用拉索-卡尔曼平滑器跟踪时变基因组调控网络。

Jehandad Khan, Nidhal Bouaynaya, Hassan M Fathallah-Shaykh
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引用次数: 13

摘要

人们普遍认为细胞的需求和环境条件决定了基因调控网络的结构。尽管如此,监管网络建模和分析的现状假设网络拓扑随着时间的推移是不变的。在本文中,我们重新关注遗传网络的动态视角,一个可以揭示在发育生长等生物过程中网络结构的实质性拓扑变化。通过将网络估计表述为目标跟踪问题,我们对时变遗传网络从有限数量的噪声观测进行推理提出了一种新的观点。通过在压缩域中进行跟踪,克服了观测数有限(小n大p问题)的问题。假设线性动力学,我们推导出拉索-卡尔曼平滑,它递归地计算每个时间点网络连通性的最小均方稀疏估计。LASSO算子,由遗传调控网络的稀疏性驱动,允许同时恢复和压缩信号,从而减少所需的观测量。平滑通过合并所有观测值来改进估计。我们在黑腹果蝇的生命周期中跟踪时变网络。恢复的网络表明,很少有基因是永久的,而大多数是短暂的,只在生物体的特定发育阶段起作用。
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Tracking of time-varying genomic regulatory networks with a LASSO-Kalman smoother.

: It is widely accepted that cellular requirements and environmental conditions dictate the architecture of genetic regulatory networks. Nonetheless, the status quo in regulatory network modeling and analysis assumes an invariant network topology over time. In this paper, we refocus on a dynamic perspective of genetic networks, one that can uncover substantial topological changes in network structure during biological processes such as developmental growth. We propose a novel outlook on the inference of time-varying genetic networks, from a limited number of noisy observations, by formulating the network estimation as a target tracking problem. We overcome the limited number of observations (small n large p problem) by performing tracking in a compressed domain. Assuming linear dynamics, we derive the LASSO-Kalman smoother, which recursively computes the minimum mean-square sparse estimate of the network connectivity at each time point. The LASSO operator, motivated by the sparsity of the genetic regulatory networks, allows simultaneous signal recovery and compression, thereby reducing the amount of required observations. The smoothing improves the estimation by incorporating all observations. We track the time-varying networks during the life cycle of the Drosophila melanogaster. The recovered networks show that few genes are permanent, whereas most are transient, acting only during specific developmental phases of the organism.

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