Self-Organizing Map Methodology and Google Maps Services for Geographical Epidemiology Mapping

Jingyuan Zhang, Hao Shi, Yanchun Zhang
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引用次数: 20

Abstract

The Health Geographical Information System (GIS) has been used in many organizations for the management and visualization of public health data. As epidemiology information has become a part of health data repository in the health data management system, many health researchers have dedicated their research areas to geographical epidemiology information analysis and visualization. The Population Health Epidemiology Unit of the Department of Health and Human Services (DHHS) in Tasmania uses the web-based epidemiology system (‘WebEpi’) to conduct monitoring and surveillance of the health of Tasmanian population. In this paper, the epidemiology data Self-Organizing Map (SOM) analysis methodology and Google Maps services techniques of WebEpi are presented. SOM has been used as a tool to recognize patterns with data sets measuring epidemiology data and related geographical information. Google Maps services offer Web GIS Application Programming Interface (API) and GIS views. The integration of SOM and Google Maps facilitates the epidemiology data pattern recognition and geo-visualization which enables health research to be conducted in a novel and effective way.
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用于地理流行病学制图的自组织地图方法论和谷歌地图服务
卫生地理信息系统(GIS)已被许多组织用于公共卫生数据的管理和可视化。随着流行病学信息在卫生数据管理系统中成为卫生数据存储库的一部分,许多卫生研究人员致力于地理流行病学信息的分析和可视化。塔斯马尼亚州卫生和人类服务部人口健康流行病学股使用基于网络的流行病学系统(" WebEpi ")对塔斯马尼亚人口的健康进行监测和监督。本文介绍了流行病学数据自组织图(SOM)分析方法和WebEpi的谷歌地图服务技术。SOM已被用作识别具有测量流行病学数据和相关地理信息的数据集的模式的工具。谷歌地图服务提供Web GIS应用程序编程接口(API)和GIS视图。SOM和谷歌地图的集成促进了流行病学数据模式识别和地理可视化,使健康研究能够以一种新颖有效的方式进行。
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