基于PCWM特征的两层预测器识别增强子及其强度

Huan Yang, Shunfang Wang
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引用次数: 0

摘要

增强子是DNA的一个小区域,可以与蛋白质结合。与蛋白质结合后,基因转录增强。利用传统的生物学实验方法鉴定增强子耗时长,成本高。然而,随着计算机技术的发展,越来越多的计算机技术应用于基因鉴定。这项研究有两个创新之处。首先,提出了一种新的特征信息PCWM方法,该方法将DNA序列中k元组核苷酸的归一化频率信息作为权重,结合k元组核苷酸的理化性质获得DNA序列特征;其次,提出了一种两层模型,对获取的序列特征信息进行处理,预测增强子及其强度;独立集测试结果表明,新特征方法有效地提高了增强器的预测精度及其强度,准确率分别达到77.0%和69.5%。与经典的两种特征方法相比,新特征方法显示出更大的优势,并且比现有文献的预测结果有更大的改进。该方法是对现有研究方法的有效补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Enhancers and Their Strength Based on PCWM Feature by A Two-Layer Predictor
Enhancers are a small region of DNA that can bind with protein. After binding with protein, gene transcription will be strengthened. It is time-consuming and expensive to identify enhancers using traditional biological experimental methods. However, with the development of computer technology, more and more computer technology is applied to gene identification. There are two innovations in this study. First, a new feature information PCWM is proposed, which combines the normalized frequency information of k-tuple nucleotide in DNA sequence as weight and the physicochemical properties of k-tuple nucleotide to obtain DNA sequence features. Second, a two-layer model is proposed to process the acquired sequence feature information to predict the enhancer and its strength. The independent set test results show that this new feature method effectively improves the prediction accuracy of enhancers and their strengths, obtaining accuracy of 77.0% and 69.5%, respectively. Compared with the classical two feature methods, the new feature method shows greater advantages, and has greater improvement than the prediction results of the existing literature. This method is an effective supplement to the existing research methods.
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