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Predicting protein interface residues using easily accessible on-line resources

机译:使用易于访问的在线资源预测蛋白质界面残留

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摘要

It has been more than a decade since the completion of the Human Genome Project that provided us with a complete list of human proteins. The next obvious task is to figure out how various parts interact with each other. On that account, we review 10 methods for protein interface prediction, which are freely available as web servers. In addition, we comparatively evaluate their performance on a common data set comprising different quality target structures. We find that using experimental structures and high-quality homology models, structure-based methods outperform those using only protein sequences, with global template-based approaches providing the best performance. For moderate-quality models, sequence-based methods often perform better than those structure-based techniques that rely on fine atomic details. We note that post-processing protocols implemented in several methods quantitatively improve the results only for experimental structures, suggesting that these procedures should be tuned up for computer-generated models. Finally, we anticipate that advanced meta-prediction protocols are likely to enhance interface residue prediction. Notwithstanding further improvements, easily accessible web servers already provide the scientific community with convenient resources for the identification of protein–protein interaction sites.
机译:自人类基因组计划完成以来已有十多年的历史,该计划向我们提供了完整的人类蛋白质清单。下一个显而易见的任务是弄清各个部分之间如何相互作用。因此,我们回顾了10种蛋白质界面预测方法,这些方法可作为Web服务器免费获得。此外,我们在包含不同质量目标结构的公共数据集上比较评估它们的性能。我们发现使用实验结构和高质量同源性模型,基于结构的方法优于仅使用蛋白质序列的方法,而基于全局模板的方法则提供了最佳性能。对于中等质量的模型,基于序列的方法通常比基于精细原子细节的基于结构的技术性能更好。我们注意到,以几种方法实施的后处理协议仅在实验结构上定量地改善了结果,这表明这些程序应针对计算机生成的模型进行调整。最后,我们预计先进的元预测协议可能会增强界面残基预测。尽管进行了进一步的改进,但易于访问的Web服务器已经为科学界提供了方便的资源来识别蛋白质-蛋白质相互作用位点。

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