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Classification and Segmentation of fMRI Spatio-temporal Brain Data With a Neucube Evolving Spiking Neural Network Model

机译:利用Neucube演化尖峰神经网络模型对fmRI时空脑数据进行分类和分割

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摘要

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.
机译:拟议的可行性分析引入了一种新的方法,用于建模和理解在人类认知活动中记录的功能性磁共振图像(fMRI)数据。这构成了一种时空大脑数据(STBD),它是根据大脑内部神经元的空间位置及其在精神活动时期内振荡的信号进行测量的[1];因此,动态分析和建模具有挑战性。本文通过一种名为“ NeuCube [2]”的新型尖峰神经网络(SNN)架构解决了该问题。在使用功能磁共振成像样本对NeuCube进行训练后,即可了解数据之间的“隐藏”时空关系。当受试者根据极性(肯定和否定句子)阅读不同的句子时,会激活大脑的不同认知状态。这些通过SNN多维数据集(SNNc)可视化,然后通过其分类器进行识别。 90%的出色分类精度证明了NeuCube在捕获fMRI数据信息并将其正确分类方面的潜力。与在相同数据集和传统机器学习方法上已经发表的一些结果[3]相比,证明了准确性的显着提高。本文还将讨论基于提议的NeuCube模型的未来工作。

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