Development of a deep learning model for predicting critical events in a pediatric intensive care unit.

IF 1.7 Q3 CRITICAL CARE MEDICINE Acute and Critical Care Pub Date : 2024-02-01 Epub Date: 2024-02-20 DOI:10.4266/acc.2023.01424
In Kyung Lee, Bongjin Lee, June Dong Park
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Abstract

Background: Identifying critically ill patients at risk of cardiac arrest is important because it offers the opportunity for early intervention and increased survival. The aim of this study was to develop a deep learning model to predict critical events, such as cardiopulmonary resuscitation or mortality.

Methods: This retrospective observational study was conducted at a tertiary university hospital. All patients younger than 18 years who were admitted to the pediatric intensive care unit from January 2010 to May 2023 were included. The main outcome was prediction performance of the deep learning model at forecasting critical events. Long short-term memory was used as a deep learning algorithm. The five-fold cross validation method was employed for model learning and testing.

Results: Among the vital sign measurements collected during the study period, 11,660 measurements were used to develop the model after preprocessing; 1,060 of these data points were measurements that corresponded to critical events. The prediction performance of the model was the area under the receiver operating characteristic curve (95% confidence interval) of 0.988 (0.9751.000), and the area under the precision-recall curve was 0.862 (0.700-1.000).

Conclusions: The performance of the developed model at predicting critical events was excellent. However, follow-up research is needed for external validation.

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开发用于预测儿科重症监护室危急事件的深度学习模型。
背景:识别有心脏骤停风险的危重病人非常重要,因为这为早期干预和提高存活率提供了机会。本研究旨在开发一种深度学习模型,用于预测心肺复苏或死亡率等危急事件:这项回顾性观察研究在一家三级大学医院进行。研究纳入了 2010 年 1 月至 2023 年 5 月期间入住儿科重症监护室的所有 18 岁以下患者。主要结果是深度学习模型对危急事件的预测性能。深度学习算法使用的是长短期记忆。采用五倍交叉验证法进行模型学习和测试:在研究期间收集的生命体征测量数据中,有 11,660 个测量数据经过预处理后用于开发模型;其中 1,060 个数据点与危急事件相对应。该模型的预测性能为接收者操作特征曲线下面积(95% 置信区间)为 0.988(0.9751.000),精确度-召回曲线下面积为 0.862(0.700-1.000):结论:开发的模型在预测危急事件方面表现出色。结论:所开发的模型在预测危急事件方面表现出色,但还需要后续研究进行外部验证。
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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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