Motivation Accurate knowledge of the genome-wide binding of transcription factors in a particular cell type or under a particular condition is necessary for understanding transcriptional regulation. Using epigenetic data such as histone modification and DNase I, accessibility data has been shown to improve motif-based in silico methods for predicting such binding, but this approach has not yet been fully explored. Results We describe a probabilistic method for combining one or more tracks of epigenetic data with a standard DNA sequence motif model to improve our ability to identify active transcription factor binding sites (TFBSs). We convert each data type into a position-specific probabilistic prior and combine these priors with a traditi...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
<div><p>Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms...
The identification of cis-acting elements on DNA is crucial for the understanding of the complex reg...
<p>Transcriptional regulation is the primary mechanism employed by the cell to ensure coordinated ex...
MOTIVATION: The identification of active transcriptional regulatory elements is crucial to understan...
In computational methods, position weight matrices (PWMs) are commonly applied for transcription fac...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
Information about the binding preferences of many transcription factors is known and characterized b...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
In this paper we apply machine learning to the task of predicting transcription factor binding sites...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
An important problem in molecular biology is to build a complete understanding of transcriptional re...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
Background: Understanding the mechanisms by which transcription factors (TF) are recruited to their ...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
<div><p>Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms...
The identification of cis-acting elements on DNA is crucial for the understanding of the complex reg...
<p>Transcriptional regulation is the primary mechanism employed by the cell to ensure coordinated ex...
MOTIVATION: The identification of active transcriptional regulatory elements is crucial to understan...
In computational methods, position weight matrices (PWMs) are commonly applied for transcription fac...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
Information about the binding preferences of many transcription factors is known and characterized b...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
In this paper we apply machine learning to the task of predicting transcription factor binding sites...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
An important problem in molecular biology is to build a complete understanding of transcriptional re...
Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene...
Background: Understanding the mechanisms by which transcription factors (TF) are recruited to their ...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
Transcription factors (TFs) and epigenetic modifica-tions play crucial roles in the regulation of ge...
<div><p>Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms...