全基因组操纵子预测的概率学习方法。

M Craven, D Page, J Shavlik, J Bockhorst, J Glasner
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引用次数: 0

摘要

我们提出了一种计算方法来预测原核生物基因组中的操纵子。我们的方法使用机器学习方法从丰富的数据类型(包括序列数据、基因表达数据和与基因相关的功能注释)中推导出该任务的预测模型。我们使用多个学习模型来单独预测启动子、终止子和操作子本身。我们方法的一个关键部分是动态规划方法,它使用我们的预测将给定基因组中每个已知和假定的基因映射到其最可能的操纵子中。我们使用大肠杆菌K-12基因组的数据来评估我们的方法。
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A probabilistic learning approach to whole-genome operon prediction.

We present a computational approach to predicting operons in the genomes of prokaryotic organisms. Our approach uses machine learning methods to induce predictive models for this task from a rich variety of data types including sequence data, gene expression data, and functional annotations associated with genes. We use multiple learned models that individually predict promoters, terminators and operons themselves. A key part of our approach is a dynamic programming method that uses our predictions to map every known and putative gene in a given genome into its most probable operon. We evaluate our approach using data from the E. coli K-12 genome.

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