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Accurate statistics for local sequence alignment with position-dependent scoring by rare-event sampling

机译:通过稀有事件采样获得具有位置相关评分的局部序列比对的准确统计信息

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摘要

BackgroundMolecular database search tools need statistical models to assess the significance for the resulting hits. In the classical approach one asks the question how probable a certain score is observed by pure chance. Asymptotic theories for such questions are available for two random i.i.d. sequences. Some effort had been made to include effects of finite sequence lengths and to account for specific compositions of the sequences. In many applications, such as a large-scale database homology search for transmembrane proteins, these models are not the most appropriate ones. Search sensitivity and specificity benefit from position-dependent scoring schemes or use of Hidden Markov Models. Additional, one may wish to go beyond the assumption that the sequences are i.i.d. Despite their practical importance, the statistical properties of these settings have not been well investigated yet.
机译:背景分子数据库搜索工具需要统计模型来评估结果命中的重要性。在经典方法中,有人问这样一个问题:纯粹靠偶然机会观察到某个分数的可能性如何。这些问题的渐近理论可用于两个随机i.i.d.序列。已经做出一些努力以包括有限序列长度的影响并考虑序列的特定组成。在许多应用中,例如对跨膜蛋白进行大规模数据库同源性搜索,这些模型并不是最合适的模型。搜索灵敏度和特异性受益于位置相关的评分方案或使用隐马尔可夫模型。另外,可能希望超越序列是i.i.d的假设。尽管它们具有实际重要性,但尚未对这些设置的统计属性进行深入研究。

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