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首页> 外文期刊>BioMed research international >Recombination Hotspot/Coldspot Identification Combining Three Different Pseudocomponents via an Ensemble Learning Approach
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Recombination Hotspot/Coldspot Identification Combining Three Different Pseudocomponents via an Ensemble Learning Approach

机译:重组热点/冷点识别通过集合学习方法结合三种不同的伪组件

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摘要

Recombination presents a nonuniform distribution across the genome. Genomic regions that present relatively higher frequencies of recombination are called hotspots while those with relatively lower frequencies of recombination are recombination coldspots. Therefore, the identification of hotspots/coldspots could provide useful information for the study of the mechanism of recombination. In this study, a new computational predictor called SVM-EL was proposed to identify hotspots/coldspots across the yeast genome. It combined Support Vector Machines (SVMs) and Ensemble Learning (EL) based on three features including basic kmer (Kmer), dinucleotide-based auto-cross covariance (DACC), and pseudo dinucleotide composition (PseDNC). These features are able to incorporate the nucleic acid composition and their order information into the predictor. The proposed SVM-EL achieves an accuracy of 82.89% on a widely used benchmark dataset, which outperforms some related methods.
机译:重组在基因组上呈现不均匀的分布。 呈现相对较高的重组频率的基因组区域称为热点,而具有相对较低的重组频率的那些是重组冷空。 因此,热点/冷点的识别可以提供用于研究重组机制的有用信息。 在该研究中,提出了一种称为SVM-EL的新计算预测因子,以识别酵母基因组的热点/冷点。 它组合支持向量机(SVM)和集合学习(EL)基于三个特征,包括基于基于基于基于Kmer(Kmer),基于二核苷酸的自动交叉协方差(DACC)和伪二核苷酸组合物(PSEDNC)。 这些特征能够将核酸组合物及其订单信息掺入预测器中。 所提出的SVM-EL在广泛使用的基准数据集中实现了82.89%的准确性,这优于一些相关方法。

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