This thesis explores the automatic prediction of biomolecular interactions using machine learning. The overriding philosophy motivating these investigations is to model the interactions between biomolecules (proteins and small-molecule ligands) using simple features to represent characteristics that are hypothesized to contribute to binding.For these investigations, I use "support vector" learning to build discrimination functions that separate input features into classes, resulting in a hypothesis as to whether or not (or how strongly) the biomolecules will interact. These discrimination functions are based on training data sets of known interactions.Individual chapters of the thesis center on different investigations which predict protein...
This research addresses the problem of prediction of protein-protein interactions (PPI) when integra...
A number of techniques have been developed in order to address issues such as genome, trascriptome a...
The work presented in this paper corresponds to eight years of research on the problem of interactio...
Protein-protein interactions in a cell are essential to the characterization and performance of vari...
The biological functions of a protein within the cell are governed by its protein interactions. Whil...
Most of the cellular functions are the result of the concerted action of protein complexes forming p...
International audienceBackgroundThe prediction of protein-protein interactions is an important step ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Characterization of macromole...
Prediction of protein-protein interaction is a difficult and an important problem in biology. In thi...
DNA-protein interactions are essential parts of cell life and cell cycle. Prediction of these intera...
This thesis focuses on the two research projects which have applied machine learning techniques to t...
Background: We present a machine learning approach to the problem of protein ligand interaction pre...
Background: Molecular biology is currently facing the challenging task of functionally characterizin...
Protein-protein interactions (PPIs) are essential for understanding the function of biological syste...
Machine learning (ML) has been an important arsenal in computational biology used to elucidate prote...
This research addresses the problem of prediction of protein-protein interactions (PPI) when integra...
A number of techniques have been developed in order to address issues such as genome, trascriptome a...
The work presented in this paper corresponds to eight years of research on the problem of interactio...
Protein-protein interactions in a cell are essential to the characterization and performance of vari...
The biological functions of a protein within the cell are governed by its protein interactions. Whil...
Most of the cellular functions are the result of the concerted action of protein complexes forming p...
International audienceBackgroundThe prediction of protein-protein interactions is an important step ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Characterization of macromole...
Prediction of protein-protein interaction is a difficult and an important problem in biology. In thi...
DNA-protein interactions are essential parts of cell life and cell cycle. Prediction of these intera...
This thesis focuses on the two research projects which have applied machine learning techniques to t...
Background: We present a machine learning approach to the problem of protein ligand interaction pre...
Background: Molecular biology is currently facing the challenging task of functionally characterizin...
Protein-protein interactions (PPIs) are essential for understanding the function of biological syste...
Machine learning (ML) has been an important arsenal in computational biology used to elucidate prote...
This research addresses the problem of prediction of protein-protein interactions (PPI) when integra...
A number of techniques have been developed in order to address issues such as genome, trascriptome a...
The work presented in this paper corresponds to eight years of research on the problem of interactio...