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Optimisation of an exemplar oculomotor model using multi-objective genetic algorithms executed on a GPU-CPU combination

机译:使用在GPU-CPU组合上执行的多目标遗传算法优化示例性动眼模型

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摘要

BackgroundParameter optimisation is a critical step in the construction of computational biology models. In eye movement research, computational models are increasingly important to understanding the mechanistic basis of normal and abnormal behaviour. In this study, we considered an existing neurobiological model of fast eye movements (saccades), capable of generating realistic simulations of: (i) normal horizontal saccades; and (ii) infantile nystagmus – pathological ocular oscillations that can be subdivided into different waveform classes. By developing appropriate fitness functions, we optimised the model to existing experimental saccade and nystagmus data, using a well-established multi-objective genetic algorithm. This algorithm required the model to be numerically integrated for very large numbers of parameter combinations. To address this computational bottleneck, we implemented a master-slave parallelisation, in which the model integrations were distributed across the compute units of a GPU, under the control of a CPU.
机译:背景参数优化是构建计算生物学模型的关键步骤。在眼动研究中,计算模型对于理解正常和异常行为的机理基础越来越重要。在这项研究中,我们考虑了现有的快速眼球运动(眼球扫视)的神经生物学模型,该模型能够对以下各项进行逼真的模拟:(i)正常水平眼球扫视; (ii)婴儿性眼球震颤–病理性眼震荡可细分为不同的波形类别。通过开发适当的适应度函数,我们使用完善的多目标遗传算法将模型优化为现有的实验扫视和眼球震颤数据。对于大量参数组合,此算法要求将模型进行数值积分。为了解决此计算瓶颈,我们实现了主从并行化,其中模型集成在CPU的控制下分布在GPU的计算单元之间。

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