POOE: predicting oomycete effectors based on a pre-trained large protein language model.
Miao ZhaoChenping LeiKewei ZhouYan HuangChen FuZiding ZhangPublished in: mSystems (2023)
In this work, we use the sequence representations from a pre-trained large protein language model (ProtTrans) as input and develop a Support Vector Machine-based method called POOE for predicting oomycete effectors. POOE could achieve a highly accurate performance in the independent test set, considerably outperforming existing oomycete effector prediction methods. We expect that this new bioinformatics tool will accelerate the identification of oomycete effectors and further guide the experimental efforts to interrogate the functional roles of effectors in plant-pathogen interaction.