基于机器学习的急诊病人死亡率预测模型的性能维护

Zachary Young, Robert Steele
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引用次数: 2

摘要

机器学习提供了一种灵活的技术来预测急诊入院患者的生存率。死亡率预测是急诊患者护理质量的核心组成部分,可以作为严重程度的指标,以确定谁需要优先护理。与人工制作的严重性评分系统相反,基于机器学习的模型允许基于更大的输入数据属性集开发更复杂和可更新的模型。虽然已经进行了各种基于机器学习的预测模型来预测住院病人死亡率的研究,但关于这些模型的性能维护的文献很少。确定这些模型在一段时间内的性能维护,决定了它们在未来的使用可靠性和使用时间。本研究中表现最好的模型在训练时的AUC达到了0.86,并且在9个月后的性能维持评估期结束时能够保持同样高的AUC 0.845。这是作者所知的第一篇考虑和衡量基于机器学习的急诊入院死亡率预测模型的相对性能维护的论文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Maintenance of Machine Learning-based Emergency Patient Mortality Predictive Models
Machine learning provides a flexible technique to predict the survival of patients who are admitted to hospital as emergency admissions. Mortality prediction is a central component of emergency patient quality of care and this can act as an indicator of severity to determine who needs prioritized care. Machine learning-based models, as opposed to human-crafted severity score systems, allow for much more complex and updateable models to be developed based on a larger set of input data attributes. While various studies of machine learning-based predictive models for predicting inpatient mortality have been carried out there is little literature on performance maintenance of these models. Determining the performance maintenance of these models over time determines how reliably they can be utilized into the future and for how long. The best performing model in this study achieve’s an AUC of 0.86 upon training and is able to maintain a similarly high AUC of 0.845 as of the end of the period of performance maintenance evaluation nine months later. This is the first paper that the authors are aware of to consider and measure relative performance maintenance of machine learning-based models for emergency admission mortality prediction.
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