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Improved Prediction of Short Exons via Multiscale Products

机译:通过多尺度产品改进了短外显子预测

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摘要

Exon is an important functional region of eukaryotic DNA sequence. Prediction of exons can help to understand the structure and function of protein. However, the issue of finding an efficient technique to detect the numbers and locations of short coding sequences automatically is an unsolved problem. In this work, a short exon prediction method based on multiscale products in B-spline wavelet domain is proposed. The proposed wavelet denoising and multiscale products-based technique (WDMP) for short exons prediction have the following three features. (1) A wavelet package denoising method is applied to smooth the DNA numerical sequences. (2) A new B-spline wavelet function is designed to extract the exon features in multiscale domain, so the effect of window length is avoided. In addition, this wavelet has a higher degree of freedom for curve design. (3) We multiply the adjacent coefficients to exploit the high inter-scale correlation of the exon data, while these correlation features are used to separate the exon signals from background noise. Compared with four well-known model-independent methods, case studies demonstrate that the proposed WDMP method helps to improve the prediction accuracy of short exons significantly.
机译:外显子是真核DNA序列的重要功能区。外显子预测有助于了解蛋白质的结构和功能。然而,发现有效技术来检测短编码序列的数量和位置自动是一个未解决的问题。在这项工作中,提出了一种基于B样条小波域中多尺度产品的短外显子预测方法。对于短痘预测的基于小波去噪和多尺度产品的技术(WDMP)具有以下三个特征。 (1)施加小波封装去噪方法以平滑DNA数值序列。 (2)新的B样条小波函数旨在提取多尺度域中的外显子特征,因此避免了窗口长度的效果。此外,该小波具有更高的曲线设计自由度。 (3)我们将相邻系数乘以利用外显子数据的高级别相关性,而这些相关特征用于将外显子信号与背景噪声分离。与四种众所周知的模型无关的方法相比,案例研究表明,所提出的WDMP方法有助于显着提高短波的预测精度。

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