Costalago Meruelo Alicia, Simpson David M, Veres Sandor M, Newland Philip L
Institute of Sound and Vibration, University of Southampton, Southampton, UK.
Institute of Sound and Vibration, University of Southampton, Southampton, UK.
Neural Netw. 2016 Mar;75:56-65. doi: 10.1016/j.neunet.2015.12.002. Epub 2015 Dec 9.
Mathematical modelling is used routinely to understand the coding properties and dynamics of responses of neurons and neural networks. Here we analyse the effectiveness of Artificial Neural Networks (ANNs) as a modelling tool for motor neuron responses. We used ANNs to model the synaptic responses of an identified motor neuron, the fast extensor motor neuron, of the desert locust in response to displacement of a sensory organ, the femoral chordotonal organ, which monitors movements of the tibia relative to the femur of the leg. The aim of the study was threefold: first to determine the potential value of ANNs as tools to model and investigate neural networks, second to understand the generalisation properties of ANNs across individuals and to different input signals and third, to understand individual differences in responses of an identified neuron. A metaheuristic algorithm was developed to design the ANN architectures. The performance of the models generated by the ANNs was compared with those generated through previous mathematical models of the same neuron. The results suggest that ANNs are significantly better than LNL and Wiener models in predicting specific neural responses to Gaussian White Noise, but not significantly different when tested with sinusoidal inputs. They are also able to predict responses of the same neuron in different individuals irrespective of which animal was used to develop the model, although notable differences between some individuals were evident.
数学建模常用于理解神经元和神经网络反应的编码特性及动态变化。在此,我们分析人工神经网络(ANN)作为运动神经元反应建模工具的有效性。我们使用ANN对沙漠蝗虫一个已识别的运动神经元——快速伸肌运动神经元——的突触反应进行建模,该运动神经元对一个感觉器官——股弦音器官——的位移做出反应,股弦音器官监测胫骨相对于腿部股骨的运动。本研究的目的有三个:第一,确定ANN作为建模和研究神经网络工具的潜在价值;第二,了解ANN在不同个体和不同输入信号下的泛化特性;第三,了解已识别神经元反应的个体差异。开发了一种元启发式算法来设计ANN架构。将ANN生成的模型性能与通过同一神经元的先前数学模型生成的模型性能进行比较。结果表明,在预测对高斯白噪声的特定神经反应时,ANN明显优于LNL和维纳模型,但在正弦输入测试时没有显著差异。它们还能够预测不同个体中同一神经元的反应,无论使用哪只动物来开发模型,尽管一些个体之间存在明显差异。