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Transcription factor binding sites identification on human genome using an artificial neural network

机译:使用人工神经网络在人类基因组上鉴定转录因子结合位点

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Transcription factor binding sites on human DNA are the target locations of specific proteins called transcription factors. Gene expression process begins when a transcription factor binds to its target location in the genome. Expensive experimental methods are used to identify a limited number of these binding sites, hence there is essential need for computational algorithms. In this paper, we train a back propagation neural network to identify SP1 factor binding sites on human chromosome1. Biological data have been extracted from NCBI database which includes a wide variety of genetic information of human and other species. In order to compare the performance of our trained neural network with other classification algorithms, we use Support Vector Machine, Discriminant Analysis and K-Nearest Neighbor algorithm to classify same data. Results show that our trained neural network outperforms other classification algorithms.
机译:人DNA上的转录因子结合位点是称为转录因子的特定蛋白质的目标位置。当转录因子结合到其在基因组中的靶标位置时,基因表达过程开始。昂贵的实验方法用于鉴定有限数量的这些结合位点,因此对计算算法至关重要。在本文中,我们训练了一个反向传播神经网络,以识别人类染色体1上的SP1因子结合位点。已从NCBI数据库中提取了生物学数据,其中包括人类和其他物种的多种遗传信息。为了将经过训练的神经网络与其他分类算法的性能进行比较,我们使用支持向量机,判别分析和K最近邻算法对相同数据进行分类。结果表明,我们训练有素的神经网络优于其他分类算法。

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