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Adding sequence context to a Markov background model improves the identification of regulatory elements

机译:向Markov背景模型添加序列上下文可改善对调控元件的识别

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Motivation: Many computational methods for identifying regulatory elements use a likelihood ratio between motif and background models. Often, the methods use a background model of independent bases. At least two different Markov background models have been proposed with the aim of increasing the accuracy of predicting regulatory elements. Both Markov background models suffer theoretical drawbacks, so this article develops a third, context-dependent Markov background model from fundamental statistical principles. Results: Datasets containing known regulatory elements in eukaryotes provided a basis for comparing the predictive accuracies of the different background models. Non-parametric statistical tests indicated that Markov models of order 3 constituted a statistically significant improvement over the background model of independent bases. Our model performed slightly better than the previous Markov background models. We also found that for discriminating between the predictive accuracies of competing background models, the correlation coefficient is a more sensitive measure than the performance coefficient.
机译:动机:用于识别调控元素的许多计算方法都使用主题和背景模型之间的似然比。通常,这些方法使用独立碱基的背景模型。为了提高预测调控元素的准确性,已经提出了至少两种不同的马尔可夫背景模型。两种Markov背景模型都存在理论上的缺陷,因此本文根据基本的统计原理开发了第三个与上下文相关的Markov背景模型。结果:包含真核生物中已知调控元件的数据集为比较不同背景模型的预测准确性提供了基础。非参数统计检验表明,与独立碱基的背景模型相比,三阶马尔可夫模型构成了统计学上的显着改进。我们的模型的性能比以前的Markov背景模型稍好。我们还发现,为了区分竞争背景模型的预测准确性,相关系数比性能系数更敏感。

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