Algebraic Statistical Model for Biochemical Network Dynamics Inference.

Daniel F Linder, Grzegorz A Rempala
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Abstract

With modern molecular quantification methods, like, for instance, high throughput sequencing, biologists may perform multiple complex experiments and collect longitudinal data on RNA and DNA concentrations. Such data may be then used to infer cellular level interactions between the molecular entities of interest. One method which formalizes such inference is the stoichiometric algebraic statistical model (SASM) of [2] which allows to analyze the so-called conic (or single source) networks. Despite its intuitive appeal, up until now the SASM has been only heuristically studied on few simple examples. The current paper provides a more formal mathematical treatment of the SASM, expanding the original model to a wider class of reaction systems decomposable into multiple conic subnetworks. In particular, it is proved here that on such networks the SASM enjoys the so-called sparsistency property, that is, it asymptotically (with the number of observed network trajectories) discards the false interactions by setting their reaction rates to zero. For illustration, we apply the extended SASM to in silico data from a generic decomposable network as well as to biological data from an experimental search for a possible transcription factor for the heat shock protein 70 (Hsp70) in the zebrafish retina.

Abstract Image

Abstract Image

生化网络动力学推断的代数统计模型。
利用现代分子定量方法(如高通量测序),生物学家可以进行多个复杂实验,收集 RNA 和 DNA 浓度的纵向数据。这些数据可用于推断相关分子实体之间在细胞水平上的相互作用。将这种推断正规化的一种方法是[2]的化学计量代数统计模型(SASM),它可以分析所谓的圆锥(或单源)网络。尽管 SASM 具有直观的吸引力,但迄今为止,人们仅在几个简单的例子中对其进行了启发式研究。本文对 SASM 进行了更正式的数学处理,将原始模型扩展到更广泛的可分解为多个圆锥子网络的反应系统类别。本文特别证明,在这类网络上,SASM 具有所谓的稀疏性,即它可以渐近地(随着观察到的网络轨迹数量的增加)通过将反应速率设为零来摒弃错误的相互作用。为了说明问题,我们将扩展的 SASM 应用于来自通用可分解网络的硅学数据,以及来自斑马鱼视网膜热休克蛋白 70(Hsp70)可能转录因子实验搜索的生物数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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