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Computational Prediction of Type III and IV Secreted Effectors in Gram-Negative Bacteria

机译:革兰氏阴性细菌中III和IV型分泌效应子的计算预测。

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In this review, we provide an overview of the methods employed in four recent studies that described novel methods for computational prediction of secreted effectors from type III and IV secretion systems in Gram-negative bacteria. We present the results of these studies in terms of performance at accurately predicting secreted effectors and similarities found between secretion signals that may reflect biologically relevant features for recognition. We discuss the Web-based tools for secreted effector prediction described in these studies and announce the availability of our tool, the SIEVE server (http://www.sysbep.org/sieve). Finally, we assess the accuracies of the three type III effector prediction methods on a small set of proteins not known prior to the development of these tools that we recently discovered and validated using both experimental and computational approaches. Our comparison shows that all methods use similar approaches and, in general, arrive at similar conclusions. We discuss the possibility of an order-dependent motif in the secretion signal, which was a point of disagreement in the studies. Our results show that there may be classes of effectors in which the signal has a loosely defined motif and others in which secretion is dependent only on compositional biases. Computational prediction of secreted effectors from protein sequences represents an important step toward better understanding the interaction between pathogens and hosts.
机译:在这篇综述中,我们提供了四项最新研究中使用的方法的概述,这些研究描述了用于革兰氏阴性细菌中III型和IV型分泌系统分泌效应子的计算预测的新方法。我们在准确预测分泌的效应子和分泌信号之间发现的相似性方面的性能方面,提供了这些研究的结果,这些信号可能反映了生物学上的相关特征以进行识别。我们讨论了这些研究中描述的用于预测效应子的基于Web的工具,并宣布了我们的工具SIEVE服务器(http://www.sysbep.org/sieve)的可用性。最后,我们评估了这三种III型效应子预测方法对一小部分蛋白质的准确性,这些蛋白质在开发这些工具之前未知,我们最近通过实验和计算方法发现并验证了这些工具。我们的比较表明,所有方法都使用相似的方法,并且通常得出相似的结论。我们讨论了分泌信号中顺序依赖性基序的可能性,这是研究中存在分歧的地方。我们的结果表明,可能存在几类效应子,其中的信号具有宽松定义的基序,而其他效应子的分泌仅取决于成分偏倚。从蛋白质序列对分泌的效应子的计算预测代表了迈向更好地了解病原体与宿主之间相互作用的重要一步。

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