Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faster, and more accurate. Higher order protein structure provides insight into a protein’s function in the cell. Understanding a protein’s secondary structure is a first step towards this goal. Therefore, a number of computational prediction methods have been developed to predict secondary structure from just the primary amino acid sequence. The most successful methods use machine learning approaches that are quite accurate, but do not directly incorporate structural information. As a step towards improving secondary structure reduction given the primary structure, we propose a Bayesian model based on the knob-socket model of protein packing in s...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
This paper proposes a Bayesian model for secondary structure prediction given the primary structure....
Knowledge of the structure of a protein is essential for understanding the protein's function, but e...
Knowledge of the structure of a protein is essential for understanding the protein's function, but e...
In bioinformatics, secondary structure predictors are tools that are used to determine the secondary...
Protein secondary structure prediction is an important intermediate step for many biological procedu...
Protein secondary structure prediction is an important intermediate step for many biological procedu...
We demonstrate the applicability of our previously developed Bayesian probabilistic approach for pre...
Modern protein secondary structure prediction methods are based on exploiting evolutionary informati...
Modern protein secondary structure prediction methods are based on exploiting evolutionary informati...
Abstract Exponential growth in the number of available protein sequences is unmatched by the slower ...
Abstract: Efforts to use computers in predicting the secondary structure of proteins based only on p...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
This paper proposes a Bayesian model for secondary structure prediction given the primary structure....
Knowledge of the structure of a protein is essential for understanding the protein's function, but e...
Knowledge of the structure of a protein is essential for understanding the protein's function, but e...
In bioinformatics, secondary structure predictors are tools that are used to determine the secondary...
Protein secondary structure prediction is an important intermediate step for many biological procedu...
Protein secondary structure prediction is an important intermediate step for many biological procedu...
We demonstrate the applicability of our previously developed Bayesian probabilistic approach for pre...
Modern protein secondary structure prediction methods are based on exploiting evolutionary informati...
Modern protein secondary structure prediction methods are based on exploiting evolutionary informati...
Abstract Exponential growth in the number of available protein sequences is unmatched by the slower ...
Abstract: Efforts to use computers in predicting the secondary structure of proteins based only on p...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...