| Literature DB >> 20109172 |
Satoshi Sasaki1, Alexis J Comber, Hiroshi Suzuki, Chris Brunsdon.
Abstract
BACKGROUND: Ambulance response time is a crucial factor in patient survival. The number of emergency cases (EMS cases) requiring an ambulance is increasing due to changes in population demographics. This is decreasing ambulance response times to the emergency scene. This paper predicts EMS cases for 5-year intervals from 2020, to 2050 by correlating current EMS cases with demographic factors at the level of the census area and predicted population changes. It then applies a modified grouping genetic algorithm to compare current and future optimal locations and numbers of ambulances. Sets of potential locations were evaluated in terms of the (current and predicted) EMS case distances to those locations.Entities:
Mesh:
Year: 2010 PMID: 20109172 PMCID: PMC2828441 DOI: 10.1186/1476-072X-9-4
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Demographic breakdown of pre-hospital emergency cases services from April to December 2007.
| Emergency cases (n = 21,211) | ||
|---|---|---|
| Category | No of users (%) | Monthly users per 1,000 |
| Age Group | ||
| 0--4 | 841 (4.0) | 2.77 |
| 5--9 | 346 (1.6) | 1.04 |
| 10--14 | 322 (1.5) | 0.92 |
| 15--19 | 733 (3.5) | 1.79 |
| 20--24 | 954 (4.5) | 2.20 |
| 25--29 | 872 (4.1) | 1.86 |
| 30--34 | 876 (4.1) | 1.63 |
| 35--39 | 874 (4.1) | 1.83 |
| 40--44 | 704 (3.3) | 1.55 |
| 45--49 | 760 (3.6) | 1.67 |
| 50--54 | 892 (4.2) | 1.67 |
| 55--59 | 1,399 (6.6) | 2.35 |
| 60-64 | 1,254 (5.9) | 2.71 |
| 65-69 | 1,428 (6.7) | 3.42 |
| 70-74 | 1,676 (7.9) | 4.38 |
| 75-79 | 2,083 (9.8) | 6.54 |
| 80-84 | 2,055 (9.7) | 9.89 |
| 85 and over | 2,585 (12.2) | 13.96 |
| Unknown | 557 (2.6) | |
| Sex | ||
| Male | 10,791 (50.9) | 3.05 |
| Female | 9,847 (46.4) | 2.60 |
| Unknown | 573 (2.7) | |
Figure 1Estimated and future demands of prehospital medical emergency services from 2010 to 2040. Note: Emergency cases in each census small area (y) were projected with the no of population of 0-4 years (x1), the no of population of 15-64 years (x2), no of population of 80 and over (x3) and the no of companies with more than five employees (x4), based on the predicted model: y = 0.006*x1+0.021*x2+0.102*x3+0.433*x4-0.268.
Figure 2Emergency cases and current and optimal ambulance locations with their catchment areas. a) Distribution of emergency cases and 35 fire stations (potential ambulance locations). b) Current location of 27 ambulances. c) The optimal location of 27 ambulance stations based on emergency cases in 2007. d) The optimal location of 27 ambulance stations based on predicted emergency cases for 2030. The following legend applies to figures 3c) and 3d): solid circle - optimal locations that are the same as current locations; ringed circle - new locations; hollow circle with a cross - current sites not selected during optimisation.
Figure 3A comparison of the optimised location for . These are evaluated against current emergency cases in 2007 (top) and predicted emergency cases in 2030 (bottom). The size of the point indicates the 'demand' in terms of emergency case distances.