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A Machine Learning Early Warning System: Multicenter Validation in Brazilian Hospitals

机译:机器学习预警系统:巴西医院的多中心验证

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Early recognition of clinical deterioration is one of the main steps for reducing inpatient morbidity and mortality. The challenging task of clinical deterioration identification in hospitals lies in the intense daily routines of healthcare practitioners, in the unconnected patient data stored in the Electronic Health Records (EHRs) and in the usage of low accuracy scores. Since hospital wards are given less attention compared to the Intensive Care Unit, ICU, we hypothesized that when a platform is connected to a stream of EHR, there would be a drastic improvement in dangerous situations awareness and could thus assist the healthcare team. With the application of machine learning, the system is capable to consider all patient's history and through the use of high-performing predictive models, an intelligent early warning system is enabled. In this work we used 121,089 medical encounters from six different hospitals and 7,540,389 data points, and we compared popular ward protocols with six different scalable machine learning methods (three are classic machine learning models, logistic and probabilistic-based models, and three gradient boosted models). The results showed an advantage in AUC (Area Under the Receiver Operating Characteristic Curve) of 25 percentage points in the best Machine Learning model result compared to the current state-of-the-art protocols. This is shown by the generalization of the algorithm with leave-one-group-out (AUC of 0.949) and the robustness through cross-validation (AUC of 0.961). We also perform experiments to compare several window sizes to justify the use of five patient timestamps. A sample dataset, experiments, and code are available for replicability purposes.
机译:尽早发现临床恶化是降低住院病人发病率和死亡率的主要步骤之一。在医院中,临床恶化识别的挑战性任务在于医护人员的日常工作繁重,电子健康记录(EHR)中存储的未关联患者数据以及使用低准确性评分的问题。与重症监护病房(ICU)相比,医院病房受到的关注较少,因此我们假设,将平台连接到EHR数据流时,危险情况意识将得到大幅改善,从而可以为医疗团队提供帮助。通过机器学习的应用,该系统能够考虑所有患者的病史,并且通过使用高性能的预测模型,可以启用智能预警系统。在这项工作中,我们使用了来自六家不同医院的121,089次医疗求诊和7,540,389个数据点,并将流行的病房协议与六种不同的可扩展机器学习方法(三种是经典的机器学习模型,基于逻辑和概率的模型以及三种梯度增强模型)进行了比较)。结果显示,与当前的最新协议相比,最佳机器学习模型结果在AUC(接收器工作特性曲线下的面积)方面具有25个百分点的优势。这一点通过留一法分组(AUC为0.949)和通过交叉验证的鲁棒性(AUC为0.961)的泛化来证明。我们还进行实验以比较几种窗口大小,以证明使用五个患者时间戳是合理的。样本数据集,实验和代码可用于复制目的。

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