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Eran Bendavid

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Title: Eran Bendavid


1
When Rationality Falters Limitations and
Extensions of Decision Analysis
Eran Bendavid
2
Experiment Part 1
  • Assume that the United States is preparing for
    the outbreak of an unusual Icelandic disease,
    which is expected to kill 600 people in the
    absence of intervention.
  • Two alternative programs to combat the disease
    have been proposed. Assume that the exact
    estimates of the programs are as follows

3
Experiment 1
  • If program A is adopted, 200 people will be
    saved.
  • If program B is adopted, there is 1/3 chance that
    600 people will be saved and 2/3 probability that
    no people will be saved.

4
Experiment 1 Switch Groups
  • If program A is adopted, 400 people will die.
  • If program B is adopted, there is a 1/3 chance
    that nobody will die, and 2/3 chance that 600
    people will die.

5
Experiment 2 Everyone
  • Imagine yourself 3000 richer than you are right
    now. You have to choose between (a) a sure gain
    of 1000, (b) a 50 chance of gaining 2000 and
    50 of gaining nothing.
  • Imagine yourself 5000 richer than you are right
    now. You have to choose between (a) a sure loss
    of 1000, (b) a 50 chance of losing nothing and
    50 chance of losing 2000.

6
Cartoon
7
Three Topics
  • Frames
  • Equity
  • Economic epidemiology

8
Normative Problem Formulation
  • Classical decision theory axioms
  • Ordering of preference
  • Transitivity of preference
  • Quantification of judgment
  • Comparison of alternatives
  • Substitution
  • Cost benefit rationale

Risky prospects arecharacterized by their
possible outcomes and by the probabilities of
these outcomes. The same option, however, can
be framed or described in different ways. --
Tversky Kahneman, 1981
9
Formulation Effects
  • Positive formulation
  • Keep the status quo
  • Risk averse
  • Negative formulation
  • Gamble to achieve a better result
  • Risk seeking

10
Mental Accounting
  • You set off to buy an iPod shuffle at what you
    believe to be the cheapest store in your
    neighborhood. When you arrive, you discover that
    the price of the Shuffle is 75, a price you
    believe is consistent with low estimates of the
    retail price.
  • A friend walks into the store and tells you a
    store 10 minutes away sells Shuffles for 55.
  • Do you go to the other store?
  • Now suppose you are buying a MacBook Pro for
    1960, and a friend tells you it sells for 1940
    in a store 10 minutes away. Do you go?

11
Different Frames
  • Real versus Hypothetical
  • Experiment 1 What do you think?
  • Experiment 2 Framing with hypothetical payoffs
  • Experiment 3 Framing with real payoffs
  • Framing the choice to the civil jury can greatly
    affect the award
  • Framing the choice to the criminal jury
  • Can help decide guilt or innocence
  • Can affect the sentencing of the guilty

12
Framing Effects in Medical Decision-Making
Treatments
  • When framed positively (i.e. survival vs.
    mortality)
  • Respondents 1.5 x more likely to choose surgery
    over other treatments (i.e. radiotherapy)
  • Respondents demonstrated increased preference for
    invasive/toxic treatments
  • No framing effect noted in hypothetical vs. real
    life treatment decisions
  • Medicine use intention higher when results
    presented as RRR vs. ARR or NNT

13
RRR, ARR, and NNT
  • RRR Relative Risk Reduction
  • ARR Absolute Risk Reduction
  • NNT Numbers Needed to Treat
  • Dead Alive
  • Meds 404 921
  • CABG 350 974
  • Risk of death (from having CABG) 350/1324
    0.264
  • Relative risk of death 0.264/0.305 0.87 87
  • RRR Amt of risk of death is reduced by surgery
    100 - 87 13
  • ARR Absolute amt of risk surgery reduces death
    30.5 - 25.4 4.1
  • NNT pts needing surgery to prevent 1 death
    1/ARR 24
  • Source http//www.ebm.worcestervts.co.uk/trial_re
    sults.htm

14
Conclusions on Frames
  • Humans are inconsistent.
  • Framing is effective
  • Framing can be manipulated to achieve desired
    outcomes
  • Awareness of framing effects can make you a
    better decision maker
  • Crucial in understanding discrepancies and
    inconsistencies in individual preferences.

