| Literature DB >> 27818989 |
Malcolm Campbell1, Dimitris Ballas2.
Abstract
This paper presents applied geographical research based on a spatial microsimulation model, SimAlba, aimed at estimating geographically sensitive health variables in Scotland. SimAlba has been developed in order to answer a variety of "what-if" policy questions pertaining to health policy in Scotland. Using the SimAlba model, it is possible to simulate the distributions of previously unknown variables at the small area level such as smoking, alcohol consumption, mental well-being, and obesity. The SimAlba microdataset has been created by combining Scottish Health Survey and Census data using a deterministic reweighting spatial microsimulation algorithm developed for this purpose. The paper presents SimAlba outputs for Scotland's largest city, Glasgow, and examines the spatial distribution of the simulated variables for small geographical areas in Glasgow as well as the effects on individuals of different policy scenario outcomes. In simulating previously unknown spatial data, a wealth of new perspectives can be examined and explored. This paper explores a small set of those potential avenues of research and shows the power of spatial microsimulation modeling in an urban context.Entities:
Keywords: Scotland; geographic information systems; health policy; small area microdata; spatial microsimulation; urban health inequalities
Year: 2016 PMID: 27818989 PMCID: PMC5073091 DOI: 10.3389/fpubh.2016.00230
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Reference map.
Figure 8Validation results.
Figure 2GHQ score 4 or more (“unhappy”).
Figure 3Obesity.
Figure 4Alcohol consumption over daily limit (men).
Figure 5Heavy smokers.
Figure 6Combined high risk map.
Figure 7Low income and smoking.