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A penalized Bayesian approach to predicting sparse protein-DNA binding landscapes

机译:预测稀疏蛋白质-DNA结合态势的惩罚贝叶斯方法

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Motivation: Cellular processes are controlled, directly or indirectly, by the binding of hundreds of different DNA binding factors (DBFs) to the genome. One key to deeper understanding of the cell is discovering where, when and how strongly these DBFs bind to the DNA sequence. Direct measurement of DBF binding sites (BSs; e.g. through ChIP-Chip or ChIP-Seq experiments) is expensive, noisy and not available for every DBF in every cell type. Naive and most existing computational approaches to detecting which DBFs bind in a set of genomic regions of interest often perform poorly, due to the high false discovery rates and restrictive requirements for prior knowledge. Results: We develop SparScape, a penalized Bayesian method for identifying DBFs active in the considered regions and predicting a joint probabilistic binding landscape. Using a sparsity-inducing penalization, SparScape is able to select a small subset of DBFs with enriched BSs in a set of DNA sequences from a much larger candidate set. This substantially reduces the false positives in prediction of BSs. Analysis of ChIP-Seq data in mouse embryonic stem cells and simulated data show that SparScape dramatically outperforms the naive motif scanning method and the comparable computational approaches in terms of DBF identification and BS prediction.
机译:动机:通过数百种不同的DNA结合因子(DBF)与基因组的结合,直接或间接地控制细胞过程。深入了解细胞的一个关键是发现这些DBF与DNA序列结合的位置,时间和强度。直接测量DBF结合位点(BS;例如通过ChIP-Chip或ChIP-Seq实验)是昂贵,嘈杂的,并且不适用于每种细胞类型的每种DBF。由于高的错误发现率和对先验知识的严格要求,用于检测在一组感兴趣的基因组区域中结合哪些DBF的幼稚和大多数现有计算方法通常效果较差。结果:我们开发了SparScape,这是一种惩罚性贝叶斯方法,用于识别在所考虑区域中活跃的DBF,并预测联合概率结合态。使用稀疏诱导惩罚,SparScape能够从更大的候选集中选择DNA序列集中具有丰富BS的一小部分DBF。这大大减少了BS预测中的误报。对小鼠胚胎干细胞中ChIP-Seq数据的分析和模拟数据表明,就DBF识别和BS预测而言,SparScape大大优于幼稚的基序扫描方法和可比的计算方法。

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