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The Application of Fair Shares for All to Family Health Service Expenditure

The Application of Fair Shares for All to Family Health Service Expenditure. National Resource Allocation Committee August 2005. Agenda. Background to the review Conceptual approach Utilisation data versus the epidemiological approach Cross boundary flow Summary. Aim.

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The Application of Fair Shares for All to Family Health Service Expenditure

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  1. The Application of Fair Shares for All to Family Health Service Expenditure National Resource Allocation Committee August 2005

  2. Agenda • Background to the review • Conceptual approach • Utilisation data versus the epidemiological approach • Cross boundary flow • Summary

  3. Aim • To present work on extending the Fair Shares For All (FSFA) methodology into Family Health Services (FHS) on behalf of the FHS Advisory Group • To provide a broad conceptual overview of our approach • To highlight one or two key issues for discussion • To identify areas for further detailed discussion with NRAC given the quantum of research

  4. Background Deloitte was commissioned in September 2004 to develop a series of needs based formulae for the allocation of three FHS budgets1: Pharmaceutical Services (PS) £117m Primary and Community Dental Services General Dental Service (GDS) £199m Community Dental Service (CDS) £ 32m General Ophthalmic Services (GOS) £ 36m Total (2003/04) £384m 1The research was based on a specification from September 2002

  5. Current Financial Arrangements The FHS budget is currently allocated to each NHS Board based on historical expenditure (the CDS budget is allocated as part of the community formula and the GMS budget has a dedicated formula). These were not covered in the original Fair Shares for All review because it was considered impractical within the timescales: ‘there was a consensus that these smaller elements…should be examined at a later date in the medium term future, once the methods for distributing larger budgets had been decided’ The aim of this work is to ensure that resources are distributed equitably across Scotland reflecting the population’s relative need for resources rather than reflecting the current pattern and location of services.

  6. Legislative & Policy Context There has been a substantial volume of policy and legislative change within FHS over the past few years: • The development of a new community pharmacy contract (Pharmaceutical Care Services). This will place an increased emphasis on pharmaceutical care in addition to dispensing. This may influence patterns of service utilisation over time and have implications for the development of a PCS formula. • The extension of free sight tests and dental check up to all as outlined in the Smoking, Health and Social Care Bill 2004. These changes will influence the range of people eligible for NHS treatment and thus need for NHS resources. Whilst the need for FHS resources should not be influenced by policy decisions per se, the development of the formulae will need to take cognisance of these changes and be flexible

  7. What’s different about FHS? • There is a mixed economy of provision with a high proportion of services provided by private sector contractors. The public sector provides a safety net function (particularly in rural areas) • Services are not universally free for all with co-payment for certain services • There is a large private sector market • A high proportion of contractors income is from non-NHS sources (pharmacy c10%, dentistry c50%, ophthalmic >50%) • Patients have a greater choice and more importantly ease of choice regarding provider • Contractors do not have a defined/registered population (likewise NHS Boards have a responsibility for services not a defined resident population)

  8. Conceptual Framework We adopted standard capitation techniques based on the FSFA approach. However, we tailored this approach depending upon the characteristics of each service and data availability. We applied five adjustments: • the population share of the NHS Board • the age and sex characteristics of the population • the morbidity and life circumstances of the population • an adjustment for unavoidable costs to reflect the additional cost of providing services in remote areas • an adjustment for the extent of cross boundary flow However, we did not necessarily apply each adjustment to each component of each formulae (as discussed below).

  9. Pharmaceutical Services • Due to different need profile and fee structure we separated this expenditure • This was applied across both sub-programmes • The Group recognised the limitations of this approach and that new data may soon be available

  10. General Ophthalmic Services • The Sight Test programme will soon be free for all • Defined using eligibility criteria and presented separately as expenditure is based on ‘take up rates’’ • We incorporate no explicit MLC adjustment

  11. Primary and Community Dentistry • Separate Adult and Child programmes were used mainly to reflect different fee structures • Orthodontic need was specified separately as no MLC was applied • Edentate and dentate populations have very different needs, we used survey data to determine the size of each population

  12. The Data Mountain We blended mountains of administrative, survey and expenditure data: • Administrative Data: we used whole data extracts from MIDAS (GDS system), OPTIX (GOS system), SMR13 (CDS system) and the Prescribing Information System • CHI Matched Data: original research by ISD Scotland enabled the matching of the CHI register to OPTIX and MIDAS (4m plus observations) • Epidemiological Data: DHSRU released data on three national child dental health surveys (22,000 observations) • Survey Data: we used data from the Scottish Health Survey, the UK Adult Dental Health Survey and Health Education Population Survey • Benefit/Credit Data: 3 of the first 10 FoI requests to DWP related to this study • Other Data: population, expenditure, contractor locations, census, earnings surveys, clinical literature etc

