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A comparative study of patient and staff safety evaluation using tree-based machine learning algorithms

机译:基于树的机器学习算法患者和员工安全评估的比较研究

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摘要

Medical errors constitute a significant challenge affecting patient and staff safety in complex and dynamic healthcare systems. While various organizational factors may contribute to such errors, limited studies have addressed patient and staff safety issues simultaneously in the same study setting. To evaluate this, we conduct an exploratory analysis using two types of tree-based machine learning algorithms, random forests and gradient boosting, and the hospital-level aggregate staff experience survey data from UK hospitals. Based on staff views and priorities, the results from both algorithms suggest that "health and wellbeing" is the leading theme associated with the number of reported errors and near misses harming patient and staff safety. Specifically, "work-related stress" is the most important survey item associated with safety outcomes. With respect to prediction accuracy, both algorithms provide similar results with comparable values in error metrics. Based on the analytical results, healthcare risk managers and decision-makers can develop and implement policies and practices that address staff experience and prioritize resources effectively to improve patient and staff safety.
机译:医疗错误构成了影响复杂和动态医疗保​​健系统中患者和员工安全的重大挑战。虽然各种组织因素可能导致此类错误,但有限的研究在同一研究环境中同时解决了患者和员工安全问题。为了评估这一点,我们采用两种类型的基于树的机器学习算法,随机林和梯度提升进行探索性分析,以及医院级别员工体验来自英国医院的调查数据。根据员工的观点和优先事项,这两种算法的结果表明,“健康和福祉”是与报告错误数量相关的主要主题,靠近遭受患者和员工安全的近期。具体而言,“与工作相关的压力”是与安全结果相关的最重要的调查项目。关于预测准确性,这两种算法都提供了类似的结果,以误差度量中的可比值。根据分析结果,医疗保健风险管理人员和决策者可以制定和实施解决员工经验的政策和做法,并有效地优先考虑资源,以改善患者和员工安全。

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