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A COVID-19 Risk Assessment Decision Support System for General Practitioners: Design and Development Study

机译:一般从业者的Covid-19风险评估决策支持系统:设计与开发研究

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Background The coronavirus disease (COVID-19) has become an urgent and serious global public health crisis. Community engagement is the first line of defense in the fight against infectious diseases, and general practitioners (GPs) play an important role in it. GPs are facing unique challenges from disasters and pandemics in delivering health care. However, there is still no suitable mobile management system that can help GPs collect data, dynamically assess risks, and effectively triage or follow-up with patients with COVID-19. Objective The aim of this study is to design, develop, and deploy a mobile-based decision support system for COVID-19 (DDC19) to assist GPs in collecting data, assessing risk, triaging, managing, and following up with patients during the COVID-19 outbreak. Methods Based on the actual scenarios and the process of patients using health care, we analyzed the key issues that need to be solved and designed the main business flowchart of DDC19. We then constructed a COVID-19 dynamic risk stratification model with high recall and clinical interpretability, which was based on a multiclass logistic regression algorithm. Finally, through a 10-fold cross-validation to quantitatively evaluate the risk stratification ability of the model, a total of 2243 clinical data consisting of 36 dimension clinical features from fever clinics were used for training and evaluation of the model. Results DDC19 is composed of three parts: mobile terminal apps for the patient-end and GP-end, and the database system. All mobile terminal devices were wirelessly connected to the back end data center to implement request sending and data transmission. We used low risk, moderate risk, and high risk as labels, and adopted a 10-fold cross-validation method to evaluate and test the COVID-19 dynamic risk stratification model in different scenarios (different dimensions of personal clinical data accessible at an earlier stage). The data set dimensions were (2243, 15) when only using the data of patients’ demographic information, clinical symptoms, and contact history; (2243, 35) when the results of blood tests were added; and (2243, 36) after obtaining the computed tomography imaging results of the patient. The average value of the three classification results of the macro–area under the curve were all above 0.71 in each scenario. Conclusions DCC19 is a mobile decision support system designed and developed to assist GPs in providing dynamic risk assessments for patients with suspected COVID-19 during the outbreak, and the model had a good ability to predict risk levels in any scenario it covered.
机译:背景技术冠状病毒病(Covid-19)已成为一种紧迫和严重的全球公共卫生危机。社区参与是对传染病斗争的第一道防守,通用从业者(GPS)在其中发挥着重要作用。 GPS在提供医疗保健时面临着灾难和流行病的独特挑战。但是,仍然没有合适的移动管理系统,可以帮助GPS收集数据,动态评估风险,并有效地与Covid-19患者进行分类或随访。客观本研究的目的是为Covid-19(DDC19)设计,开发和部署基于移动的决策支持系统,以协助GPS收集数据,评估患者在Covid期间与患者进行评估。 -19爆发。方法基于实际情况和使用医疗保健患者的过程,我们分析了需要解决的关键问题,并设计DDC19的主要业务流程图。然后,我们构建了一种具有高召回和临床解释性的Covid-19动态风险分层模型,其基于多种子逻辑回归算法。最后,通过10倍的交叉验证来定量评估模型的风险分层能力,共有2243个临床数据,由来自发热诊所的36个尺寸临床特征组成,用于培训和评估模型。结果DDC19由三部分组成:患者端和GP-END的移动终端应用程序以及数据库系统。所有移动终端设备无线连接到后端数据中心以实现请求发送和数据传输。我们使用低风险,适度的风险和高风险作为标签,采用了一个10倍的交叉验证方法来评估和测试不同场景的Covid-19动态风险分层模型(较早的个人临床数据的不同维度阶段)。只有使用患者人口统计信息,临床症状和接触历史的数据,数据集尺寸为(2243,15); (2243,35)加入血液检测结果时; (2243,36)获得患者的计算断层摄影成像结果后。曲线下宏观区域的三个分类结果的平均值在每种情况下全部高于0.71。结论DCC19是一种移动决策支持系统,设计和开发,以帮助GPS为爆发期间有疑似Covid-19的患者提供动态风险评估,而该模型能够在其覆盖的任何情况下预测风险水平的良好能力。

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