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从多个数据集中推断基因调控网络。

Inferring Gene Regulatory Networks from Multiple Datasets.

作者信息

Penfold Christopher A, Gherman Iulia, Sybirna Anastasiya, Wild David L

机构信息

Wellcome/CRUK Gurdon Institute, University of Cambridge, Cambridge, UK.

Warwick Integrative Synthetic Biology Centre, School of Engineering, University of Warwick, Coventry, UK.

出版信息

Methods Mol Biol. 2019;1883:251-282. doi: 10.1007/978-1-4939-8882-2_11.

Abstract

Gaussian process dynamical systems (GPDS) represent Bayesian nonparametric approaches to inference of nonlinear dynamical systems, and provide a principled framework for the learning of biological networks from multiple perturbed time series measurements of gene or protein expression. Such approaches are able to capture the full richness of complex ODE models, and can be scaled for inference in moderately large systems containing hundreds of genes. Related hierarchical approaches allow for inference from multiple datasets in which the underlying generative networks are assumed to have been rewired, either by context-dependent changes in network structure, evolutionary processes, or synthetic manipulation. These approaches can also be used to leverage experimentally determined network structures from one species into another where the network structure is unknown. Collectively, these methods provide a comprehensive and flexible platform for inference from a diverse range of data, with applications in systems and synthetic biology, as well as spatiotemporal modelling of embryo development. In this chapter we provide an overview of GPDS approaches and highlight their applications in the biological sciences, with accompanying tutorials available as a Jupyter notebook from https://github.com/cap76/GPDS .

摘要

高斯过程动态系统(GPDS)代表了用于非线性动态系统推理的贝叶斯非参数方法,并为从基因或蛋白质表达的多个扰动时间序列测量中学习生物网络提供了一个有原则的框架。此类方法能够捕捉复杂常微分方程模型的全部丰富信息,并且可以进行扩展,以便在包含数百个基因的中等规模系统中进行推理。相关的分层方法允许从多个数据集中进行推理,在这些数据集中,假设潜在的生成网络已经通过网络结构的上下文相关变化、进化过程或合成操作进行了重新布线。这些方法还可用于将从一个物种实验确定的网络结构应用到另一个网络结构未知的物种中。总体而言,这些方法为从各种数据进行推理提供了一个全面且灵活的平台,在系统生物学和合成生物学以及胚胎发育的时空建模中都有应用。在本章中,我们概述了GPDS方法,并突出了它们在生物科学中的应用,同时可从https://github.com/cap76/GPDS获取作为Jupyter笔记本的配套教程。

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