Development and Validation of Deep-Learning-Based Sepsis and Septic Shock Early Prediction System (DeepSEPS) Using Real-World ICU Data

  • Kim, Taehwa
  • Tae, Yunwon
  • Yeo, Hye Ju
  • Jang, Jin Ho
  • Cho, Kyungjae
  • 외 6명
Citations

WEB OF SCIENCE

14
Citations

SCOPUS

18

초록

Background: Successful sepsis treatment depends on early diagnosis. We aimed to develop and validate a system to predict sepsis and septic shock in real time using deep learning. Methods: Clinical data were retrospectively collected from electronic medical records (EMRs). Data from 2010 to 2019 were used as development data, and data from 2020 to 2021 were used as validation data. The collected EMRs consisted of eight vital signs, 13 laboratory data points, and three demographic information items. We validated the deep-learning-based sepsis and septic shock early prediction system (DeepSEPS) using the validation datasets and compared our system with other traditional early warning scoring systems, such as the national early warning score, sequential organ failure assessment (SOFA), and quick sequential organ failure assessment. Results: DeepSEPS achieved even higher area under receiver operating characteristic curve (AUROC) values (0.7888 and 0.8494 for sepsis and septic shock, respectively) than SOFA. The prediction performance of traditional scoring systems was enhanced because the early prediction time point was close to the onset time of sepsis; however, the DeepSEPS scoring system consistently outperformed all conventional scoring systems at all time points. Furthermore, at the time of onset of sepsis and septic shock, DeepSEPS showed the highest AUROC (0.9346). Conclusions: The sepsis and septic shock early warning system developed in this study exhibited a performance that is worth considering when predicting sepsis and septic shock compared to other traditional early warning scoring systems. DeepSEPS showed better performance than existing sepsis prediction programs. This novel real-time system that simultaneously predicts sepsis and septic shock requires further validation.

키워드

sepsissepsis-3early prediction programmachine learningartificial intelligenceEARLY RECOGNITIONORGAN FAILUREDEFINITIONSDIAGNOSISMODELMORTALITYACCURACY
제목
Development and Validation of Deep-Learning-Based Sepsis and Septic Shock Early Prediction System (DeepSEPS) Using Real-World ICU Data
저자
Kim, TaehwaTae, YunwonYeo, Hye JuJang, Jin HoCho, KyungjaeYoo, DongjoonLee, YehaAhn, Sung-HoKim, YoungaLee, NaraeCho, Woo Hyun
DOI
10.3390/jcm12227156
발행일
2023-11
유형
Article
저널명
Journal of Clinical Medicine
12
22