Motif recognition is a powerful homology based sequence analysis tool for clustering new protein sequences into different families based on characteristic motifs. Compared to BLAST, these approaches typically have lower false positive rates and can reveal more remotely related family members. However, the current motif databases do not cover all the sequences in protein sequence databases. One of the major reasons for the low coverage of motif databases is that there is only a small set of known member sequences available for constructing protein motifs for many gene families. I have designed a new algorithm, mFISHER , to detect protein motifs from only 2-5 known member sequences by artificial evolution of given sequences based on a positi...
[[abstract]]Protein motifs, which are specific regions and conserved regions, are found by comparing...
Biological motifs are defined as overly recurring sub-patterns in biological systems. Sequence motif...
AbstractLinking similar proteins structurally is a challenging task that may help in finding the nov...
Protein sequence motifs are gathering more and more attention in the field of sequence analysis. Th...
*Background:* Methods for finding overrepresented sequence motifs are useful in several key areas of...
Analysis of sequence homology has always played a major role in the understanding of biological fact...
Biology has become a data‐intensive research field. Coping with the flood of data from the new genom...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
The continued integration of the computational and biological sciences has revolutionized genomic an...
Generating motifs from known active sites and matching those motifs to an uncharacterized protein is...
Motivation Motif-HMM (mHMM) scanning has been shown to possess unique advantages over standardly use...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
Abstract Background Discovery of functionally signifi...
AbstractDetection of over-represented motifs corresponding to known TFBSs (Transcription Factor Bind...
Abstract: Protein motifs, which are specific regions and conserved regions, are found by comparing m...
[[abstract]]Protein motifs, which are specific regions and conserved regions, are found by comparing...
Biological motifs are defined as overly recurring sub-patterns in biological systems. Sequence motif...
AbstractLinking similar proteins structurally is a challenging task that may help in finding the nov...
Protein sequence motifs are gathering more and more attention in the field of sequence analysis. Th...
*Background:* Methods for finding overrepresented sequence motifs are useful in several key areas of...
Analysis of sequence homology has always played a major role in the understanding of biological fact...
Biology has become a data‐intensive research field. Coping with the flood of data from the new genom...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
The continued integration of the computational and biological sciences has revolutionized genomic an...
Generating motifs from known active sites and matching those motifs to an uncharacterized protein is...
Motivation Motif-HMM (mHMM) scanning has been shown to possess unique advantages over standardly use...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
Abstract Background Discovery of functionally signifi...
AbstractDetection of over-represented motifs corresponding to known TFBSs (Transcription Factor Bind...
Abstract: Protein motifs, which are specific regions and conserved regions, are found by comparing m...
[[abstract]]Protein motifs, which are specific regions and conserved regions, are found by comparing...
Biological motifs are defined as overly recurring sub-patterns in biological systems. Sequence motif...
AbstractLinking similar proteins structurally is a challenging task that may help in finding the nov...