组分(热力学)
蛋白质设计
计算机科学
水准点(测量)
纳米材料
接口(物质)
深度学习
纳米技术
人工智能
蛋白质结构
化学
材料科学
气泡
生物化学
物理
并行计算
大地测量学
热力学
最大气泡压力法
地理
作者
Robbert J. de Haas,Natalie Brunette,Alexander M.C. Goodson,Justas Dauparas,Sue Yi,Erin C. Yang,Quinton M. Dowling,Hannah Nguyen,Alex Kang,Asim K. Bera,Banumathi Sankaran,Renko de Vries,David Baker,Neil P. King
标识
DOI:10.1101/2023.08.04.551935
摘要
Abstract The design of novel protein-protein interfaces using physics-based design methods such as Rosetta requires substantial computational resources and manual refinement by expert structural biologists. A new generation of deep learning methods promises to simplify protein-protein interface design and enable its application to a wide variety of problems by researchers from various scientific disciplines. Here we test the ability of a deep learning method for protein sequence design, ProteinMPNN, to design two-component tetrahedral protein nanomaterials and benchmark its performance against Rosetta. ProteinMPNN had a similar success rate to Rosetta, yielding 13 new experimentally confirmed assemblies, but required orders of magnitude less computation and no manual refinement. The interfaces designed by ProteinMPNN were substantially more polar than those designed by Rosetta, which facilitated in vitro assembly of the designed nanomaterials from independently purified components. Crystal structures of several of the assemblies confirmed the accuracy of the design method at high resolution. Our results showcase the potential of deep learning-based methods to unlock the widespread application of designed protein-protein interfaces and self-assembling protein nanomaterials in biotechnology.
科研通智能强力驱动
Strongly Powered by AbleSci AI