Pediatric septic shock estimation using deep learning and electronic medical records.

IF 1.7 Q3 CRITICAL CARE MEDICINE
Ji Weon Lee, Bongjin Lee, June Dong Park
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引用次数: 0

Abstract

Background: Diagnosing pediatric septic shock is difficult due to the complex and often impractical traditional criteria, such as systemic inflammatory response syndrome (SIRS), which result in delays and higher risks. This study aims to develop a deep learning-based model using SIRS data for early diagnosis in pediatric septic shock cases.

Methods: The study analyzed data from pediatric patients (<18 years old) admitted to a tertiary hospital from January 2010 to July 2023. Vital signs, lab tests, and clinical information were collected. Septic shock cases were identified using SIRS criteria and inotrope use. A deep learning model was trained and evaluated using the area under the receiver operating characteristics curve (AUROC) and area under the precision-recall curve (AUPRC). Variable contributions were analyzed using the Shapley additive explanation value.

Results: The analysis, involving 9,616,115 measurements, identified 34,696 septic shock cases (0.4%). Oxygen supply was crucial for 41.5% of the control group and 20.8% of the septic shock group. The final model showed strong performance, with an AUROC of 0.927 and AUPRC of 0.879. Key influencers were age, oxygen supply, sex, and partial pressure of carbon dioxide, while body temperature had minimal impact on estimation.

Conclusions: The proposed deep learning model simplifies early septic shock diagnosis in pediatric patients, reducing the diagnostic workload. Its high accuracy allows timely treatment, but external validation through prospective studies is needed.

利用深度学习和电子病历估算小儿脓毒性休克。
背景:诊断小儿脓毒性休克非常困难,因为传统的诊断标准(如全身炎症反应综合征(SIRS))非常复杂且往往不切实际,从而导致延误和更高的风险。本研究旨在利用 SIRS 数据开发一种基于深度学习的模型,用于小儿脓毒性休克病例的早期诊断:方法:该研究分析了儿科患者的数据:分析涉及 9,616,115 次测量,确定了 34,696 例脓毒性休克病例(0.4%)。41.5%的对照组和20.8%的脓毒性休克组患者的供氧至关重要。最终模型显示出很强的性能,AUROC 为 0.927,AUPRC 为 0.879。主要影响因素是年龄、供氧量、性别和二氧化碳分压,而体温对估计的影响很小:结论:所提出的深度学习模型简化了儿科患者的早期脓毒性休克诊断,减少了诊断工作量。结论:所提出的深度学习模型简化了儿科患者的早期脓毒性休克诊断,减少了诊断工作量,其高精度允许及时治疗,但还需要通过前瞻性研究进行外部验证。
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来源期刊
Acute and Critical Care
Acute and Critical Care CRITICAL CARE MEDICINE-
CiteScore
2.80
自引率
11.10%
发文量
87
审稿时长
12 weeks
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