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首页> 外文期刊>Journal of Neuroscience Methods >A comparison of methods used to detect changes in neuronal discharge patterns.
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A comparison of methods used to detect changes in neuronal discharge patterns.

机译:比较用于检测神经元放电模式变化的方法。

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摘要

The discharge pattern of two thalamic neurones was recorded from a conscious monkey performing voluntary movements about the wrist joint. The neuronal discharge was displayed as a raster centred on movement of the wrist. The discharge patterns of both neurones was very strongly correlated with movement. Three experienced researchers were asked to examine the data and to classify every part of each trial as background discharge, 'on' (increased firing rate) or 'off' (decreased or zero firing rate) and to mark the times that neuronal discharge changed state. A 'standard output' was made from these classifications. A back-propagation artificial Neural Network (the Network) was used to model the standard output and cumulative sums (CUSUMs) and maximum likelihood was then performed on the data and compared with the Network. There was a high correlation between the output of each observer (r > 0.61) and the standard output and between the Network and the standard output (r > 0.99). However the correlation between standard output and CUSUMs (r = 0.06) and standard output and maximum likelihood (r = 0.36) was much lower. The Network could be trained with as few as 12 trials, indicating a high degree of constancy in the methods employed by the observers. The Network was also highly efficient at detecting changes in state of neuronal activity (r > 0.99). In summary, when used on single trial data, visual inspection is a reliable method for detecting timing of change neuronal discharge and is superior to CUSUM and maximum likelihood. As well it is capable of detecting neuronal discharge state: that is whether firing rate is increased, normal or decreased. Neural Networks promise to be a useful method of confirming the consistency of visual inspection as a means of detecting changes in neuronal discharge pattern.
机译:从一只意识清醒的猴子绕腕关节进行自愿运动记录了两个丘脑神经元的放电模式。神经放电显示为以手腕运动为中心的栅格。两种神经元的放电模式都与运动密切相关。要求三名经验丰富的研究人员检查数据并将每个试验的每个部分归类为背景放电,“开”(增加的放电速率)或“关”(减少的放电速率或零放电速率),并标记神经元放电改变状态的时间。从这些分类得出“标准输出”。使用反向传播人工神经网络(网络)对标准输出和累积总和(CUSUM)进行建模,然后对数据执行最大似然并将其与网络进行比较。每个观察者的输出(r> 0.61)与标准输出之间以及网络与标准输出(r> 0.99)之间具有高度相关性。但是,标准输出和CUSUM(r = 0.06)与标准输出和最大似然(r = 0.36)之间的相关性要低得多。该网络可以进行多达12次试验的培训,这表明观察者所采用的方法具有高度的稳定性。该网络在检测神经元活动状态变化方面也非常有效(r> 0.99)。总之,当用于单一试验数据时,目视检查是检测神经元放电改变时机的可靠方法,优于CUSUM和最大可能性。同样,它能够检测神经元放电状态:即放电速率增加,正常还是降低。神经网络有望成为确认视觉检查一致性的一种有用方法,以此作为检测神经元放电模式变化的一种手段。

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