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Promoter prediction using DNA numerical representation and neural network: Case study with three organisms

机译:使用DNA数值表示和神经网络进行启动子预测:三种生物的案例研究

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摘要

Promoter recognition in various organisms is an area of interest in bioinformatics. In this paper, a feed-forward neural network classifier is presented to predict promoters in three organisms using a DNA numerical representation approach. The proposed system was found to be able to predict promoters with a sensitivity of 87%, 87%, 99% while reducing false prediction rate for non-promoter sequences with a specificity of 92%, 94%, 99% for the human, Drosophila melanogaster, and Arabidopsis thaliana sequences respectively. The results show that feed-forward neural networks can extract the statistical characteristics of promoters efficiently, and that the 2-bit binary coding for DNA data is suitable for the Berkeley Human and Drosophila datasets and the 4-bit binary is suitable for the TAIR Arabidopsis thaliana data sets. Another result demonstrated here is that the proposed prediction system is reconfigurable and versatile with a reduced architecture and computational complexity.
机译:各种生物中的启动子识别是生物信息学中的一个有趣领域。在本文中,提出了一种前馈神经网络分类器,以使用DNA数值表示方法预测三种生物中的启动子。发现拟议的系统能够以87%,87%,99%的灵敏度预测启动子,同时降低非启动子序列的错误预测率,对人类果蝇的特异性为92%,94%,99%黑变种和拟南芥序列。结果表明,前馈神经网络可以有效地提取启动子的统计特征,DNA数据的2位二进制编码适合伯克利人类和果蝇数据集,而4位二进制则适合TAIR拟南芥。拟南芥数据集。此处证明的另一个结果是,所提出的预测系统是可重构的,并且具有降低的体系结构和计算复杂度的通用性。

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