Statistical characterization of cortical-thalamic dynamics evoked by cortical stimulation in mice.

IF 3.8
Diana Nigrisoli, Simone Russo, Ruggero Freddi, Nicolas Seseri, Stefania Corti, Linda Ottoboni, Riccardo Barbieri
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Abstract

Objective.Statistical models are powerful tools for describing biological phenomena such as neuronal spiking activity. Although these models have been widely used to study spontaneous and stimulated neuronal activity, they have not yet been applied to analyze responses to electrical cortical stimulation. In this study, we present an innovative approach to characterize neuronal responses to electrical stimulation in the mouse cortex, providing detailed insights into cortical-thalamic dynamics.Approach.Our method applies mixture models to analyze the Peri-Stimulus time histogram of each neuron, predicting the probability of spiking at specific latencies following the onset of electrical stimuli. By applying this approach, we investigated neuronal responses to cortical stimulation recorded from the motor cortex, somatosensory cortex, and sensorimotor-related thalamic nuclei in the mouse brain.Main results.The characterization approach achieved high goodness of fit, and the model features were leveraged by applying machine learning methods for stimulus intensity decoding and classification of brain regions to which a neuron belongs given its response to the stimulus. The random forest model demonstrated the highestF1 scores, achieving 92.86% for stimulus intensity decoding and 84.35% for brain zone classification.Significance.This study presents a novel statistical framework for characterizing neuronal responses to electrical cortical stimulation, providing quantitative insights into cortical-thalamic dynamics. Our approach achieves high accuracy in stimulus decoding and brain region classification, providing valuable contributions for neuroscience research and neuro-technology applications.

小鼠皮质刺激引起的皮质-丘脑动力学的统计特征。
目的:统计模型是描述神经尖峰活动等生物现象的有力工具。尽管这些模型已被广泛用于研究自发和受刺激的神经元活动,但尚未应用于分析皮层电刺激的反应。在这项研究中,我们提出了一种创新的方法来表征小鼠皮层对电刺激的神经元反应,为皮层-丘脑动力学提供了详细的见解。方法:我们的方法使用混合模型来分析每个神经元的刺激时间直方图,预测电刺激开始后特定潜伏期尖峰的概率。通过应用这种方法,我们研究了小鼠大脑中运动皮层、体感觉皮层和感觉运动相关丘脑核对皮层刺激的神经元反应。主要结果:表征方法获得了很高的拟合优度,并且通过应用机器学习方法对神经元所属的大脑区域进行刺激强度解码和分类来利用模型特征。随机森林模型的F1得分最高,刺激强度解码得分为92.86%,脑区分类得分为84.35%。意义:本研究提出了一种新的统计框架来表征神经元对皮层电刺激的反应,为皮层丘脑动力学提供了定量的见解。该方法在刺激解码和脑区分类方面具有较高的准确性,为神经科学研究和神经技术应用提供了有价值的贡献。& # xD。
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