首页> 外文期刊>Proceedings of the National Academy of Sciences of the United States of America >Traditional waveform based spike sorting yields biased rate code estimates
【24h】

Traditional waveform based spike sorting yields biased rate code estimates

机译:基于传统波形的尖峰排序会产生偏差率码估计

获取原文
获取原文并翻译 | 示例
       

摘要

Much of neuroscience has to do with relating neural activity and behavior or environment. One common measure of this relationship is the firing rates of neurons as functions of behavioral or environmental parameters, often called tuning functions and receptive fields. Firing rates are estimated from the spike trains of neurons recorded by electrodes implanted in the brain. Individual neurons' spike trains are not typically readily available, because the signal collected at an electrode is often a mixture of activities from different neurons and noise. Extracting individual neurons' spike trains from voltage signals, which is known as spike sorting, is one of the most important data analysis problems in neuroscience, because it has to be undertaken prior to any analysis of neurophysiological data in which more than one neuron is believed to be recorded on a single electrode. All current spike-sorting methods consist of clustering the characteristic spike waveforms of neurons. The sequence of first spike sorting based on waveforms, then estimating tuning functions, has long been the accepted way to proceed. Here, we argue that the covariates that modulate tuning functions also contain information about spike identities, and that if tuning information is ignored for spike sorting, the resulting tuning function estimates are biased and inconsistent, unless spikes can be classified with perfect accuracy. This means, for example, that the commonly used peristimulus time histogram is a biased estimate of the firing rate of a neuron that is not perfectly isolated. We further argue that the correct conceptual way to view the problem out is to note that spike sorting provides information about rate estimation and vice versa, so that the two relationships should be considered simultaneously rather than sequentially. Indeed we show that when spike sorting and tuning-curve estimation are performed in parallel, unbiased estimates of tuning curves can be recovered even from imperfectly sorted neurons.
机译:许多神经科学与神经活动,行为或环境有关。这种关系的一种常见度量是神经元的放电速率,作为行为或环境参数的函数,通常称为调整函数和接受场。从植入到大脑中的电极记录的神经元的尖峰序列估计发射率。单个神经元的尖峰序列通常不易获得,因为在电极上收集的信号通常是来自不同神经元的活动和噪声的混合。从电压信号中提取单个神经元的尖峰序列,这称为尖峰排序,是神经科学中最重要的数据分析问题之一,因为必须在对任何涉及多个神经元的神经生理学数据进行分析之前进行处理记录在单个电极上当前所有的尖峰分类方法都包括对神经元的特征尖峰波形进行聚类。长期以来,基于波形的首先尖峰排序的顺序,然后估计调谐功能的顺序一直是公认的方法。在这里,我们认为调制调整函数的协变量还包含有关尖峰标识的信息,并且如果忽略调整信息进行尖峰排序,则除非可以以完美的精度对尖峰进行分类,否则生成的调整函数估计将存在偏差且不一致。这意味着,例如,常用的刺激周围时间直方图是未完全隔离的神经元放电速率的有偏估计。我们进一步认为,解决问题的正确概念方法是要注意尖峰排序提供有关速率估计的信息,反之亦然,因此应该同时考虑而不是顺序考虑这两种关系。实际上,我们证明了,当并行执行尖峰排序和调整曲线估计时,即使从分类不正确的神经元中也可以恢复调整曲线的无偏估计。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号