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Enhancer prediction using distance aware kernels

机译:使用距离感知内核的增强器预测

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摘要

The regulation of gene expression is important for the development of living cells and their responses to environmental conditions. This mechanism is controlled, to a large extend, by transcription factors that bind to regulatory sequences, such as enhancers. The identification of enhancers is therefore important for understanding the regulatory networks within cells. In this paper, we propose new features and kernels that can be used with support vector machine (SVM) classifiers to predict enhancers from genomic sequences. These are based on general sequence features and kernels but are extended to incorporate the information about the distance between the features, thus can better capture the spatial preferences and combinatorial binding rules of transcription factors. Experiments on predicting enhancers in human and Caenorhabditis elegans show that, by combining the proposed features and kernels with SVM, our method achieves state-of-the-art accuracy and outperforms a leading enhancer prediction method.
机译:基因表达的调节对于生物细胞的发展是重要的,以及它们对环境条件的反应。通过与调节序列(例如增强剂)结合的转录因子来控制该机制。因此,增强剂的鉴定对于理解细胞内的监管网络是重要的。在本文中,我们提出了可以与支持向量机(SVM)分类器一起使用的新功能和内核,以预测来自基因组序列的增强剂。这些基于一般序列特征和内核,而是扩展以结合关于特征之间的距离的信息,从而可以更好地捕获转录因子的空间偏好和组合结合规则。通过将拟议的特征和核与SVM结合,我们的方法实现了最先进的增强器预测方法,通过将所提出的特征和核相结合,实现了最先进的准确性和优于领先的增强剂预测方法。

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