Background: Recognizing the correct structural fold among known template protein structures for a target protein (i.e. fold recognition) is essential for template-based protein structure modeling. Since the fold recognition problem can be defined as a binary classification problem of predicting whether or not the unknown fold of a target protein is similar to an already known template protein structure in a library, machine learning methods have been effectively applied to tackle this problem. In our work, we developed RF-Fold that uses random forest- one of the most powerful and scalable machine learning classification methods- to recognize protein folds. Results: RF-Fold consists of hundreds of decision trees that can be trained efficient...
Recognition of protein folding patterns is an important step in protein structure and function predi...
The rapid growth in genomic and proteomic data causes a lot of challenges that are raised up and nee...
Protein fold classification is a key step to predicting protein tertiary structures. This paper prop...
The functioning of a protein in biological reactions crucially depends on its three-dimensional stru...
AbstractThe recognition of protein folds is an important step in the prediction of protein structure...
Motivation: What constitutes a baseline level of success for protein fold recognition methods? As fo...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular ...
Motivation: In recent years, development of a single-method fold-recognition server lags behind cons...
Abstract Background Random forest, an ensemble based supervised machine learning algorithm, is used ...
Computational recognition of native-like folds from a protein fold database is considered to be a pr...
The identification of a protein fold type from its amino acid sequence provides important insights a...
The prediction experiment reveals that fold recognition has become a powerful tool in structural bio...
Fold recognition from amino acid sequences plays an important role in identifying protein structures...
Recognition of protein folding patterns is an important step in protein structure and function predi...
The rapid growth in genomic and proteomic data causes a lot of challenges that are raised up and nee...
Protein fold classification is a key step to predicting protein tertiary structures. This paper prop...
The functioning of a protein in biological reactions crucially depends on its three-dimensional stru...
AbstractThe recognition of protein folds is an important step in the prediction of protein structure...
Motivation: What constitutes a baseline level of success for protein fold recognition methods? As fo...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Protein structure prediction is one of the most important and difficult problems in computational mo...
Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular ...
Motivation: In recent years, development of a single-method fold-recognition server lags behind cons...
Abstract Background Random forest, an ensemble based supervised machine learning algorithm, is used ...
Computational recognition of native-like folds from a protein fold database is considered to be a pr...
The identification of a protein fold type from its amino acid sequence provides important insights a...
The prediction experiment reveals that fold recognition has become a powerful tool in structural bio...
Fold recognition from amino acid sequences plays an important role in identifying protein structures...
Recognition of protein folding patterns is an important step in protein structure and function predi...
The rapid growth in genomic and proteomic data causes a lot of challenges that are raised up and nee...
Protein fold classification is a key step to predicting protein tertiary structures. This paper prop...