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Direct prediction of intrinsically disordered protein conformational properties from sequence
by
Holehouse, Alex S.
, Ginell, Garrett M.
, Emenecker, Ryan J.
, Griffith, Daniel
, Lotthammer, Jeffrey M.
in
631/114/2184
/ 631/114/2411
/ 631/57/2266
/ Amino acid sequence
/ Asphericity
/ Bioinformatics
/ Biological Microscopy
/ Biological Techniques
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Deep learning
/ Dimensional stability
/ Gyration
/ Heterogeneity
/ Intrinsically Disordered Proteins - chemistry
/ Life Sciences
/ Polymers
/ Protein Conformation
/ Proteins
/ Proteomes
/ Proteomics
2024
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Direct prediction of intrinsically disordered protein conformational properties from sequence
by
Holehouse, Alex S.
, Ginell, Garrett M.
, Emenecker, Ryan J.
, Griffith, Daniel
, Lotthammer, Jeffrey M.
in
631/114/2184
/ 631/114/2411
/ 631/57/2266
/ Amino acid sequence
/ Asphericity
/ Bioinformatics
/ Biological Microscopy
/ Biological Techniques
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Deep learning
/ Dimensional stability
/ Gyration
/ Heterogeneity
/ Intrinsically Disordered Proteins - chemistry
/ Life Sciences
/ Polymers
/ Protein Conformation
/ Proteins
/ Proteomes
/ Proteomics
2024
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Direct prediction of intrinsically disordered protein conformational properties from sequence
by
Holehouse, Alex S.
, Ginell, Garrett M.
, Emenecker, Ryan J.
, Griffith, Daniel
, Lotthammer, Jeffrey M.
in
631/114/2184
/ 631/114/2411
/ 631/57/2266
/ Amino acid sequence
/ Asphericity
/ Bioinformatics
/ Biological Microscopy
/ Biological Techniques
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Deep learning
/ Dimensional stability
/ Gyration
/ Heterogeneity
/ Intrinsically Disordered Proteins - chemistry
/ Life Sciences
/ Polymers
/ Protein Conformation
/ Proteins
/ Proteomes
/ Proteomics
2024
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Direct prediction of intrinsically disordered protein conformational properties from sequence
Journal Article
Direct prediction of intrinsically disordered protein conformational properties from sequence
2024
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Overview
Intrinsically disordered regions (IDRs) are ubiquitous across all domains of life and play a range of functional roles. While folded domains are generally well described by a stable three-dimensional structure, IDRs exist in a collection of interconverting states known as an ensemble. This structural heterogeneity means that IDRs are largely absent from the Protein Data Bank, contributing to a lack of computational approaches to predict ensemble conformational properties from sequence. Here we combine rational sequence design, large-scale molecular simulations and deep learning to develop ALBATROSS, a deep-learning model for predicting ensemble dimensions of IDRs, including the radius of gyration, end-to-end distance, polymer-scaling exponent and ensemble asphericity, directly from sequences at a proteome-wide scale. ALBATROSS is lightweight, easy to use and accessible as both a locally installable software package and a point-and-click-style interface via Google Colab notebooks. We first demonstrate the applicability of our predictors by examining the generalizability of sequence–ensemble relationships in IDRs. Then, we leverage the high-throughput nature of ALBATROSS to characterize the sequence-specific biophysical behavior of IDRs within and between proteomes.
ALBATROSS is a deep-learning-based model for predicting ensemble properties of intrinsically disordered proteins and protein regions, such as radius of gyration, end-to-end distance, polymer-scaling exponent and ensemble asphericity, directly from sequences.
Publisher
Nature Publishing Group US,Nature Publishing Group
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