Sendi Mohammad S E, Kanta Vasiliki, Inman Cory S, Manns Joseph R, Hamann Stephan, Gross Robert E, Willie Jon T, Mahmoudi Babak
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3625-3628. doi: 10.1109/EMBC44109.2020.9176742.
Several studies have shown that direct brain stimulation can enhance memory in humans and animal models. Investigating the neurophysiological changes induced by brain stimulation is an important step towards understanding the neural processes underlying memory function. Furthermore, it paves the way for developing more efficient neuromodulation approaches for memory enhancement. In this study, we utilized a combination of unsupervised and supervised machine learning approaches to investigate how amygdala stimulation modulated hippocampal network activities during the encoding phase. Using a sliding window in time, we estimated the hippocampal dynamic functional network connectivity (dFNC) after stimulation and during sham trials, based on the covariance of local field potential recordings in 4 subregions of the hippocampus. We extracted different network states by combining the dFNC samples from 5 subjects and applying k-means clustering. Next, we used the between-state transition numbers as the latent features to classify between amygdala stimulation and sham trials across all subjects. By training a logistic regression model, we could differentiate stimulated from sham trials with 67% accuracy across all subjects. Using elastic net regularization as a feature selection method, we identified specific patterns of hippocampal network state transition in response to amygdala stimulation. These results offer a new approach to better understanding of the causal relationship between hippocampal network dynamics and memory-enhancing amygdala stimulation.
多项研究表明,直接脑刺激可增强人类和动物模型的记忆。研究脑刺激引起的神经生理变化是理解记忆功能背后神经过程的重要一步。此外,它为开发更有效的记忆增强神经调节方法铺平了道路。在本研究中,我们利用无监督和有监督机器学习方法的组合,来研究杏仁核刺激在编码阶段如何调节海马网络活动。通过在时间上使用滑动窗口,我们基于海马4个亚区域局部场电位记录的协方差,估计了刺激后和假试验期间海马的动态功能网络连接性(dFNC)。我们通过合并5名受试者的dFNC样本并应用k均值聚类来提取不同的网络状态。接下来,我们将状态间转换数作为潜在特征,对所有受试者的杏仁核刺激和假试验进行分类。通过训练逻辑回归模型,我们在所有受试者中能够以67%的准确率区分刺激试验和假试验。使用弹性网正则化作为特征选择方法,我们确定了海马网络状态转换对杏仁核刺激响应的特定模式。这些结果为更好地理解海马网络动力学与增强记忆的杏仁核刺激之间的因果关系提供了一种新方法。