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首页> 外文期刊>EURASIP journal on advances in signal processing >Novel Data Fusion Method and Exploration of Multiple Information Sources for Transcription Factor Target Gene Prediction
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Novel Data Fusion Method and Exploration of Multiple Information Sources for Transcription Factor Target Gene Prediction

机译:转录因子目标基因预测的新型数据融合方法和多种信息源的探索

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摘要

Background. Revealing protein-DNA interactions is a key problem in understanding transcriptional regulation at mechanistic level. Computational methods have an important role in predicting transcription factor target gene genomewide. Multiple data fusion provides a natural way to improve transcription factor target gene predictions because sequence specificities alone are not sufficient to accurately predict transcription factor binding sites. Methods. Here we develop a new data fusion method to combine multiple genome-level data sources and study the extent to which DNA duplex stability and nucleosome positioning information, either alone or in combination with other data sources, can improve the prediction of transcription factor target gene. Results. Results on a carefully constructed test set of verified binding sites in mouse genome demonstrate that our new multiple data fusion method can reduce false positive rates, and that DNA duplex stability and nucleosome occupation data can improve the accuracy of transcription factor target gene predictions, especially when combined with other genome-level data sources. Cross-validation and other randomization tests confirm the predictive performance of our method. Our results also show that nonredundant data sources provide the most efficient data fusion.
机译:背景。揭示蛋白质与DNA的相互作用是在机械水平上理解转录调控的关键问题。计算方法在预测全基因组转录因子靶基因中具有重要作用。多个数据融合提供了一种改进转录因子靶基因预测的自然方法,因为仅序列特异性不足以准确预测转录因子结合位点。方法。在这里,我们开发了一种新的数据融合方法,以结合多个基因组水平的数据源,并研究DNA双链体稳定性和核小体定位信息(单独使用或与其他数据源组合使用)可以改善转录因子靶基因的预测的程度。结果。精心构建的小鼠基因组结合位点测试集的结果表明,我们的新的多数据融合方法可以降低假阳性率,并且DNA双链体稳定性和核小体占据数据可以提高转录因子靶基因预测的准确性。结合其他基因组水平的数据源。交叉验证和其他随机检验证实了我们方法的预测性能。我们的结果还表明,非冗余数据源提供了最有效的数据融合。

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