DocumentCode
1798081
Title
Classification and segmentation of fMRI Spatio-Temporal Brain Data with a NeuCube evolving Spiking Neural Network model
Author
Doborjeh, Maryam Gholami ; Capecci, Elisa ; Kasabov, Nikola
Author_Institution
Knowledge Eng. & Discovery Res. Inst. (KEDRI), Auckland Univ. of Technol., Auckland, New Zealand
fYear
2014
fDate
9-12 Dec. 2014
Firstpage
73
Lastpage
80
Abstract
The proposed feasibility analysis introduces a new methodology for modelling and understanding functional Magnetic Resonance Image (fMRI) data recorded during human cognitive activity. This constitutes a type of Spatio-Temporal Brain Data (STBD) measured according to neurons spatial location inside the brain and their signals oscillating over the mental activity period [1]; thus, it is challenging to analyse and model dynamically. This paper addresses the problem by means of a novel Spiking Neural Networks (SNN) architecture, called NeuCube [2]. After the NeuCube is trained with the fMRI samples, the `hidden´ spatio- temporal relationship between data is learnt. Different cognitive states of the brain are activated while a subject is reading different sentences in terms of their polarity (affirmative and negative sentences). These are visualised via the SNN cube (SNNc) and then recognized through its classifier. The excellent classification accuracy of 90% proves the NeuCube potential in capturing the fMRI data information and classifying it correctly. The significant improvement in accuracy is demonstrated as compared with some already published results [3] on the same data sets and traditional machine learning methods. Future works is based on the proposed NeuCube model are also discussed in this paper.
Keywords
biomedical MRI; brain; image classification; image segmentation; medical image processing; neural nets; NeuCube; SNN architecture; classification method; fMRI spatio-temporal brain data; functional magnetic resonance image; human cognitive activity; mental activity period; neurons spatial location; segmentation method; spiking neural network model; Biological neural networks; Brain modeling; Data models; Data visualization; Neurons; Signal to noise ratio; Evolvings Spiking Neural Networks; NeuCube; Spatio-Temporal Brain Data; fMRI;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolving and Autonomous Learning Systems (EALS), 2014 IEEE Symposium on
Conference_Location
Orlando, FL
Type
conf
DOI
10.1109/EALS.2014.7009506
Filename
7009506
Link To Document