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Online Detection of Multiple Stimulus Changes Based on Single Neuron Interspike Intervals

机译:基于单神经元间断间隔的多个刺激变化的在线检测

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摘要

Nervous systems need to detect stimulus changes based on their neuronal responses without using any additional information on the number, times, and types of stimulus changes. Here, two relatively simple, biologically realistic change point detection methods are compared with two common analysis methods. The four methods are applied to intra- and extracellularly recorded responses of a single cricket interneuron (AN2) to acoustic simulation. Solely based on these recorded responses, the methods should detect an unknown number of different types of sound intensity in- and decreases shortly after their occurrences. For this task, the methods rely on calculating an adjusting interspike interval (ISI). Both simple methods try to separate responses to intensity in- or decreases from activity during constant stimulation. The Pure-ISI method performs this task based on the distribution of the ISI, while the ISI-Ratio method uses the ratio of actual and previous ISI. These methods are compared to the frequently used Moving-Average method, which calculates mean and standard deviation of the instantaneous spike rate in a moving interval. Additionally, a classification method provides the upper limit of the change point detection performance that can be expected for the cricket interneuron responses. The classification learns the statistical properties of the actual and previous ISI during stimulus changes and constant stimulation from a training data set. The main results are: (1) The Moving-Average method requires a stable activity in a long interval to estimate the previous activity, which was not always given in our data set. (2) The Pure-ISI method can reliably detect stimulus intensity increases when the neuron bursts, but it fails to identify intensity decreases. (3) The ISI-Ratio method detects stimulus in- and decreases well, if the spike train is not too noisy. (4) The classification method shows good performance for the detection of stimulus in- and decreases. But due to the statistical learning, this method tends to confuse responses to constant stimulation with responses triggered by a stimulus change. Our results suggest that stimulus change detection does not require computationally costly mechanisms. Simple nervous systems like the cricket's could effectively apply ISI-Ratios to solve this fundamental task.
机译:神经系统需要基于其神经元反应来检测刺激变化,而无需使用任何其他有关刺激变化的次数,次数和类型的信息。在此,将两种相对简单的,生物学上现实的变化点检测方法与两种常见的分析方法进行了比较。这四种方法适用于单个间神经元(AN2)对声学模拟的细胞内和细胞外记录反应。仅根据这些记录的响应,这些方法应在输入中检测到未知数量的不同类型的声音强度,并在出现后立即减小声音强度。对于此任务,这些方法依赖于计算调整的尖峰间隔(ISI)。两种简单的方法都试图在持续刺激过程中将对强度或强度的响应与活动分开。 Pure-ISI方法根据ISI的分布执行此任务,而ISI-Ratio方法使用实际ISI与先前ISI的比率。将这些方法与经常使用的移动平均方法进行比较,该方法计算移动间隔中瞬时尖峰速率的平均值和标准偏差。另外,分类方法提供了板球中间神经反应可以预期的变化点检测性能的上限。该分类从训练数据集中学习刺激变化和持续刺激期间实际和先前ISI的统计属性。主要结果是:(1)移动平均法需要很长一段时间的稳定活动来估计以前的活动,而在我们的数据集中并不总是这样。 (2)Pure-ISI方法可以可靠地检测神经元爆发时刺激强度的增加,但无法识别强度降低的情况。 (3)如果尖峰序列不太嘈杂,ISI-Ratio方法会检测到刺激并很好地减小刺激。 (4)分类方法在刺激内和刺激的减少方面表现出良好的性能。但是由于统计学的学习,这种方法倾向于将对持续刺激的反应与由刺激变化触发的反应相混淆。我们的结果表明,刺激变化检测不需要计算上昂贵的机制。像the这样的简单神经系统可以有效地应用ISI-Ratio来解决这一基本任务。

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