Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 7 de 7
Filter
Add more filters










Database
Language
Publication year range
1.
Nat Commun ; 15(1): 5141, 2024 Jun 20.
Article in English | MEDLINE | ID: mdl-38902262

ABSTRACT

A major challenge in protein design is to augment existing functional proteins with multiple property enhancements. Altering several properties likely necessitates numerous primary sequence changes, and novel methods are needed to accurately predict combinations of mutations that maintain or enhance function. Models of sequence co-variation (e.g., EVcouplings), which leverage extensive information about various protein properties and activities from homologous protein sequences, have proven effective for many applications including structure determination and mutation effect prediction. We apply EVcouplings to computationally design variants of the model protein TEM-1 ß-lactamase. Nearly all the 14 experimentally characterized designs were functional, including one with 84 mutations from the nearest natural homolog. The designs also had large increases in thermostability, increased activity on multiple substrates, and nearly identical structure to the wild type enzyme. This study highlights the efficacy of evolutionary models in guiding large sequence alterations to generate functional diversity for protein design applications.


Subject(s)
Evolution, Molecular , Mutation , Protein Engineering , beta-Lactamases , beta-Lactamases/genetics , beta-Lactamases/metabolism , beta-Lactamases/chemistry , Protein Engineering/methods , Models, Molecular , Amino Acid Sequence , Enzyme Stability , Protein Conformation
2.
bioRxiv ; 2023 May 09.
Article in English | MEDLINE | ID: mdl-37214973

ABSTRACT

Designing optimized proteins is important for a range of practical applications. Protein design is a rapidly developing field that would benefit from approaches that enable many changes in the amino acid primary sequence, rather than a small number of mutations, while maintaining structure and enhancing function. Homologous protein sequences contain extensive information about various protein properties and activities that have emerged over billions of years of evolution. Evolutionary models of sequence co-variation, derived from a set of homologous sequences, have proven effective in a range of applications including structure determination and mutation effect prediction. In this work we apply one of these models (EVcouplings) to computationally design highly divergent variants of the model protein TEM-1 ß-lactamase, and characterize these designs experimentally using multiple biochemical and biophysical assays. Nearly all designed variants were functional, including one with 84 mutations from the nearest natural homolog. Surprisingly, all functional designs had large increases in thermostability and most had a broadening of available substrates. These property enhancements occurred while maintaining a nearly identical structure to the wild type enzyme. Collectively, this work demonstrates that evolutionary models of sequence co-variation (1) are able to capture complex epistatic interactions that successfully guide large sequence departures from natural contexts, and (2) can be applied to generate functional diversity useful for many applications in protein design.

3.
Nat Commun ; 12(1): 2403, 2021 04 23.
Article in English | MEDLINE | ID: mdl-33893299

ABSTRACT

The ability to design functional sequences and predict effects of variation is central to protein engineering and biotherapeutics. State-of-art computational methods rely on models that leverage evolutionary information but are inadequate for important applications where multiple sequence alignments are not robust. Such applications include the prediction of variant effects of indels, disordered proteins, and the design of proteins such as antibodies due to the highly variable complementarity determining regions. We introduce a deep generative model adapted from natural language processing for prediction and design of diverse functional sequences without the need for alignments. The model performs state-of-art prediction of missense and indel effects and we successfully design and test a diverse 105-nanobody library that shows better expression than a 1000-fold larger synthetic library. Our results demonstrate the power of the alignment-free autoregressive model in generalizing to regions of sequence space traditionally considered beyond the reach of prediction and design.


Subject(s)
Algorithms , Computational Biology/methods , Neural Networks, Computer , Protein Engineering/methods , Amino Acid Sequence , Antibodies/genetics , Antibodies/immunology , Antibodies/metabolism , Antigens/immunology , Genotype , Humans , Mutation , Phenotype , Proteins/genetics , Proteins/immunology , Proteins/metabolism
4.
Bioinformatics ; 35(9): 1582-1584, 2019 05 01.
Article in English | MEDLINE | ID: mdl-30304492

ABSTRACT

SUMMARY: Coevolutionary sequence analysis has become a commonly used technique for de novo prediction of the structure and function of proteins, RNA, and protein complexes. We present the EVcouplings framework, a fully integrated open-source application and Python package for coevolutionary analysis. The framework enables generation of sequence alignments, calculation and evaluation of evolutionary couplings (ECs), and de novo prediction of structure and mutation effects. The combination of an easy to use, flexible command line interface and an underlying modular Python package makes the full power of coevolutionary analyses available to entry-level and advanced users. AVAILABILITY AND IMPLEMENTATION: https://github.com/debbiemarkslab/evcouplings.


