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决策树和机器学习模型在丁丙诺啡暴露结局预测中的作用:美国超过 14000 例患者的全国性分析。

The role of decision tree and machine learning models for outcome prediction of bupropion exposure: A nationwide analysis of more than 14 000 patients in the United States.

机构信息

Michigan Poison & Drug Information Center, School of Medicine, Wayne State University, Detroit, Michigan, USA.

Medical Toxicology and Drug Abuse Research Center (MTDRC), Birjand University of Medical Sciences (BUMS), Birjand, Iran.

出版信息

Basic Clin Pharmacol Toxicol. 2023 Jul;133(1):98-110. doi: 10.1111/bcpt.13865. Epub 2023 Apr 14.

Abstract

Bupropion is widely used for the treatment of major depressive disorder and for smoking cessation assistance. Unfortunately, there are no practical systems to assist clinicians or poison centres in predicting outcomes based on clinical features. Hence, the purpose of this study was to use a decision tree approach to inform early diagnosis of outcomes secondary to bupropion overdose. This study utilized a dataset from the National Poison Data System, a 6-year retrospective cohort study on toxic exposures and patient outcomes. A machine learning algorithm (decision tree) was applied to the dataset using the sci-kit-learn library in Python. Shapley Additive exPlanations (SHAP) were used as an explainable method. Comparative analysis was performed using random forest (RF), Gradient Boosting classification, eXtreme Gradient Boosting, Light Gradient Boosting (LGM) and voting ensembling. ROC curve and precision-recall curve were used to analyse the performance of each model. LGM and RF demonstrated the highest performance to predict outcome of bupropion exposure. Multiple seizures, conduction disturbance, intentional exposure, and confusion were the most influential factors to predict the outcome of bupropion exposure. Coma and seizure, including single, multiple and status, were the most important factors to predict major outcomes.

摘要

安非他酮被广泛用于治疗重度抑郁症和辅助戒烟。然而,目前还没有实用的系统可以帮助临床医生或中毒中心根据临床特征来预测结果。因此,本研究旨在使用决策树方法来辅助早期诊断安非他酮过量的结果。本研究利用了国家中毒数据系统(National Poison Data System)的数据,这是一项针对有毒物质暴露和患者结果的 6 年回顾性队列研究。使用 Python 中的 sci-kit-learn 库将机器学习算法(决策树)应用于数据集。使用 Shapley Additive exPlanations (SHAP) 作为可解释方法。使用随机森林(RF)、梯度提升分类、极端梯度提升、Light Gradient Boosting (LGM) 和投票集成进行比较分析。使用 ROC 曲线和精度-召回曲线分析每个模型的性能。LGM 和 RF 表现出最高的性能来预测安非他酮暴露的结果。多次抽搐、传导障碍、故意暴露和意识障碍是预测安非他酮暴露结果的最具影响力的因素。昏迷和抽搐,包括单次、多次和持续,是预测主要结果的最重要因素。

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