SADC Course in Statistics Putting the Life Table in Context (Session 15)

Slides:



Advertisements
Similar presentations
Population Pyramids IB SL.
Advertisements

Lecture 2 ANALYSIS OF VARIANCE: AN INTRODUCTION
Multiple Regression.
SADC Course in Statistics Basic summaries for epidemiological studies (Session 04)
SADC Course in Statistics Basic summaries for demographic studies (Session 03)
Basic Sampling Concepts
SADC Course in Statistics Estimating population characteristics with simple random sampling (Session 06)
The Poisson distribution
SADC Course in Statistics Further ideas concerning confidence intervals (Session 06)
SADC Course in Statistics Introduction to Non- Parametric Methods (Session 19)
Data collection for demographic & vital statistics
SADC Course in Statistics Tests for Variances (Session 11)
Assumptions underlying regression analysis
SADC Course in Statistics Basic principles of hypothesis tests (Session 08)
Basic Life Table Computations - I
SADC Course in Statistics The binomial distribution (Session 06)
SADC Course in Statistics Sampling weights: an appreciation (Sessions 19)
Correlation & the Coefficient of Determination
SADC Course in Statistics Samples and Populations (Session 02)
SADC Course in Statistics Confidence intervals using CAST (Session 07)
SADC Course in Statistics Decomposing a time series (Session 03)
SADC Course in Statistics Multi-stage sampling (Sessions 13&14)
SADC Course in Statistics Session 4 & 5 Producing Good Tables.
SADC Course in Statistics Exploratory Data Analysis (EDA) in the data analysis process Module B2 Session 13.
SADC Course in Statistics Graphical summaries for quantitative data Module I3: Sessions 2 and 3.
SADC Course in Statistics Choosing appropriate methods for data collection.
SADC Course in Statistics Common complications when analysing survey data Module I3 Sessions 14 to 16.
SADC Course in Statistics Comparing two proportions (Session 14)
SADC Course in Statistics Basic Life Table Computations - II (Session 13)
SADC Course in Statistics Conditional Probabilities and Independence (Session 03)
SADC Course in Statistics Fertility Ideas (Session 18)
Preparing & presenting demographic information: 1
SADC Course in Statistics Population Projections - II (Session 20)
SADC Course in Statistics Overview of Sampling Methods I (Session 03)
SADC Course in Statistics General approaches to sample size determinations (Session 12)
SADC Course in Statistics To the Woods discussion (Sessions 10)
SADC Course in Statistics Setting the scene (Session 01)
SADC Course in Statistics Producing a product portfolio Module I3 Session
The MDGs and School Enrolment: An example of administrative data
SADC Course in Statistics Objectives and analysis Module B2, Session 14.
SADC Course in Statistics Revision on tests for means using CAST (Session 17)
SADC Course in Statistics Analysing Data Module I3 Session 1.
SADC Course in Statistics Revision on tests for proportions using CAST (Session 18)
Probability Distributions
SADC Course in Statistics Excel for statistics Module B2, Session 11.
SADC Course in Statistics Joint distributions (Session 05)
SADC Course in Statistics Laws of Probability (Session 02)
SADC Course in Statistics A Life Table Discussion Topic (Session 14)
Copyright © Cengage Learning. All rights reserved.
Unit 8: Presenting Data in Charts, Graphs and Tables
CHAPTER 16 Life Tables.
Copyright © 2007 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 22 Comparing Two Proportions.
Quantitative Analysis (Statistics Week 8)
Arithmetic of random variables: adding constants to random variables, multiplying random variables by constants, and adding two random variables together.
Chapter 11: The t Test for Two Related Samples
January Structure of the book Section 1 (Ch 1 – 10) Basic concepts and techniques Section 2 (Ch 11 – 15): Inference for quantitative outcomes Section.
1 Volume measures and Rebasing of National Accounts Training Workshop on System of National Accounts for ECO Member Countries October 2012, Tehran,
Copyright © Cengage Learning. All rights reserved.
SADC Course in Statistics Applications of Stationary Population Ideas (Session 16)
Structure of Population
A – Migration Introduction
Sub-regional Workshop on Census Data Evaluation, Phnom Penh, Cambodia, November 2011 Evaluation of Census Data using Consecutive Censuses United.
Sub-regional Workshop on Census Data Evaluation, Phnom Penh, Cambodia, November 2011 Evaluation of Age and Sex Distribution United Nations Statistics.
Overview of Census Evaluation through Demographic Analysis Pres. 3 United Nations Regional Workshop on the 2010 World Programme on Population and Housing.
United Nations Regional Workshop on the 2010 World Programme on Population and Housing Censuses: Census Evaluation and Post Enumeration Surveys, Bangkok,
World Population: Study in Demographics:. Some basic facts   Current World Population is 6.6 billion   2050 projection is 8.2 billion to 11 billion.
Life expectancy Stuart Harris Public Health Intelligence Analyst Course – Day 3.
Population Pyramids IB SL.
Overview of Census Evaluation through Demographic Analysis Pres. 3
The Demographic Transition Model (DTM)
Presentation transcript:

