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Modeling Age Patterns of Vital Events

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Combine the first two and relate a given age pattern to a standard age pattern ... Compile a raw data set consisting of individual-level mortality data ... – PowerPoint PPT presentation

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Title: Modeling Age Patterns of Vital Events


1
Modeling Age Patterns of Vital Events
2
Model Age Patterns
  • Parsimonious representations of empirical
    regularities
  • Usually with age or duration as the primary
    dimension
  • Serve many purposes
  • Standard or normal pattern
  • Simplify common tasks and make them more
    reproducible change small number of parameters
    that specify patterns rather than whole patterns
  • Allow indirect estimation by providing
    reasonable assumptions about existing patterns
  • Robust empirical regularities and differentials
    between them suggest a search for what causes
    these

3
Models of Age Patterns
  • Mathematical representations
  • Summarize an age pattern in an equation
  • Possibly some theory involved
  • Tabular representations
  • Lists age patterns indexed by some quantity i.e.
    life expectancy in the case of mortality
  • Relational Models
  • Combine the first two and relate a given age
    pattern to a standard age pattern through a
    mathematically defined relation

4
Model Age Patterns of Mortality
  • Called MODEL LIFE TABLES
  • Present all normal life table columns for various
    levels of mortality usually indexed by the
    life expectancy of the corresponding life table
  • Predicated on high level of correlation among
    sets of age-specific death rates measured in
    different populations similar age patterns
    often observed

5
West - Female
6
South - Female
7
Latin American Female
8
South Asian Female
9
General Female
10
West Male
11
South Male
12
Latin American Male
13
South Asian Male
14
General - Male
15
Other Model Age Patterns
  • Include models of the age patterns of
  • Nuptiality
  • Fertility
  • Carefully read section 9.3 in the book describing
    the M m model of the age pattern of fertility

16
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17
INDEPTH Mortality Patterns for Africa
  • To provide a set of model mortality patterns that
    are appropriate for use in Africa Asia
  • To create a general model of the age pattern of
    mortality observed at INDEPTH sites
  • To identify common age patterns of mortality
    among the many different age patterns observed at
    INDEPTH sites
  • To lay the foundation for the creation of an
    INDEPTH system of model life tables

18
Principal Components Model of Mortality
  • Data Preparation
  • Aggregate into site-periods
  • Smooth
  • Logit transform
  • Calculation of Principal Components
  • Identify a small number of age patterns whose
    linear combinations are able to reproduce all of
    the observed age patterns
  • Use Principal Components variation of Factor
    Analysis to calculate the principal components

19
Raw Data
20
Site Periods
21
Data Transformation
  • Within each site-period
  • The data are mildly smoothed along the age axis,
    and
  • The age-specific probability of dying (nqx) is
    calculated
  • The nqx are transformed using the logit
    transformation to linearize the age-pattern and
    increase the sensitivity to changes at midlife
    ages

22
Calculation of Principal Components
  • 18 x 70 data set for each sex consists of
  • 18 rows one for each age group
  • 70 columns one for each site-period
  • STATAs factor and score routines used to
    calculate fifteen principal components for each
    sex
  • For both sexes the first six principal components
    explain more than 99 of the variance across
    site-periods

23
Components ?
24
Principal Component 1
25
Principal Component 2
26
Principal Component 3
27
Principal Component 4
28
Identification of Common Age Patterns of Mortality
  • Compare age pattern observed in each site-period
    to the first four principal components
  • Regress each site-period on the first four
    principal components using ordinary least squares
    regression
  • Save the regression coefficients corresponding to
    each principal component
  • Create a 70 x 4 data set consisting of a row for
    each site period and a column for the coefficient
    calculated on each principal component
  • Use Agglomerative Hierarchical Cluster Analysis
    to identify similar clusters (groups) of rows
    (coefficient vectors) in the coefficient data set
  • Results in reproducible clustering of similar age
    patterns of mortality

29
Seven INDEPTH Mortality Patterns
  • Cluster analysis of 70 male and female site
    periods yields
  • Five easily distinguishable patterns for males
  • Seven easily distinguishable patterns for females
  • Final patterns are based on female clusters to
    produce seven INDEPTH mortality patterns

