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 Using the DPC |
dpcImpute.default | Quantify Proteins Using the DPC |
dpcImpute.EList | Quantify Proteins Using the DPC |
dpcImputeHyperparam | Estimate Hyperparameters for DPC-Quant |
dpcQuant | Quantify Proteins Using the DPC |
dpcQuant.default | Quantify Proteins Using the DPC |
dpcQuant.EList | Quantify Proteins Using the DPC |
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 |
plotPeptides | Plot Peptide Log-Intensities for One Protein |
plotPeptides.default | Plot Peptide Log-Intensities for One Protein |
plotPeptides.EList | Plot Peptide Log-Intensities for One Protein |
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 |