Roozbeh Manshaei, Pooya Sobhe Bidari, Mahdi Aliyari Shoorehdeli, Amir Feizi, Tahmineh Lohrasebi, Mohammad Ali Malboobi, Matthew Kyan, Javad Alirezaie
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引用次数: 0
摘要
基因调控网络(GRN)逆向工程是从基因表达数据中估算细胞系统基因相互作用的过程。在本文中,我们提出了一种基于神经模糊网络的新型混合系统算法,用于在只有中等数量测量数据的情况下,从观测基因表达数据中重建基因调控网络。该方法利用模糊逻辑将基因表达值转化为定性描述因子,可通过一组定义的规则进行评估。该算法使用神经模糊网络来模拟基因对其他基因的影响,然后通过四个决策阶段来提取基因间的相互作用。所提算法的主要特点之一是可以轻松、快速地提取最佳数量的模糊规则,而不会过度参数化。通过对 S. cerevisiae 细胞周期的微阵列表达谱进行数据分析和仿真,证明了所提出的算法不仅能准确选择时间序列基因表达数据的模式,而且与已发表的四种算法相比,能提供重建精度更高的模型:DBNs、VBEM、时间延迟 ARACNE 和 PF 受 LASSO 的影响。在网络重建任务中,我们用召回率和 F 分数评估了所提出方法的准确性。
Hybrid-controlled neurofuzzy networks analysis resulting in genetic regulatory networks reconstruction.
Reverse engineering of gene regulatory networks (GRNs) is the process of estimating genetic interactions of a cellular system from gene expression data. In this paper, we propose a novel hybrid systematic algorithm based on neurofuzzy network for reconstructing GRNs from observational gene expression data when only a medium-small number of measurements are available. The approach uses fuzzy logic to transform gene expression values into qualitative descriptors that can be evaluated by using a set of defined rules. The algorithm uses neurofuzzy network to model genes effects on other genes followed by four stages of decision making to extract gene interactions. One of the main features of the proposed algorithm is that an optimal number of fuzzy rules can be easily and rapidly extracted without overparameterizing. Data analysis and simulation are conducted on microarray expression profiles of S. cerevisiae cell cycle and demonstrate that the proposed algorithm not only selects the patterns of the time series gene expression data accurately, but also provides models with better reconstruction accuracy when compared with four published algorithms: DBNs, VBEM, time delay ARACNE, and PF subjected to LASSO. The accuracy of the proposed approach is evaluated in terms of recall and F-score for the network reconstruction task.