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首页> 外文期刊>Journal of Korean medical science. >Prediction of Return-to-original-work after an Industrial Accident Using Machine Learning and Comparison of Techniques
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Prediction of Return-to-original-work after an Industrial Accident Using Machine Learning and Comparison of Techniques

机译:使用机器学习对工业事故后的原工作返回进行预测和技术比较

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摘要

Background Many studies have tried to develop predictors for return-to-work (RTW). However, since complex factors have been demonstrated to predict RTW, it is difficult to use them practically. This study investigated whether factors used in previous studies could predict whether an individual had returned to his/her original work by four years after termination of the worker's recovery period. Methods An initial logistic regression analysis of 1,567 participants of the fourth Panel Study of Worker's Compensation Insurance yielded odds ratios. The participants were divided into two subsets, a training dataset and a test dataset. Using the training dataset, logistic regression, decision tree, random forest, and support vector machine models were established, and important variables of each model were identified. The predictive abilities of the different models were compared. Results The analysis showed that only earned income and company-related factors significantly affected return-to-original-work (RTOW). The random forest model showed the best accuracy among the tested machine learning models; however, the difference was not prominent. Conclusion It is possible to predict a worker's probability of RTOW using machine learning techniques with moderate accuracy. Go to: Graphical Abstract
机译:背景技术许多研究试图开发预测工作返回(RTW)的指标。但是,由于已经证明了复杂因素可以预测RTW,因此很难实际使用它们。这项研究调查了先前研究中使用的因素是否可以预测一个人在工人康复期结束后的四年内是否已经恢复了原来的工作。方法对第四次工人赔偿保险小组研究的1,567名参与者进行初步logistic回归分析,得出比值比。参与者分为两个子集,一个训练数据集和一个测试数据集。使用训练数据集,建立了逻辑回归,决策树,随机森林和支持向量机模型,并确定了每个模型的重要变量。比较了不同模型的预测能力。结果分析表明,只有收入和公司相关因素显着影响原始工作回报(RTOW)。在测试的机器学习模型中,随机森林模型显示出最高的准确性;但是,差异并不明显。结论使用中等程度的机器学习技术可以预测工人发生RTOW的可能性。转到:图形摘要

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