An Interactive Dashboard for Statistical Analysis of Intensive Care Unit COVID-19 Data

Rúben Dias, Artur Ferreira, Iola Pinto, Carlos Geraldes, Cristiana P Von Rekowski, Luís Bento
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Abstract

Background: COVID-19 caused a pandemic, due to its ease of transmission and high number of infections. The evolution of the pandemic and its consequences for the mortality and morbidity of populations, especially the elderly, generated several scientific studies and many research projects. Among them, we have the Predictive Models of COVID-19 Outcomes for Higher Risk Patients Towards a Precision Medicine (PREMO) research project. For such a project with many data records, it is necessary to provide a smooth graphical analysis to extract value from it. Methods: In this paper, we present the development of a full-stack Web application for the PREMO project, consisting of a dashboard providing statistical analysis, data visualization, data import, and data export. The main aspects of the application are described, as well as the diverse types of graphical representations and the possibility to use filters to extract relevant information for clinical practice. Results: The application, accessible through a browser, provides an interactive visualization of data from patients admitted to the intensive care unit (ICU), throughout the six waves of COVID-19 in two hospitals in Lisbon, Portugal. The analysis can be isolated per wave or can be seen in an aggregated view, allowing clinicians to create many views of the data and to study the behavior and consequences of different waves. For instance, the experimental results show clearly the effect of vaccination as well as the changes on the most relevant clinical parameters on each wave. Conclusions: The dashboard allows clinicians to analyze many variables of each of the six waves as well as aggregated data for all the waves. The application allows the user to extract information and scientific knowledge about COVID-19’s evolution, yielding insights for this pandemic and for future pandemics.
用于重症监护室 COVID-19 数据统计分析的交互式仪表板
背景:COVID-19 易于传播且感染人数众多,因此引发了一场大流行。该流行病的演变及其对人群(尤其是老年人)死亡率和发病率的影响引发了多项科学研究和许多研究项目。其中包括 "高危患者 COVID-19 结果预测模型,迈向精准医疗(PREMO)"研究项目。对于这样一个拥有大量数据记录的项目,有必要提供流畅的图形分析,以便从中提取价值。方法:在本文中,我们介绍了为 PREMO 项目开发的全栈网络应用程序,包括一个提供统计分析、数据可视化、数据导入和数据导出的仪表板。本文介绍了该应用程序的主要方面,以及各种类型的图形表示法和使用过滤器提取临床实践相关信息的可能性。结果:该应用程序可通过浏览器访问,对葡萄牙里斯本两家医院重症监护室(ICU)住院患者在 COVID-19 六次波次中的数据进行交互式可视化。分析可以按波次单独进行,也可以汇总查看,临床医生可以创建多种数据视图,研究不同波次的行为和后果。例如,实验结果清楚地显示了疫苗接种的效果以及每个波段最相关临床参数的变化。结论该仪表板允许临床医生分析六个波段中每个波段的许多变量以及所有波段的汇总数据。用户可通过该应用程序提取有关 COVID-19 演变的信息和科学知识,从而为此次大流行和未来的大流行提供启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
自引率
0.00%
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