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1 Civil Systems Planning Benefit/Cost Analysis Scott Matthews Courses: 12-706 and 73-359 Lecture 17 - 11/5/2003.

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Presentation on theme: "1 Civil Systems Planning Benefit/Cost Analysis Scott Matthews Courses: 12-706 and 73-359 Lecture 17 - 11/5/2003."— Presentation transcript:

1 1 Civil Systems Planning Benefit/Cost Analysis Scott Matthews Courses: 12-706 and 73-359 Lecture 17 - 11/5/2003

2 12-706 and 73-3592 Economic valuations of life  Miller (n=29) $3 M in 1999 USD, surveyed  Wage risk premium method  WTP for safety measures  Behavioral decisions (e.g. seat belt use)  Foregone future earnings  Contingent valuation

3 12-706 and 73-3593 Specifics on Saving Lives  Cost-Utility Analysis  Quantity and quality of lives important  Just like discounting, lives are not equal  Back to the developing/developed example  But also: YEARS are not equal  Young lives “more important” than old  Cutting short a year of life for us vs  Cutting short a year of life for 85-year-old  Often look at ‘life years’ rather than ‘lives’ saved.. These values also get discounted

4 12-706 and 73-3594 Contingent Valuation  Analysis method used when there is no observable market  Example: water quality at national parks  Asks questions to population  Is a last resort option!  Called ‘contingent’ since you never really pay  Valuing use non-controversial  Valuing ‘non-use’ VERY controversial

5 12-706 and 73-3595 Example  Asked for valuations of a certain good  Then estimate overall WTP for it - similar to travel time demand functions  Extrapolated to entire population  Assumes random sample!

6 12-706 and 73-3596 Criticisms of CV  Extrapolation of ‘all CV studies’ to average consumer would take over their budget  Normal statistical problems (sampling, non-response, biases, etc.)  Surveying opinions is imprecise  Problems tend to be complicated

7 12-706 and 73-3597 WTP versus WTA  Economics implies that WTP should be equal to ‘willingness to accept’ loss  Turns out people want MUCH MORE in compensation for losing something  WTA is factor of 4-15 higher than WTP!  Also see discrepancy shrink with experience  WTP formats should be used in CVs  Only can compare amongst individuals

8 12-706 and 73-3598 Measuring Lives Saved  Life years (prevented fatalities) not equal  Qualitative and quantitative issue  Need to consider tradeoffs  Simple example from text  Status quo: no newborns survive a condition  Alt. A: 5 live, but with permanent disability  Alt. B: 2 live, but with low levels of disability  Which option (SQ, A, B) is preferable?  Assume Y increasing, H increasing  Equal costs, no relevant uncertainty

9 12-706 and 73-3599 Simple Example

10 12-706 and 73-35910 The Quality/Quantity Game  Assume “preference” for  Increased number of years lived  Increased level of health  Would your preferences be the same?  If so, SQ “dominated” by A and B  Note different horizontal/vertical preference  But which of A or B is better?  We all understand difference in years  Need an index of health status

11 12-706 and 73-35911 Health Status Index Death 0 Severely Disabled Minimally Disabled HealthModerately Disabled 0.150.470.921  Measures utility, derived from experts  Combine with Y values for QALYs  But this says nothing about tradeoff!  Can perform tradeoff survey  Value of “shorter Y, higher H” vs. opposite

12 12-706 and 73-35912 Methods  Health Rating method (see above)  Time tradeoff method  Standard gamble method  Discounting life years  Can/should we discount them?  Unlike cash values, we can’t make a decision to trade 1 year today for 10 yrs from now

13 12-706 and 73-35913 Example - MAIS scale  Abbreviated Injury Scale (AIS) is an anatomically based system that classifies individual injuries by body region on a six point ordinal scale of risk to life.  AIS does not assess the combined effects of multiple injuries.  The maximum AIS (MAIS) is the highest single AIS code for an occupant with multiple injuries.

