首页> 外文会议>International work-conference on the interplay between natural and artificial computation;IWINAC 2009 >Analysis of Retinal Ganglion Cells Population Responses Using Information Theory and Artificial Neural Networks: Towards Functional Cell Identification
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Analysis of Retinal Ganglion Cells Population Responses Using Information Theory and Artificial Neural Networks: Towards Functional Cell Identification

机译:使用信息论和人工神经网络分析视网膜神经节细胞群体反应:朝着功能细胞识别

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In this paper, we analyse the retinal population data looking at behaviour. The method is based on creating population subsets using the autocorrelograms of the cells and grouping them according to a minimal Euclidian distance. These subpopulations share functional properties and may be used for data reduction, extracting the relevant information from the code. Information theory (IT) and artificial neural networks (ANNs) have been used to quantify the coding goodness of every sub-population, showing a strong correlation between both methods. All cells that belonged to a certain subpopulation showed very small variances in the information they conveyed while these values were significantly different across subpopulations, suggesting that the functional separation worked around the capacity of each cell to code different stimuli.
机译:在本文中,我们将分析行为方面的视网膜人口数据。该方法基于使用细胞的自相关图创建种群子集,并根据最小欧几里得距离对其进行分组。这些子群具有功能特性,可用于数据缩减,从代码中提取相关信息。信息论(IT)和人工神经网络(ANN)已用于量化每个子种群的编码优度,显示了这两种方法之间的强相关性。属于某个亚群的所有细胞在所传达的信息中均表现出很小的差异,而这些值在各个亚群之间却存在显着差异,这表明功能分离围绕每个细胞编码不同刺激的能力而变化。

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