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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >ANGLE: A SEQUENCING ERRORS RESISTANT PROGRAM FOR PREDICTING PROTEIN CODING REGIONS IN UNFINISHED cDNA
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ANGLE: A SEQUENCING ERRORS RESISTANT PROGRAM FOR PREDICTING PROTEIN CODING REGIONS IN UNFINISHED cDNA

机译:角度:预测未完成cDNA中蛋白质编码区的抗序列错误程序

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摘要

In the process of making full-length cDNA, predicting protein coding regions helps both in the preliminary analysis of genes and in any succeeding process. However, unfinished cDNA contains artifacts including many sequencing errors, which hinder the correct evaluation of coding sequences. Especially, predictions of short sequences are difficult because they provide little information for evaluating coding potential. In this paper, we describe ANGLE, a new program for predicting coding sequences in low quality cDNA. To achieve error-tolerant prediction, ANGLE uses a machine-learning approach, which makes better expression of coding sequence maximizing the use of limited information from input sequences. Our method utilizes not only codon usage, but also protein structure information which is difficult to be used for stochastic model-based algorithms, and optimizes limited information from a short segment when deciding coding potential, with the result that predictive accuracy does not depend on the length of an input sequence. The performance of ANGLE is compared with ESTSCAN on four dataset each of them having a different error rate (one frame-shift error or one substitution error per 200-500 nucleotides) and on one dataset which has no error. ANGLE outperforms BSTSCAN by 9.26% in average Matthews's correlation coefficient on short sequence dataset (< 1000 bases). On long sequence dataset, ANGLE achieves comparable performance.
机译:在制作全长cDNA的过程中,预测蛋白质编码区有助于基因的初步分析和后续过程。但是,未完成的cDNA包含伪造品,包括许多测序错误,这妨碍了对编码序列的正确评估。特别地,短序列的预测是困难的,因为它们几乎没有提供用于评估编码潜力的信息。在本文中,我们描述了ANGLE,这是一种用于预测低质量cDNA中编码序列的新程序。为了实现容错预测,ANGLE使用一种机器学习方法,该方法可以更好地表达编码序列,从而最大限度地利用输入序列中的有限信息。我们的方法不仅利用密码子使用,还利用难以用于基于随机模型的算法的蛋白质结构信息,并在确定编码潜能时从短片段中优化有限的信息,其结果是预测精度不依赖于输入序列的长度。将ANGLE的性能与ESTSCAN进行比较,在四个数据集中,每个数据集具有不同的错误率(每200-500个核苷酸一个移码错误或一个替换错误),以及在一个没有错误的数据集上。在短序列数据集(<1000个碱基)上,ANGLE的平均Matthews相关系数平均比BSTSCAN高9.26%。在长序列数据集上,ANGLE具有可比的性能。

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