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An Integrated QAP-Based Approach to Visualize Patterns of Gene Expression Similarity

机译:基于QAP的综合QAP方法可视化基因表达相似性的模式

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This paper illustrates how the Quadratic Assignment Problem (QAP) is used as a mathematical model that helps to produce a visualization of microarray data, based on the relationships between the objects (genes or samples). The visualization method can also incorporate the result of a clustering algorithm to facilitate the process of data analysis. Specifically, we show the integration with a graph-based clustering algorithm that outperforms the results against other benchmarks, namely k??means and self-organizing maps. Even though the application uses gene expression data, the method is general and only requires a similarity function being defined between pairs of objects. The microarray dataset is based on the budding yeast (S. cerevisiae). It is composed of 79 samples taken from different experiments and 2,467 genes. The proposed method delivers an automatically generated visualization of the microarray dataset based on the integration of the relationships coming from similarity measures, a clustering result and a graph structure.
机译:本文说明了二次分配问题(QAP)如何用作数学模型,其基于对象(基因或样本)之间的关系有助于产生微阵列数据的可视化。可视化方法还可以包含聚类算法的结果,以便于数据分析过程。具体而言,我们展示了与基于图形的聚类算法的集成,这胜过了对其他基准的结果,即K ??均值和自组织地图。即使应用程序使用基因表达数据,该方法也是一般的,并且只需要在对象对之间定义的相似性函数。微阵列数据集基于萌芽酵母(酿酒酵母)。它由来自不同实验和2,467个基因的79个样本组成。该方法根据来自相似度测量的关系,群集结果和图形结构的关系,提供了自动生成的微阵列数据集的可视化。

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