Subject(s)
Sequence Analysis , Software , Proteins , RNA , Sequence Alignment
5.
Nat Methods ; 15(10): 816-822, 2018 10.
Article in English | MEDLINE | ID: mdl-30250057

ABSTRACT

The functions of proteins and RNAs are defined by the collective interactions of many residues, and yet most statistical models of biological sequences consider sites nearly independently. Recent approaches have demonstrated benefits of including interactions to capture pairwise covariation, but leave higher-order dependencies out of reach. Here we show how it is possible to capture higher-order, context-dependent constraints in biological sequences via latent variable models with nonlinear dependencies. We found that DeepSequence ( https://github.com/debbiemarkslab/DeepSequence ), a probabilistic model for sequence families, predicted the effects of mutations across a variety of deep mutational scanning experiments substantially better than existing methods based on the same evolutionary data. The model, learned in an unsupervised manner solely on the basis of sequence information, is grounded with biologically motivated priors, reveals the latent organization of sequence families, and can be used to explore new parts of sequence space.


Subject(s)
Computational Biology/methods , Evolution, Molecular , High-Throughput Nucleotide Sequencing/methods , Models, Theoretical , Mutation , Algorithms , Humans
6.
Cell ; 165(4): 963-75, 2016 May 05.
Article in English | MEDLINE | ID: mdl-27087444

ABSTRACT

Non-coding RNAs are ubiquitous, but the discovery of new RNA gene sequences far outpaces the research on the structure and functional interactions of these RNA gene sequences. We mine the evolutionary sequence record to derive precise information about the function and structure of RNAs and RNA-protein complexes. As in protein structure prediction, we use maximum entropy global probability models of sequence co-variation to infer evolutionarily constrained nucleotide-nucleotide interactions within RNA molecules and nucleotide-amino acid interactions in RNA-protein complexes. The predicted contacts allow all-atom blinded 3D structure prediction at good accuracy for several known RNA structures and RNA-protein complexes. For unknown structures, we predict contacts in 160 non-coding RNA families. Beyond 3D structure prediction, evolutionary couplings help identify important functional interactions-e.g., at switch points in riboswitches and at a complex nucleation site in HIV. Aided by increasing sequence accumulation, evolutionary coupling analysis can accelerate the discovery of functional interactions and 3D structures involving RNA.


Subject(s)
Nucleic Acid Conformation , RNA, Untranslated/chemistry , Entropy , Evolution, Molecular , Models, Molecular , RNA Folding , RNA, Untranslated/genetics , RNA, Untranslated/metabolism , RNA-Binding Proteins/chemistry , RNA-Binding Proteins/metabolism , Ribosomes/metabolism
7.
Plant Biotechnol J ; 12(1): 49-59, 2014 Jan.
Article in English | MEDLINE | ID: mdl-24102738

ABSTRACT

Heterotrimeric G-proteins consisting of Gα, Gß and Gγ subunits play an integral role in mediating multiple signalling pathways in plants. A novel, recently identified plant-specific Gγ protein, AGG3, has been proposed to be an important regulator of organ size and mediator of stress responses in Arabidopsis, whereas its potential homologs in rice are major quantitative trait loci for seed size and panicle branching. To evaluate the role of AGG3 towards seed and oil yield improvement, the gene was overexpressed in Camelina sativa, an oilseed crop of the Brassicaceae family. Analysis of multiple homozygous T4 transgenic Camelina lines showed that constitutive overexpression of AGG3 resulted in faster vegetative as well as reproductive growth accompanied by an increase in photosynthetic efficiency. Moreover, when expressed constitutively or specifically in seed tissue, AGG3 was found to increase seed size, seed mass and seed number per plant by 15%-40%, effectively resulting in significantly higher oil yield per plant. AGG3 overexpressing Camelina plants also exhibited improved stress tolerance. These observations draw a strong link between the roles of AGG3 in regulating two critical yield parameters, seed traits and plant stress responses, and reveal an effective biotechnological tool to dramatically increase yield in agricultural crops.


Subject(s)
Arabidopsis Proteins/metabolism , Brassicaceae/metabolism , GTP-Binding Protein gamma Subunits/metabolism , Plants, Genetically Modified/metabolism , Seeds/metabolism , Arabidopsis Proteins/genetics , Brassicaceae/genetics , GTP-Binding Protein gamma Subunits/genetics , Gene Expression Regulation, Plant/genetics , Gene Expression Regulation, Plant/physiology , Plants, Genetically Modified/genetics , Seeds/genetics
SELECTION OF CITATIONS
SEARCH DETAIL
...