rf_trn | R Documentation |
rf_trn allows assessing the final DEGs through a machine learning step by using Random Forest in a cross validation process. This function applies a cross validation of n folds with representation of all classes in each fold. The 80% of the data are used for training and the 20% for test.
rf_trn(data, labels, vars_selected, numFold = 10)
data |
The data parameter is an expression matrix or data.frame that contains the genes in the columns and the samples in the rows. |
labels |
A vector or factor that contains the labels for each of the samples in the data object. |
vars_selected |
The genes selected to classify by using them. It can be the final DEGs extracted with the function |
numFold |
The number of folds to carry out in the cross validation process. |
A list that contains four objects. The confusion matrix for each fold, the accuracy, the sensitibity and the specificity for each fold and each genes.
dir <- system.file("extdata", package="KnowSeq") load(paste(dir,"/expressionExample.RData",sep = "")) rf_trn(t(DEGsMatrix)[,1:10],labels,rownames(DEGsMatrix)[1:10],2)
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