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Performance of objective functions and optimisation procedures for parameter estimation in system biology models

机译:系统生物学模型中用于参数估计的目标函数和优化程序的性能

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摘要

Mathematical modelling of signalling pathways aids experimental investigation in system and synthetic biology. Ever increasing data availability prompts the development of large dynamic models with numerous parameters. In this paper, we investigate how the number of unknown parameters affects the convergence of three frequently used optimisation algorithms and four objective functions. We compare objective functions that use data-driven normalisation of the simulations with those that use scaling factors. The data-driven normalisation of the simulation approach implies that simulations are normalised in the same way as the data, making both directly comparable. The scaling factor approach, which is commonly used for parameter estimation in dynamic systems, introduces scaling factors that multiply the simulations to convert them to the scale of the data. Here we show that the scaling factor approach increases, compared to data-driven normalisation of the simulations, the degree of practical non-identifiability, defined as the number of directions in the parameter space, along which parameters are not identifiable. Further, the results indicate that data-driven normalisation of the simulations greatly improve the speed of convergence of all tested algorithms when the overall number of unknown parameters is relatively large (74 parameters in our test problems). Data-driven normalisation of the simulations also markedly improve the performance of the non-gradient-based algorithm tested even when the number of unknown parameters is relatively small (10 parameters in our test problems). As the models and the unknown parameters increase in size, the data-driven normalisation of the simulation approach can be the preferred option, because it does not aggravate non-identifiability and allows for obtaining parameter estimates in a reasonable amount of time.
机译:信号通路的数学建模有助于系统和合成生物学的实验研究。不断增加的数据可用性促使开发具有众多参数的大型动态模型。在本文中,我们研究未知参数的数量如何影响三种常用的优化算法和四种目标函数的收敛性。我们将使用数据驱动的标准化归一化的目标函数与使用比例因子的目标函数进行比较。模拟方法的数据驱动归一化意味着模拟以与数据相同的方式归一化,从而可以直接进行比较。比例因子方法通常用于动态系统中的参数估计,它引入了比例因子,将模拟相乘以将其转换为数据规模。在这里,我们表明,与模拟的数据驱动归一化相比,比例因子方法增加了实际的不可识别程度,实际不可识别程度定义为参数空间中无法识别参数的方向数。此外,结果表明,当未知参数的总数相对较大时(在我们的测试问题中为74个参数),模拟的数据驱动归一化大大提高了所有测试算法的收敛速度。即使未知参数的数量相对较小(在我们的测试问题中为10个参数),模拟的数据驱动规范化也显着提高了所测试的基于非梯度算法的性能。随着模型和未知参数的大小增加,模拟方法的数据驱动规范化可能是首选方案,因为它不会加剧不可识别性,并允许在合理的时间内获得参数估计。

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