Low-N protein engineering with data-efficient deep learning.
Surojit BiswasGrigory KhimulyaEthan C AlleyKevin M EsveltGeorge M ChurchPublished in: Nature methods (2021)
Protein engineering has enormous academic and industrial potential. However, it is limited by the lack of experimental assays that are consistent with the design goal and sufficiently high throughput to find rare, enhanced variants. Here we introduce a machine learning-guided paradigm that can use as few as 24 functionally assayed mutant sequences to build an accurate virtual fitness landscape and screen ten million sequences via in silico directed evolution. As demonstrated in two dissimilar proteins, GFP from Aequorea victoria (avGFP) and E. coli strain TEM-1 β-lactamase, top candidates from a single round are diverse and as active as engineered mutants obtained from previous high-throughput efforts. By distilling information from natural protein sequence landscapes, our model learns a latent representation of 'unnaturalness', which helps to guide search away from nonfunctional sequence neighborhoods. Subsequent low-N supervision then identifies improvements to the activity of interest. In sum, our approach enables efficient use of resource-intensive high-fidelity assays without sacrificing throughput, and helps to accelerate engineered proteins into the fermenter, field and clinic.
Keyphrases
- high throughput
- machine learning
- deep learning
- single cell
- amino acid
- escherichia coli
- protein protein
- big data
- artificial intelligence
- physical activity
- binding protein
- primary care
- multidrug resistant
- heavy metals
- molecular docking
- electronic health record
- high resolution
- small molecule
- body composition
- healthcare
- mass spectrometry
- health information
- copy number
- gram negative
- genetic diversity
- convolutional neural network
- social media
- molecular dynamics simulations