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通过排除意外死亡来改进机器学习 30 天死亡率预测。

Improving Machine Learning 30-Day Mortality Prediction by Discounting Surprising Deaths.

机构信息

Department of Emergency Medicine, Halland Hospital, Region Halland, Sweden; Department of Clinical Sciences Lund, Faculty of Medicine, Lund University, Lund, Sweden.

Center for Applied Intelligent Systems Research (CAISR), Halmstad University, Halmstad, Sweden; Halland Hospital, Region Halland, Sweden.

出版信息

J Emerg Med. 2021 Dec;61(6):763-773. doi: 10.1016/j.jemermed.2021.09.004. Epub 2021 Oct 27.

Abstract

BACKGROUND

Machine learning (ML) is an emerging tool for predicting need of end-of-life discussion and palliative care, by using mortality as a proxy. But deaths, unforeseen by emergency physicians at time of the emergency department (ED) visit, might have a weaker association with the ED visit.

OBJECTIVES

To develop an ML algorithm that predicts unsurprising deaths within 30 days after ED discharge.

METHODS

In this retrospective registry study, we included all ED attendances within the Swedish region of Halland in 2015 and 2016. All registered deaths within 30 days after ED discharge were classified as either "surprising" or "unsurprising" by an adjudicating committee with three senior specialists in emergency medicine. ML algorithms were developed for the death subclasses by using Logistic Regression (LR), Random Forest (RF), and Support Vector Machine (SVM).

RESULTS

Of all 30-day deaths (n = 148), 76% (n = 113) were not surprising to the adjudicating committee. The most common diseases were advanced stage cancer, multidisease/frailty, and dementia. By using LR, RF, and SVM, mean area under the receiver operating characteristic curve (ROC-AUC) of unsurprising deaths in the test set were 0.950 (SD 0.008), 0.944 (SD 0.007), and 0.949 (SD 0.007), respectively. For all mortality, the ROC-AUCs for LR, RF, and SVM were 0.924 (SD 0.012), 0.922 (SD 0.009), and 0.931 (SD 0.008). The difference in prediction performance between all and unsurprising death was statistically significant (P < .001) for all three models.

CONCLUSION

In patients discharged to home from the ED, three-quarters of all 30-day deaths did not surprise an adjudicating committee with emergency medicine specialists. When only unsurprising deaths were included, ML mortality prediction improved significantly.

摘要

背景

机器学习(ML)是一种新兴的工具,通过使用死亡率作为替代指标,来预测临终讨论和姑息治疗的需求。但是,在急诊科就诊时,医生无法预测的死亡事件可能与急诊科就诊的关联较弱。

目的

开发一种可以预测急诊科出院后 30 天内非意外死亡的机器学习算法。

方法

在这项回顾性登记研究中,我们纳入了 2015 年和 2016 年瑞典 Halland 地区所有急诊科就诊患者。所有在急诊科出院后 30 天内登记的死亡病例均由三名急诊医学高级专家组成的裁决委员会分类为“意外”或“非意外”。通过使用逻辑回归(LR)、随机森林(RF)和支持向量机(SVM),为死亡亚组开发了 ML 算法。

结果

在所有 30 天内死亡的病例中(n=148),76%(n=113)对裁决委员会来说并不意外。最常见的疾病是晚期癌症、多疾病/虚弱和痴呆症。使用 LR、RF 和 SVM,测试集中非意外死亡的受试者工作特征曲线(ROC-AUC)平均值分别为 0.950(SD 0.008)、0.944(SD 0.007)和 0.949(SD 0.007)。对于所有死亡率,LR、RF 和 SVM 的 ROC-AUC 分别为 0.924(SD 0.012)、0.922(SD 0.009)和 0.931(SD 0.008)。所有模型的预测性能在所有死亡和非意外死亡之间存在统计学显著差异(P<0.001)。

结论

在从急诊科出院回家的患者中,所有 30 天内死亡的病例中有四分之三并未使具有急诊医学专业知识的裁决委员会感到意外。当仅包括非意外死亡时,ML 死亡率预测显著提高。

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