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Using deep learning to annotate the protein universe
by
Bateman, Alex
, Bileschi, Maxwell L.
, Carter, Brandon
, Bryant, Drew H.
, Sanderson, Theo
, Colwell, Lucy J.
, Belanger, David
, Sculley, D.
, DePristo, Mark A.
in
631/114/1305
/ 631/114/2410
/ 631/1647/48
/ Agriculture
/ Amino Acid Sequence
/ Amino acids
/ Annotations
/ Bioinformatics
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Databases, Protein
/ Deep Learning
/ Homology
/ Humans
/ Life Sciences
/ Microorganisms
/ Molecular Sequence Annotation
/ Protein families
/ Proteins
/ Proteome - metabolism
/ Proteomes
/ Proteomics
/ Sequences
2022
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Using deep learning to annotate the protein universe
by
Bateman, Alex
, Bileschi, Maxwell L.
, Carter, Brandon
, Bryant, Drew H.
, Sanderson, Theo
, Colwell, Lucy J.
, Belanger, David
, Sculley, D.
, DePristo, Mark A.
in
631/114/1305
/ 631/114/2410
/ 631/1647/48
/ Agriculture
/ Amino Acid Sequence
/ Amino acids
/ Annotations
/ Bioinformatics
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Databases, Protein
/ Deep Learning
/ Homology
/ Humans
/ Life Sciences
/ Microorganisms
/ Molecular Sequence Annotation
/ Protein families
/ Proteins
/ Proteome - metabolism
/ Proteomes
/ Proteomics
/ Sequences
2022
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Using deep learning to annotate the protein universe
by
Bateman, Alex
, Bileschi, Maxwell L.
, Carter, Brandon
, Bryant, Drew H.
, Sanderson, Theo
, Colwell, Lucy J.
, Belanger, David
, Sculley, D.
, DePristo, Mark A.
in
631/114/1305
/ 631/114/2410
/ 631/1647/48
/ Agriculture
/ Amino Acid Sequence
/ Amino acids
/ Annotations
/ Bioinformatics
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Databases, Protein
/ Deep Learning
/ Homology
/ Humans
/ Life Sciences
/ Microorganisms
/ Molecular Sequence Annotation
/ Protein families
/ Proteins
/ Proteome - metabolism
/ Proteomes
/ Proteomics
/ Sequences
2022
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Journal Article
Using deep learning to annotate the protein universe
2022
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Overview
Understanding the relationship between amino acid sequence and protein function is a long-standing challenge with far-reaching scientific and translational implications. State-of-the-art alignment-based techniques cannot predict function for one-third of microbial protein sequences, hampering our ability to exploit data from diverse organisms. Here, we train deep learning models to accurately predict functional annotations for unaligned amino acid sequences across rigorous benchmark assessments built from the 17,929 families of the protein families database Pfam. The models infer known patterns of evolutionary substitutions and learn representations that accurately cluster sequences from unseen families. Combining deep models with existing methods significantly improves remote homology detection, suggesting that the deep models learn complementary information. This approach extends the coverage of Pfam by >9.5%, exceeding additions made over the last decade, and predicts function for 360 human reference proteome proteins with no previous Pfam annotation. These results suggest that deep learning models will be a core component of future protein annotation tools.
A deep learning model predicts protein functional annotations for unaligned amino acid sequences.
Publisher
Nature Publishing Group US,Nature Publishing Group
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