遺伝子ネットワークのS-systemモデル同定のための効率的パラメータ推定:さらなる問題分割と交互最適化法の提案

IF 0.4 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
周平 木村, 幸輝 松村, 岡田 眞里子
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引用次数: 5

Abstract

The problem decomposition strategy is a very efficient technique for the inference of S-system models of genetic networks. This strategy defines the inference of a genetic network consisting of N genes as N subproblems, each of which is a 2(N+1)-dimensional function optimization problem. Genetic networks made up of dozens genes can be analyzed with this strategy, though the computational cost in doing so remains quite high. In this study, we attempt to infer S-system models more efficiently by further dividing each 2(N+1)-dimensional subproblem into one (N+2)-dimensional problem and one (N+1)-dimensional problem. The subproblems are divided using the genetic network inference method based on linear programming machines (LPMs). Next, we propose a new method for estimating the S-system parameters by alternately solving the two divided problems. According to our experimental results, the proposed approach requires less than one-third of the time required by the original problem decomposition approach. Finally, we apply our approach to actual expression data from the bacterial SOS DNA repair system.
基因网络的S-system模型鉴定的有效参数估计:提出进一步的问题分割和交互优化方法
问题分解策略是一种非常有效的遗传网络s系统模型推理技术。该策略将由N个基因组成的遗传网络的推理定义为N个子问题,每个子问题是一个2(N+1)维的函数优化问题。由数十个基因组成的遗传网络可以用这种策略进行分析,尽管这样做的计算成本仍然相当高。在本研究中,我们试图通过将每个2(N+1)维子问题进一步划分为一个(N+2)维问题和一个(N+1)维问题来更有效地推断s系统模型。采用基于线性规划机的遗传网络推理方法对子问题进行划分。接下来,我们提出了一种通过交替求解两个划分问题来估计s系统参数的新方法。根据我们的实验结果,本文提出的方法所需的时间不到原问题分解方法的三分之一。最后,我们将我们的方法应用于细菌SOS DNA修复系统的实际表达数据。
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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来源期刊
Chem-Bio Informatics Journal
Chem-Bio Informatics Journal BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
0.60
自引率
0.00%
发文量
8
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