15
Implications for Cost-Effectiveness Analysis
  • Important when considering perspective for
    analysis.
  • Preferences are dependent on framing and point of
    reference.
  • Individual preferences vs. community preferences
  • Preferences at time of illness or during recovery
  • Availability of alternative treatments

16
Three Topics
  • Frames
  • Equity
  • Economic epidemiology

17
Equity
  • Efficiency and Equity
  • Both important for health care resource
    allocation decisions
  • Few guidelines for measuring or incorporating
    equity
  • Equity Values
  • How can equity concerns be incorporated in
    cost-effectiveness analyses?

18
What is equity?
  • An equal and fair distribution
  • Are treatments fairly allocated? Or Are benefits
    fairly distributed?
  • Canadian Common Drug Review Pharmacoeconomic
    Review Template
  • What equity assumptions were made in the
    analysis?
  • No guidance on how to assess

19
Vertical Equity
  • Principle of vertical equity allocation linked
    to need
  • Greater care is given to people with greater
    health needs
  • Sicker patients ? first priority for funding
  • Goal is to create equity in eventual health
    status

20
Neglecting Vertical Equity
  • Implies all health outcomes are valued equally
  • Regardless of to whom they accrue
  • Conversely, paying attention to equity
  • Could make some relatively inefficient
    technologies more attractive
  • If benefits groups with greater claim to
    treatment
  • Or could make efficient options less attractive

21
NICE (UK) Decisions, 1999 to 2002
Cost per QALY, Accepted Restricted Rejected
lt20,000 14 3 1
20,00030,000 0 4 0
gt30,000 1 4 3
Sculpher, M.The use of quality-adjusted
life-years in cost-effectiveness
studies.Allergy 61 (5), 527-530.
22
Controversy
  • Vertical equity may be controversial
  • If your definition of need is different than
    mine
  • Assume we accept vertical equity
  • What characterizes equity?
  • How should it measured?

23
Review of Efficiency
  • The Incremental Cost-Effectiveness Ratio
  • Comparing treatments A and B
  • The cost of obtaining one extra unit of health
    effect
  • Cost-effectiveness analysis
  • A measure of efficiency
  • Tradeoff between made explicit between
  • scarce resources
  • potential changes in health

24
QALYs as a Measure of Health
  • Quality Adjusted Life Year
  • Life expectancy 10 years
  • Quality adjusted LE 6.45 QALYs

25
Are All QALYs Gains Equivalent?
25
E '
Each associated with a gain of 3 QALYs!
20
E
B '
B
15
A
Life Expectancy
C '
10
D '
7 QALYs
A
5
4 QALYs
C
D
1 QALY
0
0
0.2
0.4
0.6
0.8
1
Quality of Life
26
Steps in Applying Equity to CEA
  • Define groups which should receive priority to
    advance equity
  • Derive equity weights
  • Determine how equity weights can be applied to
    results of cost-effectiveness analyses (CEA)
  • Apply equity weighting to CEA results as a form
    of sensitivity analysis

27
Some Possible Equity Factors
Baseline life expectancy
Baseline quality of life
Improvement in or final life expectancy
Improvement in or final quality of life
Duration of health benefits
Direction of health benefits
Distribution of benefits (number of people)
Health care endowment (prior expenditure)
Age
Personal behaviours
Relation to others
Social status
Lifetime health
28
Steps in Applying Equity to CEA
  1. Define groups which should receive priority to
    advance equity
  2. Derive equity weights
  3. Determine how equity weights can be applied to
    results of cost-effectiveness analyses (CEA)
  4. Apply equity weighting to CEA results as a form
    of sensitivity analysis

29
Attribute Levels
Baseline quality of life (0 to 100) 30 60 85
Gain in quality of life (0 to 100) 0 5 15
Baseline life expectancy (years) 2 10
Gain in life expectancy (years) 1 2 10
Number of beneficiaries 100 10,000 1,000,000
Pre-program financial resources allocated to treat the condition () 0 5,000 50,000
Age (years) 15 45 75
30
Survey to Understand Equity
  • Pilot in elected officials, municipal and
    provincial public clerks.
  • Participants recruited from waiting rooms at
    major Toronto downtown teaching hospital.
  • Asked to imagine they were voting in a referendum
    between 2 programs.

