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首页> 外文期刊>Annals of the American Thoracic Society >Designing Optimal Experiments to Discriminate Interaction Graph Models
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Designing Optimal Experiments to Discriminate Interaction Graph Models

机译:设计最佳实验来区分交互图模型

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摘要

Modem methods for the inference of cellular networks from experimental data often express nondeterminism by proposing an ensemble of candidate models with similar properties. To further discriminate among these model candidates, new experiments need to be carried out. Theoretically, the number of possible experiments is exponential in the number of possible perturbations. In praxis, experiments are expensive and usually there exist several constraints limiting which experiments can be performed. Limiting factors may exist on the combinations of perturbations that are technically possible, which components can be measured, and limitations on the number of affordable experiments. Further, not all experiments are equally well suited to discriminate model candidates. Therefore, the goal of optimal experiment design is to determine those experiments that discriminate most of the candidates while minimizing the costs. We present an approach for experiment planning with interaction graph models and sign consistency methods. This new approach can be used in combination with methods for network inference and consistency checking. The proposed method determines experiments which are most suitable to deliver results that reduce the number of candidate models. We applied our method to study the Erythropoietin signal transduction in human kidney cells HEK293. We first used simulated experiment data from an ODE model to demonstrate in silico that our experimental design results in the inference of the gold standard model. Finally, we used the approach to plan in vivo experiments that enabled us to discriminate model candidates for the Erythropoietin signal transduction in this cell line.
机译:通过提出具有类似特性的候选模型的集合来推动来自实验数据的蜂窝网络蜂窝网络的推测方法。为了进一步歧视这些模型候选人,需要进行新的实验。从理论上讲,可能的实验的数量是可能的扰动的数量的指数。在Praxis中,实验昂贵,并且通常存在若干约束限制,可以进行实验。限制因素可能存在于技术上可能的扰动组合中,可以测量哪些组分,以及对经济实惠的数量的限制。此外,并非所有实验都同样适用于鉴别模型候选者。因此,最佳实验设计的目的是确定这些实验,以区分大多数候选者,同时最小化成本。我们提出了一种用交互图模型进行实验计划的方法和标志一致性方法。这种新方法可以与网络推理和一致性检查的方法结合使用。该方法确定了最适合提供减少候选模型数量的结果的实验​​。我们应用了我们研究人肾细胞HEK293中促红细胞生成素信号转导的方法。我们首先使用来自ode模型的模拟实验数据,以便在Silico中展示我们的实验设计导致金标准模型的推动。最后,我们利用该方法计划体内实验,使我们能够区分该细胞系中促红细胞生成素信号转导的模型候选者。

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