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首页> 外文期刊>Journal of Biotechnology >Finding edging genes from microarray data.
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Finding edging genes from microarray data.

机译:从微阵列数据中寻找边缘基因。

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MOTIVATION: A set of genes and their gene expression levels are used to classify disease and normal tissues. Due to the massive number of genes in microarray, there are a large number of edges to divide different classes of genes in microarray space. The edging genes (EGs) can be co-regulated genes, they can also be on the same pathway or deregulated by the same non-coding genes, such as siRNA or miRNA. Every gene in EGs is vital for identifying a tissue's class. The changing in one EG's gene expression may cause a tissue alteration from normal to disease and vice versa. Finding EGs is of biological importance. In this work, we propose an algorithm to effectively find these EGs. RESULT: We tested our algorithm with five microarray datasets. The results are compared with the border-based algorithm which was used to find gene groups and subsequently divide different classes of tissues. Our algorithm finds a significantly larger amount of EGs than does the border-based algorithm. As our algorithm prunes irrelevant patterns at earlier stages, time and space complexities are much less prevalent than in the border-based algorithm. AVAILABILITY: The algorithm proposed is implemented in C++ on Linux platform. The EGs in five microarray datasets are calculated. The preprocessed datasets and the discovered EGs are available at http://www3.it.deakin.edu.au/ approximately phoebe/microarray.html.
机译:动机:一组基因及其基因表达水平用于对疾病和正常组织进行分类。由于微阵列中大量的基因,因此在微阵列空间中存在大量的边缘来划分不同类别的基因。边缘基因(EGs)可以是共同调控的基因,它们也可以在相同的途径上或由相同的非编码基因(例如siRNA或miRNA)去调控。 EGs中的每个基因对于识别组织的类别至关重要。一个EG基因表达的变化可能导致组织从正常变为疾病,反之亦然。发现EG具有生物学重要性。在这项工作中,我们提出了一种算法,可以有效地找到这些EG。结果:我们用五个微阵列数据集测试了我们的算法。将结果与基于边界的算法进行比较,该算法用于查找基因组并随后划分不同类别的组织。与基于边界的算法相比,我们的算法发现大量的EG。由于我们的算法会在较早的阶段修剪不相关的模式,因此时间和空间复杂度远低于基于边界的算法。可用性:所提出的算法在Linux平台上以C ++实现。计算了五个微阵列数据集中的EG。可以在http://www3.it.deakin.edu.au/大约phoebe / microarray.html上找到预处理的数据集和发现的EG。

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