4.5 Article

Deep learning neural network derivation and testing to distinguish acute poisonings

Journal

EXPERT OPINION ON DRUG METABOLISM & TOXICOLOGY
Volume 19, Issue 6, Pages 367-380

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/17425255.2023.2232724

Keywords

Deep learning; Machine learning; Poisoning; Toxicity; PyTorch; Keras

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This study developed a deep learning algorithm that predicts the most probable agent a poisoned patient was exposed to. The results showed that deep neural networks can potentially help in distinguishing the causative agent of acute poisoning, indicating their potential application value.
Introduction: Acute poisoning is a significant global health burden, and the causative agent is often unclear. The primary aim of this pilot study was to develop a deep learning algorithm that predicts the most probable agent a poisoned patient was exposed to from a pre-specified list of drugs.Research design & methods: Data were queried from the National Poison Data System (NPDS) from 2014 through 2018 for eight single-agent poisonings (acetaminophen, diphenhydramine, aspirin, calcium channel blockers, sulfonylureas, benzodiazepines, bupropion, and lithium). Two Deep Neural Networks (PyTorch and Keras) designed for multi-class classification tasks were applied.Results: There were 201,031 single-agent poisonings included in the analysis. For distinguishing among selected poisonings, PyTorch model had specificity of 97%, accuracy of 83%, precision of 83%, recall of 83%, and a F1-score of 82%. Keras had specificity of 98%, accuracy of 83%, precision of 84%, recall of 83%, and a F1-score of 83%. The best performance was achieved in the diagnosis of single-agent poisoning in diagnosing poisoning by lithium, sulfonylureas, diphenhydramine, calcium channel blockers, then acetaminophen, in PyTorch (F1-score = 99%, 94%, 85%, 83%, and 82%, respectively) and Keras (F1-score = 99%, 94%, 86%, 82%, and 82%, respectively).Conclusion: Deep neural networks can potentially help in distinguishing the causative agent of acute poisoning. This study used a small list of drugs, with polysubstance ingestions excluded. Reproducible source code and results can be obtained at https://github.com/ashiskb/npds-workspace.git.

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