基于统计和分形维数的特征预测神经元的持续活动

P. Petrantonakis, Athanasia Papoutsi, Panayiota Poirazi
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引用次数: 2

摘要

持续活动是神经元放电的延长,持续时间超过刺激的呈现,在执行工作记忆任务的过程中,在几个皮层区域记录了这种活动。持续活动的出现是刺激特异性的:不是所有的输入都会导致持续的放电,只有“首选”的才会。然而,决定刺激是否会引发持续活动的刺激或刺激引起的反应的特征仍然未知。在本文中,我们提出了各种基于统计和分形维数的特征,这些特征来源于详细的生物物理前额叶皮层微电路模型的活动,用于有效分类即将到来的持续或非持续活动状态。此外,通过引入一种新的多数投票分类框架,我们设法实现了高达92.5%的分类率,这表明所选择的特征携带着重要的预测信息,这些信息可能被大脑读出,以识别“偏好”vs。没有优先的刺激。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards predicting persistent activity of neurons by statistical and fractal dimension-based features
Persistent activity is the prolongation of neuronal firing that outlasts the presentation of a stimulus and has been recorded during the execution of working memory tasks in several cortical regions. The emergence of persistent activity is stimulus-specific: not all inputs lead to persistent firing, only `preferred' ones. However, the features of a stimulus or the stimulus-induced response that determine whether it will ignite persistent activity remain unknown. In this paper, we propose various statistical and fractal dimension-based features derived from the activity of a detailed biophysical Prefrontal Cortex microcircuit model, for the efficient classification of the upcoming Persistent or Non-Persistent-activity state. Moreover, by introducing a novel majority voting classification framework we manage to achieve classification rates up to 92.5%, suggesting that selected features carry important predictive information that may be read out by the brain in order to identify `preferred' vs. `no-preferred' stimuli.
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