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PeakSeg: constrained optimal segmentation and supervised penalty learning for peak detection in count data

机译:Peakseg:计数数据中峰值检测的最佳分割和监督罚款学习

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Peak detection is a central problem in genomic data analysis, and current algorithms for this task are unsupervised and mostly effective for a single data type and pattern (e.g. H3K4me3 data with a sharp peak pattern). We propose PeakSeg, a new constrained maximum likelihood segmentation model for peak detection with an efficient inference algorithm: constrained dynamic programming. We investigate unsupervised and supervised learning of penalties for the critical model selection problem. We show that the supervised method has state-of-the-art peak detection across all data sets in a benchmark that includes both sharp H3K4me3 and broad H3K36me3 patterns.
机译:峰值检测是基因组数据分析中的核心问题,并且对于单个数据类型和模式(例如,具有尖峰模式的H3K4ME3数据,该任务的当前算法是无监督的,并且主要是有效的。我们提出了高效推理算法的新约束最大似然分割模型,具有高效推理算法的新约束的最大似然分割模型:受限动态规划。我们调查无监督和监督对临界模型选择问题的处罚的学习。我们表明监督方法在包括夏普H3K4ME3和广泛的H3K36ME3模式的基准中的所有数据集中具有最先进的峰值检测。

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