When citing Effectidor please refer to:
Effectidor: an automated machine-learning-based web server for the prediction of type-III secretion system effectors
Wagner N., Avram O., Gold-Binshtok D., Zerah B., Teper D., & Pupko T. (2022)
Bioinformatics |
https://doi.org/10.1093/bioinformatics/btac087
When including the secretion signal feature please also refer to:
Natural language processing approach to model the secretion signal of type III effectors
Wagner N., Alburquerque M., Ecker N., Dotan E., Zerah B., Mendonca Pena M., Potnis N., & Pupko T. (2022)
Frontiers in Plant Science |
https://doi.org/10.3389/fpls.2022.1024405
The current version of Effectidor is
v1.05, derived from the T3Es dataset version.
The source code is available at:
https://github.com/naamawagner/Effectidor
Acknowledgements:
This study was supported in part by a fellowship from the
Edmond J. Safra Center for Bioinformatics at Tel Aviv University, a fellowship from the
Manna Center Program for Food Safety and Security at Tel Aviv University, and a fellowship from the
Dalia and Eli Hurvitz foundation.
Naama Wagner, Dafna Gold-Binshtok, Ben Zerah, Doron Teper, and
Tal Pupko developed the algorithmic pipeline.
Naama Wagner and Oren Avram developed the web server.