首页> 外文会议>High Performance Computational Systems Biology, 2009. HIBI '09 >Stochastic Simulations on a Grid Framework for Parameter Sweep Applications in Biological Models
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Stochastic Simulations on a Grid Framework for Parameter Sweep Applications in Biological Models

机译:在网格模型中用于参数扫描的生物模型中的随机模拟

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Stochastic modelling and simulations play a major role in Systems Biology because, at molecular level, biological systems exhibit noise coming both from within the cell (intrinsic) and from the environment (extrinsic). Stochastic modelling takes into account the effects of noise over the system dynamics, that can strongly affect the behavior of the system in conditions of relatively low amounts of molecular species. Stochastic simulations provide an effective way to describe the system dynamics, and can be applied on systems where specified chemical species are processed by a set of biochemical reactions, each one characterized by a stochastic constant. In the context of stochastic modelling, Parameter Sweep Applications (PSAs) can be a useful way to explore the huge spaces generated by the combinations of variables and parameters values in order to test their effects on systems dynamics. PSAs are common in the scientific community and are structured as sets of instances, each one characterized by a distinct parametrisation. A PSA that aims to sample such large spaces must involve a large number of instances and hence the problem becomes very time consuming. However, the independence of each instance of a particular PSA makes the distributed computing paradigm a very useful solution for large scale PSAs. In this work we present a grid based version of a multi-volume stochastic simulator, tau-DPP, implemented on the EGEE project platform. The aim of the proposed work is to exploit this platform for testing the reliability of PSAs over the grid, pointing out critical factors, bottlenecks and scalability by providing data about our experience in this kind of biological modelling and simulations. As a case study, we present a number of PSAs for a stochastic model of bacterial chemotaxis composed of 59 reactions and 31 chemical species.
机译:随机建模和模拟在系统生物学中起着重要作用,因为在分子水平上,生物系统表现出的噪声既来自细胞内部(内部),也来自环境(外部)。随机建模考虑了噪声对系统动力学的影响,该噪声会在分子数量相对较少的情况下强烈影响系统的行为。随机模拟提供了一种描述系统动力学的有效方法,并且可以应用于通过一组生化反应处理特定化学物种的系统,每个生化反应的特征在于随机常数。在随机建模的情况下,参数扫描应用程序(PSA)可能是探索变量和参数值组合产生的巨大空间的有用方法,以测试它们对系统动力学的影响。 PSA在科学界很常见,并按实例集进行结构化,每个实例都具有独特的参数化特征。旨在对如此大的空间进行采样的PSA必须涉及大量实例,因此问题变得非常耗时。但是,特定PSA的每个实例的独立性使分布式计算范例成为大规模PSA的非常有用的解决方案。在这项工作中,我们展示了基于网格的多卷随机模拟器tau-DPP,该模拟器在EGEE项目平台上实现。拟议工作的目的是利用该平台来测试PSA在网格上的可靠性,并通过提供有关我们在此类生物建模和仿真中的经验的数据来指出关键因素,瓶颈和可扩展性。作为案例研究,我们提出了由59种反应和31种化学组成的细菌趋化性随机模型的许多PSA。

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