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Dumpling GNN: Hybrid GNN Enables Better ADC Payload Activity Prediction Based on Chemical Structure

About

Antibody-drug conjugates (ADCs) have emerged as a promising class of targeted cancer therapeutics, but the design and optimization of their cytotoxic payloads remain challenging. This study introduces DumplingGNN, a novel hybrid Graph Neural Network architecture specifically designed for predicting ADC payload activity based on chemical structure. By integrating Message Passing Neural Networks (MPNN), Graph Attention Networks (GAT), and GraphSAGE layers, DumplingGNN effectively captures multi-scale molecular features and leverages both 2D topological and 3D structural information. We evaluate DumplingGNN on a comprehensive ADC payload dataset focusing on DNA Topoisomerase I inhibitors, as well as on multiple public benchmarks from MoleculeNet. DumplingGNN achieves state-of-the-art performance across several datasets, including BBBP (96.4\% ROC-AUC), ToxCast (78.2\% ROC-AUC), and PCBA (88.87\% ROC-AUC). On our specialized ADC payload dataset, it demonstrates exceptional accuracy (91.48\%), sensitivity (95.08\%), and specificity (97.54\%). Ablation studies confirm the synergistic effects of the hybrid architecture and the critical role of 3D structural information in enhancing predictive accuracy. The model's strong interpretability, enabled by attention mechanisms, provides valuable insights into structure-activity relationships. DumplingGNN represents a significant advancement in molecular property prediction, with particular promise for accelerating the design and optimization of ADC payloads in targeted cancer therapy development.

Shengjie Xu, Lingxi Xie• 2024

Related benchmarks

TaskDatasetResultRank
Molecular property predictionMoleculeNet BBBP (scaffold)
ROC AUC96.4
117
Molecular property predictionMoleculeNet SIDER (scaffold)
ROC-AUC0.74
97
Molecular property predictionMoleculeNet BACE (scaffold)
ROC-AUC88.2
87
Molecular property predictionMoleculeNet HIV (scaffold)
ROC AUC79.4
66
Molecular property predictionMoleculeNet Tox21 (scaffold)
ROC-AUC82.3
48
Molecular property predictionMoleculeNet ClinTox (scaffold)
ROC-AUC0.959
45
Molecular property predictionToxCast MoleculeNet (scaffold)
ROC AUC0.782
17
Molecular property predictionPCBA MoleculeNet (scaffold)
ROC-AUC88.87
13
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