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SMURFLite: combining simplified Markov random fields with simulated evolution improves remote homology detection for beta-structural proteins into the twilight zone

机译:SMURFLite:将简化的马尔可夫随机场与模拟进化相结合,改善了进入暮光区的β结构蛋白的远程同源性检测

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摘要

Motivation: One of the most successful methods to date for recognizing protein sequences that are evolutionarily related has been profile hidden Markov models (HMMs). However, these models do not capture pairwise statistical preferences of residues that are hydrogen bonded in beta sheets. These dependencies have been partially captured in the HMM setting by simulated evolution in the training phase and can be fully captured by Markov random fields (MRFs). However, the MRFs can be computationally prohibitive when beta strands are interleaved in complex topologies. We introduce SMURFLite, a method that combines both simplified MRFs and simulated evolution to substantially improve remote homology detection for beta structures. Unlike previous MRF-based methods, SMURFLite is computationally feasible on any beta-structural motif.
机译:动机:迄今为止,识别进化相关蛋白序列的最成功方法之一是轮廓隐藏马尔可夫模型(HMM)。但是,这些模型没有捕获β折叠中氢键结合的残基的成对统计偏好。这些相关性已在HMM设置中通过训练阶段的模拟演变而部分捕获,并且可以由Markov随机字段(MRF)完全捕获。但是,当β链在复杂拓扑中交错时,MRF可能在计算上是禁止的。我们介绍了SMURFLite,该方法结合了简化的MRF和模拟进化,可以显着改善β结构的远程同源性检测。与以前的基于MRF的方法不同,SMURFLite在任何beta结构主题上在计算上都是可行的。

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