基于机器学习的基因组数据增强子预测方法比较分析

Amandeep Kaur, A. Chauhan, A. Aggarwal
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引用次数: 3

摘要

随着下一代测序的开始,发现增强子的竞争是发现猿猴病毒40 (SV40)的结果,SV40被认为是广泛基因组数据中第一个注意到的增强子。预测增强子的特征,如组蛋白修饰标记、从序列特征中提取的元素、直接来自原代组织的表观遗传标记等,都以反复无常的成功率实现。尽管迄今为止还没有明确的增强子指标,但在从大量基因组数据集中区分和暴露增强子方面取得了一致意见。机器学习已经成为一种有效的计算方法,具有多种监督、无监督和混合架构,用于增强器识别。本文重点介绍了近年来发展起来的基于增强子共同特征的增强子预测工具。在功能相似的模型中,对增强子预测方法和结果进行了比较分析。
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Machine Learning Based Comparative Analysis of Methods for Enhancer Prediction in Genomic Data
The duel for discovery of enhancer along with the beginning of next generation sequencing is a consequence of discovery simian virus 40 (SV40) that is believed to be first enhancers noticed in wide set of genomic data. Features for predicting enhancers such as marks for histone modification, elements mined from sequences characteristics, epigenetic marks right away from primary tissues are implemented with a capricious success rate. Though till date there is no distinct enhancer indicator fetching an agreement in discriminating and exposing enhancer from massive genomic data sets. Machine learning has arisen out to be one of the competent computational approaches with a diversity of supervised, unsupervised and hybrid architectures used for enhancer identification. In this paper, attention is given to the tools lately developed for enhancer prediction working on common feature of enhancer. Comparative analysis of methods for enhancer prediction and corresponding results are prepared amid functionally analogous counterparts.
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