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重症监护病房内院内心脏骤停的预测:基于机器学习的多模态方法

Prediction of In-Hospital Cardiac Arrest in the Intensive Care Unit: Machine Learning-Based Multimodal Approach.

作者信息

Lee Hsin-Ying, Kuo Po-Chih, Qian Frank, Li Chien-Hung, Hu Jiun-Ruey, Hsu Wan-Ting, Jhou Hong-Jie, Chen Po-Huang, Lee Cho-Hao, Su Chin-Hua, Liao Po-Chun, Wu I-Ju, Lee Chien-Chang

机构信息

Department of Medicine, College of Medicine, National Taiwan University, Taipei, Taiwan.

Department of Computer Science, National Tsing Hua University, Hsinchu, Taiwan.

出版信息

JMIR Med Inform. 2024 Jul 23;12:e49142. doi: 10.2196/49142.

DOI:10.2196/49142
PMID:39051152
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11287234/
Abstract

BACKGROUND

Early identification of impending in-hospital cardiac arrest (IHCA) improves clinical outcomes but remains elusive for practicing clinicians.

OBJECTIVE

We aimed to develop a multimodal machine learning algorithm based on ensemble techniques to predict the occurrence of IHCA.

METHODS

Our model was developed by the Multiparameter Intelligent Monitoring of Intensive Care (MIMIC)-IV database and validated in the Electronic Intensive Care Unit Collaborative Research Database (eICU-CRD). Baseline features consisting of patient demographics, presenting illness, and comorbidities were collected to train a random forest model. Next, vital signs were extracted to train a long short-term memory model. A support vector machine algorithm then stacked the results to form the final prediction model.

RESULTS

Of 23,909 patients in the MIMIC-IV database and 10,049 patients in the eICU-CRD database, 452 and 85 patients, respectively, had IHCA. At 13 hours in advance of an IHCA event, our algorithm had already demonstrated an area under the receiver operating characteristic curve of 0.85 (95% CI 0.815-0.885) in the MIMIC-IV database. External validation with the eICU-CRD and National Taiwan University Hospital databases also presented satisfactory results, showing area under the receiver operating characteristic curve values of 0.81 (95% CI 0.763-0.851) and 0.945 (95% CI 0.934-0.956), respectively.

CONCLUSIONS

Using only vital signs and information available in the electronic medical record, our model demonstrates it is possible to detect a trajectory of clinical deterioration up to 13 hours in advance. This predictive tool, which has undergone external validation, could forewarn and help clinicians identify patients in need of assessment to improve their overall prognosis.

摘要

背景

早期识别即将发生的院内心脏骤停(IHCA)可改善临床结局,但对于临床医生而言,这仍然难以做到。

目的

我们旨在开发一种基于集成技术的多模态机器学习算法,以预测IHCA的发生。

方法

我们的模型由重症监护多参数智能监测(MIMIC)-IV数据库开发,并在电子重症监护病房协作研究数据库(eICU-CRD)中进行验证。收集包括患者人口统计学、现患疾病和合并症在内的基线特征,以训练随机森林模型。接下来,提取生命体征以训练长短期记忆模型。然后,支持向量机算法将结果进行堆叠,以形成最终的预测模型。

结果

在MIMIC-IV数据库的23909例患者和eICU-CRD数据库的10049例患者中,分别有452例和85例发生了IHCA。在IHCA事件发生前13小时,我们的算法在MIMIC-IV数据库中的受试者工作特征曲线下面积已达到0.85(95%CI 0.815-0.885)。使用eICU-CRD和台湾大学附属医院数据库进行的外部验证也呈现出令人满意的结果,受试者工作特征曲线下面积值分别为0.81(95%CI 0.763-0.851)和0.945(95%CI 0.934-0.956)。

