The complexity of the global organization and internal structures of motifs in higher eukaryotic organisms raises significant challenges for motif detection techniques. To achieve successful de novo motif detection it is necessary to model the complex dependencies within and among motifs and incorporate biological prior knowledge. In this paper, we present LOGOS, an integrated LOcal and GlObal motif Sequence model for biopolymer sequences, which provides a principled framework for developing, modularizing, extending and computing expressive motif models for complex biopolymer sequence analysis. LOGOS consists of two interacting submodels: HMDM, a local alignment model capturing biological prior knowledge and positional dependence within th...
Short linear motifs (SLiMs) in proteins are self-sufficient functional sequences that specify intera...
This master thesis is a Ph.D. research plan for motif discovery in biological sequences, and consist...
We address the problem of de novo motif identification. That is, given a set of DNA sequences we try...
this paper, we present LOGOS,anintegratedLOcal and GlObal motif Sequence model for biopolymer sequ...
We propose a dynamic Bayesian model for motifs in biopolymer sequences which captures rich biologica...
Abstract Background Discovery of functionally significant short, statistically overrepresented subse...
Motivation: Identification of motifs in biological sequences is a challenging problem because such m...
Motivation: Finding common patterns, motifs, from a set of promoter regions of coregulated genes is ...
: The algorithm described in this paper discovers one or more motifs in a collection of DNA or prote...
International audienceShort linear motifs (SLiMs) in proteins are self-sufficient functional sequenc...
Motivation: Finding common patterns, motifs, from a set of promoter regions of coregulated genes is ...
For the motif discovery problem of DNA or protein sequences, a greedy two-stage Gibbs sampling algor...
We address the problem of de novo motif identification. That is, given a set of DNA sequences we try...
The algorithm described in this paper discovers one or more motifs in a collection of DNA or protein...
Abstract Background De novo prediction of Transcription Factor Binding Sites (TFBS) using computatio...
Short linear motifs (SLiMs) in proteins are self-sufficient functional sequences that specify intera...
This master thesis is a Ph.D. research plan for motif discovery in biological sequences, and consist...
We address the problem of de novo motif identification. That is, given a set of DNA sequences we try...
this paper, we present LOGOS,anintegratedLOcal and GlObal motif Sequence model for biopolymer sequ...
We propose a dynamic Bayesian model for motifs in biopolymer sequences which captures rich biologica...
Abstract Background Discovery of functionally significant short, statistically overrepresented subse...
Motivation: Identification of motifs in biological sequences is a challenging problem because such m...
Motivation: Finding common patterns, motifs, from a set of promoter regions of coregulated genes is ...
: The algorithm described in this paper discovers one or more motifs in a collection of DNA or prote...
International audienceShort linear motifs (SLiMs) in proteins are self-sufficient functional sequenc...
Motivation: Finding common patterns, motifs, from a set of promoter regions of coregulated genes is ...
For the motif discovery problem of DNA or protein sequences, a greedy two-stage Gibbs sampling algor...
We address the problem of de novo motif identification. That is, given a set of DNA sequences we try...
The algorithm described in this paper discovers one or more motifs in a collection of DNA or protein...
Abstract Background De novo prediction of Transcription Factor Binding Sites (TFBS) using computatio...
Short linear motifs (SLiMs) in proteins are self-sufficient functional sequences that specify intera...
This master thesis is a Ph.D. research plan for motif discovery in biological sequences, and consist...
We address the problem of de novo motif identification. That is, given a set of DNA sequences we try...