4 research outputs found
Recommended from our members
Improving Protein Expression, Stability, and Function with ProteinMPNN
Natural proteins are highly optimized for function but are often difficult to produce at a scale suitable for biotechnological applications due to poor expression in heterologous systems, limited solubility, and sensitivity to temperature. Thus, a general method that improves the physical properties of native proteins while maintaining function could have wide utility for protein-based technologies. Here, we show that the deep neural network ProteinMPNN, together with evolutionary and structural information, provides a route to increasing protein expression, stability, and function. For both myoglobin and tobacco etch virus (TEV) protease, we generated designs with improved expression, elevated melting temperatures, and improved function. For TEV protease, we identified multiple designs with improved catalytic activity as compared to the parent sequence and previously reported TEV variants. Our approach should be broadly useful for improving the expression, stability, and function of biotechnologically important proteins
Improving Protein Expression, Stability, and Function with ProteinMPNN
Natural proteins are highly optimized for function but
are often
difficult to produce at a scale suitable for biotechnological applications
due to poor expression in heterologous systems, limited solubility,
and sensitivity to temperature. Thus, a general method that improves
the physical properties of native proteins while maintaining function
could have wide utility for protein-based technologies. Here, we show
that the deep neural network ProteinMPNN, together with evolutionary
and structural information, provides a route to increasing protein
expression, stability, and function. For both myoglobin and tobacco
etch virus (TEV) protease, we generated designs with improved expression,
elevated melting temperatures, and improved function. For TEV protease,
we identified multiple designs with improved catalytic activity as
compared to the parent sequence and previously reported TEV variants.
Our approach should be broadly useful for improving the expression,
stability, and function of biotechnologically important proteins
Improving Protein Expression, Stability, and Function with ProteinMPNN
Natural proteins are highly optimized for function but
are often
difficult to produce at a scale suitable for biotechnological applications
due to poor expression in heterologous systems, limited solubility,
and sensitivity to temperature. Thus, a general method that improves
the physical properties of native proteins while maintaining function
could have wide utility for protein-based technologies. Here, we show
that the deep neural network ProteinMPNN, together with evolutionary
and structural information, provides a route to increasing protein
expression, stability, and function. For both myoglobin and tobacco
etch virus (TEV) protease, we generated designs with improved expression,
elevated melting temperatures, and improved function. For TEV protease,
we identified multiple designs with improved catalytic activity as
compared to the parent sequence and previously reported TEV variants.
Our approach should be broadly useful for improving the expression,
stability, and function of biotechnologically important proteins
Recommended from our members
De novo design of high-affinity binders of bioactive helical peptides.
Many peptide hormones form an α-helix on binding their receptors1-4, and sensitive methods for their detection could contribute to better clinical management of disease5. De novo protein design can now generate binders with high affinity and specificity to structured proteins6,7. However, the design of interactions between proteins and short peptides with helical propensity is an unmet challenge. Here we describe parametric generation and deep learning-based methods for designing proteins to address this challenge. We show that by extending RFdiffusion8 to enable binder design to flexible targets, and to refining input structure models by successive noising and denoising (partial diffusion), picomolar-affinity binders can be generated to helical peptide targets by either refining designs generated with other methods, or completely de novo starting from random noise distributions without any subsequent experimental optimization. The RFdiffusion designs enable the enrichment and subsequent detection of parathyroid hormone and glucagon by mass spectrometry, and the construction of bioluminescence-based protein biosensors. The ability to design binders to conformationally variable targets, and to optimize by partial diffusion both natural and designed proteins, should be broadly useful