In this work, we integrate a non-linear signal analysis method, recurrence quantification analysis (RQA), with the well-known machine-learning algorithm, support vector machines for the binary classification of protein sequences. Two different classification problems were selected, discriminating between aggregating and non-aggregating proteins and mostly disordered and completely ordered proteins, respectively. It has also been shown that classification performance of SVM models improve on selection of the most informative RQA descriptors as SVM input features
Abstract Background Classification of protein sequences is a central problem in computational biolog...
Protein sequence data continue to become available at an exponential rate. Annotation of functional ...
Part 1: ANN-Classification and Pattern RecognitionInternational audienceIn this study protein sequen...
In this work, we integrate a non-linear signal analysis method, recurrence quantification analysis (...
In recent years we have witnessed an exponential increase in the amount of biological information, e...
Abstract Background The classification of protein sequences using string algorithms provides val...
Abstract Background The classification of protein sequences using string algorithms provides valuab...
Knowledge of the three-dimensional structure of a protein is essential for describing and understand...
Knowledge of the three-dimensional structure of a protein is essential for describing and understand...
Motivation: Since the gap between sharply increasing known sequences and slow accumulation of known ...
Recurrence quantification analysis (RQA) was used to characterize the folding properties of 22 chime...
A new method based on probabilistic suffix trees (PSTs) is defined for pairwise comparison of distan...
Recurrence plots are a useful tool to identify structure in a data set in a time resolved way quali...
this paper, we formulate protein family classification as a formal language problem; subsequently we...
Abstract:- Biological data mining has become an important research area in recent years due to the e...
Abstract Background Classification of protein sequences is a central problem in computational biolog...
Protein sequence data continue to become available at an exponential rate. Annotation of functional ...
Part 1: ANN-Classification and Pattern RecognitionInternational audienceIn this study protein sequen...
In this work, we integrate a non-linear signal analysis method, recurrence quantification analysis (...
In recent years we have witnessed an exponential increase in the amount of biological information, e...
Abstract Background The classification of protein sequences using string algorithms provides val...
Abstract Background The classification of protein sequences using string algorithms provides valuab...
Knowledge of the three-dimensional structure of a protein is essential for describing and understand...
Knowledge of the three-dimensional structure of a protein is essential for describing and understand...
Motivation: Since the gap between sharply increasing known sequences and slow accumulation of known ...
Recurrence quantification analysis (RQA) was used to characterize the folding properties of 22 chime...
A new method based on probabilistic suffix trees (PSTs) is defined for pairwise comparison of distan...
Recurrence plots are a useful tool to identify structure in a data set in a time resolved way quali...
this paper, we formulate protein family classification as a formal language problem; subsequently we...
Abstract:- Biological data mining has become an important research area in recent years due to the e...
Abstract Background Classification of protein sequences is a central problem in computational biolog...
Protein sequence data continue to become available at an exponential rate. Annotation of functional ...
Part 1: ANN-Classification and Pattern RecognitionInternational audienceIn this study protein sequen...