Description Usage Arguments Value Author(s) Examples
A function to predict the drug sensitivity with multi-class drug-target interaction data using the two.sided TIMMA model
| 1 | timmaCategory1(drug_target_profile, sens, loo = TRUE, class)
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| drug_target_profile | the drug-target interaction data. See  | 
| sens | a drug sensitivity vector. | 
| loo | a logical value indicating whether to use the leave-one-out cross-validation in the model selection process. By default, loo = TRUE. | 
| class | the number of classes in the drug-target interaction data | 
A list containing the following components:
| dummy | the predicted efficacy for target combinations that can be found from the training data | 
| error | the prediction errors | 
| prediction | predicted drug sensitivity | 
Liye He liye.he@helsinki.fi
| 1 2 3 | data(tyner_interaction_multiclass)
data(tyner_sensitivity)
results<-timmaCategory1(tyner_interaction_multiclass[, 1:6], tyner_sensitivity[,1], class = 6)
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