Department of Emergency Medicine, Duke University School of Medicine, Durham, NC, 27710, United States of America.
Duke Global Health Institute, Duke University, Durham, NC, 27710, United States of America.
Sci Data. 2023 Apr 6;10(1):188. doi: 10.1038/s41597-023-02085-3.
Remote areas, such as the Amazon Forest, face unique geographical challenges of transportation-based access to health services. As transportation to healthcare in most of the Amazon Forest is only possible by rivers routes, any travel time and travel distance estimation is limited by the lack of data sources containing rivers as potential transportation routes. Therefore, we developed an approach to convert the geographical representation of roads and rivers in the Amazon into a combined, interoperable, and reusable dataset. To build the dataset, we processed and combined data from three data sources: OpenStreetMap, HydroSHEDS, and GloRiC. The resulting dataset can consider distance metrics using the combination of streets and rivers as a transportation route network for the Amazon Forest. The created dataset followed the guidelines and attributes defined by OpenStreetMap to leverage its reusability and interoperability possibilities. This new data source can be used by policymakers, health authorities, and researchers to perform time-to-care analysis in the International Amazon region.
偏远地区,如亚马逊森林,面临着独特的地理挑战,即基于交通的医疗服务获取。由于亚马逊地区的大部分医疗保健只能通过河流路线进行交通,因此任何旅行时间和旅行距离的估计都受到缺乏包含河流作为潜在交通路线的数据来源的限制。因此,我们开发了一种方法,将亚马逊地区的道路和河流的地理表示转换为一个组合的、可互操作的、可重复使用的数据集。为了构建数据集,我们处理和结合了来自三个数据源的数据:OpenStreetMap、HydroSHEDS 和 GloRiC。生成的数据集可以考虑使用街道和河流组合作为亚马逊森林交通路线网络的距离度量。创建的数据集遵循 OpenStreetMap 定义的准则和属性,以利用其可重用性和互操作性的可能性。新数据源可被决策者、卫生当局和研究人员用于分析国际亚马逊地区的护理时间。