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A structure-based approach to predicting in vitro transcription factor-DNA interaction

机译:基于结构的预测体外转录因子与DNA相互作用的方法

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Understanding the mechanism of transcriptional regulation remains to be an inspiring stage of molecular biology. Within the popular methods for modeling TFBS, position-specific weight matrix and k-mer based approaches have gained great success. However, both approaches fail to consider the structural properties of a binding site. Recently, a novel TFBS modeling and predicting approach is presented by Bauer et al. (2010), where the sequence-specific chemical and structural features of DNA are applied. However, the in vivo protein-DNA interactions observed in ChIP-chip assays, which were used in this study, are not necessarily direct, as some TFs tend to interact with DNAs extensively through other partners. Therefore, an evaluation on a proper in vitro dataset would be more appropriate to reveal the benefit of such physicochemical features in modeling TF-DNA interactions. Recently, in vitro protein-binding microarray experiment has greatly improved the understanding of transcription factor-DNA interaction. It is a high-throughput experiment used to measure the in vitro binding affinity of a given TF to the sequences on the probe array. Because typical confounding factors such as transcription co-factors present in ChIP-based experiments are eliminated, PBM data provide an excellent information source to develop structural models for TF-DNA interactions. On the other hand, directly mapping of the 3-mer or 4-mer based meta-features to the candidate DNA binding sequences as in their work may not reflect the TF-DNA binding nature, since a TFBS is usually an 8 to 12 base-pair. As a result, conventionally machine-learning algorithms, which rely on well-structured feature vector and label pairs, may not work well in modeling PBM data
机译:理解转录调控机制仍然是分子生物学的一个启发性阶段。在流行的TFBS建模方法中,基于位置的权重矩阵和基于k-mer的方法已获得了巨大的成功。但是,这两种方法都没有考虑结合位点的结构特性。最近,Bauer等人提出了一种新颖的TFBS建模和预测方法。 (2010年),其中应用了DNA的序列特异性化学和结构特征。然而,在这项研究中使用的ChIP芯片检测中观察到的体内蛋白质与DNA的相互作用不一定是直接的,因为某些TF倾向于通过其他伴侣广泛地与DNA相互作用。因此,对适当的体外数据集进行评估将更适合于揭示此类物理化学特征在建模TF-DNA相互作用中的益处。最近,体外蛋白质结合微阵列实验大大提高了对转录因子-DNA相互作用的理解。这是一种高通量实验,用于测量给定TF与探针阵列上序列的体外结合亲和力。由于消除了基于ChIP的实验中存在的典型混杂因素(例如转录辅因子),PBM数据为开发TF-DNA相互作用的结构模型提供了极好的信息来源。另一方面,基于3聚体或4聚体的元特征直接映射到候选DNA结合序列的过程可能无法反映TF-DNA结合的性质,因为TFBS通常是8到12个碱基-对。结果,依赖于结构良好的特征向量和标签对的常规机器学习算法可能无法在对PBM数据进行建模时很好地发挥作用。

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