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Estimating mortality from defective data

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Question commonly included in African censuses Problems: Adoption effect Absent fathers Age misstatement Bias introduced by HIV/AIDS Adult ... – PowerPoint PPT presentation

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Title: Estimating mortality from defective data


1
Estimating mortality from defective data
  • Rob Dorrington
  • Director of the Centre for Actuarial Research

2
Overview
  • National vs sub-populations (e.g. life offices,
    group schemes)
  • Childhood
  • Adulthood
  • Population survival and direct census question
  • Orphanhood, widowhood and sibling methods
  • Using vital registration records
  • Model life tables
  • Extrapolation to older ages

3
National vs sub-population
  • In order to measure the mortality of a
    sub-population one needs to gather data specific
    to that population
  • Methods
  • For life assurance and group schemes - survey
    companies with these records (e.g. CMI in UK or
    CSI in SA)
  • For socio-economic groups (sometimes other
    surveys can be used to get a handle on this)
  • Problem with some of the methods applied to
    national is that they make assumptions (e.g.
    closed population) which are not applicable to
    sub-populations

4
Industry data
  • Lack of priority in contributing companies
    (inability, lack of importance, etc)
  • Quality of company records often poor
  • Data often not available on one database
  • In SA
  • Data good enough to produce standard tables for
    lives assured but not to measure
  • Impact of smoking
  • Impact of HIV
  • Produce sensible select rates
  • Problem of changing mix of business (market,
    products, underwriting)

5
Industry data
  • In SA
  • Annuitant mortality investigation for first time
  • Have been trying to investigate mortality of
    group schemes for some time without success (lack
    of industry enthusiasm)

6
Childhood mortality
  • This method (originally proposed by Brass)
    derives survival rates of children by asking
    mothers in different age groups (or duration of
    marriage, etc) about how many children they have
    ever given birth to, and how many of these are
    still alive.
  • By making use of fertility schedules one can
    derive an expected age distribution of the
    children of women in specific age groups and
    hence estimate the implied average survival of
    children to the time of the survey.
  • On average it has been found that response of
    women 15-19 can be used to derive q(1), 20-24,
    q(2), 25-29, q(3), 30-34, q(5), 35-40, q(10), etc.

7
Childhood mortality
  • Usually q(5) is taken as a measure of the level
    and an appropriate shape is taken from a set of
    model life tables
  • Various problems which can lead to inaccurate
    estimates e.g. 15-19 are young and children have
    lower survival which doesnt represent that of
    all children for their first year, women may not
    wish to talk of children who have died, or have
    forgotten them, particularly at the older ages

8
Adult mortality - survival rates
  • Method calculate cohort survival rates from
    censuses at two points in time
  • Problems
  • Populations may not be closed to migration
    (particularly at some ages)
  • The quality of enumeration of the censuses
    unlikely to be equal, particularly at
    corresponding ages
  • Focus is on survival and not mortality and a
    small error in survival large error in
    mortality
  • Censuses often 10 years apart and two years in
    the release and thus estimates a good 6 years out
    of date, and rates would only be given as average
    of 10-year age interval

9
Adult mortality - question on deaths in census
  • Method Ask in the census about people who have
    died in the household over the last 12 months -
    age, sex, whether natural/non-natural/connected
    to childbirth
  • Problems In practice this question has not
    produced very reliable results, because
  • Memory
  • Dissolution of households on some deaths
  • Uncertainty about who is in which household (and
    who reporting)
  • Uncertainty about cause of death
  • Time frame

10
Adult - orphanhood method
  • Rationale As with estimating child mortality so
    too, if we have an average age of mothers/fathers
    at birth of their children, we can, by asking
    respondents about whether their mothers/fathers
    are still alive, derive an estimate of survival
    from that age to that age plus the age of the
    respondent. These proportions can then be turned
    into survival probabilities. Question commonly
    included in African censuses
  • Problems
  • Adoption effect
  • Absent fathers
  • Age misstatement
  • Bias introduced by HIV/AIDS

11
Adult - widowhood and sibling methods
  • Similarly one could ask widows/widowers about
    when they got married and the survival of their
    spouses. Here the major problems are definition
    of marriage and memory.
  • Or in the case of the sibling method ask
    respondents about the age and survival of their
    siblings. Not as common, and some doubt about
    accuracy. Similar problems about definition of
    sister and brother and recall and loss of
    contact.

12
Adult - vital registration
  • If vital registration complete (and accurate
    estimate of population) then can estimate rates
    directly. Problem is if, as is commonly the case
    in Africa, there is significant
    under-registration of deaths. Methods have been
    developed which attempt to estimate the extent of
    under registration of the deaths RELATIVE to the
    population, commonly on the assumption that
    under-recording is constant with respect to age
    (for adults at least)
  • Methods
  • Brass Growth Balance method
  • Preston-Coale method
  • Bennett-Horiuchi method

13
Adult - Brass Growth Balance
  • Rationale
  • For a population close to migration P2 - P1B - D
  • Dividing through by the mid-period population one
    get the same relationship in rates, i.e. r b -
    d
  • This rationale applies for any sub-population
    aged x, i.e. rx bx - dx where bx .
  • Now if we can assume that a proportion, C, of
    deaths are reported (constant wrt to age), and
    that the population is stable, i.e. grows at a
    constant rate, r, we can estimate both r and C by
    regressing bx on dx
  • If data support it one can relax the stability
    assumption and allow for migration (usually not
    the case)

14
Adult - Preston-Coale
  • Rationale
  • Closed population at time t, aged x sum of
    deaths in future arising from this cohort i.e.
  • Obviously dont know
  • If population is closed and stable, growing at r
    p.a. then
  • Thus one has two estimates of the population one
    derived from deaths the other from census and one
    can use the ratio to estimate the completeness of
    deaths
  • Again if data support can relax the stability
    assumption (Bennett-Horiuchi) and use 5rx and
    allow for migration

15
Male deaths corrected for under-registration
16
Female deaths corrected for under-registration
17
Adult - indirect methods
  • Problems
  • Rough
  • Number of assumptions which often do not hold
    these days
  • However, robust in different ways
  • Often good for deciding on level, but not so
    useful for estimating shape
  • Shape often derived by using model life tables

18
Adult - model life tables
  • Patterns of mortality by age derived from all
    known life tables
  • Princeton tables (Coale and Demeny)
  • A bit long in the tooth but still most widely
    used.
  • Four families North, South, East, West.
  • West, residual, similar to average, often used as
    default pattern when nothing to suggest one of
    the other patterns should be used
  • Not representative of developing countries and
    Africa in particular
  • UN tables not very widely used
  • WHO tables recently released, very flexible, not
    much experience with them yet.

19
Extrapolation of old age mortality
  • Problem Only have reliable rates to age 85,
    but wish to extend the life table beyond that age
  • Solution One could always extrapolate using e.g.
  • But shape not necessarily correct at advanced
    ages
  • However, Coale and Guo have suggest that there is
    evidence to assume that
    declines by a constant decrement for ages above
    80
  • Thus we can use and by
    setting
  • , which often
    seems to be reasonable
  • Derive mortality rates at higher ages
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