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Geographical Variation in
Medical Expenditures: What
Varies, How Much and Where
University of Western
Sydney
•
•
•
•

Federico Girosi
Xiaoqi Feng
Louisa Jorm
Thomas Astell-Burt

Australian National
University
•
•
•
•

Ian McRae
Soumya Mazumdar
Danielle Butler
Paul Konings
why study geographic cost variation?
variation may have
different sources
• unobservable
features
• access to care
• use of
guidelines/technolo
gies
• …
geographic variation
may point to inefficient
use of resources
first in a series of investigations
in geographic variation of costs
Today we focus on yearly total GP expenditures
We document variation in total expenditures at
individual and geographic level
We relate variation in expenditures to variation in visits
and price
We look at the role of remoteness in explaining
variation across Statistical Local Areas (SLAs)
data and methods
45 and Up data linked
to MBS data

• accessed through SURE

GP services: MBS
items representative
of primary care

• 85% of claims: consultation level B, C and A

yearly expenditures
and visits

• 6 months around interview date
• cost is expressed in constant 2012 $

All regression are OLS

• Ellis et al. (2013) already showed it is preferable
• our results are not dependent on specific method
definition of key variables
• Charge: how much was charged by the
physician

Ci: charge for visit i

n: number of visits in a year
Variation in charges across SLAs
Average per capita
yearly charges for
GP services

average NSW charge

Adjusted for:
• age
• sex
• SES
• health status
• risk factors
What does this figure suggest?

After controlling for individual
characteristics there is
significant variation in annual
GP charges across SLAs
• Ratio of 95th to 5th percentile
in charges is 1.6

Remoteness will play a role in
explaining the observed
pattern
• Charges in cities are 31%
larger than charges in outer
regions
what varies? Visits or Prices?
Log(Charge) = log(Price) + log(Visits)
We run three regressions at individual level:
Log(Charge) = βX

R2=0.23

Log(Charge) = log(Price) + βX

R2=0.30

Log(Charge) = βX + log(Visits)

R2=0.92

It is visits that drives variation in charges
this remains true even for specific MBS items
What explains the variation
at individual level?
Covariates:
• age
• sex
• SES
• health status
• risk factors
• SLA
What explains the variation
across SLAs at aggregate level?

Charge (R2 = 0.45)

Visits (R2 = 0.39)

Price (R2 = 0)

Estimate

t value

Estimate

t value

Estimate

t value

(Intercept)

394.7

107.3

8.1

86.6

46.9

140.5

Inner regional

-56.6

-9

-1.3

-8.2

0.2

0.3

-10.8

-2.1

-9.3

-0.2

-0.3

-1.7

-1.4

-1.9

0.9

0.3

Outer regional -94.9
Remote

-46.5
Summary
There is significant variation in GP expenditures
across SLAs unexplained by individual characteristics
The variation is due to variation in the number of GP
visits, rather than in the average price per visit
Observed individual characteristics explain 20% of
the variance in GP expenditures

Remoteness explains a large proportion of the
variance in aggregate SLA GP expenditures
Additional Material
Variation of SLA means
Charge
Mean
366
Ratio of 99th to 1st percentile
2.15
Ratio of 75th to 25th percentile
1.21
Coefficient of variation
0.14
R squared
0.20

Visits
7.5
2.18
1.27
0.17
0.24

Price
47
1.39
1.10
0.08
0.09
Focus on a specific item: 23
(level B consultation)
Log(Charge) = log(Price) + log(Visits)
We run three regressions:
Log(Charge) = βX

R2=0.16

Log(Charge) = log(Price) + βX

R2=0.18

Log(Charge) = βX + log(Visits)

R2=0.95

It is visits that drives variation in charges
Remoteness Is Likely to Play an
Important Role in the Analysis

Adjusted for:
• age
• sex
• SES
• health status
• risk factors

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Federico Girosi | Geographic variation in medical expenditures for GP services in NSW older adults

  • 1. Geographical Variation in Medical Expenditures: What Varies, How Much and Where University of Western Sydney • • • • Federico Girosi Xiaoqi Feng Louisa Jorm Thomas Astell-Burt Australian National University • • • • Ian McRae Soumya Mazumdar Danielle Butler Paul Konings
  • 2. why study geographic cost variation? variation may have different sources • unobservable features • access to care • use of guidelines/technolo gies • … geographic variation may point to inefficient use of resources
  • 3. first in a series of investigations in geographic variation of costs Today we focus on yearly total GP expenditures We document variation in total expenditures at individual and geographic level We relate variation in expenditures to variation in visits and price We look at the role of remoteness in explaining variation across Statistical Local Areas (SLAs)
  • 4. data and methods 45 and Up data linked to MBS data • accessed through SURE GP services: MBS items representative of primary care • 85% of claims: consultation level B, C and A yearly expenditures and visits • 6 months around interview date • cost is expressed in constant 2012 $ All regression are OLS • Ellis et al. (2013) already showed it is preferable • our results are not dependent on specific method
  • 5. definition of key variables • Charge: how much was charged by the physician Ci: charge for visit i n: number of visits in a year
  • 6. Variation in charges across SLAs Average per capita yearly charges for GP services average NSW charge Adjusted for: • age • sex • SES • health status • risk factors
  • 7. What does this figure suggest? After controlling for individual characteristics there is significant variation in annual GP charges across SLAs • Ratio of 95th to 5th percentile in charges is 1.6 Remoteness will play a role in explaining the observed pattern • Charges in cities are 31% larger than charges in outer regions
  • 8. what varies? Visits or Prices? Log(Charge) = log(Price) + log(Visits) We run three regressions at individual level: Log(Charge) = βX R2=0.23 Log(Charge) = log(Price) + βX R2=0.30 Log(Charge) = βX + log(Visits) R2=0.92 It is visits that drives variation in charges this remains true even for specific MBS items
  • 9. What explains the variation at individual level? Covariates: • age • sex • SES • health status • risk factors • SLA
  • 10. What explains the variation across SLAs at aggregate level? Charge (R2 = 0.45) Visits (R2 = 0.39) Price (R2 = 0) Estimate t value Estimate t value Estimate t value (Intercept) 394.7 107.3 8.1 86.6 46.9 140.5 Inner regional -56.6 -9 -1.3 -8.2 0.2 0.3 -10.8 -2.1 -9.3 -0.2 -0.3 -1.7 -1.4 -1.9 0.9 0.3 Outer regional -94.9 Remote -46.5
  • 11. Summary There is significant variation in GP expenditures across SLAs unexplained by individual characteristics The variation is due to variation in the number of GP visits, rather than in the average price per visit Observed individual characteristics explain 20% of the variance in GP expenditures Remoteness explains a large proportion of the variance in aggregate SLA GP expenditures
  • 13. Variation of SLA means Charge Mean 366 Ratio of 99th to 1st percentile 2.15 Ratio of 75th to 25th percentile 1.21 Coefficient of variation 0.14 R squared 0.20 Visits 7.5 2.18 1.27 0.17 0.24 Price 47 1.39 1.10 0.08 0.09
  • 14. Focus on a specific item: 23 (level B consultation) Log(Charge) = log(Price) + log(Visits) We run three regressions: Log(Charge) = βX R2=0.16 Log(Charge) = log(Price) + βX R2=0.18 Log(Charge) = βX + log(Visits) R2=0.95 It is visits that drives variation in charges
  • 15. Remoteness Is Likely to Play an Important Role in the Analysis Adjusted for: • age • sex • SES • health status • risk factors