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韩国军队医院新冠肺炎结局预测与监测解决方案:一款应用程序的开发与评估

COVID-19 Outcome Prediction and Monitoring Solution for Military Hospitals in South Korea: Development and Evaluation of an Application.

作者信息

Heo JoonNyung, Park Ji Ae, Han Deokjae, Kim Hyung-Jun, Ahn Daeun, Ha Beomman, Seog Woong, Park Yu Rang

机构信息

Armed Forces Medical Command, Seongnam, Republic of Korea.

Department of Biomedical Systems Informatics, Yonsei University College of Medicine, Seoul, Republic of Korea.

出版信息

J Med Internet Res. 2020 Nov 4;22(11):e22131. doi: 10.2196/22131.

Abstract

BACKGROUND

COVID-19 has officially been declared as a pandemic, and the spread of the virus is placing sustained demands on public health systems. There are speculations that the COVID-19 mortality differences between regions are due to the disparities in the availability of medical resources. Therefore, the selection of patients for diagnosis and treatment is essential in this situation. Military personnel are especially at risk for infectious diseases; thus, patient selection with an evidence-based prognostic model is critical for them.

OBJECTIVE

This study aims to assess the usability of a novel platform used in the military hospitals in Korea to gather data and deploy patient selection solutions for COVID-19.

METHODS

The platform's structure was developed to provide users with prediction results and to use the data to enhance the prediction models. Two applications were developed: a patient's application and a physician's application. The primary outcome was requiring an oxygen supplement. The outcome prediction model was developed with patients from four centers. A Cox proportional hazards model was developed. The outcome of the model for the patient's application was the length of time from the date of hospitalization to the date of the first oxygen supplement use. The demographic characteristics, past history, patient symptoms, social history, and body temperature were considered as risk factors. A usability study with the Post-Study System Usability Questionnaire (PSSUQ) was conducted on the physician's application on 50 physicians.

RESULTS

The patient's application and physician's application were deployed on the web for wider availability. A total of 246 patients from four centers were used to develop the outcome prediction model. A small percentage (n=18, 7.32%) of the patients needed professional care. The variables included in the developed prediction model were age; body temperature; predisease physical status; history of cardiovascular disease; hypertension; visit to a region with an outbreak; and symptoms of chills, feverishness, dyspnea, and lethargy. The overall C statistic was 0.963 (95% CI 0.936-0.99), and the time-dependent area under the receiver operating characteristic curve ranged from 0.976 at day 3 to 0.979 at day 9. The usability of the physician's application was good, with an overall average of the responses to the PSSUQ being 2.2 (SD 1.1).

CONCLUSIONS

The platform introduced in this study enables evidence-based patient selection in an effortless and timely manner, which is critical in the military. With a well-designed user experience and an accurate prediction model, this platform may help save lives and contain the spread of the novel virus, COVID-19.

摘要

背景

新型冠状病毒肺炎(COVID-19)已被正式宣布为大流行病,病毒的传播对公共卫生系统造成持续压力。有推测认为,不同地区COVID-19死亡率的差异是由于医疗资源可及性的差异。因此,在这种情况下,患者的诊断和治疗选择至关重要。军事人员尤其易患传染病;因此,使用基于证据的预后模型进行患者选择对他们来说至关重要。

目的

本研究旨在评估韩国军事医院使用的一个新型平台的可用性,该平台用于收集数据并为COVID-19部署患者选择解决方案。

方法

该平台的结构旨在为用户提供预测结果,并利用数据改进预测模型。开发了两个应用程序:一个患者应用程序和一个医生应用程序。主要结局是需要吸氧。结局预测模型是根据来自四个中心的患者数据开发的。建立了Cox比例风险模型。患者应用程序模型的结局是从住院日期到首次使用吸氧的时间长度。人口统计学特征、既往史、患者症状、社会史和体温被视为危险因素。对50名医生就医生应用程序进行了一项使用研究后系统可用性问卷(PSSUQ)的可用性研究。

结果

患者应用程序和医生应用程序已在网络上部署,以提高可用性。来自四个中心的246名患者被用于建立结局预测模型。一小部分患者(n = 18,7.32%)需要专业护理。所建立的预测模型纳入的变量包括年龄;体温;病前身体状况;心血管疾病史;高血压;前往有疫情地区;以及寒战、发热、呼吸困难和嗜睡症状。总体C统计量为0.963(95%CI 0.936 - 0.99),接收者操作特征曲线下的时间依赖性面积在第3天为0.976,在第9天为0.979。医生应用程序的可用性良好,PSSUQ的总体平均回复为2.2(标准差1.1)。

结论

本研究中引入的平台能够轻松、及时地实现基于证据的患者选择,这在军事领域至关重要。凭借精心设计的用户体验和准确的预测模型,该平台可能有助于挽救生命并遏制新型病毒COVID-19的传播。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ad14/7644266/4c67feeb7bc4/jmir_v22i11e22131_fig1.jpg

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