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1.
Sci Adv ; 10(41): eado7035, 2024 Oct 11.
Article in English | MEDLINE | ID: mdl-39392890

ABSTRACT

Foamy viruses (FVs) constitute a subfamily of retroviruses. Their envelope (Env) glycoprotein drives the merger of viral and cellular membranes during entry into cells. The only available structures of retroviral Envs are those from human and simian immunodeficiency viruses from the subfamily of orthoretroviruses, which are only distantly related to the FVs. We report the cryo-electron microscopy structures of the FV Env ectodomain in the pre- and post-fusion states, which unexpectedly demonstrate structural similarity with the fusion protein (F) of paramyxo- and pneumoviruses, implying an evolutionary link between the viral fusogens. We describe the structural features that are unique to the FV Env and propose a mechanistic model for its conformational change, highlighting how the interplay of its structural elements could drive membrane fusion and viral entry. The structural knowledge on the FV Env now provides a framework for functional investigations, which can benefit the design of FV Env variants with improved features for use as gene therapy vectors.


Subject(s)
Cryoelectron Microscopy , Spumavirus , Viral Fusion Proteins , Viral Fusion Proteins/chemistry , Viral Fusion Proteins/metabolism , Viral Fusion Proteins/genetics , Spumavirus/genetics , Spumavirus/ultrastructure , Humans , Virus Internalization , Models, Molecular , Pneumovirus/metabolism , Pneumovirus/chemistry , Protein Conformation , Membrane Fusion , Paramyxoviridae/genetics , Paramyxoviridae/metabolism , Animals
2.
Nature ; 631(8020): 449-458, 2024 Jul.
Article in English | MEDLINE | ID: mdl-38898281

ABSTRACT

De novo design of complex protein folds using solely computational means remains a substantial challenge1. Here we use a robust deep learning pipeline to design complex folds and soluble analogues of integral membrane proteins. Unique membrane topologies, such as those from G-protein-coupled receptors2, are not found in the soluble proteome, and we demonstrate that their structural features can be recapitulated in solution. Biophysical analyses demonstrate the high thermal stability of the designs, and experimental structures show remarkable design accuracy. The soluble analogues were functionalized with native structural motifs, as a proof of concept for bringing membrane protein functions to the soluble proteome, potentially enabling new approaches in drug discovery. In summary, we have designed complex protein topologies and enriched them with functionalities from membrane proteins, with high experimental success rates, leading to a de facto expansion of the functional soluble fold space.


Subject(s)
Computer-Aided Design , Deep Learning , Membrane Proteins , Protein Folding , Solubility , Humans , Membrane Proteins/chemistry , Membrane Proteins/metabolism , Models, Molecular , Protein Stability , Proteome/chemistry , Receptors, G-Protein-Coupled/chemistry , Receptors, G-Protein-Coupled/metabolism , Amino Acid Motifs , Proof of Concept Study
3.
Nat Rev Mol Cell Biol ; 25(8): 639-653, 2024 Aug.
Article in English | MEDLINE | ID: mdl-38565617

ABSTRACT

The field of protein design has made remarkable progress over the past decade. Historically, the low reliability of purely structure-based design methods limited their application, but recent strategies that combine structure-based and sequence-based calculations, as well as machine learning tools, have dramatically improved protein engineering and design. In this Review, we discuss how these methods have enabled the design of increasingly complex structures and therapeutically relevant activities. Additionally, protein optimization methods have improved the stability and activity of complex eukaryotic proteins. Thanks to their increased reliability, computational design methods have been applied to improve therapeutics and enzymes for green chemistry and have generated vaccine antigens, antivirals and drug-delivery nano-vehicles. Moreover, the high success of design methods reflects an increased understanding of basic rules that govern the relationships among protein sequence, structure and function. However, de novo design is still limited mostly to α-helix bundles, restricting its potential to generate sophisticated enzymes and diverse protein and small-molecule binders. Designing complex protein structures is a challenging but necessary next step if we are to realize our objective of generating new-to-nature activities.


