Collocation-based sparse estimation for constructing dynamic gene networks.

Teppei Shimamura, Seiya Imoto, Masao Nagasaki, Mai Yamauchi, Rui Yamaguchi, André Fujita, Yoshinori Tamada, Noriko Gotoh, Satoru Miyano
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Abstract

One of the open problems in systems biology is to infer dynamic gene networks describing the underlying biological process with mathematical, statistical and computational methods. The first-order difference equation-based models such as dynamic Bayesian networks and vector autoregressive models were used to infer time-lagged relationships between genes from time-series microarray data. However, two primary problems greatly reduce the effectiveness of current approaches. The first problem is the tacit assumption that time lag is stationary. The second is the inseparability between measurement noise and process noise (unmeasured disturbances that pass through time process). To address these problems, we propose a stochastic differential equation model for inferring continuous-time dynamic gene networks under the situation in which both of the process noise and the observation noise exist. We present a collocation-based sparse estimation for simultaneous parameter estimation and model selection in the model. The collocation-based approach requires considerably less computational effort than traditional methods in ordinary stochastic differential equation models. We also incorporate various biological knowledge easily to refine the estimation accuracy with the proposed method. The results using simulated data and real time-series expression data of human primary small airway epithelial cells demonstrate that the proposed approach outperforms competing approaches and can provide significant genes influenced by gefitinib.

基于配位的稀疏估计构建动态基因网络。
系统生物学的一个开放问题是用数学、统计和计算方法来推断动态基因网络,描述潜在的生物过程。基于一阶差分方程的动态贝叶斯网络模型和矢量自回归模型从时间序列微阵列数据中推断出基因之间的时滞关系。然而,两个主要问题大大降低了当前方法的有效性。第一个问题是默认的假设,即时间滞后是固定的。其次是测量噪声和过程噪声(通过时间过程的未测量干扰)之间的不可分割性。为了解决这些问题,我们提出了一个过程噪声和观测噪声同时存在的连续时间动态基因网络的随机微分方程模型。提出了一种基于并置的稀疏估计方法,用于模型中参数估计和模型选择的同时进行。在普通随机微分方程模型中,基于配位的方法比传统方法的计算量要少得多。我们还可以很容易地结合各种生物学知识来提高该方法的估计精度。使用模拟数据和人类原代小气道上皮细胞的实时时序表达数据的结果表明,所提出的方法优于竞争方法,并且可以提供受吉非替尼影响的重要基因。
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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