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一种深度生成对抗网络,可捕获大脑皮层去抑制回路中复杂的螺旋波。

A deep generative adversarial network capturing complex spiral waves in disinhibited circuits of the cerebral cortex.

机构信息

School of Psychology, University of Ottawa, 156 Jean-Jacques Lussier, Ottawa, ON, K1N 6N5, Canada.

University of Ottawa Brain and Mind Research Institute, 451 Smyth Rd., Ottawa, ON, K1H 8M5, Canada.

出版信息

BMC Neurosci. 2023 Mar 24;24(1):22. doi: 10.1186/s12868-023-00792-6.

Abstract

BACKGROUND

In the cerebral cortex, disinhibited activity is characterized by propagating waves that spread across neural tissue. In this pathological state, a widely reported form of activity are spiral waves that travel in a circular pattern around a fixed spatial locus termed the center of mass. Spiral waves exhibit stereotypical activity and involve broad patterns of co-fluctuations, suggesting that they may be of lower complexity than healthy activity.

RESULTS

To evaluate this hypothesis, we performed dense multi-electrode recordings of cortical networks where disinhibition was induced by perfusing a pro-epileptiform solution containing 4-Aminopyridine as well as increased potassium and decreased magnesium. Spiral waves were identified based on a spatially delimited center of mass and a broad distribution of instantaneous phases across electrodes. Individual waves were decomposed into "snapshots" that captured instantaneous neural activation across the entire network. The complexity of these snapshots was examined using a measure termed the participation ratio. Contrary to our expectations, an eigenspectrum analysis of these snapshots revealed a broad distribution of eigenvalues and an increase in complexity compared to baseline networks. A deep generative adversarial network was trained to generate novel exemplars of snapshots that closely captured cortical spiral waves. These synthetic waves replicated key features of experimental data including a tight center of mass, a broad eigenvalue distribution, spatially-dependent correlations, and a high complexity. By adjusting the input to the model, new samples were generated that deviated in systematic ways from the experimental data, thus allowing the exploration of a broad range of states from healthy to pathologically disinhibited neural networks.

CONCLUSIONS

Together, results show that the complexity of population activity serves as a marker along a continuum from healthy to disinhibited brain states. The proposed generative adversarial network opens avenues for replicating the dynamics of cortical seizures and accelerating the design of optimal neurostimulation aimed at suppressing pathological brain activity.

摘要

背景

在大脑皮层中,去抑制活动的特征是传播波在神经组织中传播。在这种病理状态下,一种广泛报道的活动形式是螺旋波,它以一个称为质心的固定空间位置为中心呈圆形图案传播。螺旋波表现出典型的活动,并涉及广泛的共同波动模式,这表明它们的复杂性可能低于健康活动。

结果

为了验证这一假设,我们对皮质网络进行了密集的多电极记录,在这些网络中,通过灌注含有 4-氨基吡啶以及增加钾和减少镁的致癫痫溶液来诱导去抑制。螺旋波是基于空间限定的质心和电极之间广泛分布的瞬时相位来识别的。单个波被分解为“快照”,这些快照捕获了整个网络中的瞬时神经激活。使用称为参与比的度量来检查这些快照的复杂性。与我们的预期相反,对这些快照的特征值谱分析显示特征值分布广泛,与基线网络相比复杂性增加。训练了一个深度生成对抗网络来生成新的快照样本,这些样本很好地捕捉了皮质螺旋波的特征。这些合成波复制了实验数据的关键特征,包括紧密的质心、广泛的特征值分布、空间相关和高复杂性。通过调整模型的输入,可以生成偏离实验数据的新样本,从而可以从健康到病理性去抑制神经网络的广泛状态进行探索。

结论

总之,结果表明,群体活动的复杂性是从健康到去抑制脑状态的连续体的标志物。所提出的生成对抗网络为复制皮质癫痫发作的动力学和加速旨在抑制病理性脑活动的最佳神经刺激设计开辟了途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c9f8/10039524/35f5b21d30c3/12868_2023_792_Fig1_HTML.jpg

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