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Gene time series data clustering based on continuous representations and an energy based similarity measure

机译:基于连续表示的基因时间序列数据聚类和基于能量的相似度测量

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Gene temporal expression data clustering has been widely used to study dynamic biological systems. However, most temporal gene expression data often contain noise, missing data points, and non-uniformly sampled time points, which imposes challenges for traditional clustering methods of extracting meaningful information. To improve the clustering performance, we introduce a novel clustering approach based on the continuous representations and an energy based similarity measure. The proposed approach models each gene expression profile as a B-spline expansion, for which the spline coefficients are estimated by regularized least squares scheme on the observed data. After fitting the continuous representations of gene expression profiles, we use an energy based similarity measure to take into account the temporal information and the relative changes of time series. Experimental results show that the proposed method is robust to noise and can produce meaningful clustering results.
机译:基因颞表表达数据聚类已被广泛用于研究动态生物系统。然而,大多数颞型基因表达数据通常包含噪声,缺失的数据点和非均匀采样的时间点,这对传统聚类方法提取有意义的信息施加了挑战。为了提高聚类性能,我们基于连续表示和基于能量的相似度措施介绍一种新的聚类方法。所提出的方法将每个基因表达谱模型为B样条膨胀,其中花键系数通过在观察到的数据上通过规则的最小二乘方案估计。在拟合基因表达谱的连续表示后,我们使用基于能量的相似度量来考虑时间信息和时间序列的相对变化。实验结果表明,该方法对噪声具有强大,可以产生有意义的聚类结果。

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