Detecting change points in neural population activity with contrastive metric learning.

Carolina Urzay, Nauman Ahad, Mehdi Azabou, Aidan Schneider, Geethika Atamkuri, Keith B Hengen, Eva L Dyer
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Abstract

Finding points in time where the distribution of neural responses changes (change points) is an important step in many neural data analysis pipelines. However, in complex and free behaviors, where we see different types of shifts occurring at different rates, it can be difficult to use existing methods for change point (CP) detection because they can't necessarily handle different types of changes that may occur in the underlying neural distribution. Additionally, response changes are often sparse in high dimensional neural recordings, which can make existing methods detect spurious changes. In this work, we introduce a new approach for finding changes in neural population states across diverse activities and arousal states occurring in free behavior. Our model follows a contrastive learning approach: we learn a metric for CP detection based on maximizing the Sinkhorn divergences of neuron firing rates across two sides of a labeled CP. We apply this method to a 12-hour neural recording of a freely behaving mouse to detect changes in sleep stages and behavior. We show that when we learn a metric, we can better detect change points and also yield insights into which neurons and sub-groups are important for detecting certain types of switches that occur in the brain.

用对比度量学习检测神经群体活动的变化点。
在许多神经数据分析管道中,寻找神经响应分布变化的时间点(变化点)是重要的一步。然而,在复杂和自由的行为中,我们看到不同类型的变化以不同的速率发生,使用现有的方法进行变化点(CP)检测可能很困难,因为它们不一定能处理潜在神经分布中可能发生的不同类型的变化。此外,在高维神经记录中,响应变化通常是稀疏的,这可以使现有的方法检测到虚假的变化。在这项工作中,我们介绍了一种新的方法,用于发现自由行为中不同活动和唤醒状态下神经群体状态的变化。我们的模型遵循对比学习方法:我们学习了一种基于最大化标记CP两侧神经元放电率Sinkhorn差异的CP检测指标。我们将该方法应用于自由行为小鼠的12小时神经记录,以检测睡眠阶段和行为的变化。我们表明,当我们学习一个指标时,我们可以更好地检测变化点,也可以深入了解哪些神经元和亚组对于检测大脑中发生的某些类型的开关很重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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