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A new EC-PC threshold estimation method for in vivo neural spike detection

机译:一种用于体内神经峰值检测的EC-PC阈值估计新方法

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摘要

This paper models in vivo neural signals and noise for extracellular spike detection. Although the recorded data approximately follow Gaussian distribution, they clearly deviate from white Gaussian noise due to neuronal synchronization and sparse distribution of spike energy. Our study predicts the coexistence of two components embedded in neural data dynamics, one in the exponential form (noise) and the other in the power form (neural spikes). The prediction of the two components has been confirmed in experiments of in vivo sequences recorded from the hippocampus, cortex surface, and spinal cord; both acute and long-term recordings; and sleep and awake states. These two components are further used as references for threshold estimation. Different from the conventional wisdom of setting a threshold at 3×RMS, the estimated threshold exhibits a significant variation. When our algorithm was tested on synthesized sequences with a different signal to noise ratio and on/off firing dynamics, inferred threshold statistics track the benchmarks well. We envision that this work may be applied to a wide range of experiments as a front-end data analysis tool.
机译:本文对体内神经信号和噪声进行模型化,以检测细胞外峰。尽管所记录的数据大致遵循高斯分布,但由于神经元同步和尖峰能量的稀疏分布,它们明显偏离高斯白噪声。我们的研究预测神经数据动力学中嵌入的两个组件的共存,一个以指数形式(噪声),另一个以幂形式(神经尖峰)。从海马,皮层表面和脊髓记录的体内序列实验已证实了这两种成分的预测。急性和长期记录;以及睡眠和清醒状态。这两个组成部分进一步用作阈值估计的参考。与将阈值设置为3×RMS的传统观点不同,估计的阈值显示出显着变化。当我们的算法在具有不同信噪比和开/关触发动态的合成序列上进行测试时,推断的阈值统计数据可以很好地跟踪基准。我们设想,这项工作可以作为前端数据分析工具应用于广泛的实验中。

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  • 来源
    《Journal of neural engineering》 |2012年第4期|p.046017.1-046017.16|共16页
  • 作者单位

    Department of Electrical and Computer Engineering, National University of Singapore,Singapore 119077, Singapore;

    Department of Bioengineering and California Nanosystems Institute, UCLA, Los Angeles,CA 900095-1600, USA;

    Department of Electrical and Computer Engineering, National University of Singapore,Singapore 119077, Singapore;

    Department of Electrical and Computer Engineering, National University of Singapore,Singapore 119077, Singapore;

    Department of Electrical and Computer Engineering, National University of Singapore,Singapore 119077, Singapore;

    Huntington Medical Research Institutes, Pasadena, CA 91105, USA;

    Institute for Infocomm Research, Agency for Science, Technology and Research, Singapore 138632,Singapore;

    Department of Electrical and Computer Engineering, National University of Singapore,Singapore 119077, Singapore;

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