Reliable protein-protein docking with AlphaFold, Rosetta, and replica-exchange.

Ameya Harmalkar, Sergey Lyskov, Jeffrey J Gray
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Abstract

Despite the recent breakthrough of AlphaFold (AF) in the field of protein sequence-to-structure prediction, modeling protein interfaces and predicting protein complex structures remains challenging, especially when there is a significant conformational change in one or both binding partners. Prior studies have demonstrated that AF-multimer (AFm) can predict accurate protein complexes in only up to 43% of cases.1 In this work, we combine AlphaFold as a structural template generator with a physics-based replica exchange docking algorithm to better sample conformational changes. Using a curated collection of 254 available protein targets with both unbound and bound structures, we first demonstrate that AlphaFold confidence measures (pLDDT) can be repurposed for estimating protein flexibility and docking accuracy for multimers. We incorporate these metrics within our ReplicaDock 2.0 protocol2to complete a robust in-silico pipeline for accurate protein complex structure prediction. AlphaRED (AlphaFold-initiated Replica Exchange Docking) successfully docks failed AF predictions including 97 failure cases in Docking Benchmark Set 5.5. AlphaRED generates CAPRI acceptable-quality or better predictions for 63% of benchmark targets. Further, on a subset of antigen-antibody targets, which is challenging for AFm (20% success rate), AlphaRED demonstrates a success rate of 43%. This new strategy demonstrates the success possible by integrating deep-learning based architectures trained on evolutionary information with physics-based enhanced sampling. The pipeline is available at github.com/Graylab/AlphaRED.

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与AlphaFold、Rosetta和复制品交换进行可靠的蛋白质-蛋白质对接。
尽管AlphaFold(AF)最近在蛋白质序列到结构预测领域取得了突破,但对蛋白质界面建模和预测蛋白质复合物结构仍然具有挑战性,尤其是当一个或两个结合伴侣发生显著构象变化时。先前的研究表明,AF多聚体(AFm)只能在高达43%的情况下预测准确的蛋白质复合物。1在这项工作中,我们将AlphaFold作为结构模板生成器与基于物理的副本交换对接算法相结合。使用254个具有未结合和结合结构的可用蛋白质靶标的精选集合,我们首先证明了AlphaFold置信度可以重新用于估计多聚体的蛋白质灵活性和对接准确性。我们将这些指标纳入我们的ReplicaDock 2.0协议2中,以完成一个强大的计算机管道,用于准确的蛋白质复合物结构预测。AlphaRED(AlphaFold启动的副本交换对接)成功对接失败的AF预测,包括对接基准集5.5中的97个失败案例。AlphaRED为66%的基准目标生成CAPRI可接受的质量或更好的预测。此外,在抗原抗体靶标的子集上,AlphaRED的成功率为51%,这对AFm来说是一个挑战(19%的成功率)。这一新策略通过将基于进化信息训练的深度学习架构与基于物理的增强采样相结合,证明了其可能取得的成功。该管道可在github.com/Graylab/AlphaRED上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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