31
An Example
Attributes Scenario Scenario
Attributes A B
Baseline QOL 30 30
Gain in QOL 0 15
Baseline LE 10 10
Gain in LE 10 2
N 10,000 100
Prior Allocation 50,000 5,000
Age 75 15
Number Selecting () 79 (29) 191 (71)

32
Solve the problem of equity?
  • Personal circumstances made such decision making
    challenging.
  • Several disliked the conceptual basis of the
    study,
  • Fairness factors arent measurable
  • Trade-offs between attributes too complex
  • Individual or group values should dominate over
    centralized decision making

33
More Comments
  • 7 interesting and thought-provoking
  • 14 challenging (3 both interesting and
    challenging)
  • 5 wanted equal option to indicate that they
    considered some scenarios equivalent
  • Some felt that any rationing was objectionable
  • Everyone should have a chance to be treated. It
    is up to the patient and his doctor to decide
    whether it is worthwhile.
  • Choices are best left in the hands of God

34
Significant factors in equity
  • Consistent with prioritization for those with
    poorer health
  • Less prior resource allocation viewed as having
    priority
  • Equal priority two groups alike except
  • 1st had a quality of life that was 50 points
    worse
  • 2nd had an expected 10 year increase in life
    expectancy
  • Equal priority two groups alike except
  • 1st 10 years younger
  • 2nd had received about 13,000 less in prior
    resources

35
Some Factors Not Significant
  • Number of people expected to benefit
  • Potential improvement in quality of life
  • Could have important implications for resource
    allocation models
  • Distributional aspects (how many benefit?) may
    be less important than the characteristics of
    individuals (who benefits?)

36
Steps in Applying Equity to CEA
  • Define groups which should receive priority to
    advance equity
  • Derive equity weights
  • Determine how equity weights can be applied to
    results of cost-effectiveness analyses (CEA)
  • Apply equity weighting to CEA results as a form
    of sensitivity analysis

37
Equity-Weighted QALYs
  • Vertical equity
  • Implies society values some health gains more
    than others
  • For example
  • A QALY gain a sick person more valuable than a
    QALY gain for a well person
  • Cancer drug vs. lifestyle drug
  • One often proposed solution is to adjust QALYs
  • QALYs transformed into eQALYs equity-weighted
    QALYs

38
An alternative to focusing on QALYs
  • Rather than focusing on health outcome
  • Focus on resource allocation decision
  • Reframe vertical equity as more willing to pay
    for some health outcomes than others
  • i.e., a higher (or lower) willingness to pay
    threshold
  • Advantage
  • Policy implications more transparent
  • Accommodated by current CEA methods
  • Disadvantage
  • Measurement more difficult
  • Knee-jerk rejections more common?

39
Limitations of eQALYs
  • QALYs already controversial
  • Construct is artificial, somewhat foreign
  • Measurement issues
  • Already conflate survival, quality of life
  • Putting equity in might confuse more than it
    illuminates
  • And exacerbate concerns about subjectivity,
    values
  • i.e. eQALY components
  • Survival Objective
  • Quality of life (preference) Subjective
  • Equity weight Subjective and value-laden

40
The Net Benefit Approach
  • Consider an ICER
  • ? C / ? E
  • Decision favorable if
  • ICER lt societys willingness to pay for an extra
    unit of E (?)
  • ? C / ? E lt ?
  • Define Net Monetary Benefit (NMB) as
  • NMB ? ? E- ? C
  • Decision favorable if NMBgt0

