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Multi-objective Optimization Approach to find Biclusters in Gene Expression Data

机译:基因表达数据中寻找双板的多目标优化方法

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Gene expression levels of organisms are measured by DNA microarrays. Finding biclusters in gene expression matrices provides invaluable information about effects of disease at the genetic level. These biclusters could identify which genes are up-regulated/down-regulated under certain conditions. This paper investigates a methodology for evolutionary-based biclustering using the NSGA-II algorithm. It also presents an improvement to the recovery and relevance external validation metrics as well as a new method for synthetic data generation for biclustering. Results obtained demonstrate its effectiveness in discovering useful biclusters on varied synthetic data when applied with the average Spearman's rho measure as the fitness function.
机译:通过DNA微阵列测量生物体的基因表达水平。在基因表达矩阵中发现双板提供有关遗传水平疾病影响的宝贵信息。这些平板可以识别哪些基因在某些条件下被上调/下调。本文研究了使用NSGA-II算法的进化基于BICLUSTIP的方法。它还提出了对恢复和相关性外部验证度量的改进以及Biclustering的合成数据生成的新方法。获得的结果证明其在用平均矛盾的RHO测量作为健身功能时在普通的SPEARMAN的RHO措施时发现有用的合成数据的有效性。

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