Data Assimilation Methods for Neuronal State and Parameter Estimation.

IF 2.3 4区 医学 Q1 Neuroscience Journal of Mathematical Neuroscience Pub Date : 2018-08-09 DOI:10.1186/s13408-018-0066-8
Matthew J Moye, Casey O Diekman
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引用次数: 25

Abstract

This tutorial illustrates the use of data assimilation algorithms to estimate unobserved variables and unknown parameters of conductance-based neuronal models. Modern data assimilation (DA) techniques are widely used in climate science and weather prediction, but have only recently begun to be applied in neuroscience. The two main classes of DA techniques are sequential methods and variational methods. We provide computer code implementing basic versions of a method from each class, the Unscented Kalman Filter and 4D-Var, and demonstrate how to use these algorithms to infer several parameters of the Morris-Lecar model from a single voltage trace. Depending on parameters, the Morris-Lecar model exhibits qualitatively different types of neuronal excitability due to changes in the underlying bifurcation structure. We show that when presented with voltage traces from each of the various excitability regimes, the DA methods can identify parameter sets that produce the correct bifurcation structure even with initial parameter guesses that correspond to a different excitability regime. This demonstrates the ability of DA techniques to perform nonlinear state and parameter estimation and introduces the geometric structure of inferred models as a novel qualitative measure of estimation success. We conclude by discussing extensions of these DA algorithms that have appeared in the neuroscience literature.

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神经元状态和参数估计的数据同化方法。
本教程演示了使用数据同化算法来估计基于电导的神经元模型的未观察变量和未知参数。现代数据同化(DA)技术广泛应用于气候科学和天气预报,但最近才开始应用于神经科学。数据分析技术的两大类主要是顺序方法和变分方法。我们提供了实现每个类方法的基本版本的计算机代码,Unscented卡尔曼滤波器和4D-Var,并演示了如何使用这些算法从单个电压迹线推断Morris-Lecar模型的几个参数。根据参数的不同,Morris-Lecar模型表现出不同类型的神经元兴奋性,这是由于底层分岔结构的变化。我们表明,当给出来自不同兴奋状态的电压迹线时,即使初始参数猜测对应于不同的兴奋状态,DA方法也可以识别出产生正确分岔结构的参数集。这证明了数据分析技术执行非线性状态和参数估计的能力,并介绍了推断模型的几何结构作为估计成功的一种新的定性度量。最后,我们讨论了神经科学文献中出现的这些数据处理算法的扩展。
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来源期刊
Journal of Mathematical Neuroscience
Journal of Mathematical Neuroscience Neuroscience-Neuroscience (miscellaneous)
自引率
0.00%
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0
审稿时长
13 weeks
期刊介绍: The Journal of Mathematical Neuroscience (JMN) publishes research articles on the mathematical modeling and analysis of all areas of neuroscience, i.e., the study of the nervous system and its dysfunctions. The focus is on using mathematics as the primary tool for elucidating the fundamental mechanisms responsible for experimentally observed behaviours in neuroscience at all relevant scales, from the molecular world to that of cognition. The aim is to publish work that uses advanced mathematical techniques to illuminate these questions. It publishes full length original papers, rapid communications and review articles. Papers that combine theoretical results supported by convincing numerical experiments are especially encouraged. Papers that introduce and help develop those new pieces of mathematical theory which are likely to be relevant to future studies of the nervous system in general and the human brain in particular are also welcome.
期刊最新文献
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