Deep-learning model for screening sepsis using electrocardiography

被引:9
|
作者
Kwon, Joon-myoung [1 ,2 ,3 ,4 ]
Lee, Ye Rang [2 ]
Jung, Min-Seung [1 ]
Lee, Yoon-Ji [1 ]
Jo, Yong-Yeon [1 ]
Kang, Da-Young [2 ]
Lee, Soo Youn [2 ,5 ]
Cho, Yong-Hyeon [1 ]
Shin, Jae-Hyun [1 ]
Ban, Jang-Hyeon [4 ]
Kim, Kyung-Hee [2 ,5 ]
机构
[1] Sejong Med Res Inst, Artificial Intelligence & Big Data Res Ctr, Bucheon, South Korea
[2] Med AI Co, Med Res Team, Seoul, South Korea
[3] Mediplex Sejong Hosp, Dept Crit Care & Emergency Med, 20 Gyeyangmunhwa Ro, Incheon, South Korea
[4] Body Friend Co, Med R&D Ctr, Seoul, South Korea
[5] Mediplex Sejong Hosp, Div Cardiol, Cardiovasc Ctr, Incheon, South Korea
关键词
Sepsis; Shock; Septic; Infections; Electrocardiography; Deep learning; Artificial intelligence; INTERNATIONAL CONSENSUS DEFINITIONS; EARLY WARNING SCORE; ARTIFICIAL-INTELLIGENCE; DYSFUNCTION;
D O I
10.1186/s13049-021-00953-8
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Background Sepsis is a life-threatening organ dysfunction and a major healthcare burden worldwide. Although sepsis is a medical emergency that requires immediate management, screening for the occurrence of sepsis is difficult. Herein, we propose a deep learning-based model (DLM) for screening sepsis using electrocardiography (ECG). Methods This retrospective cohort study included 46,017 patients who were admitted to two hospitals. A total of 1,548 and 639 patients had sepsis and septic shock, respectively. The DLM was developed using 73,727 ECGs from 18,142 patients, and internal validation was conducted using 7774 ECGs from 7,774 patients. Furthermore, we conducted an external validation with 20,101 ECGs from 20,101 patients from another hospital to verify the applicability of the DLM across centers. Results During the internal and external validations, the area under the receiver operating characteristic curve (AUC) of the DLM using 12-lead ECG was 0.901 (95% confidence interval, 0.882-0.920) and 0.863 (0.846-0.879), respectively, for screening sepsis and 0.906 (95% confidence interval (CI), 0.877-0.936) and 0.899 (95% CI, 0.872-0.925), respectively, for detecting septic shock. The AUC of the DLM for detecting sepsis using 6-lead and single-lead ECGs was 0.845-0.882. A sensitivity map revealed that the QRS complex and T waves were associated with sepsis. Subgroup analysis was conducted using ECGs from 4,609 patients who were admitted with an infectious disease, and the AUC of the DLM for predicting in-hospital mortality was 0.817 (0.793-0.840). There was a significant difference in the prediction score of DLM using ECG according to the presence of infection in the validation dataset (0.277 vs. 0.574, p < 0.001), including severe acute respiratory syndrome coronavirus 2 (0.260 vs. 0.725, p = 0.018). Conclusions The DLM delivered reasonable performance for sepsis screening using 12-, 6-, and single-lead ECGs. The results suggest that sepsis can be screened using not only conventional ECG devices but also diverse life-type ECG machines employing the DLM, thereby preventing irreversible disease progression and mortality.
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页数:12
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