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Wasserstein Distances for Estimating Parameters in Stochastic Reaction Networks

机译:随机反应网络中参数估计的Wasserstein距离

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Modern experimental methods such as flow cytometry and fluorescence in-situ hybridization (FISH) allow the measurement of cell-by-cell molecule numbers for RNA, proteins and other substances for large numbers of cells at a time, opening up new possibilities for the quantitative analysis of biological systems. Of particular interest is the study of biological reaction systems describing processes such as gene expression, cellular signalling and metabolism on a molecular level. It is well established that many of these processes are inherently stochastic and that deterministic approaches to their study can fail to capture properties essential for our understanding of these systems. Despite recent technological and conceptual advances, modelling and inference for stochastic models of reaction networks remains challenging due to additional complexities not present in the deterministic case. The Chemical Master Equation (CME) in particular, while frequently used to model many types of reaction networks, is difficult to solve exactly, and parameter inference in practice often relies on a variety of approximation schemes whose accuracy can vary widely and unpredictably depending on the context.
机译:现代实验方法,例如流式细胞术和荧光原位杂交(FISH),可以一次测量大量细胞的RNA,蛋白质和其他物质的逐细胞分子数量,从而为定量研究提供了新的可能性生物系统分析。特别令人感兴趣的是对生物反应系统的研究,其描述了分子水平上的诸如基因表达,细胞信号传导和代谢等过程。众所周知,这些过程中有许多是内在随机的,确定性的研究方法可能无法捕获我们对这些系统的理解所必需的属性。尽管最近在技术和概念上取得了进步,但是由于在确定性情况下不存在额外的复杂性,因此对反应网络的随机模型进行建模和推断仍然具有挑战性。尤其是化学主方程(CME),尽管经常用于对多种类型的反应网络进行建模,但难以精确求解,并且在实践中,参数推论通常依赖于各种近似方案,其精确度可能会因预测值的不同而大范围地变化且无法预测。语境。

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