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A novel method for improved accuracy of transcription factor binding site prediction

机译:一种提高转录因子结合位点预测准确性的新方法

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摘要

Identifying transcription factor (TF) binding sites (TFBSs) is important in the computational inference of gene regulation. Widely used computational methods of TFBS prediction based on position weight matrices (PWMs) usually have high false positive rates. Moreover, computational studies of transcription regulation in eukaryotes frequently require numerous PWM models of TFBSs due to a large number of TFs involved. To overcome these problems we developed DRAF, a novel method for TFBS prediction that requires only 14 prediction models for 232 human TFs, while at the same time significantly improves prediction accuracy. DRAF models use more features than PWM models, as they combine information from TFBS sequences and physicochemical properties of TF DNA-binding domains into machine learning models. Evaluation of DRAF on 98 human ChIP-seq datasets shows on average 1.54-, 1.96- and 5.19-fold reduction of false positives at the same sensitivities compared to models from HOCOMOCO, TRANSFAC and DeepBind, respectively. This observation suggests that one can efficiently replace the PWM models for TFBS prediction by a small number of DRAF models that significantly improve prediction accuracy. The DRAF method is implemented in a web tool and in a stand-alone software freely available at .
机译:识别转录因子(TF)结合位点(TFBSs)在基因调控的计算推断中很重要。基于位置权重矩阵(PWM)的TFBS预测的广泛使用的计算方法通常具有较高的误报率。此外,由于涉及大量的TF,在真核生物中转录调节的计算研究经常需要许多TFBS的PWM模型。为了克服这些问题,我们开发了DRAF,这是一种用于TFBS预测的新方法,该方法仅需要针对232个人TF的14个预测模型,同时可以显着提高预测准确性。 DRAF模型比PWM模型使用更多的功能,因为它们将来自TFBS序列的信息和TF DNA结合域的理化特性组合到机器学习模型中。在98个人类ChIP-seq数据集上对DRAF的评估显示,与来自HOCOMOCO,TRANSFAC和DeepBind的模型相比,在相同灵敏度下假阳性的平均减少率分别为1.54、1.96和5.19倍。这一发现表明,可以用少量的DRAF模型有效地替换用于TFBS预测的PWM模型,从而显着提高预测准确性。 DRAF方法是通过Web工具和可从以下网址免费获得的独立软件来实现的。

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