4.7 Article

Effector-GAN: prediction of fungal effector proteins based on pretrained deep representation learning methods and generative adversarial networks

Journal

BIOINFORMATICS
Volume 38, Issue 14, Pages 3541-3548

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btac374

Keywords

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Funding

  1. National Natural Science Foundation of China [62102269, 62131004]
  2. China Postdoctoral Science Foundation [2021M690029]
  3. Foundation Project of Shenzhen Polytechnic [6022310029K]
  4. Special Science Foundation of Quzhou [2021D004]
  5. Natural Science Foundation of Jiangsu Higher Education Institutions of China [20KJB180012]

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In this study, deep representation learning methods and generative adversarial networks were used for fungal effector protein prediction, resulting in improved accuracy compared to previous methods.
Motivation: Phytopathogenic fungi secrete effector proteins to subvert host defenses and facilitate infection. Systematic analysis and prediction of candidate fungal effector proteins are crucial for experimental validation and biological control of plant disease. However, two problems are still considered intractable to be solved in fungal effector prediction: one is the high-level diversity in effector sequences that increases the difficulty of protein feature learning, and the other is the class imbalance between effector and non-effector samples in the training dataset. Results: In our study, pretrained deep representation learning methods are presented to represent multiple characteristics of sequences for predicting fungal effectors and generative adversarial networks are adapted to create synthetic feature samples to address the data imbalance problem. Compared with the state-of-the-art fungal effector prediction methods, Effector-GAN shows an overall improvement in accuracy in the independent test set.

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