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Clustering of Expressed Sequence Tag Using Global and Local Features: A Performance Study

机译:使用全局和本地特征的表达序列标签的聚类:性能研究

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Clustering of expressed sequence tag (EST) plays an important role in gene analysis. Alignment-based sequence comparison is commonly used to measure the similarity between sequences, and recently some of the alignment-free comparisons have been introduced. In this paper, we evaluate the role of global and local features extracted from the alignment free approaches I.e., the compression-based method and the generalized relative entropy method. The evaluation is done from the perspective of EST clustering quality. Our evaluation shows that the local feature of EST yields much better clustering quality compared to the global feature. Furthermore, we verified our best clustering result achieved in the experiments with another EST clustering algorithm, wcd, and it shows that our performance is comparable to the later.
机译:表达序列标签(EST)的聚类在基因分析中起重要作用。基于对准的序列比较通常用于测量序列之间的相似性,并且最近已经引入了一些无比较的比较。在本文中,我们评估了从对准方法中提取的全局和局部特征的作用,即基于压缩的方法和广义的相对熵方法。评估是从EST聚类质量的角度完成的。我们的评估表明,与全球特征相比,EST的本地特征会产生更好的聚类质量。此外,我们验证了在实验中实现的最佳聚类结果与另一个EST聚类算法,WCD,并且表明我们的性能与后期相当。

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