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CellNOptR: a flexible toolkit to train protein signaling networks to data using multiple logic formalisms

机译:CellNOptR:一种灵活的工具包,可使用多种逻辑形式将蛋白质信号网络训练为数据

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Background Cells process signals using complex and dynamic networks. Studying how this is performed in a context and cell type specific way is essential to understand signaling both in physiological and diseased situations. Context-specific medium/high throughput proteomic data measured upon perturbation is now relatively easy to obtain but formalisms that can take advantage of these features to build models of signaling are still comparatively scarce. Results Here we present CellNOptR, an open-source R software package for building predictive logic models of signaling networks by training networks derived from prior knowledge to signaling (typically phosphoproteomic) data. CellNOptR features different logic formalisms, from Boolean models to differential equations, in a common framework. These different logic model representations accommodate state and time values with increasing levels of detail. We provide in addition an interface via Cytoscape (CytoCopteR) to facilitate use and integration with Cytoscape network-based capabilities. Conclusions Models generated with this pipeline have two key features. First, they are constrained by prior knowledge about the network but trained to data. They are therefore context and cell line specific, which results in enhanced predictive and mechanistic insights. Second, they can be built using different logic formalisms depending on the richness of the available data. Models built with CellNOptR are useful tools to understand how signals are processed by cells and how this is altered in disease. They can be used to predict the effect of perturbations (individual or in combinations), and potentially to engineer therapies that have differential effects/side effects depending on the cell type or context.
机译:背景单元使用复杂的动态网络处理信号。研究如何在特定环境和特定细胞类型的方式下进行,对于理解生理和疾病情况下的信号传递至关重要。现在,相对容易获得通过扰动测量的上下文相关的中/高通量蛋白质组学数据,但是相对而言,可以利用这些功能来构建信号传导模型的形式主义仍然相对较少。结果在这里,我们介绍CellNOptR,这是一种开放源代码R软件包,用于通过训练从先验知识衍生出的信号(通常为磷酸化蛋白质组学)数据的网络来构建信号网络的预测逻辑模型。 CellNOptR在一个通用框架中具有从布尔模型到微分方程的不同逻辑形式主义。这些不同的逻辑模型表示以越来越高的详细程度容纳状态和时间值。我们还通过Cytoscape(CytoCopteR)提供了一个接口,以促进基于Cytoscape网络功能的使用和集成。结论使用此管道生成的模型具有两个关键特征。首先,它们受到有关网络的先验知识的约束,但受数据训练。因此,它们是特定于上下文和细胞系的,这导致增强的预测性和机械性见解。其次,可以根据可用数据的丰富程度,使用不同的逻辑形式主义来构建它们。用CellNOptR构建的模型是了解细胞如何处理信号以及疾病如何改变信号的有用工具。它们可用于预测微扰的效果(单个或组合),并潜在地设计出根据细胞类型或环境具有不同效果/副作用的疗法。

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