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一种新型人工智能辅助分诊工具,用于协助发热门诊诊断疑似新型冠状病毒肺炎病例。

A novel artificial intelligence-assisted triage tool to aid in the diagnosis of suspected COVID-19 pneumonia cases in fever clinics.

作者信息

Feng Cong, Wang Lili, Chen Xin, Zhai Yongzhi, Zhu Feng, Chen Hua, Wang Yingchan, Su Xiangzheng, Huang Sai, Tian Lin, Zhu Weixiu, Sun Wenzheng, Zhang Liping, Han Qingru, Zhang Juan, Pan Fei, Chen Li, Zhu Zhihong, Xiao Hongju, Liu Yu, Liu Gang, Chen Wei, Li Tanshi

机构信息

Fever Clinic of the Emergency Department, First Medical Center, General Hospital of People's Liberation Army, Beijing, China.

Department of Hematology, First Medical Center, General Hospital of People's Liberation Army, Beijing, China.

出版信息

Ann Transl Med. 2021 Feb;9(3):201. doi: 10.21037/atm-20-3073.

Abstract

BACKGROUND

Currently, the need to prevent and control the spread of the 2019 novel coronavirus disease (COVID-19) outside of Hubei province in China and internationally has become increasingly critical. We developed and validated a diagnostic model that does not rely on computed tomography (CT) images to aid in the early identification of suspected COVID-19 pneumonia (S-COVID-19-P) patients admitted to adult fever clinics and made the validated model available via an online triage calculator.

METHODS

Patients admitted from January 14 to February 26, 2020 with an epidemiological history of exposure to COVID-19 were included in the study [model development group (n=132) and validation group (n=32)]. Candidate features included clinical symptoms, routine laboratory tests, and other clinical information on admission. The features selection and model development were based on the least absolute shrinkage and selection operator (LASSO) regression. The primary outcome was the development and validation of a diagnostic aid model for the early identification of S-COVID-19-P on admission.

RESULTS

The development cohort contained 26 cases of S-COVID-19-P and seven cases of confirmed COVID-19 pneumonia (C-COVID-19-P). The final selected features included one demographic variable, four vital signs, five routine blood values, seven clinical signs and symptoms, and one infection-related biomarker. The model's performance in the testing set and the validation group resulted in area under the receiver operating characteristic (ROC) curves (AUCs) of 0.841 and 0.938, F1 scores of 0.571 and 0.667, recall of 1.000 and 1.000, specificity of 0.727 and 0.778, and precision of 0.400 and 0.500, respectively. The top five most important features were age, interleukin-6 (IL-6), systolic blood pressure (SYS_BP), monocyte ratio (MONO%), and fever classification (FC). Based on this model, an optimized strategy for the early identification of S-COVID-19-P in fever clinics has also been designed.

CONCLUSIONS

A machine-learning model based solely on clinical information and not on CT images was able to perform the early identification of S-COVID-19-P on admission in fever clinics with a 100% recall score. This high-performing and validated model has been deployed as an online triage tool, which is available at https://intensivecare.shinyapps.io/COVID19/.

摘要

背景

目前,在中国湖北省以外地区以及国际上防控2019新型冠状病毒病(COVID-19)传播的需求日益迫切。我们开发并验证了一种不依赖计算机断层扫描(CT)图像的诊断模型,以帮助早期识别入住成人发热门诊的疑似COVID-19肺炎(S-COVID-19-P)患者,并通过在线分诊计算器提供经过验证的模型。

方法

纳入2020年1月14日至2月26日收治的有COVID-19暴露流行病学史的患者[模型开发组(n = 132)和验证组(n = 32)]。候选特征包括临床症状、常规实验室检查以及入院时的其他临床信息。特征选择和模型开发基于最小绝对收缩和选择算子(LASSO)回归。主要结果是开发并验证一种用于入院时早期识别S-COVID-19-P的诊断辅助模型。

结果

开发队列包含26例S-COVID-19-P患者和7例确诊COVID-19肺炎(C-COVID-19-P)患者。最终选择的特征包括1个人口统计学变量、4项生命体征、5项血常规值、7项临床体征和症状以及1项感染相关生物标志物。该模型在测试集和验证组中的表现为,受试者工作特征(ROC)曲线下面积(AUC)分别为0.841和0.938,F1分数分别为0.571和0.667,召回率分别为1.000和1.000,特异性分别为0.727和0.778,精确度分别为0.400和0.500。最重要的五项特征是年龄、白细胞介素-6(IL-6)、收缩压(SYS_BP)、单核细胞比例(MONO%)和发热分类(FC)。基于该模型,还设计了一种在发热门诊早期识别S-COVID-19-P的优化策略。

结论

一个仅基于临床信息而非CT图像的机器学习模型能够在发热门诊入院时对S-COVID-19-P进行早期识别,召回率达100%。这个高性能且经过验证的模型已作为在线分诊工具部署,可在https://intensivecare.shinyapps.io/COVID19/获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6238/7940949/7c71806fae0a/atm-09-03-201-f1.jpg

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