III型分泌底物的计算鉴定和表征

E. Sakk, D. Schneider, S. Cartinhour, C. Myers, Monica Vencato, A. Collmer
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引用次数: 2

摘要

许多细菌性病原体利用III型分泌系统(TTSS)将特定蛋白质(或“底物”)输送到宿主细胞质中,以干扰防御反应并改变生理机能。在这项工作中,我们提出了一种计算形式来表征III型分泌信号的组成特性。虽然已经提出了从经验观察中得出的各种规则集,但对TTSS信号进行一致和全面的描述仍然令人感兴趣。这个问题不同于典型的信号肽分类和鉴定问题(例如-核,叶绿体,线粒体信号肽),因为已知的TTSS底物缺乏涉及类似功能的信号序列的相似性(例如-来自多个比对谱或信号一致性序列)。使用从丁香假单胞菌中经过经验验证的底物序列衍生的训练集,我们应用来自信息论的发散度量,以便对相似模式进行分类并表征III型信号。在这项工作中开发的TTSS表征导致了从n端开始的前50个氨基酸的漫射靶向信号。最后,利用丁香假单胞菌的训练集,将该方法应用于验证和预测其他具有TTSS的生物中的候选底物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational identification and characterization of Type III secretion substrates
Many bacterial pathogens employ a Type III secretion system (TTSS) to deliver specific proteins (or "substrates") into a host cytoplasm in order to interfere with defense responses and alter physiology. In this work, we present a computational formalism for characterizing the compositional properties of the Type III secretion signal. While various rule sets derived from empirical observations have been suggested, developing a consistent and comprehensive description of the TTSS signal is still of interest. This problem differs from typical signal peptide classification and identification problems (e.g. - nuclear, chloroplast, mitochondrial signal peptides) because known TTSS substrates lack the similarity expected from signal sequences involved in a similar function (e.g. -from a multiple alignment profile or signal consensus sequence). Using a training set derived from empirically verified substrate sequences in Pseudomonas syringae, we apply divergence measures derived from information theory in order to classify similar patterns and characterize the Type III signal. The TTSS characterization developed in this work leads to a diffuse targeting signal confined to the first 50 amino acids starting from the N-terminus. Finally, using the P. syringae training set, the method is applied to verify and predict substrate candidates in other organisms possessing a TTSS.
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