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Bioinformatics • Vol 40 • No 7
GraphADT: empowering interpretable predictions of acute dermal toxicity with multi-view graph pooling and structure remapping
July 2024 • Xinqian Ma, Xiangzheng Fu, Tao Wang, Linlin Zhuo, Quan Zou
Abstract Motivation Accurate prediction of acute dermal toxicity (ADT) is essential for the safe and effective development of contact drugs. Currently, graph neural networks, a form of deep learning technology, accurately model the structure of compound molecules, enhancing predictions of their ADT. However, many existing methods emphasize atom-level information transfer and overlook crucial data conveyed by molecular bonds and their interrelationships. Additionally, these methods often generate “equal” node repre…
Computer Science
Artificial Intelligence
Theoretical Computer Science
Machine Learning