MEET: Motif Elements Estimation Toolkit


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Documentation for package ‘MEET’ version 5.1.1

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align.clustalw Multiple sequence alignment by means of ClustalW
align.MEME Multiple sequence alignment by means of MEME.
align.muscle Multiple sequence alignment by means of Muscle (MUltiple Sequence Comparison by Log-Expectation)
Alignment To line up Transcription Factor Binding sites through Multiple Sequence Alignment (MSA)
BackgroundOrganism Probabilities of each nucleotide in the _Homo sapiens_ organism according to Thakurta et al.
CalculInformation Information content in each position of a set of aligned DNA sequences
CalculPSSM Position Specific Scoring Matrices from a set of aligned sequences
CalculPWM CalculPWM: To calculate Position Weight Matrix
CalculRedundancy CalculRedundancy: To calculate the redundancy
CalculScores Calcul Score of a Sequence, using a loggods matrix
CalculSimilarity Similarity Score between a Sequence and a PSSM model
chooseModel ChooseModel: Choose the best model
classMODEL classMODEL: To choose the model
ConstructModel A set of functions for training of motif discovery algorithms.
correction-class Correction for finite sample effect
correction.entropy Correction entropy from the Finite Sample Size Effect
correction.redundancy Correction redundancy from the Finite Sample Size Effect
correctionaprox Correction Entropy Approximate from the Finite Sample Size Effect.
CreateConsensus Consensus Sequence for a DNA motif
detection Detection: A set of functions for detection of TFBS
detector_1rOrdre_diff Detection of Transcription Factor Binding Sites Through Differential Renyi Entropy
detector_2nOrdre Detection of Transcription Factor Binding Sites Through Parametric PredictDivergence
detector_2nOrdre_init Detection of Transcription Factor Binding Sites Through Parametric PredictDivergence
diffInstructions The measurement of the variation of the total redundancy
divergence.Renyi Renyi divergence
divergence.Shannon Divergencia.Shannon: Mutual Information
DivergenceDROSOPHILA DivergenceDROSOPHILA: Given a Transcription factor chooses the model for a specific organism and method.
DivergenceHOMO DivergenceHOMO: Given a Transcription factor chooses the model for a specific organism and method.
DivergenceMUS DivergenceMUS: Given a Transcription factor chooses the model for a specific organism and method.
DivergenceRATTUS DivergenceRATTUS: Given a Transcription factor chooses the model for a specific organism and method.
entropy.corrected Correction of the Finite Sample Size Effect
entropy.joint To calculate joint entropy
entropy.Renyi Renyi Entropy
entropy.Shannon Shannon Entropy
EntropyDROSOPHILA EntropyDROSOPHILA: Given a Transcription factor chooses the model for a specific organism and method.
EntropyHOMO EntropyHOMO: Given a Transcription factor chooses the model for a specific organism and method.
EntropyMUS EntropyMUS: Given a Transcription factor chooses the model for a specific organism and method.
EntropyRATTUS EntropyRATTUS: Given a Transcription factor chooses the model for a specific organism and method.
Hmemory Library of entropy values
Hread To read Entropy values
iicc A set of initial conditions
JacksonParameters JacksonParameters: To calculates the parameters needed to transform a Q-residual to a confidence interval
joint.probability Joint Probability
kfold.Divergence Leave-one-out cross-validation for parametric divergence (ITEME).
kfold.Entropy Leave-one-out cross-validation for Renyi entropy (ITEME)
kfold.MATCH MATCH validation process
kfold.MDscan Leave-one-out cross-validation for MDscan.
kfold.MEME Leave-one-out cross-validation for MEME
kfold.PCA PCA
kfold.transMEME Leave-one-out cross-validation for MEME/MAST through training.matrix aligned with MUSCLE or CLUSTALW.
MEET MEET: Motif Elements Estimation Toolkit
MImemory Library of PredictDivergence values
MIread To read PredictDivergence values
Model-class A set of Models for the detection
ModelDivergence To create Model Divergence
ModelEntropy To create Model Entropy
ModelMATCH Match algorithm to detect TFBS in a sequence
ModelMDscan MDscan algortihm to detect TFBS within a sequence
ModelMEME MEME algortihm to detect TFBS within a sequence
ModelPCA PCA model for a set of TFBS
Models To create Detection Model
ModeltransMEME To create Model transMEME
motif.mast MEME format to training matrix
numericalDNA Conversion of nucleotides to numerical vectors
organism Probability for each nucleotide according to different organism
PCanalysis PC analysis on numerical DNA sequences
PredictDivergence A set of functions for detection of Transcription Factor Binding Sites by means of Divergence
PredictEntropy PredictEntropy: Detection of Transcription Factor Binding Sites by means of Renyi entropy
Prediction To detect Transcription Factor Binding sites by means of a model
PredictMATCH MATCH algorithm to detect TFBS in a sequence
PredictMDscan MDscan algorithm to detect TFBS in a sequence
PredictMEME MEME algorithm to detect TFBS in a sequence
PredictPCA Q-residuals detection of TFBS, using a principal components model
PredicttransMEME MAST algorithm to detect TFBS in a sequence
Prob Probabilities of each nucleotide in the _Homo sapiens_ organism according to Thakurta et al.
probability Probability
probability.couple Background joint probability
pvalue P value
q Renyi Order
QresidualsDROSOPHILA QresidualsDROSOPHILA: Given a Transcription factor chooses the model for a specific organism and method.
QresidualsHOMO QresidualsHOMO: Given a Transcription factor chooses the model for a specific organism and method.
QresidualsMUS QresidualsMUS: Given a Transcription factor chooses the model for a specific organism and method.
QresidualsRATTUS QresidualsRATTUS: Given a Transcription factor chooses the model for a specific organism and method.
QtoJackson Q to Jackson: transform a Q-residual into a confidence interval
Read.aligned Read nucleotide sequences
read.mast Read output mast
readMEME Read MEME motifs and consensus sequences
ReadSequence Convert a DNA sequence in a numerical DNA matrix
redundancy To calculate redundancy
ROCmodel To choose the best paramater for a model
run.read.MDscan Run and read MDscan on validation
scoreMDscan Output MDscan method
Sequence A sequence with binding evidence.
standardout Standard output detector
TFlogodds Logodds matrix
TranscriptionFactor A set of aligned binding sites sequences
writeMEME Write a training matrix in a MEME/MAST format
writeResultsHTML Writes the results of a MEET detection to HTML.