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Quantitative performance metrics for robustness in circadian rhythms

机译:昼夜节律鲁棒性的定量性能指标

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Motivation: Sensitivity analysis provides key measures that aid in unraveling the design principles responsible for the robust performance of biological networks. Such metrics allow researchers to investigate comprehensively model performance, to develop more realistic models, and to design informative experiments. However, sensitivity analysis of oscillatory systems focuses on period and amplitude characteristics, while biologically relevant effects on phase are neglected.Results: Here, we introduce a novel set of phase-based sensitivity metrics for performance: period, phase, corrected phase and relative phase. Both state- and phase-based tools are applied to free-running Drosophila melanogaster and Mus musculus circadian models. Each metric produces unique sensitivity values used to rank parameters from least to most sensitive. Similarities among the resulting rank distributions strongly suggest a conservation of sensitivity with respect to parameter function and type. A consistent result, for instance, is that model performance of biological oscillators is more sensitive to global parameters than local (i.e. circadian specific) parameters. Discrepancies among these distributions highlight the individual metrics' definition of performance as specific parametric sensitivity values depend on the defined metric, or output.Availability: An implementation of the algorithm in MATLAB (Mathworks, Inc.) is available from the authors.
机译:动机:敏感性分析提供了关键措施,可帮助阐明负责生物网络强大性能的设计原则。这些指标使研究人员能够全面研究模型性能,开发更现实的模型以及设计信息丰富的实验。然而,振荡系统的灵敏度分析集中在周期和幅度特性上,而对相位的生物学相关影响却被忽略了。结果:在这里,我们介绍了一套新的基于相位的性能灵敏度指标:周期,相位,校正相位和相对相位。基于状态和基于阶段的工具都可应用于自由运行的果蝇和小家鼠昼夜节律模型。每个度量产生唯一的灵敏度值,用于将参数从最低到最敏感进行排序。所得秩分布之间的相似性强烈表明,对于参数功能和类型,保留了敏感性。例如,一致的结果是,生物振荡器的模型性能对全局参数的敏感性比局部(即,昼夜节律的)参数更为敏感。这些分布之间的差异突显了各个指标对性能的定义,因为特定的参数敏感性值取决于所定义的指标或输出。可用性:作者可以在MATLAB(Mathworks,Inc.)中实现该算法的实现。

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