利用跨试验相关性发现神经元共振模式时间结构的方法

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Duho Sihn, Soyoung Chae, Sung-Phil Kim
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引用次数: 0

摘要

背景:神经元共激活模式的跨试验相关性对信息编码非常重要,但寻找其时间结构的方法在很大程度上仍未被探索:在本研究中,我们提出了一种寻找神经元跨试验相关共振模式的时间集群的方法。我们将每个时间点的多维神经活动转化为二元状态的共动模式,并预测不同时间点的共动模式。我们设计了一种适用于这些共同活动模式预测的方法,称为一般事件预测。然后利用跨时间预测的准确性来估算两个时间点上共同作用模式之间的跨试验相关性。我们通过改进的 K-means 算法从跨时空预测准确性中提取时间聚类:结果:通过基于基本事实的模拟验证了所提方法的可行性。我们将提出的方法应用于小鼠运动皮层记录的钙成像数据集,并展示了运动任务中运动皮层共振模式的时间集群:与现有方法的比较:现有的余弦相似性方法不考虑跨试验相关性,只能显示对侧神经反应的时间结构,而所提出的方法同时显示了对侧和同侧神经反应的时间结构,证明了跨试验相关性的影响:本研究介绍了一种测量神经元集合活动时间结构的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A method to find temporal structure of neuronal coactivity patterns with across-trial correlations

A method to find temporal structure of neuronal coactivity patterns with across-trial correlations

Background

The across-trial correlation of neurons' coactivity patterns emerges to be important for information coding, but methods for finding their temporal structures remain largely unexplored.

New method

In the present study, we propose a method to find time clusters in which coactivity patterns of neurons are correlated across trials. We transform the multidimensional neural activity at each timing into a coactivity pattern of binary states, and predict the coactivity patterns at different timings. We devise a method suitable for these coactivity pattern predictions, call general event prediction. Cross-temporal prediction accuracy is then used to estimate across-trial correlations between coactivity patterns at two timings. We extract time clusters from the cross-temporal prediction accuracy by a modified k-means algorithm.

Results

The feasibility of the proposed method is verified through simulations based on ground truth. We apply the proposed method to a calcium imaging dataset recorded from the motor cortex of mice, and demonstrate time clusters of motor cortical coactivity patterns during a motor task.

Comparison with existing methods

While the existing cosine similarity method, which does not account for across-trial correlation, shows temporal structures only for contralateral neural responses, the proposed method reveals those for both contralateral and ipsilateral neural responses, demonstrating the effect of across-trial correlations.

Conclusions

This study introduces a novel method for measuring the temporal structure of neuronal ensemble activity.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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