Ola Oluwakemi, Sedig Kamran
Insight Lab, Western University, Canada.
Online J Public Health Inform. 2016 Dec 28;8(3):e195. doi: 10.5210/ojphi.v8i3.7100. eCollection 2016.
Health data is often big data due to its high volume, low veracity, great variety, and high velocity. Big health data has the potential to improve productivity, eliminate waste, and support a broad range of tasks related to disease surveillance, patient care, research, and population health management. Interactive visualizations have the potential to amplify big data's utilization. Visualizations can be used to support a variety of tasks, such as tracking the geographic distribution of diseases, analyzing the prevalence of disease, triaging medical records, predicting outbreaks, and discovering at-risk populations. Currently, many health visualization tools use simple charts, such as bar charts and scatter plots, that only represent few facets of data. These tools, while beneficial for simple perceptual and cognitive tasks, are ineffective when dealing with more complex sensemaking tasks that involve exploration of various facets and elements of big data simultaneously. There is need for sophisticated and elaborate visualizations that encode many facets of data and support human-data interaction with big data and more complex tasks. When not approached systematically, design of such visualizations is labor-intensive, and the resulting designs may not facilitate big-data-driven tasks. Conceptual frameworks that guide the design of visualizations for big data can make the design process more manageable and result in more effective visualizations. In this paper, we demonstrate how a framework-based approach can help designers create novel, elaborate, non-trivial visualizations for big health data. We present four visualizations that are components of a larger tool for making sense of large-scale public health data.
健康数据因其高容量、低准确性、多样性大及高速度,往往属于大数据。大型健康数据有提高生产力、消除浪费以及支持与疾病监测、患者护理、研究和人群健康管理相关的广泛任务的潜力。交互式可视化有扩大大数据利用的潜力。可视化可用于支持各种任务,如追踪疾病的地理分布、分析疾病流行情况、对医疗记录进行分类、预测疫情爆发以及发现高危人群。目前,许多健康可视化工具使用简单图表,如柱状图和散点图,这些图表仅呈现数据的很少方面。这些工具虽然对简单的感知和认知任务有益,但在处理涉及同时探索大数据的各个方面和元素的更复杂的理解任务时却无效。需要复杂精细的可视化,其对数据的多个方面进行编码,并支持人与大数据的交互以及更复杂的任务。如果不系统地进行处理,此类可视化的设计会耗费大量人力,且最终设计可能无法促进大数据驱动的任务。指导大数据可视化设计的概念框架可使设计过程更易于管理,并产生更有效的可视化。在本文中,我们展示了基于框架的方法如何帮助设计师为大型健康数据创建新颖、精细且重要的可视化。我们展示了四个可视化,它们是用于理解大规模公共卫生数据的更大工具的组成部分。