Structural alignments are the most widely used tools for comparing proteins with low sequence similarity. The main contribution of this paper is to derive various kernels on proteins from structural alignments, which do not use sequence information. Central to the kernels is a novel alignment algorithm which matches substructures of fixed size using spectral graph matching techniques. We derive positive semi-definite kernels which capture the notion of similarity between substructures. Using these as base more sophisticated kernels on protein structures are proposed. To empirically evaluate the kernels we used a 40 % sequence non-redundant structures from 15 different SCOP superfamilies. The kernels when used with SVMs show competitive perf...
Abstract Background The task of computing highly accurate structural alignments of proteins in very ...
Kernel-based machine learning algorithms are versatile tools for biological sequence data analysis. ...
Abstract. We evaluated methods of protein classification that use ker-nels built from BLAST output p...
International audienceMOTIVATION: This work aims to develop computational methods to annotate protei...
The focus of this thesis is to develop computational techniques for analysis of protein structures. ...
International audienceMOTIVATION: Remote homology detection between protein sequences is a central p...
Motivation: This work aims to develop computational methods to annotate protein structures in an aut...
Remote homology detection between protein sequences is a central problem in computational biology. D...
In this paper, we aim at predicting protein structural classes for low-homology data sets based on p...
BackgroundAlignment-free methods for comparing protein sequences have proved to be viable alternativ...
University of Minnesota Ph.D. dissertation. Major: Computer Science. Advisor: George Karypis. 1 comp...
Determining protein sequence similarity is an important task for protein classification and homology...
Design of protein structure comparison algorithm is an important research issue, having far reaching...
Structural biologists will perform a significant portion of their future work in silico due to incre...
Proteins are very complex physical objects consisting of thousands of atoms and hundreds of amino ac...
Abstract Background The task of computing highly accurate structural alignments of proteins in very ...
Kernel-based machine learning algorithms are versatile tools for biological sequence data analysis. ...
Abstract. We evaluated methods of protein classification that use ker-nels built from BLAST output p...
International audienceMOTIVATION: This work aims to develop computational methods to annotate protei...
The focus of this thesis is to develop computational techniques for analysis of protein structures. ...
International audienceMOTIVATION: Remote homology detection between protein sequences is a central p...
Motivation: This work aims to develop computational methods to annotate protein structures in an aut...
Remote homology detection between protein sequences is a central problem in computational biology. D...
In this paper, we aim at predicting protein structural classes for low-homology data sets based on p...
BackgroundAlignment-free methods for comparing protein sequences have proved to be viable alternativ...
University of Minnesota Ph.D. dissertation. Major: Computer Science. Advisor: George Karypis. 1 comp...
Determining protein sequence similarity is an important task for protein classification and homology...
Design of protein structure comparison algorithm is an important research issue, having far reaching...
Structural biologists will perform a significant portion of their future work in silico due to incre...
Proteins are very complex physical objects consisting of thousands of atoms and hundreds of amino ac...
Abstract Background The task of computing highly accurate structural alignments of proteins in very ...
Kernel-based machine learning algorithms are versatile tools for biological sequence data analysis. ...
Abstract. We evaluated methods of protein classification that use ker-nels built from BLAST output p...