首页 文献索引 SCI期刊 AI助手
登录 注册
首页 正文

Observational Study Biomedical journal. 2022 Feb;45(1):155-168. doi: 10.1016/j.bj.2021.01.003 Q14.12024

Development and validation of a deep-learning-based pediatric early warning system: A single-center study

基于深度学习的儿科预警系统的发展和验证:单中心研究 翻译改进

Seong Jong Park  1, Kyung-Jae Cho  2, Oyeon Kwon  2, Hyunho Park  2, Yeha Lee  2, Woo Hyun Shim  3, Chae Ri Park  3, Won Kyoung Jhang  4

作者单位 +展开

作者单位

  • 1 Department of Pediatrics, Asan Medical Center Children's Hospital, College of Medicine, University of Ulsan, Seoul, Republic of Korea.
  • 2 VUNO, 6F-507 Gangnam-daero, Seocho-gu, Seoul, Republic of Korea.
  • 3 Department of Department of Medical Science, Asan Medical Institute of Convergence Science and Technology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Republic of Korea.
  • 4 Department of Pediatrics, Asan Medical Center Children's Hospital, College of Medicine, University of Ulsan, Seoul, Republic of Korea. Electronic address: wkjhang@amc.seoul.kr.
  • DOI: 10.1016/j.bj.2021.01.003 PMID: 35418352

    摘要 Ai翻译

    Background: Early detection and prompt intervention for clinically deteriorating events are needed to improve clinical outcomes. There have been several attempts at this, including the introduction of rapid response teams (RRTs) with early warning scores. We developed a deep-learning-based pediatric early warning system (pDEWS) and validated its performance.

    Methods: This single-center retrospective observational cohort study reviewed, 50,019 pediatric patients admitted to the general ward in a tertiary-care academic children's hospital from January 2012 to December 2018. They were split by admission date into a derivation and a validation cohort. We developed a pDEWS for the early prediction of cardiopulmonary arrest and unexpected ward-to-pediatric intensive care unit (PICU) transfer. Then, we validated this system by comparing modified pediatric early warning score (PEWS), random forest (RF); an ensemble model of multiple decision trees and logistic regression (LR); a statistical model that uses a logistic function.

    Results: For predicting cardiopulmonary arrest, the pDEWS (area under the receiver operating characteristic curve (AUROC), 0.923) outperformed modified PEWS (AUROC, 0.769) and reduced the mean alarm count per day (MACPD) and number needed to examine (NNE) by 82.0% (from 46.7 to 8.4 MACPD) and 89.5% (from 0.303 to 0.807), respectively. Furthermore, for predicting unexpected ward-to-PICU transfer pDEWS also showed superior performance compared to existing methods.

    Conclusion: Our study showed that pDEWS was superior to the modified PEWS and prediction models using RF and LR. This study demonstrates that the integration of the pDEWS into RRTs could increase operational efficiency and improve clinical outcomes.

    Keywords: Critical care; Deep learning; Early warning score; Pediatrics.

    Keywords:deep learning; pediatric early warning system

    Copyright © Biomedical journal. 中文内容为AI机器翻译,仅供参考!

    相关内容

    期刊名:Biomedical journal

    缩写:BIOMED J

    ISSN:2319-4170

    e-ISSN:2320-2890

    IF/分区:4.1/Q1

    文章目录 更多期刊信息

    全文链接
    引文链接
    复制
    已复制!
    推荐内容
    Development and validation of a deep-learning-based pediatric early warning system: A single-center study