Departamento de Arquitectura y Tecnología de Sistemas Informáticos, Facultad de Informática, Universidad Politécnica de Madrid, Madrid, Spain.
PLoS One. 2013 Jul 23;8(7):e68888. doi: 10.1371/journal.pone.0068888. Print 2013.
Chemical synaptic transmission involves the release of a neurotransmitter that diffuses in the extracellular space and interacts with specific receptors located on the postsynaptic membrane. Computer simulation approaches provide fundamental tools for exploring various aspects of the synaptic transmission under different conditions. In particular, Monte Carlo methods can track the stochastic movements of neurotransmitter molecules and their interactions with other discrete molecules, the receptors. However, these methods are computationally expensive, even when used with simplified models, preventing their use in large-scale and multi-scale simulations of complex neuronal systems that may involve large numbers of synaptic connections. We have developed a machine-learning based method that can accurately predict relevant aspects of the behavior of synapses, such as the percentage of open synaptic receptors as a function of time since the release of the neurotransmitter, with considerably lower computational cost compared with the conventional Monte Carlo alternative. The method is designed to learn patterns and general principles from a corpus of previously generated Monte Carlo simulations of synapses covering a wide range of structural and functional characteristics. These patterns are later used as a predictive model of the behavior of synapses under different conditions without the need for additional computationally expensive Monte Carlo simulations. This is performed in five stages: data sampling, fold creation, machine learning, validation and curve fitting. The resulting procedure is accurate, automatic, and it is general enough to predict synapse behavior under experimental conditions that are different to the ones it has been trained on. Since our method efficiently reproduces the results that can be obtained with Monte Carlo simulations at a considerably lower computational cost, it is suitable for the simulation of high numbers of synapses and it is therefore an excellent tool for multi-scale simulations.
化学突触传递涉及神经递质的释放,该递质在细胞外空间扩散,并与位于突触后膜上的特定受体相互作用。计算机模拟方法为探索不同条件下突触传递的各个方面提供了基本工具。特别是,蒙特卡罗方法可以跟踪神经递质分子的随机运动及其与其他离散分子(受体)的相互作用。然而,这些方法计算成本很高,即使使用简化模型也是如此,这阻止了它们在涉及大量突触连接的复杂神经元系统的大规模和多尺度模拟中的应用。我们开发了一种基于机器学习的方法,可以准确预测突触行为的相关方面,例如释放神经递质后随时间变化的开放突触受体的百分比,与传统的蒙特卡罗方法相比,计算成本大大降低。该方法旨在从涵盖广泛结构和功能特征的突触的先前生成的蒙特卡罗模拟语料库中学习模式和一般原则。这些模式后来被用作不同条件下突触行为的预测模型,而无需进行额外的计算成本高昂的蒙特卡罗模拟。这分五个阶段进行:数据采样、折叠创建、机器学习、验证和曲线拟合。该方法准确、自动,并且足够通用,可以预测与训练条件不同的实验条件下的突触行为。由于我们的方法以较低的计算成本有效地再现了蒙特卡罗模拟可以获得的结果,因此它适用于大量突触的模拟,因此是多尺度模拟的绝佳工具。