Quantification and Differential Analysis of Proteomics Data


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Documentation for package ‘limpa’ version 1.0.2

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limpa-package Linear Models for Proteomics Data (Accounting for Missing Values)
completeMomentsON Complete Distribution Moments from Observed Normal Model
dpc Detection Probability Curve Assuming Observed Normal Model
dpcCN Detection Probability Curve Assuming Complete Normal Model
dpcDE Fit Linear Model With Precision Weights
dpcImpute Quantify Proteins
dpcImpute.default Quantify Proteins
dpcImpute.EList Quantify Proteins
dpcImputeHyperparam Estimate Hyperparameters for DPC-Quant
dpcQuant Quantify Proteins
dpcQuant.default Quantify Proteins
dpcQuant.EList Quantify Proteins
dpcQuantHyperparam Estimate Hyperparameters for DPC-Quant
dztbinom Zero-Truncated Binomial Distribution
estimateDPCIntercept Estimate DPC Intercept
expTiltByColumns Impute Missing Values by Exponential Tilting
expTiltByRows Impute Missing Values by Exponential Tilting
filterCompoundProteins Filtering Based On Protein Annotation
filterCompoundProteins.default Filtering Based On Protein Annotation
filterCompoundProteins.EList Filtering Based On Protein Annotation
filterCompoundProteins.EListRaw Filtering Based On Protein Annotation
filterNonProteotypicPeptides Filtering Based On Protein Annotation
filterNonProteotypicPeptides.default Filtering Based On Protein Annotation
filterNonProteotypicPeptides.EList Filtering Based On Protein Annotation
filterNonProteotypicPeptides.EListRaw Filtering Based On Protein Annotation
filterSingletonPeptides Filtering Based On Protein Annotation
filterSingletonPeptides.default Filtering Based On Protein Annotation
filterSingletonPeptides.EList Filtering Based On Protein Annotation
filterSingletonPeptides.EListRaw Filtering Based On Protein Annotation
fitZTLogit Fit Capped Logistic Regression To Zero-Truncated Binomial Data
imputeByExpTilt Impute Missing Values by Exponential Tilting
imputeByExpTilt.default Impute Missing Values by Exponential Tilting
imputeByExpTilt.EList Impute Missing Values by Exponential Tilting
imputeByExpTilt.EListRaw Impute Missing Values by Exponential Tilting
limpa Linear Models for Proteomics Data (Accounting for Missing Values)
observedMomentsCN Observed Distribution Moments from Complete Normal Model
peptides2ProteinBFGS DPC-Quant for One Protein
peptides2ProteinNewton DPC-Quant for One Protein
peptides2Proteins DPC-Quant for Many Proteins
peptides2ProteinWithoutNAs DPC-Quant for One Protein
plotDPC Plot the Detection Probability Curve
plotMDSUsingSEs Multidimensional Scaling Plot of Gene Expression Profiles, Using Standard Errors
plotProtein Plot protein summary with error bars by DPC-Quant
proteinResVarFromCompletePeptideData Protein Residual Variances From Complete Peptide Data
pztbinom Zero-Truncated Binomial Distribution
readDIANN Read Peptide-Precursor Intensities From DIA-NN Output
readSpectronaut Read Peptide-Precursor Intensities From Spectronaut Output
removeNARows Remove Entirely NA Rows from Matrix or EList
removeNARows.default Remove Entirely NA Rows from Matrix or EList
removeNARows.EList Remove Entirely NA Rows from Matrix or EList
simCompleteDataCN Simulate Complete Data From Complete or Observed Normal Models
simCompleteDataON Simulate Complete Data From Complete or Observed Normal Models
simProteinDataSet Simulate Peptide Data with NAs By Complete Normal Model
voomaLmFitWithImputation Apply vooma-lmFit Pipeline With Automatic Estimation of Sample Weights and Block Correlation
ZeroTruncatedBinomial Zero-Truncated Binomial Distribution