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Robust detection of periodic patterns in gene expression microarray data using topological signal analysis

机译:使用拓扑信号分析对基因表达微阵列数据中的周期性模式进行稳健检测

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In this paper, we present a new approach for analyzing gene expression data that builds on topological characteristics of time series. Our goal is to identify cell cycle regulated genes in micro array dataset. We construct a point cloud out of time series using delay coordinate embeddings. Persistent homology is utilized to analyse the topology of the point cloud for detection of periodicity. This novel technique is accurate and robust to noise, missing data points and varying sampling intervals. Our experiments using Yeast Saccharomyces cerevisiae dataset substantiate the capabilities of the proposed method.
机译:在本文中,我们提出了一种基于时间序列的拓扑特征分析基因表达数据的新方法。我们的目标是在微阵列数据集中鉴定细胞周期调控的基因。我们使用延迟坐标嵌入从时间序列中构造点云。持久同源性用于分析点云的拓扑以检测周期性。这项新颖的技术对噪声,丢失的数据点和变化的采样间隔准确且鲁棒。我们使用啤酒酵母数据集的实验证实了所提出方法的功能。

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