SADC Course in Statistics Putting the Life Table in Context (Session 15)

To put your footer here go to View > Header and Footer 2 Learning Objectives – this session At the end of this session, you will be able to explain the differences between cohort and current Life Tables discuss the background to Life Table calculations understand the data requirements for Life Table production appreciate the broad idea of Model Life Tables

To put your footer here go to View > Header and Footer 3 Introduction As shown in previous sessions, the arithmetic of Life Tables provides numerous different summaries of a given set of probabilities q x or n q x. The arithmetic follows a clear logical pattern, but in reality we need to look critically at the information source(s) for the given data input, and first at the true meaning of LT numbers.

To put your footer here go to View > Header and Footer 4 Cohort LTs: 1 If we were given 1. a real cohort of people – say men – say all born in 1900, & 2. their births and deaths were fully recorded, collected and processed, then we would have genuine cohort mortality rates by year, & a genuine cohort or generation LT [pause: think back to mention of age- period-cohort issues in Intermediate]

To put your footer here go to View > Header and Footer 5 Cohort LTs: 2 but true cohort LTs are rare because a. the record is of historic value relating mainly to long-deceased individuals, & b. it reflects innumerable period effects e.g. health: no antibiotics were in use before they were about 50, HIV was not known while they were sexually active; e.g. food: preservatives, packaging, factory processing, refrigeration were much more limited in their youth

To put your footer here go to View > Header and Footer 6 Cross-sectional LTs: 1 Usually the set { n q x } that are used all relate to current data e.g. death registration in UK population from 2003 to q 0 refers to babies born into current conditions and reflect present-day maternal health, behaviour as well as public health provision etc … but q 80 reflects current mortality of those born 80 years ago and who have lived through periods with many differences from now

To put your footer here go to View > Header and Footer 7 Cross-sectional LTs: 2 so most LTs are synthetic and current, use a cross-sectional or period dataset, & reflect what might happen to an artificial population. Same form of summary as in standardised death rates discussed before. A 50-year-old British male sees e 50 = 29 in UK Interim Life Table ~ maybe a rough indication of his residual expectation of life, but does not predict, or take account of, future health/social/climate conditions. therefore INTERPRET WITH CARE!

To put your footer here go to View > Header and Footer 8 Stationary Population Demographers stress the hypothetical nature of a stationary population ~ usually used as a theoretical model. It has:- (a) no migration (b) death rate = birth rate (growth rate zero) (c) age-specific mortality & fertility rates, and age-structure are constant The stationary population life table would reflect any cohorts mortality experience. See applications below.

To put your footer here go to View > Header and Footer 9 Data for LT mortality rates The computations generally build upon pop. n death rates. If these are to be calculated for single years of age, it requires a very large population base, in which the population is enumerated (i)so as to be divided into 100 age categories; (ii)so as to estimate in every category proportions dying, which are generally small

To put your footer here go to View > Header and Footer 10 Data for LT mortality rates: 1 Consider developing the set {q x } of single- year-of-age mortality rates. These depend on populations or large samples where (i) each persons presence and accurate age are recorded, and (ii) death registration is complete and generates accurate age-at-death data so we can calculate each underlying age-specific death rate m x = [ D x / P x ] (reiterated from Intermediate level below)

To put your footer here go to View > Header and Footer 11 Data for LT mortality rates: 2 For most ages m x is a small proportion. In the UK LT used earlier it is less than 1% for all male ages less than 60, and less than 10% for all male ages less than 82. The sample size needed to get an accurate estimate of a small proportion is always very big ~ see Basic Statistics module. Of course very large sample size requires a widespread & accurate death registration system.

