumich
Journal:  Sci Rep       Date:  2018-06-11       Impact factor: 4.379

9.  A Split-Gate Positive Feedback Device With an Integrate-and-Fire Capability for a High-Density Low-Power Neuron Circuit.

Authors:  Kyu-Bong Choi; Sung Yun Woo; Won-Mook Kang; Soochang Lee; Chul-Heung Kim; Jong-Ho Bae; Suhwan Lim; Jong-Ho Lee
Journal:  Front Neurosci       Date:  2018-10-09       Impact factor: 4.677

10.  FusionSense: Emotion Classification Using Feature Fusion of Multimodal Data and Deep Learning in a Brain-Inspired Spiking Neural Network.

Authors:  Clarence Tan; Gerardo Ceballos; Nikola Kasabov; Narayan Puthanmadam Subramaniyam
Journal:  Sensors (Basel)       Date:  2020-09-17       Impact factor: 3.576

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