14 12-706 and 73-35914 MAIS Table - Used for QALY Conversions Comprehensive Fatality / Injury Values Injury Severity1994 Relative Value MAIS1.0038 MAIS2.0468 MAIS3.1655 MAIS4.4182 MAIS5.8791 Fatality1.0

15 12-706 and 73-35915 Risk Analysis  Study of the interactions between decision making, judgment, and nature  Evidence : cost-effectiveness of risk reduction opportunities varied widely - orders of magnitude  Economic efficiency problems

16 12-706 and 73-35916 Cost-Effectiveness of Life-Saving Interventions  From “500 Life-saving Interventions and Their Cost-Effectiveness”, Risk Analysis, Vol. 15, No. 3, 1995.  ‘References’ (eg #1127) are all other studies  Model:  Estimate costs of intervention vs. a baseline  Discount all costs  Estimate lives and life-years saved  Discount life years saved  CE = C I -C B /E I -E B

17 12-706 and 73-35917 Specific (Sample) Example  From p.373 - Ref no. 1127  Intervention: Rear outboard lap/shoulder belts in all (100%) of cars  Baseline: 95.8% of cars already in compliance  Intervention: require all cars made after 9/1/90 to have belts  Thus costs only apply to remaining 4% of cars  Target population: occupants over age 4  Others would be in child safety seats  What would costs be?

18 12-706 and 73-35918 Example (cont)  1986 Costs (from study): $6 cost per seat  Plus added fuel costs (due to increased weight) = total $791,000 over life of all cars produced  Effectiveness: expect 23 lives saved during 8.4 year lifetime of cars  But 95.8% already exist, thus only 0.966 lives  Or 0.115 lives per year (of use of car)  But these lives saved do not occur all in year 0 - they are spread out over 8.4 years.  Thus discount the effectiveness of lives saved per year into ‘year 0’ lives..

19 12-706 and 73-35919 Cost per life saved  With a 5% discount rate, the ‘present value’ of 0.115 lives for 9 years = 0.817 (less than 0.966)  Discounted lives saved =  0.115)/(1.05) j ; j=1..9  This is basically an annuity factor  So cost/life saved = $791,000/0.817  Or $967,700 per life (in “$1986/1986 lives”)  Using CPI: 145.8/109.6 -> $1,287,326 in $1993  But this tells us only the cost per life saved  We realistically care more about quality of life, which suggests using a quality index, e.g. life- years saved.

20 12-706 and 73-35920 Sample Life Expectancy Table 35-year old American expected to live 43.6 more years (newer data than our study) Source: National Center for Health Statistics, http://www.cdc.gov/nchs/fastats/lifexpec.htm

21 12-706 and 73-35921 Cost per life-year saved  Assume average age of fatality in car accident was 35 years  Life expectancy tables suggest a 35 year old person would on average live to age 77  Thus ‘42’ life years saved per fatality avoided  1 life year for 42 years @5%= 17.42 years  $1993 cost/life-year = $1,287,326/17.42  2 sig. figures: ~$74,000 as in paper  Note $1,287,326 is already in cost/life units -> just need to further scale for life-years by 17.42

22 12-706 and 73-35922 Example 2 - Incremental CE  Intervention: center (middle) lap/shoulder belts  Baseline: outboard only - (done above)  Same target population, etc.  Cost: $96,771,000  Incremental cost : $96,771,000 - $791,000  Effectiveness: 3 lives/yr, 21.32 discounted  Incremental Effectiveness: 21.32 - 0.817= 20.51  Cost/life saved = $95.98 million/20.51 = $4.7 million ($1986) => $6.22 million in $1993  Cost/life-year=$6.22 million/17.42 = $360,000

23 12-706 and 73-35923 Overall Results in Paper  Some had $10B  Median $42k per life year saved  Some policies implemented, some only studied  Variation of 11 orders of magnitude!  Some maximums - $20 billion for benzene emissions control at tire factories  $100 billion for chloroform standards at paper mills

24 12-706 and 73-35924 Comparisons

25 12-706 and 73-35925 Agency Comparisons  $1993 Costs per life year saved for agencies:  FAA (Aviation): $23,000  CPSC (Consumer Products): $68,000  NHTSA (Highways):$78,000  OSHA (Worker Safety): $88,000  EPA (Environment): $7,600,000!  Are there underlying causes for range? Hint: are we comparing apples and oranges?


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