41
Equity-weighted NMB
  • Assume an intervention
  • We want to assign an equity weight to the health
    effect
  • Call the equity weighting function f()
  • Equity-weighted health effect is f(? E,q)
  • Where q is a vector of equity factors
  • So equity-weighted NMB is
  • NMB ? f(? E,q)- ? C

42
Steps in Applying Equity to CEA
  • Define groups which should receive priority to
    advance equity
  • Derive equity weights
  • Determine how equity weights can be applied to
    results of cost-effectiveness analyses (CEA)
  • Apply equity weighting to CEA results as a form
    of sensitivity analysis

43
Conclusions
  • Equity weighting the willingness to pay threshold
    is algebraically equivalent to equity adjusting
    QALYs
  • A form of sensitivity analysis, offers
    transparency, reproducibility
  • Focus on methods to estimate the relative
    attractiveness of allocating to different groups
  • Doesnt obviate need for determining societal
    willingness to pay threshold

44
Equity Considerations
  • Fairness in process
  • Accountability for reasonableness
  • Fairness in outcomes
  • A decision that is
  • Transparent
  • Principled
  • Defensible

45
Three Topics
  • Frames
  • Equity
  • Economic epidemiology

46
Traditional View of Epidemics
  • How is an epidemic started?
  • Index case
  • The first case to start an epidemic
  • Not necessarily the first case of the disease
  • Epidemic is an interaction of the disease, the
    host, and the susceptible population

47
Finding the Index Case
  • Detective work to find Patient Zero
  • Gaëtan Dugas
  • the French-Canadian gay flight attendant reputed
    to introduce HIV to the US.
  • Made famous by the book And the Band Played On
  • The research used for that study was later
    repudiated
  • Introduction probably through Haiti rather than
    Africa
  • Typhoid Mary
  • The SARS outbreak
  • On Feb 21, 2003, a 65-year-old medical doctor
    from Guangdong checks into the 9th floor of the
    Metropole hotel in Hong Kong

48
The importance of a susceptible population and
hosts
Index case from Guangdong
Hospital 2 Hong Kong 4 HCW 2
Canada 12 HCW 4
Hospital 3 Hong Kong 3 HCW
F
Ireland
G
156 close contacts of HCW and patients
Hotel M Hong Kong
A
K
H
I
Hospital 1 Hong Kong 99 HCW
E
USA
D
J
C
B
Viet Nam 37 HCW ?
Hospital 4 Hong Kong
Germany HCW 2
Singapore 34 HCW 37
New York
Bangkok HCW
4 other Hong Kong hospitals 28 HCW
49
SARS 8,445 probable cases, 790 deaths
Europe 10 countries (38)
Russian Fed. (1)
Canada (238)
Mongolia (9)
Mongolia (9)
China (5328)
USA (70)
Kuwait (1)
Hong Kong (1755)
India (3)
Colombia (1)
Viet Nam (63)
Singapore (206)
Brazil (3)
South Africa (1)
South Africa (1)
Australia (5)
New Zealand (1)
50
Epidemic Models
  • S-I-R Models

POPULATION
Susceptible
Infected
Removed
  • Have no immunity
  • Never had the disease
  • Have not been immunized
  • Recovered and immune
  • Dead

51
S-I-R Models simple setup
  • dS/dt-?S dI/dt?S-?I dR/dt-?I
  • N S I R

POPULATION
Susceptible
Infected
Removed
?
?
52
S-I-R Models more realistic
  • dS/dt?N-?S-?S dI/dt?S-?I-?I dR/dt-?I-?R
  • N S I R

?
?
?
?
Susceptible
Infected
Removed
?
?
53
What determines infection (?)?
  • The prevalence of infection in the population
  • How frequently a susceptible individual comes in
    contact with an infected individual
  • The probability of transmission from infected to
    uninfected per contact

Susceptible
Infected
?
54
What determines the rate of removal (?)?
  • The duration of infection
  • The diseases case-fatality rate (of the people
    who get infected, how many die)

