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Systems biology by the rules: hybrid intelligent systems for pathway modeling and discovery

机译:按规则进行系统生物学:用于路径建模和发现的混合智能系统

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Background Expert knowledge in journal articles is an important source of data for reconstructing biological pathways and creating new hypotheses. An important need for medical research is to integrate this data with high throughput sources to build useful models that span several scales. Researchers traditionally use mental models of pathways to integrate information and development new hypotheses. Unfortunately, the amount of information is often overwhelming and these are inadequate for predicting the dynamic response of complex pathways. Hierarchical computational models that allow exploration of semi-quantitative dynamics are useful systems biology tools for theoreticians, experimentalists and clinicians and may provide a means for cross-communication. Results A novel approach for biological pathway modeling based on hybrid intelligent systems or soft computing technologies is presented here. Intelligent hybrid systems, which refers to several related computing methods such as fuzzy logic, neural nets, genetic algorithms, and statistical analysis, has become ubiquitous in engineering applications for complex control system modeling and design. Biological pathways may be considered to be complex control systems, which medicine tries to manipulate to achieve desired results. Thus, hybrid intelligent systems may provide a useful tool for modeling biological system dynamics and computational exploration of new drug targets. A new modeling approach based on these methods is presented in the context of hedgehog regulation of the cell cycle in granule cells. Code and input files can be found at the Bionet website: www.chip.ord/~wbosl/Software/Bionet. Conclusion This paper presents the algorithmic methods needed for modeling complicated biochemical dynamics using rule-based models to represent expert knowledge in the context of cell cycle regulation and tumor growth. A notable feature of this modeling approach is that it allows biologists to build complex models from their knowledge base without the need to translate that knowledge into mathematical form. Dynamics on several levels, from molecular pathways to tissue growth, are seamlessly integrated. A number of common network motifs are examined and used to build a model of hedgehog regulation of the cell cycle in cerebellar neurons, which is believed to play a key role in the etiology of medulloblastoma, a devastating childhood brain cancer.
机译:背景技术期刊文章中的专家知识是重建生物学途径和创建新假设的重要数据来源。医学研究的一项重要需求是将这些数据与高通量资源集成在一起,以构建涵盖多个规模的有用模型。传统上,研究人员使用途径的心理模型来整合信息并开发新的假设。不幸的是,信息量通常不堪重负,而这些信息不足以预测复杂途径的动态响应。允许探索半定量动力学的分层计算模型对于理论家,实验家和临床医生是有用的系统生物学工具,并且可以提供交叉交流的手段。结果本文提出了一种基于混合智能系统或软计算技术的新型生物途径建模方法。智能混合系统涉及多种相关的计算方法,例如模糊逻辑,神经网络,遗传算法和统计分析,在复杂控制系统建模和设计的工程应用中已变得无处不在。生物途径可以被认为是复杂的控制系统,医学试图对其进行操纵以达到期望的结果。因此,混合智能系统可以为建模生物系统动力学和新药物靶标的计算探索提供有用的工具。在颗粒细胞中刺猬调节细胞周期的背景下,提出了一种基于这些方法的新建模方法。可以在Bionet网站上找到代码和输入文件:www.chip.ord /〜wbosl / Software / Bionet。结论本文介绍了使用基于规则的模型对复杂的生化动力学建模的算法方法,以在细胞周期调控和肿瘤生长的背景下代表专家知识。这种建模方法的一个显着特征是,它允许生物学家从他们的知识库中构建复杂的模型,而无需将该知识转换为数学形式。无缝集成了从分子途径到组织生长的多个层次的动力学。检查了许多常见的网络基序,并将其用于构建小脑神经元细胞周期的刺猬调节模型,该模型被认为在毁灭性的儿童脑癌髓母细胞瘤的病因中起关键作用。

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