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Statistical compression of protein sequences and inference of marginal probability landscapes over competing alignments using finite state models and Dirichlet priors

机译:使用有限状态模型和Dirichlet先验在竞争比对中蛋白质序列的统计压缩和边际概率分布的推断

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摘要

The information criterion of minimum message length (MML) provides a powerful statistical framework for inductive reasoning from observed data. We apply MML to the problem of protein sequence comparison using finite state models with Dirichlet distributions. The resulting framework allows us to supersede the ad hoc cost functions commonly used in the field, by systematically addressing the problem of arbitrariness in alignment parameters, and the disconnect between substitution scores and gap costs. Furthermore, our framework enables the generation of marginal probability landscapes over all possible alignment hypotheses, with potential to facilitate the users to simultaneously rationalize and assess competing alignment relationships between protein sequences, beyond simply reporting a single (best) alignment. We demonstrate the performance of our program on benchmarks containing distantly related protein sequences.
机译:最小消息长度(MML)的信息标准为从观察到的数据进行归纳推理提供了强大的统计框架。我们使用具有Dirichlet分布的有限状态模型将MML应用于蛋白质序列比较的问题。由此产生的框架使我们能够通过系统地解决比对参数的任意性问题以及替代评分和缺口成本之间的脱节问题,来取代该领域常用的临时成本函数。此外,我们的框架能够在所有可能的比对假设中生成边际概率图,并有可能促进用户同时合理化和评估蛋白质序列之间竞争性比对关系,而不仅仅是报告单个(最佳)比对。我们在包含远距离相关蛋白质序列的基准上证明了我们程序的性能。

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