Infected
Removed
?
55
What does an epidemic look like?
56
R0
  • Called the basic reproduction number
  • The average number of secondary cases a typical
    infectious individual will cause in a completely
    susceptible population

57
R0
  • R0gt1
  • R0lt1

58
Examples of R0
Disease Transmission R0
Measles Airborne 12-18
Pertussis Airborne droplet 12-17
Diphtheria Saliva 6-7
Smallpox Social contact 6-7
Polio Fecal-oral route 5-7
Rubella Airborne droplet 5-7
Mumps Airborne droplet 4-7
HIV/AIDS Sexual contact 2-5
SARS Airborne droplet 2-5
Influenza (1918 pandemic strain) Airborne droplet 2-3
59
How does an epidemic propagate?
  • R0 only describes the initial epidemic dynamics,
    and will tell you whether an epidemic is likely
    to take hold in a population
  • To find out what will happen to the epidemic,
    need to look at the effective reproductive rate
  • Re(t) R0 S(t)
  • It is the number of new infections by a typical
    individual at a particular time

60
Other reproduction numbers
  • Eventually, insufficient susceptibles to
    maintain chains of transmission
  • When each infectious person infects less than 1
    other (on average), epidemic dies out

61
Historical example
62
Implications
  • What is the effective reproductive rate for an
    endemic disease?
  • Re(t)1
  • Implications for preventing epidemics
  • Re(t)1R0S(t)
  • As long as S(t) stays below 1/R0, the epidemic
    cannot propagate in a population!

63
1/R0 is the susceptibility threshold
  • If R0 is 2, then keeping 50 of the population
    protected will prevent an epidemic
  • If R0 is 10, then keeping 10 of the population
    susceptible (90 protected) will prevent an
    epidemic
  • What are the implications for vaccines?
  • Measles (R0 is 17)?
  • Seasonal influenza (R0 is 2)?
  • This is the elimination criteria for epidemics

64
Vaccine coverage and disease
1-1/Ro
rubella
measles
65
Traditional view of epidemics
  • Preventive efforts ? reduction in disease
    transmission
  • Reduced contact (abstinence)
  • Reduced chance of transmission per contact
    (gloves)
  • Reduced disease transmission ? reduced prevalence
  • Reduced prevalence ? further reduction in
    transmission
  • Risk of infection is directly proportional to
    prevalence. Therefore controlling prevalence
    is highest priority.
  • Preventive efforts are a public health imperative

66
Behavioral view of epidemics
  • Economists view prevention and prevalence
    affect each other
  • High prevalence disease ? people increase
    personal preventive measures
  • Low prevalence disease ? people increase risky
    behaviors

67
Economic Epidemiology
  • Mathematical conceptualization of the interplay
    between economics, human behavior and disease to
    improve our understanding of
  • the emergence, persistence and spread of
    infectious agents
  • optimal strategies and policies to control their
    spread
  • Prevalence response elasticity
  • Hazard rate into infection of susceptibles is a
    decreasing function of prevalence (opposite of
    epidemiological model predictions)
  • Application to HIV
  • Application to Measles

68
Empirical evidence?
Geoffard and Philipson, Int. Econ. Rev., 1996
69
Implications of behavioral view
  • Any highly prevalent epidemic is self-limiting
    because of preventive measures taken by
    individuals
  • Any campaign to eradicate a disease will run into
    trouble when after prevalence decreases
  • HIV in USA

70
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71
  • Attached to SPH
  • Research center across the university
  • Multidisciplinary PH research group
  • Staff of 70 people
  • Faculty of 20-30 people
  • Based on campus in Zambia, Kenya, SA
  • Activities in Africa, a little in Latin America
  • Clinicians, economists, epidemiologists,
  • ID or child survival
  • ID HIV, malaria, ARI
  • Interest in urban health and mental health
  • Soft funding
  • Teaching paid by university, core U
  • Some US govt
  • Applied economics group
  • Impact assessment in Africa
  • Expand set of activities
  • Evaluation of interventions, economic and epi
  • Hope for long-term future
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