## S3 method for class 'default':
AbsoluteQuantification(data, total_protein_concentration = 1, ...)
## S3 method for class 'AbsoluteQuantification':
cval(object, cval_method = "mc", mcx = 1000, ...)
## S3 method for class 'AbsoluteQuantification':
print(x, ...)
## S3 method for class 'AbsoluteQuantification':
plot(x, ...)
## S3 method for class 'AbsoluteQuantification':
hist(x, ...)
## S3 method for class 'AbsoluteQuantification':
pivot(x, ...)
## S3 method for class 'AbsoluteQuantification':
export(x, file, ...)"run_id", "protein_id", "response", and "concentration" as generated by ProteinInference. The id column can be defined in any format, while the "responAbsoluteQuantification object."boot" (bootstrapping), "mc" (monte carlo cross-validation), "loo" (leaving-one-out).AbsoluteQuantification object.AbsoluteQuantification.If, on the other hand, the total protein concentration per cell is supplied in proteome-wide experiments, the absolute protein concentrations are estimated by normalization of the MS intensities or spectral counts to this number (Lu et al., 2006).
Ludwig, C., Claassen, M., Schmidt, A. & Aebersold, R. Estimation of Absolute Protein Quantities of Unlabeled Samples by Selected Reaction Monitoring Mass Spectrometry. Molecular & Cellular Proteomics 11, M111.013987-M111.013987 (2012).
Lu, P., Vogel, C., Wang, R., Yao, X. & Marcotte, E. M. Absolute protein expression profiling estimates the relative contributions of transcriptional and translational regulation. Nat Biotech 25, 117-124 (2006).
import, ProteinInference, ALF, APEX, apexFeatures, proteotypicdata(UPS2MS)
UPS2_SRM<-head(UPS2_SRM,100) # Remove this line for real applications
data_PI <- ProteinInference(UPS2_SRM)
data_AQ <- predict(cval(AbsoluteQuantification(data_PI),mcx=2))
print(data_AQ)
plot(data_AQ)
hist(data_AQ)
pivot(data_AQ)Run the code above in your browser using DataLab