The identification of a protein fold type from its amino acid sequence provides important insights about the protein 3D structure. In this paper, we propose a deep learning architecture that can process protein residue-level features to address the protein fold recognition task. Our neural network model combines 1D-convolutional layers with gated recurrent unit (GRU) layers. The GRU cells, as recurrent layers, cope with the processing issues associated to the highly variable protein sequence lengths and so extract a fold-related embedding of fixed size for each protein domain. These embeddings are then used to perform the pairwise fold recognition task, which is based on transferring the fold type of the most similar template structure. We ...
Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular ...
We present a protein fold recognition method, MANIFOLD, which uses the similarity between target and...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Motivation Protein fold recognition is an important problem in structural bioinformatics. Almost all...
Background: One of the most essential problems in structural bioinformatics is protein fold recognit...
Fold recognition techniques assist the exploration of protein structures, and web-based servers are ...
Background Current state-of-the-art deep learning approaches for protein fold recognition learn pro...
Proteins play a crucial role in living organisms as they perform many vital tasks in every living ce...
Background: Recognizing the correct structural fold among known template protein structures for a ta...
Motivation: SCOPe 2.07 is a dataset of 276,231 protein domains that have been partitioned into varyi...
In fold recognition by threading one takes the amino acid sequence of a protein and evaluates how we...
Abstract: Motivation: Identifying the fold class of a protein sequence of unknown structure is a fun...
Fold recognition from amino acid sequences plays an important role in identifying protein structures...
Computational recognition of native-like folds from a protein fold database is considered to be a pr...
Proteins and non-coding RNA are the macromolecules responsible for performing the vast majority of b...
Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular ...
We present a protein fold recognition method, MANIFOLD, which uses the similarity between target and...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Motivation Protein fold recognition is an important problem in structural bioinformatics. Almost all...
Background: One of the most essential problems in structural bioinformatics is protein fold recognit...
Fold recognition techniques assist the exploration of protein structures, and web-based servers are ...
Background Current state-of-the-art deep learning approaches for protein fold recognition learn pro...
Proteins play a crucial role in living organisms as they perform many vital tasks in every living ce...
Background: Recognizing the correct structural fold among known template protein structures for a ta...
Motivation: SCOPe 2.07 is a dataset of 276,231 protein domains that have been partitioned into varyi...
In fold recognition by threading one takes the amino acid sequence of a protein and evaluates how we...
Abstract: Motivation: Identifying the fold class of a protein sequence of unknown structure is a fun...
Fold recognition from amino acid sequences plays an important role in identifying protein structures...
Computational recognition of native-like folds from a protein fold database is considered to be a pr...
Proteins and non-coding RNA are the macromolecules responsible for performing the vast majority of b...
Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular ...
We present a protein fold recognition method, MANIFOLD, which uses the similarity between target and...
Protein structure prediction is one of the most important and difficult problems in computational mo...