Subject(s)
Protein Engineering , Proteins , Protein Engineering/methods , Humans , Proteins/chemistry , Proteins/metabolism , Animals , Models, Molecular , Protein Conformation
4.
bioRxiv ; 2024 Mar 07.
Article in English | MEDLINE | ID: mdl-38496615

ABSTRACT

De novo design of complex protein folds using solely computational means remains a significant challenge. Here, we use a robust deep learning pipeline to design complex folds and soluble analogues of integral membrane proteins. Unique membrane topologies, such as those from GPCRs, are not found in the soluble proteome and we demonstrate that their structural features can be recapitulated in solution. Biophysical analyses reveal high thermal stability of the designs and experimental structures show remarkable design accuracy. The soluble analogues were functionalized with native structural motifs, standing as a proof-of-concept for bringing membrane protein functions to the soluble proteome, potentially enabling new approaches in drug discovery. In summary, we designed complex protein topologies and enriched them with functionalities from membrane proteins, with high experimental success rates, leading to a de facto expansion of the functional soluble fold space.

5.
Cell ; 187(4): 999-1010.e15, 2024 Feb 15.
Article in English | MEDLINE | ID: mdl-38325366

ABSTRACT

Protein structures are essential to understanding cellular processes in molecular detail. While advances in artificial intelligence revealed the tertiary structure of proteins at scale, their quaternary structure remains mostly unknown. We devise a scalable strategy based on AlphaFold2 to predict homo-oligomeric assemblies across four proteomes spanning the tree of life. Our results suggest that approximately 45% of an archaeal proteome and a bacterial proteome and 20% of two eukaryotic proteomes form homomers. Our predictions accurately capture protein homo-oligomerization, recapitulate megadalton complexes, and unveil hundreds of homo-oligomer types, including three confirmed experimentally by structure determination. Integrating these datasets with omics information suggests that a majority of known protein complexes are symmetric. Finally, these datasets provide a structural context for interpreting disease mutations and reveal coiled-coil regions as major enablers of quaternary structure evolution in human. Our strategy is applicable to any organism and provides a comprehensive view of homo-oligomerization in proteomes.


Subject(s)
Artificial Intelligence , Proteins , Proteome , Humans , Proteins/chemistry , Proteins/genetics , Archaea/chemistry , Archaea/genetics , Eukaryota/chemistry , Eukaryota/genetics , Bacteria/chemistry , Bacteria/genetics
6.
Protein Sci ; 32(6): e4653, 2023 06.
Article in English | MEDLINE | ID: mdl-37165539

ABSTRACT

De novo protein design enhances our understanding of the principles that govern protein folding and interactions, and has the potential to revolutionize biotechnology through the engineering of novel protein functionalities. Despite recent progress in computational design strategies, de novo design of protein structures remains challenging, given the vast size of the sequence-structure space. AlphaFold2 (AF2), a state-of-the-art neural network architecture, achieved remarkable accuracy in predicting protein structures from amino acid sequences. This raises the question whether AF2 has learned the principles of protein folding sufficiently for de novo design. Here, we sought to answer this question by inverting the AF2 network, using the prediction weight set and a loss function to bias the generated sequences to adopt a target fold. Initial design trials resulted in de novo designs with an overrepresentation of hydrophobic residues on the protein surface compared to their natural protein family, requiring additional surface optimization. In silico validation of the designs showed protein structures with the correct fold, a hydrophilic surface and a densely packed hydrophobic core. In vitro validation showed that 7 out of 39 designs were folded and stable in solution with high melting temperatures. In summary, our design workflow solely based on AF2 does not seem to fully capture basic principles of de novo protein design, as observed in the protein surface's hydrophobic vs. hydrophilic patterning. However, with minimal post-design intervention, these pipelines generated viable sequences as assessed experimental characterization. Thus, such pipelines show the potential to contribute to solving outstanding challenges in de novo protein design.


Subject(s)
Furylfuramide , Protein Engineering , Protein Engineering/methods , Proteins/chemistry , Amino Acid Sequence , Protein Folding
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