Publication | Open Access
The genetic architecture of protein stability
14
Citations
39
References
2023
Year
Unknown Venue
EngineeringGeneticsMolecular BiologyMolecular GeneticsProtein GeneticsEnergetic CouplingsProtein StabilityPhysic Aware Machine LearningProtein FoldingBiophysicsDirected EvolutionProtein ModelingProtein Structure PredictionBioinformaticsProtein BioinformaticsSequence SpacesArtificial Intelligence ModelsComputational BiologyProtein EvolutionSystems BiologyMedicine
Abstract There are more ways to synthesize a 100 amino acid protein (20 100 ) than atoms in the universe. Only a miniscule fraction of such a vast sequence space can ever be experimentally or computationally surveyed. Deep neural networks are increasingly being used to navigate high-dimensional sequence spaces. However, these models are extremely complicated and provide little insight into the fundamental genetic architecture of proteins. Here, by experimentally exploring sequence spaces >10 10 , we show that the genetic architecture of at least some proteins is remarkably simple, allowing accurate genetic prediction in high-dimensional sequence spaces with fully interpretable biophysical models. These models capture the non-linear relationships between free energies and phenotypes but otherwise consist of additive free energy changes with a small contribution from pairwise energetic couplings. These energetic couplings are sparse and caused by structural contacts and backbone propagations. Our results suggest that artificial intelligence models may be vastly more complicated than the proteins that they are modeling and that protein genetics is actually both simple and intelligible.
| Year | Citations | |
|---|---|---|
Page 1
Page 1