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首页> 外文期刊>Computational intelligence and neuroscience >Characterizing the Input-Output Function of the Olfactory-Limbic Pathway in the Guinea Pig
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Characterizing the Input-Output Function of the Olfactory-Limbic Pathway in the Guinea Pig

机译:表征豚鼠中嗅觉 - 肢体通路的输入输出功能

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Nowadays the neuroscientific community is taking more and more advantage of the continuous interaction between engineers and computational neuroscientists in order to develop neuroprostheses aimed at replacing damaged brain areas with artificial devices. To this end, a technological effort is required to develop neural network models which can be fed with the recorded electrophysiological patterns to yield the correct brain stimulation to recover the desired functions. In this paper we present a machine learning approach to derive the input-output function of the olfactory-limbic pathway in the in vitro whole brain of guinea pig, less complex and more controllable than an in vivo system. We first experimentally characterized the neuronal pathway by delivering different sets of electrical stimuli from the lateral olfactory tract (LOT) and by recording the corresponding responses in the lateral entorhinal cortex (l-ERC). As a second step, we used information theory to evaluate how much information output features carry about the input. Finally we used the acquired data to learn the LOT-l-ERC "I/O function," by means of the kernel regularized least squares method, able to predict l-ERC responses on the basis of LOT stimulation features. Our modeling approach can be further exploited for brain prostheses applications.
机译:如今,神经科学界正在越来越多地利用工程师和计算神经科学家之间的不断互动,以便开发神经调节剂,旨在用人工装置取代受损的脑区域。为此,需要一种技术努力来开发神经网络模型,该模型可以用记录的电生理模式喂养,以产生正确的脑刺激以恢复所需的功能。在本文中,我们展示了一种机器学习方法来导出豚鼠的体外整个脑中嗅觉 - 肢体途径的输入 - 输出功能,比​​体内系统更络合和更可控的血管。我们首先通过从横向嗅觉沟(批次)的不同的电刺激并通过记录横向梭形皮质(L-ERC)中的相应反应来进行神经元途径。作为第二步,我们使用了信息理论来评估信息输出功能的携带数量。最后,我们使用所获取的数据来通过内核正规化最小二乘法来学习Lot-L-ERC“I / O功能”,能够基于批量刺激特征来预测L-ERC响应。我们的建模方法可以进一步利用脑假肢应用。

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