Protein sequence motifs are gathering more and more attention in the field of sequence analysis. The recurring patterns have the potential to determine the conformation, function and activities of the proteins. In our work, we obtained protein sequence motifs which are universally conserved across protein family boundaries. Therefore, unlike most popular motif discovering algorithms, our input dataset is extremely large. As a result, an efficient technique is essential. We use two granular computing models, Fuzzy Improved K-means (FIK) and Fuzzy Greedy K-means (FGK), in order to efficiently generate protein motif information. After that, we develop an efficient Super Granular SVM Feature Elimination model to further extract the motif ...
grantor: University of TorontoThe protein structure prediction problem (PSP) is one of the...
Discrete motifs that discriminate functional classes of proteins are useful for classifying new sequ...
Limitations in techniques for the elucidation of protein function have led to an increasing gap betw...
Protein sequence motifs are gathering more and more attention in the field of sequence analysis. Th...
Abstract — Protein sequence motifs information is very important to the analysis of biologically sig...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
Biology has become a data‐intensive research field. Coping with the flood of data from the new genom...
Abstract: Protein motifs, which are specific regions and conserved regions, are found by comparing m...
Super-Secondary structure elements (super-SSEs) are the structurally conserved ensem-bles of seconda...
Protein sequence motifs are short conserved subsequences common to related protein sequences. Inform...
Motif recognition is a powerful homology based sequence analysis tool for clustering new protein seq...
Our primary focus in this study is the classification of protein sequences into functional families ...
Modern sequencing initiatives have uncovered a large number of protein sequence data. The exponentia...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
Biological motifs are defined as overly recurring sub-patterns in biological systems. Sequence motif...
grantor: University of TorontoThe protein structure prediction problem (PSP) is one of the...
Discrete motifs that discriminate functional classes of proteins are useful for classifying new sequ...
Limitations in techniques for the elucidation of protein function have led to an increasing gap betw...
Protein sequence motifs are gathering more and more attention in the field of sequence analysis. Th...
Abstract — Protein sequence motifs information is very important to the analysis of biologically sig...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
Biology has become a data‐intensive research field. Coping with the flood of data from the new genom...
Abstract: Protein motifs, which are specific regions and conserved regions, are found by comparing m...
Super-Secondary structure elements (super-SSEs) are the structurally conserved ensem-bles of seconda...
Protein sequence motifs are short conserved subsequences common to related protein sequences. Inform...
Motif recognition is a powerful homology based sequence analysis tool for clustering new protein seq...
Our primary focus in this study is the classification of protein sequences into functional families ...
Modern sequencing initiatives have uncovered a large number of protein sequence data. The exponentia...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
Biological motifs are defined as overly recurring sub-patterns in biological systems. Sequence motif...
grantor: University of TorontoThe protein structure prediction problem (PSP) is one of the...
Discrete motifs that discriminate functional classes of proteins are useful for classifying new sequ...
Limitations in techniques for the elucidation of protein function have led to an increasing gap betw...