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Overcoming Complexity of Biological Systems: from Data Analysis to Mathematical Modeling

机译:克服生物系统的复杂性:从数据分析到数学建模

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The problem of dealing with complexity arises when we fail to achieve a desired behavior of biological systems (for example, in cancer treatment). In this review I formulate the problem of tackling biological complexity at the level of large-dimensional datasets and complex mathematical models of reaction networks. I show that in many cases the complexity can be reduced by using approximation by simpler objects (for example, using principal graphs for data dimension reduction, and using dominant systems for reducing complex models). Examples of dealing with complexity from various fields of molecular systems biology are used, in particular, from the analysis of cancer transcriptomes, mathematical modeling of protein synthesis and of cell fate decisions between death and life.
机译:当我们无法实现所需的生物系统行为时(例如在癌症治疗中),就会出现处理复杂性的问题。在这篇综述中,我提出了在多维数据集和反应网络的复杂数学模型层面解决生物复杂性的问题。我表明,在许多情况下,可以通过使用较简单的对象进行逼近来降低复杂性(例如,使用主图来减少数据维数,并使用优势系统来减少复杂模型)。处理分子系统生物学各个领域的复杂性的实例被使用,特别是从癌症转录组的分析,蛋白质合成的数学模型以及死亡与生命之间的细胞命运决定的数学模型。

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