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Identification of Critical Molecular Components in a Multiscale Cancer Model Based on the Integration of Monte Carlo Resampling and ANOVA

机译:基于蒙特卡洛重采样和方差分析的集成在多尺度癌症模型中识别关键分子成分

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摘要

To date, parameters defining biological properties in multiscale disease models are commonly obtained from a variety of sources. It is thus important to examine the influence of parameter perturbations on system behavior, rather than to limit the model to a specific set of parameters. Such sensitivity analysis can be used to investigate how changes in input parameters affect model outputs. However, multiscale cancer models require special attention because they generally take longer to run than does a series of signaling pathway analysis tasks. In this article, we propose a global sensitivity analysis method based on the integration of Monte Carlo, resampling, and analysis of variance. This method provides solutions to (1) how to render the large number of parameter variation combinations computationally manageable, and (2) how to effectively quantify the sampling distribution of the sensitivity index to address the inherent computational intensity issue. We exemplify the feasibility of this method using a two-dimensional molecular-microscopic agent-based model previously developed for simulating non-small cell lung cancer; in this model, an epidermal growth factor (EGF)-induced, EGF receptor-mediated signaling pathway was implemented at the molecular level. Here, the cross-scale effects of molecular parameters on two tumor growth evaluation measures, i.e., tumor volume and expansion rate, at the microscopic level are assessed. Analysis finds that ERK, a downstream molecule of the EGF receptor signaling pathway, has the most important impact on regulating both measures. The potential to apply this method to therapeutic target discovery is discussed.
机译:迄今为止,在多尺度疾病模型中定义生物学特性的参数通常可从多种来源获得。因此,重要的是检查参数扰动对系统行为的影响,而不是将模型限制为一组特定的参数。这种敏感性分析可用于调查输入参数的变化如何影响模型输出。但是,多尺度癌症模型需要特别注意,因为与一系列信号通路分析任务相比,它们通常需要更长的运行时间。在本文中,我们提出了一种基于蒙特卡洛,重采样和方差分析的集成的全局灵敏度分析方法。该方法提供了以下解决方案:(1)如何使大量参数变化组合在计算上可管理,以及(2)如何有效地量化灵敏度指标的采样分布以解决固有的计算强度问题。我们使用先前开发的用于模拟非小细胞肺癌的基于二维分子显微镜试剂的模型来说明该方法的可行性;在该模型中,在分子水平上实施了表皮生长因子(EGF)诱导的EGF受体介导的信号传导途径。在这里,在微观水平上评估了分子参数对两种肿瘤生长评估措施的跨尺度效应,即肿瘤体积和扩展率。分析发现,ERK是EGF受体信号传导途径的下游分子,对调节这两种措施具有最重要的影响。讨论了将该方法应用于治疗靶标发现的潜力。

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