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A boosting approach for motif modeling using ChIP-chip data

机译:使用ChIP芯片数据进行主题建模的一种增强方法

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Motivation: Building an accurate binding model for a transcription factor (TF) is essential to differentiate its true binding targets from those spurious ones. This is an important step toward understanding gene regulation.Results: This paper describes a boosting approach to modeling TF-DNA binding. Different from the widely used weight matrix model, which predicts TF-DNA binding based on a linear combination of position-specific contributions, our approach builds a TF binding classifier by combining a set of weight matrix based classifiers, thus yielding a non-linear binding decision rule. The proposed approach was applied to the ChIP-chip data of Saccharomyces cerevisiae. When compared with the weight matrix method, our new approach showed significant improvements on the specificity in a majority of cases.
机译:动机:为转录因子(TF)建立准确的结合模型对于区分其真正的结合靶标与那些虚假的结合靶标至关重要。这是理解基因调控的重要一步。结果:本文描述了建立TF-DNA结合模型的促进方法。与广泛使用的权重矩阵模型(基于位置特异性贡献的线性组合预测TF-DNA结合)不同,我们的方法是通过组合一组基于权重矩阵的分类器来构建TF结合分类器,从而产生非线性绑定决策规则。该方法应用于酿酒酵母的ChIP芯片数据。当与权重矩阵方法进行比较时,我们的新方法在大多数情况下显示出对特异性的显着改善。

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