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首页> 外文期刊>Information Sciences: An International Journal >Inferring gene regulatory networks using a hybrid GA-PSO approach with numerical constraints and network decomposition
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Inferring gene regulatory networks using a hybrid GA-PSO approach with numerical constraints and network decomposition

机译:使用具有数字约束和网络分解的混合GA-PSO方法推断基因调控网络

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摘要

Gene regulatory networks (GRNs) are essential for cellular metabolism during the development of living organisms. Reconstructing gene networks from expression profiling data can help biologists generate and test hypotheses to investigate the complex phenomena of nature systems. However, building regulatory models is a tedious task, especially when the number of genes and the complexity of regulation increase. To automate the procedure of network reconstruction, we establish a methodology to infer the computational network model and to deal with the problem of scalability from two directions. The first is to develop an enhanced GA-PSO hybrid method to search promising solutions, and the second is to develop a network decomposition procedure to reduce the task complexity. Meanwhile, our work includes a quantitative method to consider prior knowledge in the inference process to ensure validity of the obtained results. Experiments have been conducted to evaluate the proposed approach. The results indicate that it can be used to infer GRNs successfully and can achieve better performance.
机译:基因调节网络(GRN)对于生物体发育过程中的细胞代谢至关重要。从表达谱数据重建基因网络可以帮助生物学家生成和检验假设,以研究自然系统的复杂现象。但是,建立监管模型是一项繁琐的任务,尤其是在基因数量和监管复杂性增加的情况下。为了使网络重建过程自动化,我们建立了一种方法来推断计算网络模型并从两个方向处理可伸缩性问题。首先是开发一种增强的GA-PSO混合方法来搜索有希望的解决方案,其次是开发一种网络分解程序以降低任务复杂性。同时,我们的工作包括在推理过程中考虑先验知识的定量方法,以确保所获得结果的有效性。已经进行实验以评估所提出的方法。结果表明,它可以成功地推导GRN,并可以实现更好的性能。

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