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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Using Emulation to Engineer and Understand Simulations of Biological Systems
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Using Emulation to Engineer and Understand Simulations of Biological Systems

机译:使用仿真来设计和理解生物系统的仿真

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摘要

Modeling and simulation techniques have demonstrated success in studying biological systems. As the drive to better capture biological complexity leads to more sophisticated simulators, it becomes challenging to perform statistical analyses that help translate predictions into increased understanding. These analyses may require repeated executions and extensive sampling of high-dimensional parameter spaces: analyses that may become intractable due to time and resource limitations. Significant reduction in these requirements can be obtained using surrogate models, or emulators, that can rapidly and accurately predict the output of an existing simulator. We apply emulation to evaluate and enrich understanding of a previously published agent-based simulator of lymphoid tissue organogenesis, showing an ensemble of machine learning techniques can reproduce results obtained using a suite of statistical analyses within seconds. This performance improvement permits incorporation of previously intractable analyses, including multi-objective optimization to obtain parameter sets that yield a desired response, and Approximate Bayesian Computation to assess parametric uncertainty. To facilitate exploitation of emulation in simulation-focused studies, we extend our open source statistical package, spartan, to provide a suite of tools for emulator development, validation, and application. Overcoming resource limitations permits enriched evaluation and refinement, easing translation of simulator insights into increased biological understanding.
机译:建模和仿真技术已证明在研究生物系统方面取得了成功。随着更好地捕获生物复杂性的需求导致了更复杂的模拟器,进行统计分析以帮助将预测转化为更多的理解变得具有挑战性。这些分析可能需要重复执行并需要对高维参数空间进行大量采样:由于时间和资源的限制,这些分析可能变得难以处理。使用替代模型或仿真器可以大大降低这些要求,这些模型或仿真器可以快速而准确地预测现有仿真器的输出。我们应用仿真来评估和丰富对以前发布的基于代理的淋巴组织器官发生模拟器的理解,这表明一组机器学习技术可以在几秒钟内重现使用一组统计分析获得的结果。这种性能的提高允许并入先前难以处理的分析,包括多目标优化以获取可产生所需响应的参数集,以及用于评估参数不确定性的近似贝叶斯计算。为了促进针对仿真研究的仿真开发,我们扩展了开源统计软件包spartan,以提供一套用于仿真器开发,验证和应用的工具。克服资源限制可以进行丰富的评估和改进,简化将模拟器的见解转化为增强的生物学理解的过程。

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