A protein performs biological functions by folding to a particular 3D structure. To accurately model the protein structures, both the overall geometric topology and local fine-grained relations between amino acids (e.g. side-chain torsion angles and inter-amino-acid orientations) should be carefully considered. In this work, we propose the Directed Weight Neural Network for better capturing geometric relations among different amino acids. Extending a single weight from a scalar to a 3D directed vector, our new framework supports a rich set of geometric operations on both classical and SO(3)--representation features, on top of which we construct a perceptron unit for processing amino-acid information. In addition, we introduce an equivariant...
With the debut of AlphaFold2, we now can get a highly-accurate view of a reasonable equilibrium tert...
The field of geometric deep learning has had a profound impact on the development of innovative and ...
Motivation: Effective use of evolutionary information has recently led to tremendous progress in com...
Proteins are the basic building blocks of biological organisms, and are responsible for a variety of...
Research has shown that the functionalities of proteins are largely influenced by their three dimens...
AbstractThree-dimensional structures of protein backbones have been predicted using neural networks....
Three-dimensional (3D) structures of protein backbones have been pre-dicted using neural networks. A...
Three dimensional (3D) protein structures determine the function of a protein within a cell. Classic...
Learning effective protein representations is critical in a variety of tasks in biology such as pred...
Understanding protein structure-function relationships is a key challenge in computational biology, ...
Three dimensional protein structures determine the function of a protein within a cell. Classificati...
Funder: Signal Processing & Communications Group of Cambridge University Engineering Department (CUE...
Proteins play a central role in biology from immune recognition to brain activity. While major advan...
In recent years, Deep Learning techniques have achieved some success in bioinformatics tasks, includ...
Artificial neural network is a mathematical model that imitates low level intellect in naturally occ...
With the debut of AlphaFold2, we now can get a highly-accurate view of a reasonable equilibrium tert...
The field of geometric deep learning has had a profound impact on the development of innovative and ...
Motivation: Effective use of evolutionary information has recently led to tremendous progress in com...
Proteins are the basic building blocks of biological organisms, and are responsible for a variety of...
Research has shown that the functionalities of proteins are largely influenced by their three dimens...
AbstractThree-dimensional structures of protein backbones have been predicted using neural networks....
Three-dimensional (3D) structures of protein backbones have been pre-dicted using neural networks. A...
Three dimensional (3D) protein structures determine the function of a protein within a cell. Classic...
Learning effective protein representations is critical in a variety of tasks in biology such as pred...
Understanding protein structure-function relationships is a key challenge in computational biology, ...
Three dimensional protein structures determine the function of a protein within a cell. Classificati...
Funder: Signal Processing & Communications Group of Cambridge University Engineering Department (CUE...
Proteins play a central role in biology from immune recognition to brain activity. While major advan...
In recent years, Deep Learning techniques have achieved some success in bioinformatics tasks, includ...
Artificial neural network is a mathematical model that imitates low level intellect in naturally occ...
With the debut of AlphaFold2, we now can get a highly-accurate view of a reasonable equilibrium tert...
The field of geometric deep learning has had a profound impact on the development of innovative and ...
Motivation: Effective use of evolutionary information has recently led to tremendous progress in com...