Prediction of Super-enhancers Based on Mean-shift Undersampling

IF 2.4 3区 生物学 Q3 BIOCHEMICAL RESEARCH METHODS Current Bioinformatics Pub Date : 2023-12-01 DOI:10.2174/0115748936268302231110111456
Han Cheng, Shumei Ding, Cangzhi Jia
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Abstract

Background:: Super-enhancers are clusters of enhancers defined based on the binding occupancy of master transcription factors, chromatin regulators, or chromatin marks. It has been reported that super-enhancers are transcriptionally more active and cell-type-specific than regular enhancers. Therefore, it is necessary to identify super-enhancers from regular enhancers. A variety of computational methods have been proposed to identify super-enhancers as auxiliary tools. However, most methods use ChIP-seq data, and the lack of this part of the data will make the predictor unable to execute or fail to achieve satisfactory performance. Objective:: The aim of this study is to propose a stacking computational model based on the fusion of multiple features to identify super-enhancers in both human and mouse species. Methods:: This work adopted mean-shift to cluster majority class samples and selected five sets of balanced datasets for mouse and three sets of balanced datasets for humans to train the stacking model. Five types of sequence information are used as input to the XGBoost classifier, and the average value of the probability outputs from each classifier is designed as the final classification result. Results:: The results of 10-fold cross-validation and cross-cell-line validation prove that our method has superior performance compared to other existing methods. The source code and datasets are available at https://github.com/Cheng-Han-max/SE_voting. Conclusion:: The analysis of feature importance indicates that Mismatch accounts for the highest proportion among the top 20 important features.
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基于均值偏移欠采样的超增强子预测
背景:超级增强子是基于主转录因子、染色质调节因子或染色质标记的结合占用而定义的增强子簇。据报道,超级增强子在转录上比常规增强子更活跃,细胞类型特异性更强。因此,有必要从常规增强剂中识别超级增强剂。已经提出了各种计算方法来识别超增强剂作为辅助工具。然而,大多数方法使用ChIP-seq数据,缺少这部分数据会使预测器无法执行或无法达到令人满意的性能。目的:本研究的目的是提出一种基于多特征融合的叠加计算模型来识别人类和小鼠物种的超级增强子。方法:采用mean-shift对多数类样本进行聚类,选择5组小鼠平衡数据集和3组人类平衡数据集训练堆叠模型。将5类序列信息作为XGBoost分类器的输入,设计各分类器概率输出的平均值作为最终分类结果。结果:10倍交叉验证和跨细胞系验证的结果证明,与其他现有方法相比,我们的方法具有优越的性能。源代码和数据集可从https://github.com/Cheng-Han-max/SE_voting获得。结论:特征重要性分析表明,失配在前20个重要特征中所占比例最高。
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来源期刊
Current Bioinformatics
Current Bioinformatics 生物-生化研究方法
CiteScore
6.60
自引率
2.50%
发文量
77
审稿时长
>12 weeks
期刊介绍: Current Bioinformatics aims to publish all the latest and outstanding developments in bioinformatics. Each issue contains a series of timely, in-depth/mini-reviews, research papers and guest edited thematic issues written by leaders in the field, covering a wide range of the integration of biology with computer and information science. The journal focuses on advances in computational molecular/structural biology, encompassing areas such as computing in biomedicine and genomics, computational proteomics and systems biology, and metabolic pathway engineering. Developments in these fields have direct implications on key issues related to health care, medicine, genetic disorders, development of agricultural products, renewable energy, environmental protection, etc.
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