Ghahari Alireza, Enderle John D
Department of Biomedical Engineering, University of Connecticut, 260 Glenbrook Road, Storrs, CT 06269, USA.
ISRN Ophthalmol. 2014 May 7;2014:406210. doi: 10.1155/2014/406210. eCollection 2014.
A neural network model of biophysical neurons in the midbrain is presented to drive a muscle fiber oculomotor plant during horizontal monkey saccades. Neural circuitry, including omnipause neuron, premotor excitatory and inhibitory burst neurons, long lead burst neuron, tonic neuron, interneuron, abducens nucleus, and oculomotor nucleus, is developed to examine saccade dynamics. The time-optimal control strategy by realization of agonist and antagonist controller models is investigated. In consequence, each agonist muscle fiber is stimulated by an agonist neuron, while an antagonist muscle fiber is unstimulated by a pause and step from the antagonist neuron. It is concluded that the neural network is constrained by a minimum duration of the agonist pulse and that the most dominant factor in determining the saccade magnitude is the number of active neurons for the small saccades. For the large saccades, however, the duration of agonist burst firing significantly affects the control of saccades. The proposed saccadic circuitry establishes a complete model of saccade generation since it not only includes the neural circuits at both the premotor and motor stages of the saccade generator, but also uses a time-optimal controller to yield the desired saccade magnitude.
提出了一种中脑生物物理神经元的神经网络模型,用于在猴子水平扫视期间驱动眼外肌运动装置。构建了包括全暂停神经元、运动前兴奋性和抑制性爆发神经元、长潜伏期爆发神经元、紧张性神经元、中间神经元、展神经核和动眼神经核在内的神经回路,以研究扫视动力学。研究了通过实现激动剂和拮抗剂控制器模型的时间最优控制策略。结果,每个激动剂肌纤维由一个激动剂神经元刺激,而拮抗剂肌纤维则由拮抗剂神经元的暂停和阶跃刺激而不被刺激。得出的结论是,神经网络受到激动剂脉冲最短持续时间的限制,并且对于小扫视,决定扫视幅度的最主要因素是活跃神经元的数量。然而,对于大扫视,激动剂爆发放电的持续时间显著影响扫视的控制。所提出的扫视回路建立了一个完整的扫视生成模型,因为它不仅包括扫视发生器运动前和运动阶段的神经回路,还使用时间最优控制器来产生所需的扫视幅度。