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使用机器学习预测新冠重症监护病房患者的血栓栓塞并发症

Predicting thromboembolic complications in COVID-19 ICU patients using machine learning.

作者信息

van de Sande Davy, van Genderen Michel E, Rosman Babette, Diether Maren, Endeman Henrik, van den Akker Johannes P C, Ludwig Martijn, Huiskens Joost, Gommers Diederik, van Bommel Jasper

机构信息

Department of Adult Intensive Care, Erasmus University Medical Center, Rotterdam, the Netherlands.

Deloitte Netherlands, Analytics and Cognitive, Amsterdam, the Netherlands.

出版信息

J Clin Transl Res. 2020 Oct 14;6(4):179-186. eCollection 2020 Nov 15.

Abstract

BACKGROUND

The coronavirus disease 2019 (COVID-19) pandemic is a challenge for intensive care units (ICU) in part due to the failure to identify risks for patients early and the inability to render an accurate prognosis. Previous reports suggest a strong association between hypercoagulability and poor outcome. Factors related to hemostasis may, therefore, serve as tools to improve the management of COVID-19 patients.

AIM

The purpose of this report is to develop a model to determine whether it is possible to early identify COVID-19 patients at risk for thromboembolic complications (TCs).

METHODS

We analyzed electronic health record data of 108 consecutive COVID-19 patients admitted to the adult ICU of the Erasmus University Medical Center between February 27 and May 20, 2020. By training a decision tree classifier on 66% of the available data, a model for the prediction of TCs was developed.

RESULTS

The median (interquartile range) age was 62 (53-70) years and 73% were male. Forty-three patients (40%) developed a TC during their ICU stay. Mortality was higher for patients in the TCs group compared to the control group (26% vs. 8%, =0.03). Lactate dehydrogenase, standardized bicarbonate, albumin, and leukocytes were identified by the Decision Tree classifier as the most powerful predictors for TCs 2 days before the onset of the TC, with a sensitivity of 73% and a positive likelihood ratio of 2.7 on the test dataset.

CONCLUSIONS

Clinically relevant TCs frequently occur in critically ill COVID-19 patients. These can successfully be predicted using a decision tree model. Although this model could be of special importance to aid clinical decision making, its generalizability and clinical impact should be determined in a larger population.

RELEVANCE FOR PATIENTS

Recently, severe TCs were observed in COVID-19 patients with progressive respiratory failure warranting ICU treatment. Timely identification of patients at risk of developing TCs is critical inasmuch as it would enable clinicians to initiate potentially salvaging therapeutic anticoagulation.

摘要

背景

2019年冠状病毒病(COVID-19)大流行对重症监护病房(ICU)来说是一项挑战,部分原因是未能早期识别患者的风险,且无法做出准确的预后判断。既往报告表明高凝状态与不良预后之间存在密切关联。因此,与止血相关的因素可能成为改善COVID-19患者管理的工具。

目的

本报告的目的是开发一种模型,以确定是否有可能早期识别有血栓栓塞并发症(TCs)风险的COVID-19患者。

方法

我们分析了2020年2月27日至5月20日期间连续入住伊拉斯姆斯大学医学中心成人ICU的108例COVID-19患者的电子健康记录数据。通过对66%的可用数据训练决策树分类器,开发了一种预测TCs的模型。

结果

中位(四分位间距)年龄为62(53 - 70)岁,73%为男性。43例患者(40%)在ICU住院期间发生了TCs。TCs组患者的死亡率高于对照组(26%对8%,P = 0.03)。乳酸脱氢酶、标准化碳酸氢盐、白蛋白和白细胞被决策树分类器确定为TCs发生前2天最有力的预测指标,在测试数据集上的灵敏度为73%,阳性似然比为2.7。

结论

临床相关的TCs在危重症COVID-19患者中频繁发生。使用决策树模型可以成功预测这些情况。尽管该模型对辅助临床决策可能具有特殊重要性,但其普遍性和临床影响应在更大规模人群中确定。

对患者的意义

最近,在需要ICU治疗的进行性呼吸衰竭的COVID-19患者中观察到严重的TCs。及时识别有发生TCs风险的患者至关重要,因为这将使临床医生能够启动可能挽救生命的治疗性抗凝。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cf43/7821745/d9eac390db32/jclintranslres-2020-6-5-179-g001.jpg

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