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Neural encoding with unsupervised spiking convolutional neural network.

Chong WangHongmei YanWei HuangWei ShengYuting WangYun-Shuang FanTao LiuTing ZouRong LiHuafu Chen
Published in: Communications biology (2023)
Accurately predicting the brain responses to various stimuli poses a significant challenge in neuroscience. Despite recent breakthroughs in neural encoding using convolutional neural networks (CNNs) in fMRI studies, there remain critical gaps between the computational rules of traditional artificial neurons and real biological neurons. To address this issue, a spiking CNN (SCNN)-based framework is presented in this study to achieve neural encoding in a more biologically plausible manner. The framework utilizes unsupervised SCNN to extract visual features of image stimuli and employs a receptive field-based regression algorithm to predict fMRI responses from the SCNN features. Experimental results on handwritten characters, handwritten digits and natural images demonstrate that the proposed approach can achieve remarkably good encoding performance and can be utilized for "brain reading" tasks such as image reconstruction and identification. This work suggests that SNN can serve as a promising tool for neural encoding.
Keyphrases
  • convolutional neural network
  • deep learning
  • resting state
  • functional connectivity
  • machine learning
  • spinal cord
  • white matter
  • working memory
  • oxidative stress
  • multiple sclerosis
  • bioinformatics analysis