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Hypermotifs: Novel Discriminatory Patterns for Nucleotide Sequences and their Application to Core Promoter Prediction in Eukaryotes

机译:Hypermotifs:核苷酸序列的新型鉴别模式及其在真核生物的核心启动子预测中的应用

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We approach the general problem of finding a model that discriminates between classes of nucleotide sequences. In this area, a common approach is to train a model, such as a neural network, or a hidden Markov model, to perform the discrimination, using as inputs either the raw sequences encoded in a standard form, or features derived from the raw data in a pre-processing stage. In this paper a novel discriminatory pattern structure for nucleotide sequences is introduced, called a hypermotif, and evolutionary computation is used to evolve a collection of specific hypermotifs which discriminate between classes in the data. The raw nucleotide data are then processed, transforming it into feature vectors, where the features are the individual scores on the evolved hypermotifs. Using this transformation, any classification method may then be used to build an accurate predictive model. The approach is tested on a database of eukaryotic promoters, and find that this method enables us to outperform a standard multilayer perceptron (despite using a linear discriminant as the final classifier), and provides similar performance to the best approach so far for these data (which uses a time delay neural network)
机译:我们解决了找到区分核苷酸序列类别的模型的一般问题。在该领域,一种常见的方法是使用标准格式编码的原始序列或从原始数据得出的特征作为输入来训练模型(例如神经网络或隐马尔可夫模型)以执行判别在预处理阶段。在本文中,介绍了一种新颖的核苷酸序列识别模式结构,称为hypermotif,并且通过进化计算来演化出特定的hypermotif集合,这些特定的hypermotif可以区分数据中的类别。然后处理原始核苷酸数据,将其转换为特征向量,其中特征是进化的超基元上的各个分数。使用此转换,然后可以使用任何分类方法来建立准确的预测模型。该方法在真核启动子数据库上进行了测试,发现该方法使我们能够胜过标准的多层感知器(尽管使用线性判别器作为最终分类器),并且对于这些数据,迄今为止提供了与最佳方法类似的性能(使用时延神经网络)

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