In the last decades, huge efforts have been made in the bioinformatics community to develop machine learning-based methods for the prediction of structural features of proteins in the hope of answering fundamental questions about the way proteins function and their involvement in several illnesses. The recent advent of Deep Learning has renewed the interest in neural networks, with dozens of methods being developed taking advantage of these new architectures. However, most methods are still heavily based pre-processing of the input data, as well as extraction and integration of multiple hand-picked, and manually designed features. Multiple Sequence Alignments (MSA) are the most common source of information in de novo prediction methods. Dee...
In this thesis, the application of convolutional and recurrent machine learning techniques to sever...
The ability to predict local structural features of a protein from the primary sequence is of paramo...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
Recent breakthroughs in protein structure prediction have increasingly relied on the use of deep neu...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
The effect of training a neural network secondary structure prediction algorithm with different type...
This thesis discusses the prediction of Protein Structural Annotations by Deep and Shallow Learning ...
Proteins are such a vital piece of the scientific community\u27s understanding of molecular interact...
The present study is an attempt to develop a neural network-based method for predicting the real val...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
In this thesis, the application of convolutional and recurrent machine learning techniques to sever...
The ability to predict local structural features of a protein from the primary sequence is of paramo...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
Recent breakthroughs in protein structure prediction have increasingly relied on the use of deep neu...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
The effect of training a neural network secondary structure prediction algorithm with different type...
This thesis discusses the prediction of Protein Structural Annotations by Deep and Shallow Learning ...
Proteins are such a vital piece of the scientific community\u27s understanding of molecular interact...
The present study is an attempt to develop a neural network-based method for predicting the real val...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
In this thesis, the application of convolutional and recurrent machine learning techniques to sever...
The ability to predict local structural features of a protein from the primary sequence is of paramo...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...