代表脑机接口中神经元间单向连接的贝叶斯解码器

Shuhang Chen, Yiwen Wang
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引用次数: 0

摘要

定向神经连接对于理解神经元如何在神经网络中编码和传递信息至关重要。之前关于单神经元编码模型的研究说明了神经元如何调节刺激、基本运动以及与其他神经元的相互作用。这些编码模型已被用于脑机接口(BMI)的贝叶斯解码器中,以解释神经群如何表达运动意图。然而,现有的方法只考虑了神经元之间的粗略相关性,没有方向性连接,而真实神经元之间的突触却有明确的方向。因此,在这些模型中,我们无法指定适当的功能神经连接,也无法指定神经元如何合作来真实地表达运动意图。因此,我们建议在 BMI 的贝叶斯解码器中表示方向性神经连接。我们的方法基于贝叶斯规则推导出链似然,从而形成神经元之间的单向影响。根据推导出的结构,可以利用先验因果关系建立更精确的神经编码模型。因此,我们的方法可以更精确地表示功能神经回路,并有利于 BMI 的解码。我们在模拟大鼠双杠杆辨别任务的合成数据中验证了所提出的方法。结果表明,我们的方法在表示方向神经连接性方面优于现有方法。此外,我们的方法使用的参数更少,因此训练效率更高。临床相关性-本文提出了一种能表示单向神经连接性的解码器,这种解码器有可能在行为水平上验证神经元之间的因果关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian Decoder Representing Single-Directional Connectivity between Neurons in Brain-Machine Interface.

Directional neural connectivity is essential to understanding how neurons encode and transmit information in the neural network. The previous studies on single neuronal encoding models illustrate how the neurons modulate the stimulus, underlying movement, and interactions with other neurons. And these encoding models have been used in the Bayesian decoders of the brain-machine interface (BMI) to explain how the neural population represents the movement intentions. However, the existing methods only consider rough correlations between neurons without directional connections, while the synapses between real neurons have explicit directions. Therefore, in these models, we cannot specify the proper functional neural connectivity and how the neurons cooperate to represent the movement intentions in truth. Therefore, we propose representing the directional neural connectivity in the Bayesian decoder in BMI. Our method derives a chain-likelihood based on Bayes' rule to form the single-directional influence between neurons. According to the derived structure, the prior causality relationship can be used to build more precise neural encoding models. Therefore, our method can represent the functional neural circuit more precisely and benefit the decoding in the BMI. We validate the proposed method in synthetic data simulating the rat's two-lever discrimination task. The results demonstrate that our method outperforms the existing methods by representing directional-neural connectivity. Besides, our method is more efficient in training because it employs fewer parameters. Consequently, our method can be used to evaluate the causality between neurons at the behavior level.Clinical Relevance-This paper proposes a decoder that can represent single-directional neural connectivity, which is potential to validate the causality relationship between neurons at behavior level.

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