Protein Secondary Structure prediction has been a central topic of research in Bioinformatics for decades. In spite of this, even the most sophisticated ab initio SS predictors are not able to reach the theoretical limit of three-state prediction accuracy (88-90%), while only a few predict more than the 3 traditional Helix, Strand and Coil classes. In this study we present tests on different models trained both on single sequence and evolutionary profile-based inputs and develop a new state-of-the-art system with Porter 5. Porter 5 is composed of ensembles of cascaded Bidirectional Recurrent Neural Networks and Convolutional Neural Networks, incorporates new input encoding techniques and is trained on a large set of protein structures. Port...
Machine learning techniques have been widely applied to solve the problem of predicting protein seco...
Predicting protein structures from sequences is a challenging problem. Determining the secondary str...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...
Protein secondary structure prediction remains a vital topic with broad applications. Due to lack of...
Abstract Background Protein secondary structure can be regarded as an information bridge that links ...
Summary: Porter is a new system for protein secondary structure pre-diction in three classes. Porter...
Porter is a new system for protein secondary structure pre-diction in three classes. Porter relies o...
The effect of training a neural network secondary structure prediction algorithm with different type...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Protein secondary structure prediction is an important problem in bioinformatics. Inspired by the re...
A two-stage neural network has been used to predict protein secondary structure based on the positio...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Machine learning techniques have been widely applied to solve the problem of predicting protein seco...
Predicting protein structures from sequences is a challenging problem. Determining the secondary str...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...
Protein secondary structure prediction remains a vital topic with broad applications. Due to lack of...
Abstract Background Protein secondary structure can be regarded as an information bridge that links ...
Summary: Porter is a new system for protein secondary structure pre-diction in three classes. Porter...
Porter is a new system for protein secondary structure pre-diction in three classes. Porter relies o...
The effect of training a neural network secondary structure prediction algorithm with different type...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Protein secondary structure prediction is an important problem in bioinformatics. Inspired by the re...
A two-stage neural network has been used to predict protein secondary structure based on the positio...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Machine learning techniques have been widely applied to solve the problem of predicting protein seco...
Predicting protein structures from sequences is a challenging problem. Determining the secondary str...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...