结论

仅使用生命体征和电子病历中的可用信息,我们的模型表明有可能提前13小时检测到临床恶化轨迹。这个经过外部验证的预测工具可以发出预警,并帮助临床医生识别需要评估的患者,以改善他们的总体预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/7b41c7876c86/medinform-v12-e49142-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/52423efe0fd9/medinform-v12-e49142-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/015bf2b74511/medinform-v12-e49142-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/fcf1d9be0933/medinform-v12-e49142-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/fe960b2c9298/medinform-v12-e49142-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/7b41c7876c86/medinform-v12-e49142-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/52423efe0fd9/medinform-v12-e49142-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/015bf2b74511/medinform-v12-e49142-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/fcf1d9be0933/medinform-v12-e49142-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/fe960b2c9298/medinform-v12-e49142-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/680d/11287234/7b41c7876c86/medinform-v12-e49142-g005.jpg

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本文引用的文献

1
Development of early prediction model of in-hospital cardiac arrest based on laboratory parameters.基于实验室参数的院内心脏骤停早期预测模型的建立。
Biomed Eng Online. 2023 Dec 6;22(1):116. doi: 10.1186/s12938-023-01178-9.
2
Prediction of In-Hospital Cardiac Arrest Using Shallow and Deep Learning.使用浅层和深度学习预测院内心脏骤停
Diagnostics (Basel). 2021 Jul 13;11(7):1255. doi: 10.3390/diagnostics11071255.
3
Value of laboratory results in addition to vital signs in a machine learning algorithm to predict in-hospital cardiac arrest: A single-center retrospective cohort study.
基于多特征的机器学习模型在预测心脏骤停神经学预后中的应用。
Resusc Plus. 2024 Nov 21;20:100829. doi: 10.1016/j.resplu.2024.100829. eCollection 2024 Dec.
实验室结果除生命体征外对机器学习算法预测院内心脏骤停的价值:一项单中心回顾性队列研究。
PLoS One. 2020 Jul 13;15(7):e0235835. doi: 10.1371/journal.pone.0235835. eCollection 2020.
4
In-hospital cardiac arrest and preceding National Early Warning Score (NEWS): A retrospective case-control study.院内心脏骤停与之前的国家早期预警评分(NEWS):一项回顾性病例对照研究。
Clin Med (Lond). 2020 Jan;20(1):55-60. doi: 10.7861/clinmed.2019-0137.
5
Annual Incidence of Adult and Pediatric In-Hospital Cardiac Arrest in the United States.美国成人及儿童住院期间心脏骤停的年发病率。
Circ Cardiovasc Qual Outcomes. 2019 Jul 9;12(7):e005580.
6
Validating the Electronic Cardiac Arrest Risk Triage (eCART) Score for Risk Stratification of Surgical Inpatients in the Postoperative Setting: Retrospective Cohort Study.验证电子心脏骤停风险分诊(eCART)评分在术后环境下对手术住院患者进行风险分层的有效性:回顾性队列研究。
Ann Surg. 2019 Jun;269(6):1059-1063. doi: 10.1097/SLA.0000000000002665.
7
The eICU Collaborative Research Database, a freely available multi-center database for critical care research.eICU 协作研究数据库,一个免费的多中心重症监护研究数据库。
Sci Data. 2018 Sep 11;5:180178. doi: 10.1038/sdata.2018.178.
8
An Algorithm Based on Deep Learning for Predicting In-Hospital Cardiac Arrest.基于深度学习的院内心脏骤停预测算法。
J Am Heart Assoc. 2018 Jun 26;7(13):e008678. doi: 10.1161/JAHA.118.008678.
9
Identifying Important Gaps in Randomized Controlled Trials of Adult Cardiac Arrest Treatments: A Systematic Review of the Published Literature.识别成人心脏骤停治疗随机对照试验中的重要差距:对已发表文献的系统评价
Circ Cardiovasc Qual Outcomes. 2016 Nov;9(6):749-756. doi: 10.1161/CIRCOUTCOMES.116.002916. Epub 2016 Oct 18.
10
Periarrest Modified Early Warning Score (MEWS) predicts the outcome of in-hospital cardiac arrest.围心脏骤停期改良早期预警评分(MEWS)可预测院内心脏骤停的结局。
J Formos Med Assoc. 2016 Feb;115(2):76-82. doi: 10.1016/j.jfma.2015.10.016. Epub 2015 Dec 24.