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Error statistics of hidden Markov model and hidden Boltzmann model results

机译:隐马尔可夫模型和隐玻尔兹曼模型结果的误差统计

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Background Hidden Markov models and hidden Boltzmann models are employed in computational biology and a variety of other scientific fields for a variety of analyses of sequential data. Whether the associated algorithms are used to compute an actual probability or, more generally, an odds ratio or some other score, a frequent requirement is that the error statistics of a given score be known. What is the chance that random data would achieve that score or better? What is the chance that a real signal would achieve a given score threshold? Results Here we present a novel general approach to estimating these false positive and true positive rates that is significantly more efficient than are existing general approaches. We validate the technique via an implementation within the HMMER 3.0 package, which scans DNA or protein sequence databases for patterns of interest, using a profile-HMM. Conclusion The new approach is faster than general na?ve sampling approaches, and more general than other current approaches. It provides an efficient mechanism by which to estimate error statistics for hidden Markov model and hidden Boltzmann model results.
机译:背景技术隐马尔可夫模型和隐玻尔兹曼模型被用于计算生物学和许多其他科学领域,以进行顺序数据的各种分析。无论是使用关联的算法来计算实际概率,还是更普遍地,是使用比值比或其他分数,经常需要的是已知给定分数的错误统计信息。随机数据达到或更高分数的机会是多少?真实信号达到给定分数阈值的机会是多少?结果在这里,我们提出了一种新颖的通用方法来估计这些假阳性和真阳性率,其效率远高于现有的通用方法。我们通过HMMER 3.0软件包中的实现对技术进行了验证,该软件包使用profile-HMM扫描DNA或蛋白质序列数据库中的目标模式。结论新方法比普通的简单采样方法快,并且比其他当前方法更通用。它提供了一种有效的机制来估计隐马尔可夫模型和隐玻尔兹曼模型结果的误差统计量。

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