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Improved PEP-FOLD Approach for Peptide and Miniprotein Structure Prediction

机译:改进的PEP-FOLD方法用于肽和微蛋白结构预测

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Peptides and mini proteins have many biological and biomedical implications, which motivates the development of accurate methods, suitable for large-scale experiments, to predict their experimental or native conformations solely from sequences. In this study, we report PEP-FOLD2, an improved coarse grained approach for peptide de novo structure prediction and compare it with PEP-FOLD1 and the state-of-the-art Rosetta program. Using a benchmark of 56 structurally diverse peptides with 25-52 amino acids and a total of 600 simulations for each system, PEP-FOLD2 generates higher quality models than PEP-FOLD 1, and PEP-FOLD2 and Rosetta generate near-native or native models for 95% and 88% of the targets, respectively. In the situation where we do not have any experimental structures at hand, PEP-FOLD2 and Rosetta return a near-native or native conformation among the top five best scored models for 80% and 75% of the targets, respectively. While the PEP-FOLD2 prediction rate is better than the ROSETTA prediction rate by 5%, this improvement is non-negligible because PEP-FOLD2 explores a larger conformational space than ROSETTA and consists of a single coarse-grained phase. Our results indicate that if the coarse-grained PEP-FOLD2 method is approaching maturity, we are not at the end of the game of mini-protein structure prediction, but this opens new perspectives for large-scale in silico experiments.
机译:肽和微型蛋白质具有许多生物学和生物医学意义,这促使人们开发适用于大规模实验的精确方法,从而仅从序列中预测其实验或天然构象。在这项研究中,我们报告了P​​EP-FOLD2,这是一种用于肽从头结构预测的改进的粗粒度方法,并将其与PEP-FOLD1和最新的Rosetta程序进行了比较。使用每个具有25-52个氨基酸的56种结构多样的肽作为基准,每个系统总共进行600次模拟,PEP-FOLD2生成的质量模型比PEP-FOLD 1更高,PEP-FOLD2和Rosetta生成近本机或本机模型分别达到了95%和88%的目标。在我们手头没有任何实验结构的情况下,PEP-FOLD2和Rosetta分别在80%和75%的目标的得分最高的五个最佳模型中返回了接近自然或天然的构象。尽管PEP-FOLD2的预测率比ROSETTA的预测率高5%,但这种改进是不可忽略的,因为PEP-FOLD2的构象空间比ROSETTA大,并且由单个粗粒度相组成。我们的结果表明,如果粗粒度的PEP-FOLD2方法接近成熟,那么我们就不会处于预测微蛋白结构的局面,但这为大规模的计算机模拟实验开辟了新的前景。

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