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Meta-analytic approach to the accurate prediction of secreted virulence effectors in gram-negative bacteria

机译:荟萃分析法可准确预测革兰氏阴性细菌中分泌的毒力效应因子

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Background Many pathogens use a type III secretion system to translocate virulence proteins (called effectors) in order to adapt to the host environment. To date, many prediction tools for effector identification have been developed. However, these tools are insufficiently accurate for producing a list of putative effectors that can be applied directly for labor-intensive experimental verification. This also suggests that important features of effectors have yet to be fully characterized. Results In this study, we have constructed an accurate approach to predicting secreted virulence effectors from Gram-negative bacteria. This consists of a support vector machine-based discriminant analysis followed by a simple criteria-based filtering. The accuracy was assessed by estimating the average number of true positives in the top-20 ranking in the genome-wide screening. In the validation, 10 sets of 20 training and 20 testing examples were randomly selected from 40 known effectors of Salmonella enterica serovar Typhimurium LT2. On average, the SVM portion of our system predicted 9.7 true positives from 20 testing examples in the top-20 of the prediction. Removal of the N-terminal instability, codon adaptation index and ProtParam indices decreased the score to 7.6, 8.9 and 7.9, respectively. These discrimination features suggested that the following characteristics of effectors had been uncovered: unstable N-terminus, non-optimal codon usage, hydrophilic, and less aliphathic. The secondary filtering process represented by coexpression analysis and domain distribution analysis further refined the average true positive counts to 12.3. We further confirmed that our system can correctly predict known effectors of P. syringae DC3000, strongly indicating its feasibility. Conclusions We have successfully developed an accurate prediction system for screening effectors on a genome-wide scale. We confirmed the accuracy of our system by external validation using known effectors of Salmonella and obtained the accurate list of putative effectors of the organism. The level of accuracy was sufficient to yield candidates for gene-directed experimental verification. Furthermore, new features of effectors were revealed: non-optimal codon usage and instability of the N-terminal region. From these findings, a new working hypothesis is proposed regarding mechanisms controlling the translocation of virulence effectors and determining the substrate specificity encoded in the secretion system.
机译:背景技术许多病原体使用III型分泌系统来转移毒力蛋白(称为效应子),以适应宿主环境。迄今为止,已经开发了许多用于效应子鉴定的预测工具。但是,这些工具不够精确,无法产生可直接用于劳动密集型实验验证的推定效应子列表。这也表明效应子的重要特征尚未被充分表征。结果在这项研究中,我们构建了一种准确的方法来预测革兰氏阴性细菌分泌的毒力效应因子。这包括基于支持向量机的判别分析,然后进行基于标准的简单过滤。通过估计全基因组筛选中前20名中的真实阳性平均数来评估准确性。在验证中,从40个已知的肠炎沙门氏菌血清鼠伤寒沙门氏菌LT2的效应子中随机选择10组,共20个训练和20个测试示例。平均而言,我们系统的SVM部分从前20个测试示例中预测出9.7个真实阳性。去除N末端不稳定性,密码子适应指数和ProtParam指数后,该得分分别降低至7.6、8.9和7.9。这些区别特征表明,尚未发现效应子的以下特征:不稳定的N末端,非最佳的密码子使用,亲水性和较少的脂肪含量。共表达分析和域分布分析所代表的二次过滤过程进一步将平均真实阳性计数细化为12.3。我们进一步证实,我们的系统可以正确预测丁香假单胞菌DC3000的已知效应子,有力地表明了其可行性。结论我们成功地开发了一种精确的预测系统,可以在全基因组范围内筛选效应子。我们使用沙门氏菌的已知效应物通过外部验证确认了我们系统的准确性,并获得了该生物的推定效应物的准确列表。准确性水平足以产生候选基因指导的实验验证。此外,揭示了效应子的新特征:非最佳密码子使用和N末端区域的不稳定性。从这些发现出发,提出了关于控制毒力效应子的转运并确定分泌系统中编码的底物特异性的机制的新的工作假设。

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