Artificial neural networks capable of learning spatiotemporal chemical diffusion in the cortical brain
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摘要
Neurochemical and pharmacological studies of the central nervous system are important in understanding normal brain function and discovering effective treatments for brain diseases. Imaging systems are capable of providing large spatiotemporal chemical information, but they require the subject to remain still during recording. Implantable chemical sensors can be used in freely behaving animals and are able to provide higher resolution than imaging systems, but only in close proximity to the sensor.The aim of this research was to design and evaluate an artificial neural network capable of generating 3D chemical information over time using data acquired from a limited number of chemical sensors that could eventually be recorded from a freely behaving animal. The results show that the spatiotemporal neural network is capable of learning ion diffusion in a model of the cortical brain, in ideal or noisy conditions, and that network simulations of sensor data are as accurate as mathematical simulations.
论文关键词:Artificial intelligence,Elman,Neural network,3D,Chemical imaging,Brain,Neurochemistry
论文评审过程:Received 28 August 2009, Revised 27 May 2010, Accepted 31 May 2010, Available online 15 June 2010.
论文官网地址:https://doi.org/10.1016/j.patcog.2010.05.034