Kleinfeld D, Sompolinsky H
Molecular Biophysics Research Department, AT&T Bell Laboratories, Murray Hill, New Jersey 07974.
Biophys J. 1988 Dec;54(6):1039-51. doi: 10.1016/S0006-3495(88)83041-8.
Cyclic patterns of motor neuron activity are involved in the production of many rhythmic movements, such as walking, swimming, and scratching. These movements are controlled by neural circuits referred to as central pattern generators (CPGs). Some of these circuits function in the absence of both internal pacemakers and external feedback. We describe an associative neural network model whose dynamic behavior is similar to that of CPGs. The theory predicts the strength of all possible connections between pairs of neurons on the basis of the outputs of the CPG. It also allows the mean operating levels of the neurons to be deduced from the measured synaptic strengths between the pairs of neurons. We apply our theory to the CPG controlling escape swimming in the mollusk Tritonia diomedea. The basic rhythmic behavior is shown to be consistent with a simplified model that approximates neurons as threshold units and slow synaptic responses as elementary time delays. The model we describe may have relevance to other fixed action behaviors, as well as to the learning, recall, and recognition of temporally ordered information.
运动神经元活动的周期性模式参与了许多节律性运动的产生,如行走、游泳和抓挠。这些运动由被称为中枢模式发生器(CPG)的神经回路控制。其中一些回路在没有内部起搏器和外部反馈的情况下发挥作用。我们描述了一种联想神经网络模型,其动态行为与CPG相似。该理论根据CPG的输出预测神经元对之间所有可能连接的强度。它还允许从测量的神经元对之间的突触强度推导出神经元的平均活动水平。我们将我们的理论应用于控制软体动物多氏三齿丽蚌逃避游泳的CPG。基本的节律性行为被证明与一个简化模型一致,该模型将神经元近似为阈值单元,将缓慢的突触反应近似为基本时间延迟。我们描述的模型可能与其他固定动作行为以及时间顺序信息的学习、回忆和识别有关。