Optimal Bayesian Biomarker Selection for Gene Regulatory Networks under Regulatory Model Uncertainty

Mahdi Imani, M. Imani, S. F. Ghoreishi
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引用次数: 1

Abstract

Gene regulatory networks (GRNs) are large and complex dynamical systems often monitored through RNA sequencing or microarray technologies. Genomics studies often focus on a small subset of genes and analyze only these genes due to the huge cost and time-limit constraints. Therefore, selecting a small subset of genes that carries the highest information about the underlying process of these complex systems is highly desired. The existing biomarker selection techniques rely on unrealistic assumptions such as direct observability of genes’ states as well as the availability of perfect knowledge about the modeling process. To address the aforementioned issues, this paper models GRNs with uncertain regulatory models with the signal model of partially-observed Boolean dynamical systems (POBDS) and derives the optimal Bayesian biomarker selection framework given the noisy available gene-expression data. The proposed framework is built on the multiple-model adaptive estimation (MMAE) framework and the optimal minimum mean-square error (MMSE) state estimator for POBDS, called Boolean Kalman smoother (BKS). The proposed framework is an optimal solution relative to the uncertainty class, and its high performance is demonstrated using the mammalian cell-cycle Boolean network model and the p53-MDM2 negative feedback loop observed through gene-expression data.
调控模型不确定性下基因调控网络的最优贝叶斯生物标志物选择
基因调控网络(grn)是一个庞大而复杂的动态系统,通常通过RNA测序或微阵列技术进行监测。由于巨大的成本和时间限制,基因组学研究通常只关注一小部分基因,并且只分析这些基因。因此,选择一小部分携带有关这些复杂系统的潜在过程的最高信息的基因是非常需要的。现有的生物标志物选择技术依赖于不切实际的假设,例如基因状态的直接可观察性以及关于建模过程的完美知识的可用性。为了解决上述问题,本文利用部分观测布尔动力系统(POBDS)的信号模型对具有不确定调控模型的grn进行建模,并在嘈杂的可用基因表达数据下推导出最优贝叶斯生物标志物选择框架。该框架建立在多模型自适应估计(MMAE)框架和POBDS的最优最小均方误差(MMSE)状态估计器布尔卡尔曼平滑(BKS)的基础上。该框架是相对于不确定性类的最优解决方案,并通过哺乳动物细胞周期布尔网络模型和基因表达数据观察到的p53-MDM2负反馈回路证明了其高性能。
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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