Abstract Background Scoring DNA sequences against Position Weight Matrices (PWMs) is a widely adopted method to identify putative transcription factor binding sites. While common bioinformatics tools produce scores that can reflect the binding strength between a specific transcription factor and the DNA, these scores are not directly comparable between different transcription factors. Other methods, including p-value associated approaches (Touzet H, Varré J-S. Efficient and accurate p-value computation for position weight matrices. Algorithms Mol Biol. 2007;2(1510.1186):1748–7188), provide more rigorous ways to identify potential binding sites, but their results are difficult to interpret in te...
Transcription factor-DNA interactions, central to cellular regulation and control, are commonly desc...
Ab initio methods of DNA regulatory sequence region prediction known as transcription factor binding...
Position-specific scoring matrices (PSSMs) are routinely used to predict transcription factor (TF)-b...
Background: Scoring DNA sequences against PositionWeight Matrices (PWMs) is a widely adopted method ...
Position weight matrices (PWMs) have become a tool of choice for the identification of transcription...
Background: Positional weight matrix (PWM) is a de facto standard model to describe transcription f...
Identifying transcription factor binding sites (TFBS) in silico is key in understanding gene regulat...
is key in understanding gene regulation. TFBS are string patterns that exhibit some variability, co...
Position-weight matrices (PWMs) are broadly used to locate transcription factor binding sites in DNA...
Computational identi®cation of transcription factor binding sites is an important research area of c...
The new technology of protein binding microarrays (PBMs) allows simultaneous measurement of the bind...
In biological sequence research, the positional weight matrix (PWM) is often used to search for puta...
The new technology of protein binding microarrays (PBMs) allows simultaneous measurement of the bind...
International audienceBackground: Positional weight matrix (PWM) is a de facto standard model to des...
Transcription factor-DNA interactions, central to cellular regulation and control, are commonly desc...
Transcription factor-DNA interactions, central to cellular regulation and control, are commonly desc...
Ab initio methods of DNA regulatory sequence region prediction known as transcription factor binding...
Position-specific scoring matrices (PSSMs) are routinely used to predict transcription factor (TF)-b...
Background: Scoring DNA sequences against PositionWeight Matrices (PWMs) is a widely adopted method ...
Position weight matrices (PWMs) have become a tool of choice for the identification of transcription...
Background: Positional weight matrix (PWM) is a de facto standard model to describe transcription f...
Identifying transcription factor binding sites (TFBS) in silico is key in understanding gene regulat...
is key in understanding gene regulation. TFBS are string patterns that exhibit some variability, co...
Position-weight matrices (PWMs) are broadly used to locate transcription factor binding sites in DNA...
Computational identi®cation of transcription factor binding sites is an important research area of c...
The new technology of protein binding microarrays (PBMs) allows simultaneous measurement of the bind...
In biological sequence research, the positional weight matrix (PWM) is often used to search for puta...
The new technology of protein binding microarrays (PBMs) allows simultaneous measurement of the bind...
International audienceBackground: Positional weight matrix (PWM) is a de facto standard model to des...
Transcription factor-DNA interactions, central to cellular regulation and control, are commonly desc...
Transcription factor-DNA interactions, central to cellular regulation and control, are commonly desc...
Ab initio methods of DNA regulatory sequence region prediction known as transcription factor binding...
Position-specific scoring matrices (PSSMs) are routinely used to predict transcription factor (TF)-b...