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Associative Artificial Neural Network for Discovery of Highly Correlated Gene Groups Based on Gene Ontology and Gene Expression

机译:基于基因本体和基因表达的关联人工神经网络发现高度相关的基因组

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The advance of high-throughput experimental technologies poses continuous challenges to computational data analysis in functional and comparative genomics studies. Gene ontology (GO) annotation and transcriptional profiling using gene expression array have been two of the major approaches for system-wide analysis of gene functions and gene interactions. In the literature, extensive studies have been reported in each aspect. Yet there is a lack of efficient algorithm that discover associative patterns across these two data domains. We proposed a mixture model associative artificial neural network to tackle this deficiency. The algorithm inherits the theoretical foundation of adaptive resonance associative map (ARAM), with essential redefinition of pattern similarity measures and learning functions. The proposed algorithm is capable of clustering data based on both GO semantic similarity and expressional correlation, for the purpose of systematically discovering genome-wide, highly correlated gene groups, which in turn suggest similar or closely related functions. We applied the proposed algorithm to the analysis of the Saccharomyces cerevisiae (yeast) dataset and obtained satisfactory results.
机译:高通量实验技术的发展对功能和比较基因组学研究中的计算数据分析提出了持续的挑战。基因本体(GO)注释和使用基因表达阵列进行转录谱分析是系统范围内基因功能和基因相互作用分析的两种主要方法。在文献中,已经在各个方面进行了广泛的研究。但是,缺少一种有效的算法来发现这两个数据域之间的关联模式。我们提出了一种混合模型关联的人工神经网络来解决这一缺陷。该算法继承了自适应共振关联图(ARAM)的理论基础,对模式相似性度量和学习功能进行了重新定义。所提出的算法能够基于GO语义相似性和表达相关性对数据进行聚类,目的是系统地发现全基因组范围内,高度相关的基因组,从而暗示相似或紧密相关的功能。我们将提出的算法应用于啤酒酵母(酵母)数据集的分析,并获得令人满意的结果。

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