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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Clustering Time-Series Gene Expression Data Using Smoothing Spline Derivatives
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Clustering Time-Series Gene Expression Data Using Smoothing Spline Derivatives

机译:使用平滑样条导数对时间序列基因表达数据进行聚类

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摘要

Microarray data acquired during time-course experiments allow the temporal variations in gene expression to be monitored. An original postprandial fasting experiment was conducted in the mouse and the expression of 200 genes was monitored with a dedicated macroarray at 11 time points between 0 and 72 hours of fasting. The aim of this study was to provide a relevant clustering of gene expression temporal profiles. This was achieved by focusing on the shapes of the curves rather than on the absolute level of expression. Actually, we combined spline smoothing and first derivative computation with hierarchical and partitioning clustering. A heuristic approach was proposed to tune the spline smoothing parameter using both statistical and biological considerations. Clusters are illustrated a posteriori through principal component analysis and heatmap visualization. Most results were found to be in agreement with the literature on the effects of fasting on the mouse liver and provide promising directions for future biological investigations.
机译:在时程实验中获得的微阵列数据可以监测基因表达的时间变化。在小鼠中进行了原始的餐后禁食实验,并在禁食0到72小时之间的11个时间点使用专用的宏阵列监测了200个基因的表达。这项研究的目的是提供相关的基因表达时间概况的聚类。这是通过专注于曲线的形状而不是表达的绝对水平来实现的。实际上,我们将样条平滑和一阶导数计算与分层和分区聚类相结合。提出了一种启发式方法,可同时从统计和生物学角度对样条平滑参数进行调整。通过主成分分析和热图可视化来说明聚类。发现大多数结果与禁食对小鼠肝脏的影响的文献一致,并为将来的生物学研究提供了有希望的方向。

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