Proteins power a vast array of functional processes in living cells. The capability to create new proteins with designed structures and functions would thus enable the engineering of cellular behavior and development of protein-based therapeutics and materials. Structure-based protein design aims to find structures that are designable (can be realized by a protein sequence), novel (have dissimilar geometry from natural proteins), and diverse (span a wide range of geometries). While advances in protein structure prediction have made it possible to predict structures of novel protein sequences, the combinatorially large space of sequences and structures limits the practicality of search-based methods. Generative models provide a compelling alternative, by implicitly learning the low-dimensional structure of complex data distributions. Here, we leverage recent advances in denoising diffusion probabilistic models and equivariant neural networks to develop Genie, a generative model of protein structures that performs discrete-time diffusion using a cloud of oriented reference frames in 3D space. Through in silico evaluations, we demonstrate that Genie generates protein backbones that are more designable, novel, and diverse than existing models. This indicates that Genie is capturing key aspects of the distribution of protein structure space and facilitates protein design with high success rates. Code for generating new proteins and training new versions of Genie is available at https://github.com/aqlaboratory/genie.
翻译:以结构为基础的蛋白质设计旨在找到可设计的结构(可以通过蛋白质序列实现)、新颖的(与自然蛋白不同的几何学)和多样化的(广泛的地貌)。虽然蛋白质结构预测的进步使得有可能预测新型蛋白序列结构的结构,但组合式序列和结构的庞大空间限制了基于搜索的方法的实用性。基因模型通过隐含地学习复杂数据分布的低维结构,提供了一个令人信服的替代方案。在这里,我们利用最近的进展,去除去扩散的概率模型和等异性神经网络来开发Genie,这是一个蛋白结构的基因模型,利用3D空间方向参考框架的云来进行离散时间的传播。通过硅网络评估,我们证明Genie生成的蛋白质骨骨盆比现有模型更便于设计、新颖和多样化。这显示Genie的蛋白质模型在高蛋白质模型设计、高水平的模型和高蛋白质模型设计方面获得了成功。