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ODE Constrained Mixture Modelling: A Method for Unraveling Subpopulation Structures and Dynamics

机译:ODE约束混合物建模:揭示亚种群结构和动力学的方法

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Functional cell-to-cell variability is ubiquitous in multicellular organisms as well as bacterial populations. Even genetically identical cells of the same cell type can respond differently to identical stimuli. Methods have been developed to analyse heterogeneous populations, e.g., mixture models and stochastic population models. The available methods are, however, either incapable of simultaneously analysing different experimental conditions or are computationally demanding and difficult to apply. Furthermore, they do not account for biological information available in the literature. To overcome disadvantages of existing methods, we combine mixture models and ordinary differential equation (ODE) models. The ODE models provide a mechanistic description of the underlying processes while mixture models provide an easy way to capture variability. In a simulation study, we show that the class of ODE constrained mixture models can unravel the subpopulation structure and determine the sources of cell-to-cell variability. In addition, the method provides reliable estimates for kinetic rates and subpopulation characteristics. We use ODE constrained mixture modelling to study NGF-induced Erk1/2 phosphorylation in primary sensory neurones, a process relevant in inflammatory and neuropathic pain. We propose a mechanistic pathway model for this process and reconstructed static and dynamical subpopulation characteristics across experimental conditions. We validate the model predictions experimentally, which verifies the capabilities of ODE constrained mixture models. These results illustrate that ODE constrained mixture models can reveal novel mechanistic insights and possess a high sensitivity.
机译:功能性的细胞间变异性在多细胞生物以及细菌种群中普遍存在。即使是相同细胞类型的基因相同的细胞也可以对相同的刺激做出不同的反应。已经开发了用于分析异类种群的方法,例如,混合模型和随机种群模型。但是,可用的方法要么无法同时分析不同的实验条件,要么计算量大且难以应用。此外,它们没有考虑文献中可获得的生物学信息。为了克服现有方法的缺点,我们将混合模型和常微分方程(ODE)模型结合在一起。 ODE模型提供了对基础过程的机械描述,而混合模型则提供了捕获可变性的简便方法。在模拟研究中,我们表明ODE约束的混合模型类别可以揭示亚种群结构并确定细胞间差异的来源。另外,该方法提供了动力学速率和亚种群特征的可靠估计。我们使用ODE约束混合物模型来研究NGF诱导的初级感觉神经元中的Erk1 / 2磷酸化,该过程与炎症性和神经性疼痛有关。我们为此过程提出了一种机械途径模型,并在整个实验条件下重建了静态和动态亚种群特征。我们通过实验验证了模型预测,从而验证了ODE约束混合模型的功能。这些结果说明,ODE约束混合模型可以揭示新颖的机械原理,并具有很高的灵敏度。

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