双聚类算法的比较

N. Verma, S. Meena, S. Bajpai, Amarjot Singh, A. Nagrare, A. Nagrare
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引用次数: 12

摘要

在过去的几年里,各种微阵列技术被用于从微阵列数据中提取有用的生物信息。微阵列技术已经成为生物研究的核心工具。提取或鉴定具有相似表达模式的基因群,在基因分析中起着重要作用。主要技术包括聚类和双聚类方法。除了经典的聚类方法外,由于双聚类能够同时在不同条件下对两种基因进行分组,因此被首选用于分析生物数据集。双聚类在许多特定条件下的俱乐部基因应用中得到了实践,主要用于识别协同调节基因集,组织分类等。基因本体是另一个重要的应用领域,其中双聚类用于假定未注释基因的类别。基因本体数据库能够对大量基因进行注释和分析。基因本体是跨物种、跨数据库用基因的产物属性表示基因的一种标准方法。使用BicAT和BiVisu工具箱可以很好地理解所分析基因列表的典型注释。工具箱提供了一个平台,使我们能够在图形工具中比较不同的双聚类算法。本文比较了用于分析癌和弥漫大b细胞淋巴瘤微阵列数据集的不同双聚类方法。在运行时分析的支持下,根据富集值对算法进行了比较。本文详细解释了与每种算法相关的双聚类和影响富集值的智能,从而为上述数据集提供了最佳的双聚类技术。
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A comparison of biclustering algorithms
In the past years, various microarray technologies have been used to extract useful biological information from microarray data. Microarray technologies have become a central tool in biological research. The extraction or identification of gene groups with similar expression pattern, plays an important role in the analysis of genes. The primary techniques involve clustering and biclustering methods. Besides classical clustering methods, biclustering is being preferred to analyze biological datasets, due to its ability to group both genes across conditions simultaneously. Biclustering is being practiced in a number of applications to club genes across specified conditions, used mainly in identifying sets of coregulated genes, tissue classification etc. Gene Ontology is another important area of application, where biclusters are used to presume the class of non-annotated genes. Gene Ontology database is competent of annotating and analyzing a large number of genes. Gene Ontology is a standard approach of representing the gene with their product attributes, across different species and databases. Typical annotations for the analyzed list of genes can be well understood using the BicAT and BiVisu toolbox. The toolbox provides a platform which enables us to compare different biclustering algorithms, inside the graphical tool. This paper compares different biclustering approaches used to analyze carcinoma and DLBCL (diffuse large B-cell lymphoma) microarray datasets. The algorithms were compared on the grounds of enrichment values with support from runtime analysis. The paper explains in detail the biclusters associated with each algorithm and the intellects affecting the enrichment values, leading to the best biclustering technique for the datasets mentioned above.
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