论文标题
通过深入的联邦学习,早期预测ICU死亡率的风险
Early prediction of the risk of ICU mortality with Deep Federated Learning
论文作者
论文摘要
重症监护病房通常会承担死亡严重风险的患者。最近的研究表明,机器学习表明患者的死亡率风险和指向医生需要增加需要护理的人的能力。然而,医疗保健数据通常受到隐私法规的约束,因此不容易共享以建立使用多家医院合并数据的集中机器学习模型。 Federated Learning是一个用于数据隐私的机器学习框架,可用于规避此问题。在这项研究中,我们评估了深度联邦学习在早期阶段预测重症监护病房死亡率的风险的能力。我们根据AUPRC,F1分数和AUROC比较了联合,集中和本地机器学习的预测性能。我们的结果表明,联邦学习的性能与集中式方法同样出色,并且比本地方法要好得多,从而为早期重症监护病房的死亡率预测提供了可行的解决方案。此外,我们表明,当患者历史记录窗口更接近出院或死亡时,预测性能会更高。最后,我们表明,将F1得分作为早期停止度量可以稳定并提高我们手头任务的方法的性能。
Intensive Care Units usually carry patients with a serious risk of mortality. Recent research has shown the ability of Machine Learning to indicate the patients' mortality risk and point physicians toward individuals with a heightened need for care. Nevertheless, healthcare data is often subject to privacy regulations and can therefore not be easily shared in order to build Centralized Machine Learning models that use the combined data of multiple hospitals. Federated Learning is a Machine Learning framework designed for data privacy that can be used to circumvent this problem. In this study, we evaluate the ability of deep Federated Learning to predict the risk of Intensive Care Unit mortality at an early stage. We compare the predictive performance of Federated, Centralized, and Local Machine Learning in terms of AUPRC, F1-score, and AUROC. Our results show that Federated Learning performs equally well as the centralized approach and is substantially better than the local approach, thus providing a viable solution for early Intensive Care Unit mortality prediction. In addition, we show that the prediction performance is higher when the patient history window is closer to discharge or death. Finally, we show that using the F1-score as an early stopping metric can stabilize and increase the performance of our approach for the task at hand.