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Efficient representation and P-value computation for high-order Markov motifs.

机译:高阶马尔可夫图案的高效表示和P值计算。

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MOTIVATION: Position weight matrices (PWMs) have become a standard for representing biological sequence motifs. Their relative simplicity has favoured the development of efficient algorithms for diverse tasks such as motif identification, sequence scanning and statistical significance evaluation. Markov chainbased models generalize the PWM model by allowing for interposition dependencies to be considered, at the cost of substantial computational overhead, which may limit their application. RESULTS: In this article, we consider two aspects regarding the use of higher order Markov models for biological sequence motifs, namely, the representation and the computation of P-values for motifs described by a set of occurrences. We propose an efficient representation based on the use of tries, from which empirical position-specific conditional base probabilities can be computed, and extend state-of-the-art PWM-based algorithms to allow for the computation of exact P-values for high-order Markov motif models. AVAILABILITY: The software is available in the form of a Java objectoriented library from http://www.cin.ufpe.br/approxiamtely paguso/kmarkov.
机译:动机:位置权重矩阵(PWM)已成为代表生物序列基序的标准。它们相对简单,有利于开发用于各种任务的高效算法,例如主题识别,序列扫描和统计显着性评估。基于马尔可夫链的模型通过允许考虑中介相关性来泛化PWM模型,但要付出大量计算开销的代价,这可能会限制其应用。结果:在本文中,我们考虑了有关将高阶马尔可夫模型用于生物序列基序的两个方面,即,通过一系列事件描述的基序的P值的表示和计算。我们提出基于尝试的有效表示形式,可以从中计算出特定于位置的经验性条件基础概率,并扩展了基于PWM的最新算法,从而可以计算出较高的精确P值阶马尔可夫主题模型。可用性:可以从http://www.cin.ufpe.br/approxiamtely paguso / kmarkov以Java面向对象库的形式获得该软件。

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