To put your footer here go to View > Header and Footer 12 Data for LT mortality rates: 3 If we collect data to generate set of { 5 q x } values, there are far fewer age-groups to estimate and age-at-death data need not be so accurate: this is a bit more likely to be feasible in smaller, poorer countries. Recall from Intermediate sessions that we measure {m x } and derive {q x } estimates. To measure { 5 m x } and derive { 5 q x } needs a little extra thought. See next 3 slides.

To put your footer here go to View > Header and Footer 13 Deriving probabilities from data: 1 For a single year of age, x, recall that m x = [ D x / P x ], while approximately q x = D x / [ P x + ½ D x ] = ( D x / P x ) / [1 + ½ ( D x / P x )] on dividing top and bottom by P x. q x = m x / [1 + ½ m x ] = 2 m x / [2 + m x ] So data-derived death rate ( m x ) feeds into the last formula to give estimated probability of dying (or mortality rate), q x.

To put your footer here go to View > Header and Footer 14 Deriving probabilities from data: 2 If data are collected in n-year age bands, it is important to distinguish 2 different concepts. First is the one-year death rate for an n-year age band e.g. deaths aged in n m x = [ n D x / n P x ], the number of deaths in the age-band x to x+n over a period of 1 year divided by the mid-period pop. n in the age- band. On the other hand, n q x is the probability of dying during n-year period from exact age x

To put your footer here go to View > Header and Footer 15 Deriving probabilities from data: 3 Approximately n q x is the number of deaths in the age-group over n years mid-period pop. n projected back* to start of n-year period * i.e. augmented by ½ the deaths to the age-group over the n-year period So n q x = n. n D x /[ n P x + ½.n. n D x ] = n. ( D x / P x ) / [1 + ½.n. ( D x / P x )] § § on dividing top and bottom by P x. n q x = n. n m x / [1 + ½ n. n m x ] = 2 n. n m x /[2 + n. n m x ]

To put your footer here go to View > Header and Footer 16 Models: 1 Inspection of UK Interim LT data, ages 0-40 (seen in Practical 12) shows fluctuations in {q x }, due to statistical sampling variability, not to any underlying reality. These are generally removed by statistical smoothing procedures in definitive LTs. Another approach when data are incomplete or unreliable is to use so-called Model Life Tables. Beyond scope of this course, but briefly outlined below.

To put your footer here go to View > Header and Footer 17 Models: 2 An established LT – the Model – say from a regional demographic surveillance centre, may have a similar general shape to that for your region or population. It can be scaled up or down e.g. multiplying all {q x } by 0.98 to reflect slightly lower mortality rates at all ages. If your region has some data the Model can be scaled to match those figures as nearly as possible, then adopted as a good substitute for a wholly locally-sourced LT.

To put your footer here go to View > Header and Footer 18 Models: 3 Note that the UK Interim Life Tables could not be adapted for South African use. The pattern of high death rates in young adults is not present in the UK figures. Use of Model LTs is a high-level technical skill for those with quite extensive demographic training. In settings where accurate data are unavailable, these are invaluable methods for assessing mortality rates. INDEPTH Model Life Tables for Sub-Saharan Africa : Ashgate Publishers authored by the INDEPTH Network (2004) is a good resource for those doing so in SADC countries.

To put your footer here go to View > Header and Footer 19 The need for large numbers: 1 Even using all modelling aids, the funda- mental issue remains: to get estimates of even a few proportions, with which to calibrate a Model LT, requires quite large samples from the population, and high- quality ascertainment of their ages at death.

To put your footer here go to View > Header and Footer 20 The need for large numbers: 2 A further consideration is that our life table summaries are crude in that generally a whole population is sub-divided only by sex and age. Yet we know that survival is adversely affected by risky behaviours such as smoking or drunk-driving. Actuaries and insurers are interested in the mortality patterns of those who take out life insurance, and often pool claims data from many companies to get adequate sample sizes.

To put your footer here go to View > Header and Footer 21 The need for more than numbers The last slide correctly hints that in using LT methods the first responsibility of the statistical contributor is to generate and properly interpret a good set of LT data. A later-stage responsibility is to work along with social, medical and other professionals in moving beyond simply describing mortality towards understanding and explaining it.

To put your footer here go to View > Header and Footer 22 Some practical work follows …