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SCGPred: A Score-based Method for Gene Structure Prediction by Combining Multiple Sources of Evidence

机译:SCGPred:通过结合多种证据来源的基于得分的基因结构预测方法

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摘要

Predicting protein-coding genes still remains a significant challenge. Although a variety of computational programs that use commonly machine learning methods have emerged, the accuracy of predictions remains a low level when implementing in large genomic sequences. Moreover, computational gene finding in newly sequenced genomes is especially a difficult task due to the absence of a training set of abundant validated genes. Here we present a new gene-finding program, SCGPred, to improve the accuracy of prediction by combining multiple sources of evidence. SCGPred can perform both supervised method in previously well-studied genomes and unsupervised one in novel genomes. By testing with datasets composed of large DNA sequences from human and a novel genome of Ustilago maydi, SCGPred gains a significant improvement in comparison to the popular ab initio gene predictors. We also demonstrate that SCGPred can significantly improve prediction in novel genomes by combining several foreign gene finders with similarity alignments, which is superior to other unsupervised methods. Therefore, SCGPred can serve as an alternative gene-finding tool for newly sequenced eukaryotic genomes. The program is freely available at .
机译:预测蛋白质编码基因仍然是一个重大挑战。尽管出现了使用常用机器学习方法的各种计算程序,但是在以大基因组序列实施时,预测的准确性仍然很低。而且,由于缺乏训练有效的丰富基因的训练集,在新测序的基因组中寻找计算基因特别困难。在这里,我们提出了一个新的基因发现程序SCGPred,它通过结合多种证据来提高预测的准确性。 SCGPred既可以在以前经过充分研究的基因组中执行监督方法,也可以在新型基因组中执行无监督方法。通过测试由人类的大DNA序列和乌斯提亚乌斯提伊犬新基因组组成的数据集,与流行的从头算基因预测子相比,SCGPred有了显着的进步。我们还证明了SCGPred通过结合具有相似性比对的几个外来基因发现者,可以显着改善新基因组中的预测,这优于其他无监督方法。因此,SCGPred可以作为新测序的真核基因组的替代基因发现工具。该程序可从以下网站免费获得。

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