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Searching for universal model of amyloid signaling motifs using probabilistic context-free grammars

机译:使用概率无背景语法寻找淀粉样管信号图的通用模型

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Amyloid signaling motifs are a class of protein motifs which share basic structural and functional features despite the lack of clear sequence homology. They are hard to detect in large sequence databases either with the alignment-based profile methods (due to short length and diversity) or with generic amyloid- and prion-finding tools (due to insufficient discriminative power). We propose to address the challenge with a machine learning grammatical model capable of generalizing over diverse collections of unaligned yet related motifs. First, we introduce and test improvements to our probabilistic context-free grammar framework for protein sequences that allow for inferring more sophisticated models achieving high sensitivity at low false positive rates. Then, we infer universal grammars for a collection of recently identified bacterial amyloid signaling motifs and demonstrate that the method is capable of generalizing by successfully searching for related motifs in fungi. The results are compared to available alternative methods. Finally, we conduct spectroscopy and staining analyses of selected peptides to verify their structural and functional relationship. While the profile HMMs remain the method of choice for modeling homologous sets of sequences, PCFGs seem more suitable for building meta-family descriptors and extrapolating beyond the seed sample.
机译:淀粉样标信号图案是一类蛋白质基序,尽管缺乏清晰的序列同源性,但仍然具有基本结构和功能特征。它们难以在大序列数据库中用基于对准的轮廓方法(由于短的长度和多样性)或通用淀粉样蛋白和朊病毒查找工具(由于鉴别的功率不足)。我们建议用机器学习语法模型提出挑战,能够通过各种未对准但相关主题的各种集合概括。首先,我们对我们的概率无规的语法框架介绍和测试改进,用于蛋白质序列,允许推断更复杂的模型以低误率实现高灵敏度。然后,我们推断出用于最近鉴定的细菌淀粉样信号传导基序的全身语法,并证明该方法能够通过成功搜索真菌中的相关基序来推广。将结果与可用替代方法进行比较。最后,我们进行选择性肽的光谱和染色分析,以验证它们的结构和功能关系。虽然简介HMMS仍然是用于建模同源序列集的选择方法,但PCFG似乎更适合建立元类描述符并推断超出种子样品。

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