Hoshino Osamu
Department of Intelligent Systems Engineering, Ibaraki University, Hitachi, Ibaraki, 316-8511, Japan
Neural Comput. 2014 Jul;26(7):1362-85. doi: 10.1162/NECO_a_00606. Epub 2014 Apr 7.
We examined whether and how the balancing of crossmodal excitation and inhibition affects intersensory facilitation. A neural network model, comprising lower-order unimodal networks (X, Y) and a higher-order multimodal network (M), was simulated. Crossmodal excitation was made by direct activation of principal cells of the X network by the Y network. Crossmodal inhibition was made in an indirect manner: the Y network activated glial cells of the X network. This let glial plasma membrane transporters export GABA molecules into the extracellular space and increased the level of ambient GABA. The ambient GABA molecules were accepted by extrasynaptic GABAa receptors and tonically inhibited principal cells of the X network. Namely, crossmodal inhibition was made through GABAergic gliotransmission. Intersensory facilitation was assessed in terms of multisensory gain: the difference between the numbers of spikes evoked by multisensory (XY) stimulation and unisensory (X-alone) stimulation. The maximal multisensory gain (XY-X) could be achieved at an intermediate noise level by balancing crossmodal excitation and inhibition. This result supports an experimentally derived conclusion: intersensory facilitation under noisy environmental conditions is not necessarily in accord with the principle of inverse effectiveness; rather, multisensory gain is maximal at intermediate signal-to-noise ratio (SNR) levels. The maximal multisensory gain was available at the weakest signal if noise was not present, indicating that the principle of inverse effectiveness is a special case of the intersensory facilitation model proposed here. We suggest that the balancing of crossmodal excitation and inhibition may be crucial for intersensory facilitation. The GABAergic glio-transmission-mediated crossmodal inhibitory mechanism effectively works for intersensory facilitation and on determining the maximal multisensory gain in the entire SNR range between the two extremes: low and high SNRs.
我们研究了跨模态兴奋与抑制的平衡是否以及如何影响跨感觉促进作用。我们模拟了一个神经网络模型,该模型由低阶单模态网络(X、Y)和高阶多模态网络(M)组成。跨模态兴奋是通过Y网络直接激活X网络的主细胞来实现的。跨模态抑制是以间接方式进行的:Y网络激活X网络的神经胶质细胞。这使得神经胶质细胞质膜转运体将GABA分子输出到细胞外空间,并提高了细胞外GABA的水平。细胞外GABA分子被突触外GABAa受体接受,并对X网络的主细胞产生持续性抑制作用。也就是说,跨模态抑制是通过GABA能胶质传递实现的。跨感觉促进作用是根据多感觉增益来评估的:多感觉(XY)刺激和单感觉(仅X)刺激诱发的尖峰数量之差。通过平衡跨模态兴奋与抑制,在中等噪声水平下可实现最大多感觉增益(XY - X)。这一结果支持了一个实验得出的结论:在嘈杂环境条件下的跨感觉促进作用不一定符合逆有效性原则;相反,多感觉增益在中等信噪比(SNR)水平时最大。如果不存在噪声,在最弱信号时可获得最大多感觉增益,这表明逆有效性原则是此处提出的跨感觉促进模型的一个特例。我们认为,跨模态兴奋与抑制的平衡可能对跨感觉促进作用至关重要。GABA能胶质传递介导的跨模态抑制机制有效地作用于跨感觉促进作用,并在两个极端(低SNR和高SNR)之间的整个SNR范围内确定最大多感觉增益。