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Gene Expression Data Analysis Using a Novel Approach to Biclustering Combining Discrete and Continuous Data

机译:基因表达数据分析使用新颖的方法来组合离散和连续数据

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摘要

Many different methods exist for pattern detection in gene expression data. In contrast to classical methods, biclustering has the ability to cluster a group of genes together with a group of conditions (replicates, set of patients or drug compounds). However, since the problem is NP-complex, most algorithms use heuristic search functions and therefore might converge towards local maxima. By using the results of biclustering on discrete data as a starting point for a local search function on continuous data, our algorithm avoids the problem of heuristic initialization. Similar to OPSM, our algorithm aims to detect biclusters whose rows and columns can be ordered such that row values are growing across the bicluster's columns and vice-versa. Results have been generated on the yeast genome (Saccharomyces cerevisiae), a human cancer dataset and random data. Results on the yeast genome showed that 89% of the one hundred biggest non-overlapping biclusters were enriched with Gene Ontology annotations. A comparison with OPSM and ISA demonstrated a better efficiency when using gene and condition orders. We present results on random and real datasets that show the ability of our algorithm to capture statistically significant and biologically relevant biclusters.
机译:存在许多用于基因表达数据中模式检测的方法。与传统方法相比,双聚类技术具有将一组基因与一组条件(重复,患者或药物化合物)聚集在一起的能力。但是,由于问题是NP复杂,因此大多数算法都使用启发式搜索功能,因此可能会收敛于局部最大值。通过使用离散数据的双簇结果作为连续数据局部搜索功能的起点,我们的算法避免了启发式初始化的问题。与OPSM相似,我们的算法旨在检测可对行和列进行排序的bicluster,以使行值在bicluster的列上不断增长,反之亦然。已经在酵母基因组(酿酒酵母),人类癌症数据集和随机数据上产生了结果。酵母基因组的结果显示,在一百个最大的不重叠双聚簇中,有89%富含基因本体论注释。与OPSM和ISA的比较表明,在使用基因和条件顺序时效率更高。我们在随机数据集和真实数据集上展示了结果,这些结果表明了我们的算法能够捕获具有统计意义的和生物学相关的二元组的能力。

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