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DELTA: A Distal Enhancer Locating Tool Based on AdaBoost Algorithm and Shape Features of Chromatin Modifications

机译:DELTA:一种基于AdaBoost算法和染色质修饰形状特征的远端增强子定位工具

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摘要

Accurate identification of DNA regulatory elements becomes an urgent need in the post-genomic era. Recent genome-wide chromatin states mapping efforts revealed that DNA elements are associated with characteristic chromatin modification signatures, based on which several approaches have been developed to predict transcriptional enhancers. However, their practical application is limited by incomplete extraction of chromatin features and model inconsistency for predicting enhancers across different cell types. To address these issues, we define a set of non-redundant shape features of histone modifications, which shows high consistency across cell types and can greatly reduce the dimensionality of feature vectors. Integrating shape features with a machine-learning algorithm AdaBoost, we developed an enhancer predicting method, DELTA (Distal Enhancer Locating Tool based on AdaBoost). We show that DELTA significantly outperforms current enhancer prediction methods in prediction accuracy on different datasets and can predict enhancers in one cell type using models trained in other cell types without loss of accuracy. Overall, our study presents a novel framework for accurately identifying enhancers from epigenetic data across multiple cell types.
机译:在后基因组时代,DNA调控元件的准确鉴定已成为当务之急。最近的全基因组染色质状态作图工作表明,DNA元素与特征性染色质修饰标记相关,在此基础上已开发了几种预测转录增强子的方法。然而,它们的实际应用受到染色质特征的不完全提取和用于预测跨不同细胞类型的增强子的模型不一致的限制。为了解决这些问题,我们定义了组蛋白修饰的一组非冗余形状特征,这些特征在整个细胞类型中显示出高度一致性,并且可以大大降低特征向量的维数。通过将形状特征与机器学习算法AdaBoost集成在一起,我们开发了一种增强子预测方法DELTA(基于AdaBoost的远距离增强器定位工具)。我们显示,DELTA在不同数据集的预测准确性上明显优于当前的增强子预测方法,并且可以使用在其他细胞类型中训练的模型预测一种细胞类型中的增强子而不会降低准确性。总体而言,我们的研究提出了一个新颖的框架,可以从多种细胞类型的表观遗传数据中准确识别增强子。

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