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A Bayesian framework for the analysis of systems biology models of the brain

机译:用于分析大脑系统生物学模型的贝叶斯框架

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摘要

Systems biology models are used to understand complex biological and physiological systems. Interpretation of these models is an important part of developing this understanding. These models are often fit to experimental data in order to understand how the system has produced various phenomena or behaviour that are seen in the data. In this paper, we have outlined a framework that can be used to perform Bayesian analysis of complex systems biology models. In particular, we have focussed on analysing a systems biology of the brain using both simulated and measured data. By using a combination of sensitivity analysis and approximate Bayesian computation, we have shown that it is possible to obtain distributions of parameters that can better guard against misinterpretation of results, as compared to a maximum likelihood estimate based approach. This is done through analysis of simulated and experimental data. NIRS measurements were simulated using the same simulated systemic input data for the model in a ‘healthy’ and ‘impaired’ state. By analysing both of these datasets, we show that different parameter spaces can be distinguished and compared between different physiological states or conditions. Finally, we analyse experimental data using the new Bayesian framework and the previous maximum likelihood estimate approach, showing that the Bayesian approach provides a more complete understanding of the parameter space.
机译:系统生物学模型用于理解复杂的生物学和生理学系统。这些模型的解释是发展这种理解的重要部分。这些模型通常适合于实验数据,以便了解系统如何产生数据中可见的各种现象或行为。在本文中,我们概述了可用于执行复杂系统生物学模型的贝叶斯分析的框架。特别是,我们专注于使用模拟和测量数据来分析大脑的系统生物学。通过结合使用灵敏度分析和近似贝叶斯计算,我们已经表明,与基于最大似然估计的方法相比,可以获得更好地防止错误解释结果的参数分布。这是通过分析模拟和实验数据来完成的。使用“健康”和“受损”状态下相同的系统模拟输入数据对NIRS测量进行了模拟。通过分析这两个数据集,我们表明可以区分不同的参数空间,并在不同的生理状态或状况之间进行比较。最后,我们使用新的贝叶斯框架和先前的最大似然估计方法分析实验数据,表明贝叶斯方法可提供对参数空间的更完整理解。

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