A variety of functionally important protein properties, such as secondary structure, transmembrane topology and solvent accessibility, can be encoded as a labeling of amino acids. Indeed, the prediction of such properties from the primary amino acid sequence is one of the core projects of computational biology. Accordingly, a panoply of approaches have been developed for predicting such properties; however, most such approaches focus on solving a single task at a time. Motivated by recent, successful work in natural language processing, we propose to use multitask learning to train a single, joint model that exploits the dependencies among these various labeling tasks. We describe a deep neural network architecture that, given a protein seq...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...
In recent years, deep learning algorithms have outperformed the state-of-the art methods in several ...
<div><p>A variety of functionally important protein properties, such as secondary structure, transme...
Abstract Proteins are the building blocks of life, carrying out fundamental functions in biology. In...
Protein secondary structure prediction is an important problem in bioinformatics. Inspired by the re...
Machine learning methods for protein function prediction are urgently needed, especially now that a ...
<div><p>Machine learning methods for protein function prediction are urgently needed, especially now...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
Predicting protein structures from sequences is a challenging problem. Determining the secondary str...
Predicting protein properties such as solvent accessibility and secondary structure from its primary...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
peer reviewedDeveloping computational tools for predicting protein structural information given thei...
Abstract Background Proteins interact through specifi...
Background Hierarchical Multi-Label Classification is a classification task where the classes to be ...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...
In recent years, deep learning algorithms have outperformed the state-of-the art methods in several ...
<div><p>A variety of functionally important protein properties, such as secondary structure, transme...
Abstract Proteins are the building blocks of life, carrying out fundamental functions in biology. In...
Protein secondary structure prediction is an important problem in bioinformatics. Inspired by the re...
Machine learning methods for protein function prediction are urgently needed, especially now that a ...
<div><p>Machine learning methods for protein function prediction are urgently needed, especially now...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
Predicting protein structures from sequences is a challenging problem. Determining the secondary str...
Predicting protein properties such as solvent accessibility and secondary structure from its primary...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
peer reviewedDeveloping computational tools for predicting protein structural information given thei...
Abstract Background Proteins interact through specifi...
Background Hierarchical Multi-Label Classification is a classification task where the classes to be ...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
The rapid increase in the number of proteins in sequence databases and the diversity of their functi...
In recent years, deep learning algorithms have outperformed the state-of-the art methods in several ...