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首页> 外文期刊>Briefings in bioinformatics >Cali bayes and BASIS: integrated tools for the calibration, simulation and storage of biological simulation models
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Cali bayes and BASIS: integrated tools for the calibration, simulation and storage of biological simulation models

机译:Cali Bayes和BASIS:用于校准,模拟和存储生物模拟模型的集成工具

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Dynamic simulation modelling of complex biological processes forms the backbone of systems biology. Discrete stochastic models are particularly appropriate for describing subcellular molecular interactions, especially when critical molecular species are thought to be present at low copy-numbers. For example, these stochastic effects play an important role in models of human ageing, where ageing results from the long-term accumulation of random damage at various biological scales. Unfortunately, realistic stochastic simulation of discrete biological processes is highly computationally intensive, requiring specialist hardware, and can benefit greatly from parallel and distributed approaches to computation and analysis. For these reasons, we have developed the BASIS system for the simulation and storage of stochastic SBML models together with associated simulation results. This system is exposed as a set of web services to allow users to incorporate its simulation tools into their workflows. Parameter inference for stochastic models is also difficult and computationally expensive.The CaliBayes system provides a set of web services (together with an R package for consuming these and formatting data) which addresses this problem for SBML models. It uses a sequential Bayesian MCMC method, which is powerful and flexible, providing very rich information. However this approach is exceptionally computationally intensive and requires the use of a carefully designed architecture. Again, these tools are exposed as web services to allow users to take advantage of this system. In this article, we describe these two systems and demonstrate their integrated use with an example workflow to estimate the parameters of a simple model of Saccharomyces cerevisiae growth on agar plates.
机译:复杂生物过程的动态仿真建模是系统生物学的骨干。离散随机模型特别适合描述亚细胞分子相互作用,尤其是当认为关键分子种类以低拷贝数存在时。例如,这些随机效应在人类衰老模型中起着重要作用,其中衰老是由各种生物学规模的长期随机损伤积累造成的。不幸的是,离散生物过程的现实随机模拟是高度计算密集型的,需要专业的硬件,并且可以从并行和分布式的计算和分析方法中受益匪浅。由于这些原因,我们开发了BASIS系统,用于随机SBML模型的仿真和存储以及相关的仿真结果。该系统作为一组Web服务公开,允许用户将其仿真工具整合到他们的工作流程中。随机模型的参数推断也很困难且计算量很大。CaliBayes系统提供了一组Web服务(以及用于消费这些数据和格式化数据的R包),从而解决了SBML模型的这一问题。它使用顺序贝叶斯MCMC方法,该方法强大而灵活,可提供非常丰富的信息。但是,这种方法的计算量非常大,并且需要使用经过精心设计的体系结构。同样,这些工具作为Web服务公开,以允许用户利用此系统。在本文中,我们描述了这两个系统,并通过示例工作流程展示了它们的集成使用,以估算啤酒酵母在琼脂平板上生长的简单模型的参数。

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