  13. A Hybrid Approach We took a pragmatic view of the best way of developing a needs based formula using both utilisation and epidemiological data when appropriate. In general we preferred to use utilisation data unless it was considered ‘too problematic’: • we used utilisation data to generate the age and sex adjustment in all three formulae. We assumed that on average the pattern of resource use across age reflects the relative need for resources. • we used epidemiological data for the construction of the MLC adjustment in the dental formula only. We assume that the gradient of resource need across deprivation was proportional to dental health need.

  14. Pitfalls of Utilisation Data The FHS Advisory Group was concerned regarding the use of data from the GDS for constructing a capitation formula (MIDAS): • Treatment claims are influenced by fee structures • Administrative datasets are not comprehensive • No patient location identifiers were available • Co-payment for services may deter certain groups from accessing services The use of dental services was not considered an adequate approximation for the need for resources. For example, people in more deprived areas use dental services the least despite all measures of poor dental health being higher in deprived areas (the ‘inverse care law’). No amount of ‘unmet needing’ would address this fundamental issue2. 2These drawbacks applied to the development of an age and sex adjustment but particularly to the development of an MLC adjustment.

  15. Determinants of Dental Visits • If you live in a more ‘educationally’ deprived area you are less likely to visit your dentist • Behavioural variables are important determinants • If you have no teeth you have poor dental health but less need to visit the dentist

  16. The Epidemiological Approach • We used a standard measure of dental health (a count of decayed, missing and filled teeth) as a proxy for dental health • We used data from 3 child dental health surveys to develop an age and sex standardised dmft score for each small area in Scotland (22,000 observations) • We regressed this on a series of area level explanatory variables including supply variables and socio-economic variables • A number of the Scottish Index of Multiple Deprivation (SIMD) domains were significantly related to dental health, particularly the education deprivation domain (note the NRRA index was not a good explanatory variable) • We used this model to calculated the MLC adjustment for both Child and Adult sub-programmes

  17. Dental Health and Deprivation

  18. Issues with the Approach Problems • there may not be a proportionate relationship between epidemiological indicators of need and the need for resources, for example, an individual with a dmft score of two does not necessarily need twice the resources as the individual with a score of one • those with a dmft score of zero still need resources for preventative care Positives • the metric is easy to understand and has a clear link to dental health • there are fewer issues with ‘tails of the distribution’ (i.e. the influence of unmet need or private practice) • the relationship looks about right

  19. Cross Boundary Flow • NHS Boards have a statutory responsibility to pay for services provided in their area, not for services only to their resident population • Patients have a greater freedom of movement which makes it difficult to assess whether an area is relatively under or over provided with services • For example, a city centre may appear to be over funded relative to need because patients may ‘commute’ across boundaries to visit a contractor • The extent of cross boundary flow has never been examined prior to this study due to data constraints • The results are very interesting and the interpretation challenging

  20. Cross Boundary Flow • These data illustrate the fluidity of the FHS market, for example: • the median number of ‘feeder’ areas for each dental list is 27 • the median number of ‘feeder’ GPs for a community pharmacist is 78 • one dental list contained patients from 275 different areas • one high street pharmacist in a city centre saw patients from over 700 GP practices (note there are only 1,000 in Scotland) • We could only match data from OPTIX (GOS) to NHS Board of treatment so are unable to provide a similar profile for each optician location • The adjustment is not based on the simple percentage of the population crossing boundaries (i.e. inflow – outflow), but takes into account the need profile of the small area from which patients originate

  21. Cross Boundary Flow Adjustment

  22. Cross Boundary Flow • The results illustrate the extent of cross boundary flow for the first time • It could be argued that the adjustment is not reflecting need but supply restrictions in certain areas (particularly in the dental formula) • On the other hand the flow could illustrate patient preferences for treatment locations or simply optimal locations from a retailing perspective (for example, in the GOS a high proportion of fees are from non-NHS sources) • Without this information it is difficult to assess the relative provision of services in each NHS Board

  23. Summary • As with any research we identify almost as many questions has we answer: • How should the cross boundary flow adjustment be interpreted? • Is utilisation data robust enough for generating the age and sex adjustment? • Does resource use increase in proportion to dental health? • Is the unavoidable cost adjustment reinforcing traditional service delivery patterns? • We consider that we have taken these issues at least ‘90% of the way’ • What happens next?

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