30
Pattern 1
31
Male Pattern 1
32
Female Pattern 1
33
Pattern 1 Site-Periods
  • Bandafassi 80-84
  • Bandafassi 85-87
  • Bandafassi 88-90
  • Bandafassi 91-93
  • Bandafassi 94-96
  • Bandafassi 97-99
  • Bandim 90-91
  • CNRFPS 94-95
  • CNRFPS 96-98
  • Farafenni 96-97
  • Farafenni 98-99
  • Gwembe Tonga Research Project 50-80
  • Gwembe Tonga Research Project 90-92
  • Gwembe Tonga Research Project 93-95
  • Ifakara 97-99
  • Manhiça 98-99
  • Niakhar 85-89
  • Niakhar 90-94
  • Niakhar 95-98

34
Pattern 2
35
Male Pattern 2
36
Female Pattern 2
37
Pattern 2 Site-Periods
  • Matlab, Comparison Area 88
  • Matlab, Comparison Area 98
  • Matlab, Treatment Area 88
  • Matlab, Treatment Area 98
  • Mlomp 85-87
  • Mlomp 97-99

38
Pattern 3
39
Male Pattern 3
40
Female Pattern 3
41
Pattern 3 Site-Periods
  • Agincourt 94-95
  • Agincourt 96-97
  • Agincourt 98-99
  • Dar es Salaam 1994-95
  • Dar es Salaam 1995-96
  • Dar es Salaam 1996-97
  • Dar es Salaam 1997-98
  • Dar es Salaam 1998-99
  • Bandim 96-97

42
Pattern 4
43
Male Pattern 4
44
Female Pattern 4
45
Pattern 4 Site-Periods
  • Agincourt 92-93
  • Bandim 92-93
  • Bandim 94-95
  • Farafenni 94-95
  • Navrongo 93-95
  • Navrongo 96-97
  • Navrongo 98-99
  • Nouna 93-95

46
Pattern 5
47
Male Pattern 5
48
Female Pattern 5
49
Pattern 5 Site-Periods
  • Dar es Salaam 1992-93
  • Dar es Salaam 1993-94
  • Hai 1992-93
  • Hai 1993-94
  • Hai 1994-95
  • Hai 1995-96
  • Hai 1996-97
  • Hai 1997-98
  • Hai 1998-99
  • Morogoro 1992-93
  • Morogoro 1993-94
  • Morogoro 1994-95
  • Morogoro 1995-96
  • Morogoro 1996-97
  • Morogoro 1997-98
  • Morogoro 1998-99

50
Pattern 6
51
Male Pattern 6
52
Female Pattern 6
53
Pattern 6 Site-Periods
  • Butajira 87-89
  • Butajira 90-91
  • Butajira 92-93
  • Butajira 94-96
  • Mlomp 88-90
  • Nouna 96-98

54
Pattern 7
55
Male Pattern 7
56
Female Pattern 7
57
Pattern 7 Site-Periods
  • Gwembe Tonga Research Project 81-83
  • Gwembe Tonga Research Project 84-86
  • Gwembe Tonga Research Project 87-89
  • Mlomp 91-93
  • Mlomp 94-96

58
Are INDEPTH Patterns Unique?
  • Comparison to Coale Demeny U.N. Model life
    tables reveals
  • Consistent age-dependent deviations
  • Substantial differences in age patterns
  • In particular patterns 3 5 are consistent with
    mortality caused by HIV/AIDS, and none of the
    existing model life tables have patterns at all
    similar to those

59
Model Life Tables
  • The data and analysis presented here can form the
    foundation for an INDEPTH system of model life
    tables
  • The seven INDEPTH age patterns of mortality can
    be used as the basis for a seven member model
    life table family
  • The component model of mortality can be used to
    generate many levels within each pattern

60
Where To Go From Here?
  • Compile a raw data set consisting of
    individual-level mortality data
  • Use that data set to analyze INDEPTH mortality at
    a finer level of resolution with respect to age
    and time and to control for various confounders
    such as period
  • Redo the analysis presented here
  • Construct model life tables based on the INDEPTH
    mortality patterns
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