Mimetic Neural Networks: A unified framework for Protein Design and Folding

02/07/2021
by   Moshe Eliasof, et al.
0

Recent advancements in machine learning techniques for protein folding motivate better results in its inverse problem – protein design. In this work we introduce a new graph mimetic neural network, MimNet, and show that it is possible to build a reversible architecture that solves the structure and design problems in tandem, allowing to improve protein design when the structure is better estimated. We use the ProteinNet data set and show that the state of the art results in protein design can be improved, given recent architectures for protein folding.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/31/2023

Boosting AND/OR-Based Computational Protein Design: Dynamic Heuristics and Generalizable UFO

Scientific computing has experienced a surge empowered by advancements i...
research
11/05/2022

Learning the shape of protein micro-environments with a holographic convolutional neural network

Proteins play a central role in biology from immune recognition to brain...
research
04/27/2022

TERMinator: A Neural Framework for Structure-Based Protein Design using Tertiary Repeating Motifs

Computational protein design has the potential to deliver novel molecula...
research
02/01/2022

AlphaDesign: A graph protein design method and benchmark on AlphaFoldDB

While DeepMind has tentatively solved protein folding, its inverse probl...
research
10/16/2020

SidechainNet: An All-Atom Protein Structure Dataset for Machine Learning

Despite recent advancements in deep learning methods for protein structu...
research
08/02/2020

An Investigation in Optimal Encoding of Protein Primary Sequence for Structure Prediction by Artificial Neural Networks

Machine learning and the use of neural networks has increased precipitou...
research
05/06/2014

Understanding Protein Dynamics with L1-Regularized Reversible Hidden Markov Models

We present a machine learning framework for modeling protein dynamics. O...

Please sign up or login with your details

Forgot password? Click here to reset