4.2 Article

Utility of support vector machine and decision tree to identify the prognosis of metformin poisoning in the United States: analysis of National Poisoning Data System

Journal

BMC PHARMACOLOGY & TOXICOLOGY
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s40360-022-00588-0

Keywords

Metformin; National Poison Data System; Support vector machine; Decision tree

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This study aimed to predict the outcome of metformin poisoning using machine learning algorithms. The results showed that acidosis, hypoglycemia, electrolyte abnormality, and other factors are important determinants in predicting the outcome. The decision tree and SVM models showed good accuracy in predicting the prognosis, which can assist clinicians in managing and following up with poisoning cases.
Background With diabetes incidence growing globally and metformin still being the first-line for its treatment, metformin's toxicity and overdose have been increasing. Hence, its mortality rate is increasing. For the first time, we aimed to study the efficacy of machine learning algorithms in predicting the outcome of metformin poisoning using two well-known classification methods, including support vector machine (SVM) and decision tree (DT). Methods This study is a retrospective cohort study of National Poison Data System (NPDS) data, the largest data repository of poisoning cases in the United States. The SVM and DT algorithms were developed using training and test datasets. We also used precision-recall and ROC curves and Area Under the Curve value (AUC) for model evaluation. Results Our model showed that acidosis, hypoglycemia, electrolyte abnormality, hypotension, elevated anion gap, elevated creatinine, tachycardia, and renal failure are the most important determinants in terms of outcome prediction of metformin poisoning. The average negative predictive value for the decision tree and SVM models was 92.30 and 93.30. The AUC of the ROC curve of the decision tree for major, minor, and moderate outcomes was 0.92, 0.92, and 0.89, respectively. While this figure of SVM model for major, minor, and moderate outcomes was 0.98, 0.90, and 0.82, respectively. Conclusions In order to predict the prognosis of metformin poisoning, machine learning algorithms might help clinicians in the management and follow-up of metformin poisoning cases.

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