首页> 外文期刊>Journal of Bioinformatics and Computational Biology >PREDICTION OF TRANSCRIPTION FACTOR BINDING SITES USING ChIP-chip AND PHYLOGENETIC FOOTPRINTING DATA
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PREDICTION OF TRANSCRIPTION FACTOR BINDING SITES USING ChIP-chip AND PHYLOGENETIC FOOTPRINTING DATA

机译:利用芯片和系统发育脚印数据预测转录因子结合位点

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摘要

We present an algorithm for predicting transcription factor binding sites based on ChIP-chip and phylogenetic footprinting data. Our algorithm is robust against low promoter sequence similarity and motif rearrangements, because it does not depend on multiple sequence alignments. This, in turn, allows us to incorporate information from more distant species. Representative random data sets are used to estimate the score significance. Our algorithm is fully automatic, and does not require human intervention. On a recent S. cerevisiae data set, it achieves higher accuracy than the previously best algorithms. Adaptive ChIP-chip threshold and the modular positional bias score are two general features of our algorithm that increase motif prediction accuracy and could be implemented in other algorithms as well. In addition, since our algorithm works partly orthogonally to other algorithms, combining several algorithms can increase prediction accuracy even further. Specifically, our method finds 6 motifs not found by the 2nd best algorithm.
机译:我们提出了一种基于ChIP芯片和系统发育足迹数据预测转录因子结合位点的算法。我们的算法针对低启动子序列相似性和基序重排是鲁棒的,因为它不依赖于多个序列比对。反过来,这又使我们能够纳入来自更遥远物种的信息。代表性随机数据集用于估计得分的重要性。我们的算法是全自动的,不需要人工干预。在最新的酿酒酵母数据集上,它比以前的最佳算法具有更高的准确性。自适应ChIP芯片阈值和模块化位置偏差评分是我们算法的两个普遍特征,可提高图案预测的准确性,并且也可以在其他算法中实现。此外,由于我们的算法与其他算法部分正交,因此组合几种算法可以进一步提高预测精度。具体来说,我们的方法找到了次佳算法找不到的6个图案。

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