| Literature DB >> 31640737 |
Vicki Brown1, Alison Barr2, Jan Scheurer3, Anne Magnus4, Belen Zapata-Diomedi5, Rebecca Bentley2.
Abstract
BACKGROUND: Physical inactivity is a global public health problem, partly due to urbanization and increased use of passive modes of transport such as private motor vehicles. Improving accessibility to public transport could be an effective policy for Governments to promote equity and efficiency within transportation systems, increase population levels of physical activity and reduce the negative externalities of motor vehicle use. Quantitative estimates of the health impacts of improvements to public transport accessibility may be useful for resource allocation and priority-setting, however few studies have been published to inform this decision-making. This paper aims to estimate the physical activity, obesity, injury, health and healthcare cost-saving outcomes of scenario-based improvements to public transport accessibility in Melbourne, Australia.Entities:
Year: 2019 PMID: 31640737 PMCID: PMC6805526 DOI: 10.1186/s12966-019-0853-y
Source DB: PubMed Journal: Int J Behav Nutr Phys Act ISSN: 1479-5868 Impact factor: 6.457
Fig. 1Logic pathway for health impact assessment.
HALYs = Health-adjusted life years. PT = public transport. SNAMUTS = Spatial Network Analysis for Multimodal Transport Systems
Key model input parameters
| Parameters | Data source and assumptions |
|---|---|
| Mean number of PT trips per day, by sex, age group and SNAMUTS category | Sampled from a lognormal distribution [ (Additional file |
| Mean distance (km), combined PT access/egress by sex and SNAMUTS category | Sampled from a lognormal distribution [ (Additional file |
| Mean distance trips by private motor vehicle (km) by sex and SNAMUTS category | Sampled from a lognormal distribution [ (Additional file |
| Marginal MET walking from house to car or bus, from car or bus to go places, from car or bus to and from worksite | Sampled from a lognormal distribution, MET value of 2.5 (walking from house to car or bus, from car or bus to and from worksite) with standard deviation 0.75. Sensitivity analysis MET value 4 (walking to work or class), standard deviation 1.6. Values adjusted for inactivity [ |
| Total population estimates (population numbers, mortality rates, BMI distribution, PA levels) | Australian Bureau of Statistics [ |
| Disease epidemiology, disability weights | Salomon et al. 2012 [ |
| Relative risks, total years of life lived with disability | Relative risk uncertainty SE(logRR), Institute for Health Metrics and Evaluation [ |
| Relative risks of PA-related diseases by risk categories | Relative risk uncertainty SE(logRR), Danaei et al. 2009 [ |
| Disease healthcare costs | Australian Institute of Health and Welfare [ |
| Health Price Index | Australian Institute of Health and Welfare [ |
| Transport-related mortality | Australian Road Deaths Database [ |
| Transport-related serious injury | Henley et al. 2012 [ |
Table notes: BMI body mass index, Km kilometres, MET metabolic equivalent task, PA physical activity, PT public transport, RR relative risk, SE standard error, SNAMUTS Spatial Network Analysis for MultiModal Urban Transport Systems
Fig. 2SNAMUTS Composite Index: Baseline Scenario, Scenario 1 and Scenario 2, Metropolitan Melbourne.
SNAMUTS = Spatial Network Analysis for Multimodal Transport Systems
Results from health impact modelling over the lifetime (n = 2,832,241), Scenario 1 and 2
| Results | Scenario 1 | Scenario 2 | ||||
|---|---|---|---|---|---|---|
| Base case | Sensitivity | Base case | Sensitivity | |||
| Higher MET value | 10 years to effect | Higher MET value | 10 years to effect | |||
| Total life years gained | 346 (110–872) | 707 (205–1689) | 240 (74–584) | 4244 (2580-7428) | 8545 (5046–15,422) | 1451 (436–3592) |
| Total health-adjusted life years gained | 553 (172–1354) | 1132 (325–2686) | 373 (114–926) | 5431 (3062–9805) | 10,912 (5990–21,227) | 2153 (663–5128) |
| Total healthcare cost-savings | AUD6M (AUD2M–15 M) | AUD13M (AUD4M–30 M) | AUD4M (AUD1M–10 M) | AUD49M (AUD24M–98 M) | AUD99M (AUD47M–211 M) | AUD23M (AUD8M–56 M) |
| Difference in transport injury-related mortality* (absolute number) | 1 (1–2) | 1 (1–2) | 1 (1–1) | −4 (− 3 to − 5) | − 4 (− 2 to − 6) | −16 (− 17 to − 15) |
| Difference in transport injury-related morbiditya (absolute number) | − 195 (− 192 to − 196) | − 193 (− 188 to − 195) | − 199 (− 197 to − 200) | − 1166 (− 1149 to − 1174) | − 1166 (− 1137 to − 1179) | − 1198 (− 1204 to − 1185) |
Table notes: a minus means transport injury-related morbidity or mortality savings. AUD: 2010 Australian dollars; M million, MET metabolic equivalent task. Values are absolute values for the cohort