The visual modeling method enables flexible interactions with rich graphical depictions of data and supports the exploration of the complexities of epidemiological analysis. However, most epidemiology visualizations do not support the combined analysis of objective factors that might influence the transmission situation, resulting in a lack of quantitative and qualitative evidence. To address this issue, we have developed a portrait-based visual modeling method called +msRNAer. This method considers the spatiotemporal features of virus transmission patterns and the multidimensional features of objective risk factors in communities, enabling portrait-based exploration and comparison in epidemiological analysis. We applied +msRNAer to aggregate COVID-19-related datasets in New South Wales, Australia, which combined COVID-19 case number trends, geo-information, intervention events, and expert-supervised risk factors extracted from LGA-based censuses. We perfected the +msRNAer workflow with collaborative views and evaluated its feasibility, effectiveness, and usefulness through one user study and three subject-driven case studies. Positive feedback from experts indicates that +msRNAer provides a general understanding of analyzing comprehension that not only compares relationships between cases in time-varying and risk factors through portraits but also supports navigation in fundamental geographical, timeline, and other factor comparisons. By adopting interactions, experts discovered functional and practical implications for potential patterns of long-standing community factors against the vulnerability faced by the pandemic. Experts confirmed that +msRNAer is expected to deliver visual modeling benefits with spatiotemporal and multidimensional features in other epidemiological analysis scenarios.
翻译:可视化建模方法允许与丰富的数据图形化描述进行灵活交互,并支持探索流行病学分析的复杂性。然而,大多数流行病学视觉化未支持影响传播情况的客观因素的组合分析,导致缺乏定量和定性证据。为解决这个问题,我们开发了一种基于画像的视觉建模方法,称为+msRNAer。该方法考虑了病毒传播模式的时空特征和社区客观风险因素的多维特征,实现了基于画像的流行病学分析的探索和比较。我们将+msRNAer应用于澳大利亚新南威尔士的聚合COVID-19相关数据集中,这些数据集结合了COVID-19病例数量趋势、地理信息、干预事件和从LGA人口普查中提取的专家监督风险因素。我们通过协作视图完善了+msRNAer的工作流程,并通过一项用户研究和三项主题驱动的案例研究评估了其可行性、有效性和有用性。专家的积极反馈表明,+msRNAer提供了分析理解的总体认识,不仅比较了时变和风险因素之间的关系,而且还支持在基本的地理、时间线和其它因素之间的导航。通过采用交互,专家发现了对抗疫情所面临的潜在长期社区因素的功能和实际意义。专家确认,+msRNAer预计将在其他流行病学分析场景中提供具有时空和多维特征的视觉建模的益处。