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NeuroML: A Language for Describing Data Driven Models of Neurons and Networks with a High Degree of Biological Detail

机译:NeuroML:一种描述具有高度生物细节的神经元和网络的数据驱动模型的语言

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摘要

Biologically detailed single neuron and network models are important for understanding how ion channels, synapses and anatomical connectivity underlie the complex electrical behavior of the brain. While neuronal simulators such as NEURON, GENESIS, MOOSE, NEST, and PSICS facilitate the development of these data-driven neuronal models, the specialized languages they employ are generally not interoperable, limiting model accessibility and preventing reuse of model components and cross-simulator validation. To overcome these problems we have used an Open Source software approach to develop NeuroML, a neuronal model description language based on XML (Extensible Markup Language). This enables these detailed models and their components to be defined in a standalone form, allowing them to be used across multiple simulators and archived in a standardized format. Here we describe the structure of NeuroML and demonstrate its scope by converting into NeuroML models of a number of different voltage- and ligand-gated conductances, models of electrical coupling, synaptic transmission and short-term plasticity, together with morphologically detailed models of individual neurons. We have also used these NeuroML-based components to develop an highly detailed cortical network model. NeuroML-based model descriptions were validated by demonstrating similar model behavior across five independently developed simulators. Although our results confirm that simulations run on different simulators converge, they reveal limits to model interoperability, by showing that for some models convergence only occurs at high levels of spatial and temporal discretisation, when the computational overhead is high. Our development of NeuroML as a common description language for biophysically detailed neuronal and network models enables interoperability across multiple simulation environments, thereby improving model transparency, accessibility and reuse in computational neuroscience.
机译:详细了解单个神经元和网络的生物学模型对于理解离子通道,突触和解剖学连接如何构成大脑复杂的电行为至关重要。虽然神经元模拟器(例如NEURON,GENESIS,MOOSE,NEST和PSICS)有助于开发这些数据驱动的神经元模型,但它们使用的专用语言通常不可互操作,从而限制了模型的可访问性,并阻止了模型组件的重用和跨模拟器验证。为了克服这些问题,我们使用了一种开源软件方法来开发NeuroML,NeuroML是一种基于XML(可扩展标记语言)的神经元模型描述语言。这使这些详细的模型及其组件可以以独立形式定义,从而允许它们在多个模拟器中使用并以标准化格式进行存档。在这里,我们描述NeuroML的结构并通过将其转换为许多不同电压和配体门控电导率的NeuroML模型,电耦合,突触传递和短期可塑性模型以及单个神经元的形态学详细模型,来证明其范围。我们还使用了这些基于NeuroML的组件来开发高度详细的皮质网络模型。通过在五个独立开发的模拟器上演示相似的模型行为,验证了基于NeuroML的模型描述。尽管我们的结果证实了在不同模拟器上运行的模拟是收敛的,但它们通过显示某些模型的收敛仅发生在高水平的空间和时间离散化(计算开销较大)时,揭示了模型互操作性的局限性。我们对NeuroML的开发,将其作为生物物理详细的神经元和网络模型的通用描述语言,可在多个仿真环境中实现互操作性,从而提高了模型的透明度,可访问性和计算神经科学的重用性。

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