Transformer-based toxin-protein interaction analysis prioritizes airborne particulate matter components with potential adverse health effects
Yan Zhu, Shihao Wang, Yong Han, Yao Lu, Shulan Qiu, Ling Jin,, Xiangdong Li, Weixiong Zhang

TL;DR
This paper introduces tipFormer, a transformer-based deep learning model that predicts interactions between airborne particulate matter toxins and human proteins, aiding in understanding pollution's health effects.
Contribution
The paper presents a novel transformer-based model, tipFormer, which accurately predicts toxin-protein interactions, advancing toxicology research and air quality assessment.
Findings
tipFormer effectively predicts toxin-protein interactions
The model captures complex interaction mechanisms
It supports high-throughput hazard prioritization
Abstract
Air pollution, particularly airborne particulate matter (PM), poses a significant threat to public health globally. It is crucial to comprehend the association between PM-associated toxic components and their cellular targets in humans to understand the mechanisms by which air pollution impacts health and to establish causal relationships between air pollution and public health consequences. Although many studies have explored the impact of PM on human health, the understanding of the association between toxins and the associated targets remain limited. Leveraging cutting-edge deep learning technologies, we developed tipFormer (toxin-protein interaction prediction based on transformer), a novel deep-learning tool for identifying toxic components capable of penetrating human cells and instigating pathogenic biological activities and signaling cascades. Experimental results show that…
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Taxonomy
TopicsHealth, Environment, Cognitive Aging
