基于可见性图的动态基因特征提取

Jin-Yin Chen, Zhen Wang, Hai-bin Zheng, Liangying Liu, Ziheng Zhu, Shi-yan Ying, Ying Wei
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引用次数: 0

摘要

基因表达时间序列数据在生物信息学和数据挖掘领域有着重要的作用,通过分析基因表达水平和时间序列可以检测到基因功能和分类等特定信息。本文提出了一种基于可见性图的动态基因特征提取方法。该方法分四个阶段进行:1)利用基因时间序列数据构建复杂网络;2)根据网络结构和VG算法的具体特征提取不同的特征;3)采用不同的分类器对基因时间序列数据进行分析,对比不同的特征提取方法,同时采用基于VG动态特征提取的聚类算法,以获得更好的性能;4)使用不同的数据集对我们的方法进行验证,包括根据提取的特征进行澄清和聚类。大量的实验结果证明了VG方法在从时间序列中提取真实复杂基因表达数据的时变和特异性基因特征方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DGFE-VG: Dynamic Gene Feature Extraction via Visibility Graph
Gene expression time series data plays an important role in the field of bioinformatics and data mining, as the analysis of the expression level and time series could detect specific information like gene function and classifications. In this paper, we propose a dynamic gene feature extraction method via visibility graph (VG). It is carried out in four stages: 1) complex networks are constructed from gene time series data; 2) different features are extracted based on the network structure and the specific characteristics of VG algorithm; 3) different classifiers are adopted to analyze gene time series data compared with different feature extraction methods, while, clustering algorithm are applied based on dynamic feature extraction via VG to achieve better performance; 4) different datasets are used to verify our method including clarifying and clustering according to the feature we extract. Abundant experiment results prove the effectiveness of VG method's in extracting the time varying and specific gene features underlying realistic complex gene expression data from time series.
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