How to use GIS in Disease spreading?
Why is it important to use GIS for Disease mapping?
Mapping disease outbreaks provides critical opportunities to leverage Geographic Information Systems (GIS) for pandemic response, analysis, and decision-making.
Steps to Add GIS Data to an Online Map
Choose an Online Mapping Tool
Choose an online platform to perform the basic needs for creating maps, adding layers and data visualization.
Online mapping platforms are powerful tools that combine geographic data, visualization, and interactivity to solve real-world problems across industries.
There are user-friendly websites for beginners as well as professional users like MAPOG. Where it provides different types of build-in tools.
Prepare Your Data
To prepare GIS data, download the required data in csv, kml. Shapefile or geojason format.
Organize your data layers based on their thematic importance, like roads, administrative boundaries, or climate zones.
Most platforms provide an option to upload or import GIS data directly. Ensure the spatial attributes are preserved during upload.
3. Steps for preparing mapping
By applying these simple steps in MAPOG one can easily make disease spreading maps.
To upload boundary ‘add upload’ > upload vector file to add area of interest > select the vector file > open > upload.
Upload csv data that has latitude and longitude > upload csv file > open > publish.
To change the symbols and color click > ‘Action’ > edit feature > change according to preference for both the layers.
Steps to add polygon in the disease affected area using “point to polygon”
By applying “points to polygon”, it shows the area that is affected.
Click “processing tool” > select “point to polygon” > select the point layer data > click “convert”.
Click the “action” button > rename > style editor > change the symbols and colours.
Conclusion
The purpose of using online map making is to research and make maps affordable, user-friendly, its simplicity and collaborative features make it ideal for individuals that need quick sharable maps without heavy investment in training or setups. Finally, future trends like AI integration mapping show the evolving nature of these platforms.












