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PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning.

Publication ,  Journal Article
Yang, R; Zhu, Z; Wang, F; Yang, G
Published in: J Hazard Mater
April 5, 2025

Ecotoxicity assessments, which rely on animal testing, face serious challenges, including high costs and ethical concerns. Computational toxicology presents a promising alternative; nevertheless, existing predictive models encounter difficulties such as limited datasets and pronounced overfitting. To address these issues, we propose a framework for predicting pesticide ecotoxicity using graph contrastive learning (PE-GCL). By pre-training on large-scale unlabeled compounds, the PE-GCL captured the intrinsic regulation of molecules. This knowledge is then transferred to specific downstream tasks, thereby enhancing the model generalization in scenarios with small sample sizes. Performance evaluation showed that the PE-GCL outperformed traditional supervised models across most prediction tasks, whereas independent external validation confirmed its superior predictive accuracy for unseen data. Furthermore, interpretability was incorporated to elucidate potential correlations between ecotoxicity and molecular substructures. The trained models were deployed on a publicly accessible web server (https://dpai.ccnu.edu.cn/PERA/) to facilitate the use of the proposed framework.

Duke Scholars

Published In

J Hazard Mater

DOI

EISSN

1873-3336

Publication Date

April 5, 2025

Volume

487

Start / End Page

137261

Location

Netherlands

Related Subject Headings

  • Strategic, Defence & Security Studies
  • Pesticides
  • Machine Learning
  • Ecotoxicology
  • 41 Environmental sciences
  • 40 Engineering
  • 34 Chemical sciences
  • 09 Engineering
  • 05 Environmental Sciences
  • 03 Chemical Sciences
 

Citation

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Yang, R., Zhu, Z., Wang, F., & Yang, G. (2025). PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning. J Hazard Mater, 487, 137261. https://doi.org/10.1016/j.jhazmat.2025.137261
Yang, Ruoqi, Ziling Zhu, Fan Wang, and Guangfu Yang. “PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning.J Hazard Mater 487 (April 5, 2025): 137261. https://doi.org/10.1016/j.jhazmat.2025.137261.
Yang R, Zhu Z, Wang F, Yang G. PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning. J Hazard Mater. 2025 Apr 5;487:137261.
Yang, Ruoqi, et al. “PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning.J Hazard Mater, vol. 487, Apr. 2025, p. 137261. Pubmed, doi:10.1016/j.jhazmat.2025.137261.
Yang R, Zhu Z, Wang F, Yang G. PE-GCL: Advancing pesticide ecotoxicity prediction with graph contrastive learning. J Hazard Mater. 2025 Apr 5;487:137261.
Journal cover image

Published In

J Hazard Mater

DOI

EISSN

1873-3336

Publication Date

April 5, 2025

Volume

487

Start / End Page

137261

Location

Netherlands

Related Subject Headings

  • Strategic, Defence & Security Studies
  • Pesticides
  • Machine Learning
  • Ecotoxicology
  • 41 Environmental sciences
  • 40 Engineering
  • 34 Chemical sciences
  • 09 Engineering
  • 05 Environmental Sciences
  • 03 Chemical Sciences