Pirneskoski Jussi, Tamminen Joonas, Kallonen Antti, Nurmi Jouni, Kuisma Markku, Olkkola Klaus T, Hoppu Sanna
Department of Emergency Medicine and Services, University of Helsinki and HUS Helsinki University Hospital, Helsinki, Finland.
Faculty of Medicine and Health Technology, Tampere University, Tampere, Finland.
Resusc Plus. 2020 Dec 5;4:100046. doi: 10.1016/j.resplu.2020.100046. eCollection 2020 Dec.
The National Early Warning Score (NEWS) is a validated method for predicting clinical deterioration in hospital wards, but its performance in prehospital settings remains controversial. Modern machine learning models may outperform traditional statistical analyses for predicting short-term mortality. Thus, we aimed to compare the mortality prediction accuracy of NEWS and random forest machine learning using prehospital vital signs.
In this retrospective study, all electronic ambulance mission reports between 2008 and 2015 in a single EMS system were collected. Adult patients (≥ 18 years) were included in the analysis. Random forest models with and without blood glucose were compared to the traditional NEWS for predicting one-day mortality. A ten-fold cross-validation method was applied to train and validate the random forest models.
A total of 26,458 patients were included in the study of whom 278 (1.0%) died within one day of ambulance mission. The area under the receiver operating characteristic curve for one-day mortality was 0.836 (95% CI, 0.810-0.860) for NEWS, 0.858 (95% CI, 0.832-0.883) for a random forest trained with NEWS variables only and 0.868 (0.843-0.892) for a random forest trained with NEWS variables and blood glucose.
A random forest algorithm trained with NEWS variables was superior to traditional NEWS for predicting one-day mortality in adult prehospital patients, although the risk of selection bias must be acknowledged. The inclusion of blood glucose in the model further improved its predictive performance.
国家早期预警评分(NEWS)是一种经证实可用于预测医院病房临床病情恶化的方法,但其在院前环境中的表现仍存在争议。现代机器学习模型在预测短期死亡率方面可能优于传统统计分析。因此,我们旨在比较使用院前生命体征的NEWS和随机森林机器学习的死亡率预测准确性。
在这项回顾性研究中,收集了单个急救医疗服务(EMS)系统2008年至2015年期间所有的电子救护车任务报告。纳入分析的为成年患者(≥18岁)。将包含和不包含血糖的随机森林模型与传统NEWS进行比较,以预测一日死亡率。采用十折交叉验证方法训练和验证随机森林模型。
该研究共纳入26458例患者,其中278例(1.0%)在救护车任务后一天内死亡。NEWS预测一日死亡率的受试者工作特征曲线下面积为0.836(95%CI,0.810 - 0.860),仅使用NEWS变量训练的随机森林为0.858(95%CI,0.832 - 0.883),使用NEWS变量和血糖训练的随机森林为0.868(0.843 - 0.892)。
尽管必须承认存在选择偏倚的风险,但使用NEWS变量训练的随机森林算法在预测成年院前患者一日死亡率方面优于传统NEWS。模型中纳入血糖进一步提高了其预测性能。