Development of an Early Warning System for Sepsis

C. Pou-Prom, Zhen Yang, Maitreyee Sidhaye, David Dai
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Abstract

Sepsis is a life-threatening condition that is caused by infection, and is estimated to affects an estimated 1.7 million adults in the United States and contributes to 265,000 deaths annually. Identifying sepsis before it happens and treating it earlier leads to decreased mortality and decreased lengths of stay. As part of the PhysioNet/Computing in Cardiology Challenge 2019, we developed an ensemble-based approach for the early detection of sepsis in ICU patients.Our final model predicted sepsis using the previous 24 hours of data, and consisted of a combination of two con-volutional neural networks and a random forest trained on different subsets of the data. In training our models, we experimented with random undersampling and cluster-based undersampling as a means for addressing severe class imbalance. On validation data, our final model achieved a utility score of 0.432 on hospital A (AUROC: 0.794, AUPRC: 0.101), 0.247 on hospital B (AUROC: 0.816, AUPRC: 0.056), and a utility of 0.375 on combined data from both hospitals (AUROC: 0.809, AUPRC: 0.089). On the heldout test data, the model obtained a utility score of 0.266 and we received an official ranking of 31/79.
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脓毒症早期预警系统的发展
脓毒症是一种由感染引起的危及生命的疾病,据估计,美国约有170万成年人受到脓毒症的影响,每年造成26.5万人死亡。在脓毒症发生之前识别并早期治疗可以降低死亡率和缩短住院时间。作为2019年PhysioNet/Computing in Cardiology挑战赛的一部分,我们开发了一种基于集成的方法,用于早期检测ICU患者的败血症。我们的最终模型使用前24小时的数据预测败血症,该模型由两个卷积神经网络和随机森林的组合组成,这些神经网络和随机森林是在不同的数据子集上训练的。在训练我们的模型时,我们实验了随机欠采样和基于簇的欠采样作为解决严重的类不平衡的手段。在验证数据上,我们的最终模型在a医院(AUROC: 0.794, AUPRC: 0.101)上的效用得分为0.432,在B医院(AUROC: 0.816, AUPRC: 0.056)上的效用得分为0.247,在两家医院的合并数据上的效用得分为0.375 (AUROC: 0.809, AUPRC: 0.089)。在heldout测试数据上,该模型的效用得分为0.266,我们获得了31/79的官方排名。
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