Neural connectivity inference with spike-timing dependent plasticity network  被引量:2

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作  者:John MOON Yuting WU Xiaojian ZHU Wei D.LU 

机构地区:[1]Department of Electrical Engineering and Computer Science,University of Michigan,Ann Arbor 48109,USA

出  处:《Science China(Information Sciences)》2021年第6期66-75,共10页中国科学(信息科学)(英文版)

基  金:supported in part by National Science Foundation through Award(Grant No.1915550)。

摘  要:Knowing the connectivity patterns in neural circuitry is essential to understand the operating mechanism of the brain,as it allows the analysis of how neural signals are processed and flown through the neural system.With the recent advances in neural recording technologies in terms of channel size and time resolution,a simple and efficient system to perform neural connectivity inference is highly desired,which will enable the process of high dimensional neural activity recording data and reduction of the computational time and cost.In this work,we show that the spike-timing dependent plasticity(STDP)algorithm can be used to reconstruct neural connectivity patterns in a biological neural network,with higher accuracy and efficiency than statistic-based inference methods.The biologically inspired STDP learning rules are natively implemented in a second-order memristor network and are used to estimate the type and the direction of neural connections.When stimulated by the recorded neural spike trains,the memristor device conductance is modulated by the proposed STDP learning rules,which in turn reflects the correlation of the spikes and the possibility of neural connections.By compensating for the different levels of neural activity,highly reliable inference performance can be achieved.The proposed approach offers real-time and local learning,resulting in reduced computational cost/time and strong tolerance to variations of the neural system.

关 键 词:spike-timing dependent plasticity neural connectivity MEMRISTOR online learning second-order memristor 

分 类 号:TN60[电子电信—电路与系统] Q42[生物学—神经生物学]

 

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