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Reduct Generation and Classification of Gene Expression Data

机译:减少基因表达数据的生成和分类

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Identification of gene subsets responsible for discerning between available samples of gene microarray data is an important task in Bioinformatics. Due to the large number of genes in samples, there is an exponentially large search space of solutions. The main challenge is to reduce or remove the redundant genes, without affecting discernibility between objects. Reducts, from rough set theory, correspond to a minimal subset of essential genes. We present an algorithm for generating reducts from gene microarray data. It proceeds by preprocessing gene expression data, discretization of real value attributes into categorical followed by positive region based approach for reduct generation. For comparison, different approaches for reduct generation have also been discussed. Results on benchmark gene expression datasets demonstrate more than 90% reduction of redundant genes.
机译:鉴定对基因微阵列数据的可用样本之间的辨别的基因子集是生物信息学中的重要任务。由于样本中的大量基因,解决方案的指数大的搜索空间。主要挑战是减少或去除冗余基因,而不会影响物体之间的可辨别。从粗糙集理论减少,对应于最小的基因子集。我们提出了一种用于从基因微阵列数据生成减少的算法。它通过预处理基因表达数据进行预处理,实际价值属性的离散性,然后是基于正区域的减少的方法。为了比较,还讨论了还讨论了过渡的不同方法。基准基因表达数据集的结果表明冗余基因减少了90%以上。

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