2022
DOI: 10.1101/2022.07.21.500999
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High-resolutionde novostructure prediction from primary sequence

Abstract: Recent breakthroughs have used deep learning to exploit evolutionary information in multiple sequence alignments (MSAs) to accurately predict protein structures. However, MSAs of homologous proteins are not always available, such as with orphan proteins and fast-evolving proteins like antibodies, and a protein typically folds in a natural setting from its primary amino acid sequence into its three-dimensional structure, suggesting that evolutionary information and MSAs should not be necessary to predict a prot… Show more

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Cited by 208 publications
(231 citation statements)
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“…Recently, our ProtCID database has been widely used for benchmarking interface/assembly predictors in the 3D-BioInfo community of ELIXIR (https://elixir-europe.org/communities/3d-bioinfo). Similarly, we believe the common assembly clusters in ProtCAD can also be used for benchmark data, as well as training and testing data sets for structure prediction of protein complexes, especially in the rapidly developing field of deep learning structure predictors (42,44,45).…”
Section: Discussionmentioning
confidence: 99%
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“…Recently, our ProtCID database has been widely used for benchmarking interface/assembly predictors in the 3D-BioInfo community of ELIXIR (https://elixir-europe.org/communities/3d-bioinfo). Similarly, we believe the common assembly clusters in ProtCAD can also be used for benchmark data, as well as training and testing data sets for structure prediction of protein complexes, especially in the rapidly developing field of deep learning structure predictors (42,44,45).…”
Section: Discussionmentioning
confidence: 99%
“…can also be used for benchmark data, as well as training and testing data sets for structure prediction of protein complexes, especially in the rapidly developing field of deep learning structure predictors (42,44,45).…”
mentioning
confidence: 99%
“…Further parameters are an early stop criterion of a prediction certainty (pLDDT) above 85 or below 40, a default recycle count of 3 and a compilation of only the best performing out of five AlphaFold2 models. As the goal of LambdaPP is to provide a single reference for pLM-based predictions, 3D structure will soon be predicted using tools just recently presented in the literature (35; 72; 74), which will allow structure prediction to happen in seconds rather than in minutes, at accuracy comparable with MSA-based methods.…”
Section: Methodsmentioning
confidence: 99%
“…While some pLM-based methods do not reach the performance of MSA-based methods (23; 38; 72), others exceed those (5; 10; 23; 39; 42; 64; 28; 29; 36). Prediction performance has risen so much that sequence-specific predictions based on pLMs can capture some aspects of structural and functional dynamics better than much more accurate family-averaged solutions even from AlphaFold2 (35; 72; 74).…”
Section: Introductionmentioning
confidence: 99%
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