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Dragon PolyA Spotter: predictor of poly(A) motifs within human genomic DNA sequences

机译:Dragon PolyA Spotter:人类基因组DNA序列中poly(A)图案的预测因子

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Recognition of poly(A) signals in mRNA is relatively straightforward due to the presence of easily recognizable polyadenylic acid tail. However, the task of identifying poly(A) motifs in the primary genomic DNA sequence that correspond to poly(A) signals in mRNA is a far more challenging problem. Recognition of poly(A) signals is important for better gene annotation and understanding of the gene regulation mechanisms. In this work, we present one such poly(A) motif prediction method based on properties of human genomic DNA sequence surrounding a poly(A) motif. These properties include thermodynamic, physico-chemical and statistical characteristics. For predictions, we developed Artificial Neural Network and Random Forest models. These models are trained to recognize 12 most common poly(A) motifs in human DNA. Our predictors are available as a free web-based tool accessible at http://cbrc. kaust. edu. sa/dps. Compared with other reported predictors, our models achieve higher sensitivity and specificity and furthermore provide a consistent level of accuracy for 12 poly(A) motif variants.
机译:由于存在易于识别的聚腺苷​​酸尾巴,因此在mRNA中识别poly(A)信号相对简单。但是,在原始基因组DNA序列中识别与mRNA中poly(A)信号相对应的poly(A)主题的任务是一个更具挑战性的问题。识别poly(A)信号对于更好地注释基因和理解基因调控机制非常重要。在这项工作中,我们提出了一种基于围绕poly(A)主题的人类基因组DNA序列特性的这种poly(A)主题预测方法。这些特性包括热力学,物理化学和统计特性。为了进行预测,我们开发了人工神经网络和随机森林模型。这些模型经过训练可以识别人类DNA中的12种最常见的poly(A)图案。我们的预测变量可作为免费的基于Web的工具获得,可从http:// cbrc访问。考斯特edu。 sa / dps。与其他已报道的预测变量相比,我们的模型具有更高的灵敏度和特异性,并且还为12个poly(A)主题变体提供了一致的准确性。

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