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Predicting Transcription Factor Binding Sites Using Structural Knowledge

机译:使用结构知识预测转录因子结合位点

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摘要

Current approaches for identification and detection of transcription factor binding sites rely on an extensive set of known target genes. Here we describe a novel structure-based approach applicable to transcription factors with no prior binding data. Our approach combines sequence data and structural information to infer context-specific amino acid-nucleotide recognition preferences. These are used to predict binding sites for novel transcription factors from the same structural family. We apply our approach to the Cys_2His_2 Zinc Finger protein family, and show that the learned DNA-recognition preferences are compatible with various experimental results. To demonstrate the potential of our algorithm, we use the learned preferences to predict binding site models for novel proteins from the same family. These models are then used in genomic scans to find putative binding sites of the novel proteins.
机译:用于鉴定和检测转录因子结合位点的当前方法依赖于广泛的已知靶基因集。在这里我们描述了一种新颖的基于结构的方法,适用于没有事先结合数据的转录因子。我们的方法结合了序列数据和结构信息来推断特定于上下文的氨基酸-核苷酸识别偏好。这些用于预测来自相同结构家族的新转录因子的结合位点。我们将我们的方法应用于Cys_2His_2锌指蛋白家族,并表明获知的DNA识别偏好与各种实验结果兼容。为了证明我们算法的潜力,我们使用学习到的偏好来预测同一家族的新型蛋白质的结合位点模型。然后将这些模型用于基因组扫描,以发现新蛋白的推定结合位点。

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