Prediction of novel mouse TLR9 agonists using a random forest approach.
Varun KhannaLei LiJohnson FungShoba RanganathanNikolai PetrovskyPublished in: BMC molecular and cell biology (2019)
We combined repeated random down-sampling with random forest to overcome the class imbalance problem and achieved promising results. Overall, we showed that the random forest algorithm outperformed other machine learning algorithms including support vector machines, shrinkage discriminant analysis, gradient boosting machine and neural networks. Due to its predictive performance and simplicity, the random forest technique is a useful method for prediction of mTLR9 ODN agonists.