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使用机器学习方法预测重症监护病房入院后 24 小时内需要插管的情况。

Predicting the need for intubation in the first 24 h after critical care admission using machine learning approaches.

机构信息

Department of Anaesthesia and Intensive Care, Prince of Wales Hospital, Hong Kong, China.

Department of Computer Science and Engineering, The Hong Kong University of Science and Technology, Hong Kong, China.

出版信息

Sci Rep. 2020 Dec 1;10(1):20931. doi: 10.1038/s41598-020-77893-3.

Abstract

Early and accurate prediction of the need for intubation may provide more time for preparation and increase safety margins by avoiding high risk late intubation. This study evaluates whether machine learning can predict the need for intubation within 24 h using commonly available bedside and laboratory parameters taken at critical care admission. We extracted data from 2 large critical care databases (MIMIC-III and eICU-CRD). Missing variables were imputed using autoencoder. Machine learning classifiers using logistic regression and random forest were trained using 60% of the data and tested using the remaining 40% of the data. We compared the performance of logistic regression and random forest models to predict intubation in critically ill patients. After excluding patients with limitations of therapy and missing data, we included 17,616 critically ill patients in this retrospective cohort. Within 24 h of admission, 2,292 patients required intubation, whilst 15,324 patients were not intubated. Blood gas parameters (PO, PCO, HCO), Glasgow Coma Score, respiratory variables (respiratory rate, SO), temperature, age, and oxygen therapy were used to predict intubation. Random forest had AUC 0.86 (95% CI 0.85-0.87) and logistic regression had AUC 0.77 (95% CI 0.76-0.78) for intubation prediction performance. Random forest model had sensitivity of 0.88 (95% CI 0.86-0.90) and specificity of 0.66 (95% CI 0.63-0.69), with good calibration throughout the range of intubation risks. The results showed that machine learning could predict the need for intubation in critically ill patients using commonly collected bedside clinical parameters and laboratory results. It may be used in real-time to help clinicians predict the need for intubation within 24 h of intensive care unit admission.

摘要

早期、准确地预测是否需要插管,可为准备工作提供更多时间,并通过避免高危迟发性插管,增加安全边际。本研究评估了机器学习是否可以使用重症监护入院时采集的常见床边和实验室参数,在 24 小时内预测插管需求。我们从两个大型重症监护数据库(MIMIC-III 和 eICU-CRD)中提取数据。使用自动编码器对缺失变量进行插补。使用 60%的数据训练逻辑回归和随机森林机器学习分类器,并使用剩余 40%的数据进行测试。我们比较了逻辑回归和随机森林模型预测危重症患者插管的性能。排除治疗受限和数据缺失的患者后,我们纳入了 17616 例危重症患者进行回顾性队列研究。在入院后 24 小时内,有 2292 例患者需要插管,而有 15324 例患者不需要插管。血气参数(PO、PCO、HCO)、格拉斯哥昏迷评分、呼吸变量(呼吸频率、SO)、体温、年龄和氧疗均用于预测插管。随机森林的 AUC 为 0.86(95%CI 0.85-0.87),逻辑回归的 AUC 为 0.77(95%CI 0.76-0.78),用于插管预测性能。随机森林模型的敏感性为 0.88(95%CI 0.86-0.90),特异性为 0.66(95%CI 0.63-0.69),在整个插管风险范围内具有良好的校准度。结果表明,机器学习可以使用常见的床边临床参数和实验室结果预测危重症患者的插管需求。它可用于实时帮助临床医生预测重症监护病房入院后 24 小时内的插管需求。

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