| Literature DB >> 19995449 |
Matthew R McGrail1, John S Humphreys.
Abstract
The Australian Government's recent decision to replace the Rural Remote and Metropolitan Area (RRMA) classification with the Australian Standard Geographical Classification - Remoteness Areas (ASGC-RA) system highlights the ongoing significance of geographical classifications for rural health policy, particularly in relation to improving the rural health workforce supply. None of the existing classifications, including the government's preferred choice, were designed specifically to guide health resource allocation, and all exhibit strong weaknesses when applied as such. Continuing reliance on these classifications as policy tools will continue to result in inappropriate health program resource distribution. Purely 'geographical' classifications alone cannot capture all relevant aspects of rural health service provision within a single measure. Moreover, because many subjective decisions (such as the choice of algorithm and breakdown of groupings) influence a classification's impact and acceptance from its users, policy-makers need to specify explicitly the purpose and role of their different programs as the basis for developing and implementing appropriate decision tools such as 'rural-urban' classifications. Failure to do so will continue to limit the effectiveness that current rural health support and incentive programs can have in achieving their objective of improving the provision of health care services to rural populations though affirmative action programs.Entities:
Year: 2009 PMID: 19995449 PMCID: PMC2796649 DOI: 10.1186/1743-8462-6-28
Source DB: PubMed Journal: Aust New Zealand Health Policy ISSN: 1743-8462
Summary of strengths and weaknesses of the RRMA, ARIA and ASGC Remoteness classifications
| Classification | Strengths | Weaknesses |
|---|---|---|
| • RRMA is a simple tool to apply both for research and administration purposes, including the allocation of health resources. | • The restriction to SLA boundaries, resulting in large, heterogeneous areas being equally classified. | |
| • Due to the strong influence of population size, RRMA often equally classifies towns of similar size (intuitive). | • The use of straight-line distances and SLA centroids, which can result in highly imprecise measures. | |
| • The use of three zones (metropolitan, rural and remote) is reasonably logical. | • The use of population density is meaningless because of the varying size and nature of SLA boundaries. | |
| • RRMA is preferred by many national organisations over ASGC Remoteness | • RRMA has never been updated and still uses 1991 population counts. | |
| • The flexibility to measure remoteness at any geographic boundary level by using a one kilometre grid. | • Only measures geographical remoteness, giving many examples of highly dissimilar towns having the same classification (e.g. Port Macquarie and Gundagai). | |
| • The additional precision from using road distances and service town locations, rather than straight line distances and SLA centroids. | • The separation of the five remoteness categories is somewhat subjective. | |
| • The clearer conceptualisation of measuring only geographical remoteness of localities (e.g. not muddied by also measuring density). | • Penalises smaller, more densely populated states (e.g. over 75% of rural Victoria's population is defined as 'highly accessible'. | |
| • Use of the category label 'accessible' and the term 'accessibility' within its name (it is not a measure of access) | ||
| • All points listed under ARIA, plus: | • All points listed under ARIA (except the last point), plus: | |
| • More refined methodology (additional service centre category, better separation of major cities) | • Extreme heterogeneity within some areas, especially Inner Regional and sometimes Outer Regional | |
| • A change of labels including the use of 'regional' rather than 'accessible' | ||
| • Updated by ABS as part of the ASGC | ||
Summary of decisions required regarding important characteristics of geographical classifications
| Important characteristics | Decisions required - sources of subjectivity |
|---|---|
| Be clear on specific objectives and purpose of the classification as this determines what is being measured | Is it remoteness, isolation, access, disadvantage, rurality or something else? If it is an access classification, then what aspect of access is being measured, and in relation to what service - (e.g. GPs as a measure of primary care) |
| The choice of algorithm or procedure for grouping similar clusters matters | Accessibility can be measured by distance to nearest service, service provider to population ratios, or increasingly sophisticated methods such as floating catchments and distance-decay |
| The criteria and cut-off points underpinning groups matters | How many groups do you want? At what point do you differentiate between groups? (e.g. Is the decision based on minimising within-group and maximising between- group variance, or is the number arbitrarily defined by convenience for the end-user?) |
| The choice of spatial units matters | RRMA is often criticised for its use of Statistical Local Areas (which can be large in rural areas), but the more extreme use of 1 km grids such as ASGC-RA is typically not an option for most data required. |