VUNO Inc., Seoul, Republic of Korea.
Sejong General Hospital, Gyeonggi-do, Republic of Korea.
Crit Care Med. 2020 Nov;48(11):e1106-e1111. doi: 10.1097/CCM.0000000000004583.
A deep learning-based early warning system is proposed to predict sepsis prior to its onset.
A novel algorithm was devised to detect sepsis 6 hours prior to its onset based on electronic medical records.
Retrospective cohorts from three separate hospitals are used in this study. Sepsis onset was defined based on Sepsis-3. Algorithms are evaluated based on the score function used in the Physionet Challenge 2019.
Over 60,000 ICU patients with 40 clinical variables (vital signs, laboratory results) for each hour of a patient's ICU stay were used.
None.
The proposed algorithm predicted the onset of sepsis in the preceding n hours (where n = 4, 6, 8, or 12). Furthermore, the proposed method compared how many sepsis patients can be predicted in a short time with other methods. To interpret a given result in a clinical perspective, the relationship between input variables and the probability of the proposed method were presented. The proposed method achieved superior results (area under the receiver operating characteristic curve, area under the precision-recall curve, and score) and predicted more sepsis patients in advance. In official phase, the proposed method showed the utility score of -0.101, area under the receiver operating characteristic curve 0.782, area under the precision-recall curve 0.041, accuracy 0.786, and F-measure 0.046.
Using Physionet Challenge 2019, the proposed method can accurately and early predict the onset of sepsis. The proposed method can be a practical early warning system in the environment of real hospitals.
提出一种基于深度学习的预警系统,以便在脓毒症发作前对其进行预测。
基于电子病历设计了一种新算法,可在脓毒症发作前 6 小时检测到脓毒症。
本研究使用了来自 3 家不同医院的回顾性队列。根据 Sepsis-3 定义脓毒症发作。根据 Physionet Challenge 2019 中使用的评分函数评估算法。
超过 60000 名 ICU 患者,每位患者 ICU 住院期间每小时有 40 个临床变量(生命体征、实验室结果)。
无。
所提出的算法预测了前 n 小时(n = 4、6、8 或 12)的脓毒症发作。此外,该方法比较了在短时间内可以预测多少脓毒症患者的方法。为了从临床角度解释给定的结果,呈现了输入变量与所提出方法的概率之间的关系。所提出的方法取得了优异的结果(接收者操作特征曲线下面积、精度-召回曲线下面积和评分),并提前预测了更多的脓毒症患者。在官方阶段,所提出的方法显示出实用评分-0.101、接收者操作特征曲线下面积 0.782、精度-召回曲线下面积 0.041、准确性 0.786 和 F-度量 0.046。
使用 Physionet Challenge 2019,所提出的方法可以准确且早期预测脓毒症的发作。该方法可作为实际医院环境中的实用预警系统。