Scotch Matthew, Parmanto Bambang
Center for Biomedical Informatics, University of Pittsburgh, PA 15260, USA.
Int J Med Inform. 2006 Oct-Nov;75(10-11):771-84. doi: 10.1016/j.ijmedinf.2005.10.008. Epub 2005 Dec 15.
The development of numerical-spatial routines is frequently required to solve complex community health problems. Community health assessment (CHA) professionals who use information technology need a complete system that is capable of supporting the development of numerical-spatial routines.
Currently, there is no decision support system (DSS) that is effectively able to accomplish this task as the majority of public health geospatial information systems (GIS) are based on traditional (relational) database architecture. On-Line Analytical Processing (OLAP) is a multidimensional data warehouse technique that is commonly used as a decision support system in standard industry. OLAP alone is not sufficient for solving numerical-spatial problems that frequently occur in CHA research. Coupling it with GIS technology offers the potential for a very powerful and useful system.
A community health OLAP cube was created by integrating health and population data from various sources. OLAP and GIS technologies were then combined to develop the Spatial OLAP Visualization and Analysis Tool (SOVAT).
The synergy of numerical and spatial environments within SOVAT is shown through an elaborate and easy-to-use drag and drop and direct manipulation graphical user interface (GUI). Community health problem-solving examples (routines) using SOVAT are shown through a series of screen shots.
The impact of the difference between SOVAT and existing GIS public health applications can be seen by considering the numerical-spatial problem-solving examples. These examples are facilitated using OLAP-GIS functions. These functions can be mimicked in existing GIS public applications, but their performance and system response would be significantly worse since GIS is based on traditional (relational) backend.
OLAP-GIS system offer great potential for powerful numerical-spatial decision support in community health analysis. The functionality of an OLAP-GIS system has been shown through a series of example community health numerical-spatial problems. Efforts are now focused on determining its usability during human-computer interaction (HCI). Later work will focus on performing summative evaluations comparing SOVAT to existing decision support tools used during community health assessment research.
解决复杂的社区健康问题常常需要开发数值空间程序。使用信息技术的社区健康评估(CHA)专业人员需要一个能够支持数值空间程序开发的完整系统。
目前,没有决策支持系统(DSS)能够有效地完成这项任务,因为大多数公共卫生地理空间信息系统(GIS)基于传统(关系型)数据库架构。在线分析处理(OLAP)是一种多维数据仓库技术,在标准行业中通常用作决策支持系统。仅OLAP不足以解决CHA研究中经常出现的数值空间问题。将其与GIS技术相结合可为构建一个非常强大且实用的系统创造潜力。
通过整合来自各种来源的健康和人口数据创建了一个社区健康OLAP多维数据集。然后将OLAP和GIS技术相结合,开发了空间OLAP可视化与分析工具(SOVAT)。
通过一个精心设计且易于使用的拖放式直接操作图形用户界面(GUI)展示了SOVAT中数值和空间环境的协同作用。通过一系列屏幕截图展示了使用SOVAT解决社区健康问题的示例(程序)。
通过考虑数值空间问题解决示例,可以看出SOVAT与现有GIS公共卫生应用之间差异的影响。这些示例借助OLAP - GIS功能得以实现。这些功能在现有的GIS公共应用中可以模拟,但由于GIS基于传统(关系型)后端,其性能和系统响应会显著更差。
OLAP - GIS系统在社区健康分析中为强大的数值空间决策支持提供了巨大潜力。通过一系列社区健康数值空间问题示例展示了OLAP - GIS系统的功能。目前的工作重点是确定其在人机交互(HCI)过程中的可用性。后续工作将集中于进行总结性评估,将SOVAT与社区健康评估研究中使用的现有决策支持工具进行比较。