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猫内侧腓肠肌运动神经元池稳态输入-输出功能的计算机模拟

Computer simulation of the steady-state input-output function of the cat medial gastrocnemius motoneuron pool.

作者信息

Heckman C J, Binder M D

机构信息

Department of Physiology, Northwestern University School of Medicine, Chicago, Illinois.

出版信息

J Neurophysiol. 1991 Apr;65(4):952-67. doi: 10.1152/jn.1991.65.4.952.

Abstract
  1. A pool of 100 simulated motor units was constructed in which the steady-state neural and mechanical properties of the units were very closely matched to the available experimental data for the cat medial gastrocnemius motoneuron pool and muscle. The resulting neural network generated quantitative predictions of whole system input-output functions based on the single unit data. The results of the simulations were compared with experimental data on normal motor system behavior in humans and animals. 2. We considered only steady-state, isometric conditions. All motoneurons received equal proportions of the synaptic input, and no feedback loops were operative. Thus the intrinsic properties of the motor unit population alone determined the form of the system input-output function. Expressing the synaptic input in terms of effective synaptic current allowed the simulated motoneuron input-output functions to be specified by well-known firing rate-injected current relations. The motor unit forces were determined from standard motor unit force-frequency relations, and the system output at any input level was assumed to be the linear sum of the forces of the active motor units. 3. The steady-state input-output function of the simulated motoneuron pool had a roughly sigmoidal shape that was quite different from those derived from previous recruitment models, which did not incorporate frequency modulation. Frequency modulation in combination with the skewed distribution of thresholds (low values much more frequent than high) restricted upward curvature to low input levels, whereas frequency modulation alone was responsible for the final gradual approach to the maximum force output. 4. Sensitivity analyses were performed to assess the importance of several assumptions that were required to deal with gaps and uncertainties in the available experimental data. The shape of the input-output function was not critically dependent on any of these assumptions, including those specifying linear summation of inputs and outputs. 5. A key assumption of the model was that systematic variance in motor unit properties was much more important than random variance for determining the input-output function. Addition of random variance via Monte Carlo techniques showed that this assumption was correct. These results suggest that the output of a motoneuron pool should be quite tolerant of random variance in the distribution of synaptic inputs and yet substantially altered by any systematic differences, such as unequal distribution of inputs among different motor unit types.(ABSTRACT TRUNCATED AT 400 WORDS)
摘要
  1. 构建了一个包含100个模拟运动单位的集合,其中这些单位的稳态神经和力学特性与猫内侧腓肠肌运动神经元池及肌肉的现有实验数据非常紧密地匹配。由此产生的神经网络基于单个单位的数据生成了整个系统输入 - 输出函数的定量预测。将模拟结果与人类和动物正常运动系统行为的实验数据进行了比较。2. 我们仅考虑稳态等长条件。所有运动神经元接收相等比例的突触输入,且不存在起作用的反馈回路。因此,仅运动单位群体的内在特性就决定了系统输入 - 输出函数的形式。用有效突触电流来表示突触输入,使得模拟运动神经元的输入 - 输出函数可以由著名的发放率 - 注入电流关系来确定。运动单位力由标准的运动单位力 - 频率关系确定,并且假定在任何输入水平下系统输出都是活动运动单位力的线性总和。3. 模拟运动神经元池的稳态输入 - 输出函数大致呈S形,这与先前未纳入频率调制的募集模型所推导的函数形状有很大不同。频率调制与阈值的偏态分布(低值比高值更频繁)相结合,将向上的曲率限制在低输入水平,而单独的频率调制则导致最终逐渐接近最大力输出。4. 进行了敏感性分析,以评估处理现有实验数据中的差距和不确定性所需的几个假设的重要性。输入 - 输出函数的形状并不关键地依赖于这些假设中的任何一个,包括那些指定输入和输出线性总和的假设。5. 该模型的一个关键假设是,对于确定输入 - 输出函数而言,运动单位特性的系统方差比随机方差重要得多。通过蒙特卡罗技术添加随机方差表明这个假设是正确的。这些结果表明,运动神经元池的输出应该对突触输入分布中的随机方差相当容忍,但会因任何系统差异而显著改变,例如不同运动单位类型之间输入的不平等分布。(摘要截断于400字)

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