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Detecting Periodically Expressed Genes based on Time-frequency Analysis and L-curve Method

机译:基于时频分析和L曲线法的周期性表达基因检测

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In microarray experiments, gene expression profiles are often affected by biological properties, such as synchronization loss, and show some non-stationarity. Worse still, the microarray data usually suffers from missing values. The conventional spectrum-based methods, when used to identify a subset of genes that are periodically expressed, are degraded by these factors. In this paper, we use the Wigner-Ville distribution analysis and L-curve method for detection of periodically expressed genes. We provide a graphical exploratory device for assessment of the presence of periodically expressed genes. Then, we identify the subset of genes actually involved in the cell cycle using the L-curve method. The experiments on several widely used datasets show that our algorithm can effectively reduce the effect of non-stationarity and missing values problems.
机译:在微阵列实验中,基因表达谱通常受生物学特性(如同步丢失)的影响,并表现出一定的不稳定性。更糟糕的是,微阵列数据通常遭受缺失值的困扰。当用于识别周期性表达的基因子集时,传统的基于光谱的方法会因这些因素而降解。在本文中,我们使用Wigner-Ville分布分析和L曲线方法检测周期性表达的基因。我们提供了一个图形的探索性设备,用于评估周期性表达的基因的存在。然后,我们使用L曲线方法确定实际参与细胞周期的基因子集。在几个广泛使用的数据集上的实验表明,我们的算法可以有效地减少非平稳性和缺失值问题的影响。

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