首页> 外文期刊>Journal of Bioinformatics and Computational Biology >SEAM: A STOCHASTIC EM-TYPE ALGORITHM FOR MOTIF-FINDING IN BIOPOLYMER SEQUENCES
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SEAM: A STOCHASTIC EM-TYPE ALGORITHM FOR MOTIF-FINDING IN BIOPOLYMER SEQUENCES

机译:SEAM:用于在生物聚合物序列中进行分子定位的随机EM型算法

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摘要

Position weight matrix-based statistical modeling for the identification and characterization of motif sites in a set of unaligned biopolymer sequences is presented. This paper describes and implements a new algorithm, the Stochastic EM-type Algorithm for Motif-finding (SEAM), and redesigns and implements the EM-based motif-finding algorithm called deterministic EM (DEM) for comparison with SEAM, its stochastic counterpart. The gold standard example, cyclic adenosine monophosphate receptor protein (CRP) binding sequences, together with other biological sequences, is used to illustrate the performance of the new algorithm and compare it with other popular motif-finding programs. The convergence of the new algorithm is shown by simulation. The in silico experiments using simulated and biological examples illustrate the power and robustness of the new algorithm SEAM in de novo motif discovery.
机译:介绍了基于位置权重矩阵的统计模型,用于鉴定和表征一组未比对的生物聚合物序列中的图案位点。本文介绍并实现了一种新的算法-随机EM型母题查找算法(SEAM),并重新设计并实现了一种基于确定性EM(DEM)的基于EM的主题查找算法,以与随机对应的SEAM进行比较。黄金标准示例,环状单磷酸腺苷受体蛋白(CRP)结合序列,以及其他生物序列,被用来说明新算法的性能,并将其与其他流行的基序发现程序进行比较。仿真结果表明了新算法的收敛性。使用模拟和生物学示例进行的计算机模拟实验说明了新算法SEAM在从头图案发现中的强大功能和强大功能。

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