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首页> 外文期刊>International journal of computational biology and drug design >A two-stage inference algorithm for gene regulation network models
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A two-stage inference algorithm for gene regulation network models

机译:基因调控网络模型的两阶段推理算法

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Modelling and simulation of gene-regulatory networks (GRNs) has become an important aspect of modern systems biology investigations. An important and unsolved problem in this area is the automated inference (reverse-engineering) of dynamic mechanistic GRN models from gene-expression time-course data. The conventional single-stage algorithm determines the values of all model parameters simultaneously, whereas recent two-stage algorithms can potentially improve the performance (accuracy) of single-stage approaches. The objective of this study is to compare the performance of the conventional single-stage and a novel version of the modern two-stage algorithm. We based this study on our implementation of a multi-swarm particle swarm optimisation process. A particular focus of this study is placed on the comparison of the computational performance of the single-stage vs. two-stage algorithm. Our results suggest that the 2-stage approach outperforms the single-stage methods by far in terms of model inference speed without loss of accuracy.
机译:基因调控网络(GRN)的建模和仿真已成为现代系统生物学研究的重要方面。在这一领域中一个重要的未解决的问题是根据基因表达时程数据自动推断(逆向工程)动态机械GRN模型。常规的单阶段算法同时确定所有模型参数的值,而最近的两阶段算法可以潜在地提高单阶段方法的性能(准确性)。这项研究的目的是比较传统单阶段算法和现代两阶段算法的新颖版本的性能。我们基于这项研究的多群粒子群优化过程的实施。这项研究的特别重点放在单阶段算法与两阶段算法的计算性能比较上。我们的结果表明,在模型推断速度方面,两阶段方法远胜于单阶段方法,而不会损失准确性。

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