...
首页> 外文期刊>Bioinformatics >Exhaustively characterizing feasible logic models of a signaling network using Answer Set Programming
【24h】

Exhaustively characterizing feasible logic models of a signaling network using Answer Set Programming

机译:使用答案集编程详尽地描述信令网络的可行逻辑模型

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Motivation: Logic modeling is a useful tool to study signal transduction across multiple pathways. Logic models can be generated by training a network containing the prior knowledge to phospho-proteomics data. The training can be performed using stochastic optimization procedures, but these are unable to guarantee a global optima or to report the complete family of feasible models. This, however, is essential to provide precise insight in the mechanisms underlaying signal transduction and generate reliable predictions. Results: We propose the use of Answer Set Programming to explore exhaustively the space of feasible logic models. Toward this end, we have developed caspo, an open-source Python package that provides a powerful platform to learn and characterize logic models by leveraging the rich modeling language and solving technologies of Answer Set Programming. We illustrate the usefulness of caspo by revisiting a model of pro-growth and inflammatory pathways in liver cells. We show that, if experimental error is taken into account, there are thousands (11 700) of models compatible with the data. Despite the large number, we can extract structural features from the models, such as links that are always (or never) present or modules that appear in a mutual exclusive fashion. To further characterize this family of models, we investigate the input-output behavior of the models. We find 91 behaviors across the 11 700 models and we suggest new experiments to discriminate among them. Our results underscore the importance of characterizing in a global and exhaustive manner the family of feasible models, with important implications for experimental design.
机译:动机:逻辑建模是研究跨多个途径的信号传导的有用工具。逻辑模型可以通过训练包含磷蛋白组学数据的先验知识的网络来生成。可以使用随机优化程序执行训练,但是这些程序不能保证全局最优,也不能报告完整的可行模型系列。然而,这对于在信号转导基础的机制中提供准确的见解并生成可靠的预测至关重要。结果:我们建议使用答案集编程来详尽探讨可行逻辑模型的空间。为此,我们开发了caspo,这是一个开放源代码的Python软件包,它通过利用丰富的建模语言和解决方案集编程技术提供了一个强大的平台来学习和表征逻辑模型。我们通过回顾肝细胞中促生长和炎症途径的模型来说明caspo的有用性。我们表明,如果考虑到实验误差,则有成千上万(11700)个与数据兼容的模型。尽管数量众多,我们仍可以从模型中提取结构特征,例如始终存在(或永不存在)的链接或以互斥方式出现的模块。为了进一步表征该系列模型,我们研究了模型的输入输出行为。我们在11 700个模型中发现了91个行为,并建议进行新的实验来区分它们。我们的结果强调了以全局和详尽的方式描述可行模型族的重要性,这对实验设计具有重要意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号