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Optimization Algorithms for Computational Systems Biology

机译:计算系统生物学的优化算法

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Computational systems biology aims at integrating biology and computational methods to gain a better understating of biological phenomena. It often requires the assistance of global optimization to adequately tune its tools. This review presents three powerful methodologies for global optimization that fit the requirements of most of the computational systems biology applications, such as model tuning and biomarker identification. We include the multi-start approach for least squares methods, mostly applied for fitting experimental data. We illustrate Markov Chain Monte Carlo methods, which are stochastic techniques here applied for fitting experimental data when a model involves stochastic equations or simulations. Finally, we present Genetic Algorithms, heuristic nature-inspired methods that are applied in a broad range of optimization applications, including the ones in systems biology.
机译:计算系统生物学旨在整合生物学和计算方法,以更好地低估生物学现象。通常需要全局优化的帮助来适当地调整其工具。这篇综述介绍了三种最有效的全局优化方法,这些方法可满足大多数计算系统生物学应用程序的需求,例如模型调整和生物标记识别。我们为最小二乘法提供了多起点方法,主要用于拟合实验数据。我们说明了马尔可夫链蒙特卡罗方法,这是一种随机技术,在模型涉及随机方程或模拟时,将其用于拟合实验数据。最后,我们介绍了遗传算法,启发式自然启发方法,这些方法被广泛应用于各种优化应用中,包括系统生物学中的那些方法。

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