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Application of Poisson-based hidden Markov models to in vitro neuronal data

机译:基于泊松的隐马尔可夫模型在体外神经元数据中的应用

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Recent advances in electrophysiological techniques have made it possible to culture in vitro biological networks and closely monitor ensemble neuronal activity using multi-electrode recording techniques. One of the main challenges in this area of research is attempting to understand how intrinsic activity is propagated within these neuronal networks and how it may be manipulated via external stimuli in order to harness their computational capacity. This raises the question of what similarities and differences arise between spontaneous and evoked responses and how external stimulation can be optimally applied in order to robustly control the neuronal plasticity of neuronal cultures. In this paper we present in detail an application of machine learning methods, specifically hidden Markov models with Poisson-based output distributions, with which we aim to perform comparative studies between spontaneous and evoked neuronal activity over different ages of network development.
机译:电生理技术的最新进展已使培养体外生物网络和使用多电极记录技术密切监测整体神经元活动成为可能。该研究领域的主要挑战之一是试图了解内在活动如何在这些神经元网络内传播,以及如何通过外部刺激对其进行操纵以利用其计算能力。这就提出了一个问题,即在自发反应和诱发反应之间会出现什么相似和不同之处,以及如何最佳地应用外部刺激以稳健地控制神经元培养物的神经元可塑性。在本文中,我们详细介绍了机器学习方法的应用,特别是基于Poisson输出分布的隐马尔可夫模型,旨在通过网络发展的不同年龄对自发性和诱发性神经元活动进行比较研究。

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