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Global and regional mortality for
235 causes of death from 1990 to
2010
Assessing premature and avoidable mortality

Rafael Lozano, MD, on behalf of 189 authors of
the paper
“Global and regional mortality from 235 causes of death for 20
age groups in 1990 and 2010: a systematic analysis for the
Global Burden of Disease Study 2010”
Background
• Causes of death (CoD) is one of the most fundamental metrics
 for population health.
• Trends in CoD provide an important summary of whether
 society is or is not making progress in reducing burden of
 premature mortality and especially avoidable mortality.
• Usually CoD assessments show success and failures of Health
 Information Systems and provide directions of how to improve
 them.
• GBD 1990 was the first comprehensive study to present the
 global leading causes of death.




                                                                 2
Global cause of death assessment: main
issues
• The universe of data
• Efforts to assess and enhance quality and comparability
 of data
• The statistical modeling strategy
• Causes of death constrained to sum to all cause mortality




                                                              3
The universe of CoD data
We attempted to identify all       Type                              Site years        Countries
                                   Vital Registration                  2,798                 130
available data on causes of
                                   Verbal Autopsy                       486                  66
death for 187 countries from
                                   Cancer registries                   2,715                 93
1980 to 2010
                                   Police Reports                      1,129                 122
• We used 9 different sources      Surveys/Census                      1,564                 82
  of CoD data                      Maternal Mortality Surveillance       83                   8

• We collected data on around      Deaths in health Facilities           21                   9
                                   Burial and Mortuary                   32                  11
  600 million deaths in the last
                                            Country−years of vital registration, 1980−2010
  30 years
• Data available varies by
  disease:
   o More on maternal, cancer,
     injuries
   o Less on NTD, diarrhea and
     LRI pathogens




                                                                                                   4
Assessment and enhancement of data
quality and comparability
1. Assessment of
   completeness
                              Percent garbage from ICD vital registration
2. Causes of death
   mapping
3. Redistribution of
   misclassified causes of
   death
4. Age and age-sex
   splitting
5. Smoothing for
   stochastic variation due
   to small numbers
6. Outlier detection
                                                                            5
Modeling causes of death
1. Causes of death ensemble modeling, CODEm (133 causes),
     including all major causes except HIV. CODEm selects
     models and ensembles of models based on out-of-sample
     performance.
2.   Negative binomial (12 causes).
3.   Fixed proportion models (27 causes).
4.   Disaggregation by pathogens or sub-causes (36 causes).
5.   Natural history models (8 causes).
6.   Mortality shock regressions (2 causes).




                                                              6
Combining results: CoDCorrect algorithm

• Because we developed single-cause models, it was imperative
 as a final step to ensure that individual cause estimates
 summed to the all-cause mortality estimate for every age-sex-
 country-year group.
• This is one of the innovations of this study:
  o Implemented taking into account uncertainty in every cause of
    death model outcome
  o We proportionately rescaled every cause such that the sum of the
    cause-specific estimates equaled the number of deaths from all
    causes generated from the demographic analysis (by country,
    year, age, and sex).
  o We applied CoDCorrect in a hierarchical way.




                                                                       7
Shift of causes of death in the last 20 years
               1990                     2010

                                   Injuries
          Injuries                   10%
             9%
                                               Comm/Mater
                                               /Neonat/Nutr
                     Comm/Mater/                   25%
                     Neonat/Nutr
                        34%


       Non Communicable            Non Communicable
           Diseases                    Diseases
             57%
                                         65%




        46.5 million               52.7 million


                                                              8
Death decomposition analysis by changes in
population
  75%


  50%


  25%


  0%


 -25%


 -50%


 -75%
           All Causes        Com/Mat       NCD             Injuries
                             Neo/Nut
        % change 1990-2000             % change due to change in rates

        % change due to pop ageing     % change due to pop growth

                                                                         9
Percentage of global deaths for female and
male individuals in 2010 by cause and age




     Males                         Females
Rapid
shifts in
leading
causes of
global
death




            11
Years of
life lost
puts more
emphasis
on
leading
causes in
children




            12
Percentage of YLLs for all ages and both sexes
combined by cause and region in 1990 and 2010
          1990                     2010
YLL top 25 leading causes across 21 regions, 2010




                                                    14
Main findings
• The shifting pattern of the number of deaths by cause across
 time, regions, and age groups is consistent with the three key
 drivers of change.
• Our estimates of 235 causes of deaths are internally consistent
 by age, sex, region, and year, but could be:
  o Different from other publications (higher or lower),
  o Similar to other estimates, or
  o New data for global health.

• Causes of “millionaires” deaths
  o HIV, LRI, diarrhea, malaria, TB (preterm, hepatitis)
  o IHD, stroke, lung cancer, diabetes, cirrhosis (CKD)
  o Road injuries (suicide).

                                                                  15
Limitations
• Data on CoD even in settings with medical certification might not
  always accurately capture the UCD.
• Redistribution of misclassified deaths could be improved with more
  empirical data.
• Verbal autopsy data are more accurate for some causes and less for
  others.
• For some cause models only a weak covariate selection was
  possible.
• The use of negative binomial, fixed proportion models, and natural
  history are in principle related to the lack of quality of data.
• UI are good for CODEm results but weak for other modeling
  strategies.
• When expert opinion and data diverge, we tended to follow the
  available data.
                                                                       16
Final remarks
• GBD 2010 is the most comprehensive and systematic analysis
 of causes of death undertaken to date.
• Adding time trends and quantifying the uncertainty differentiate
 GBD 2010 from similar studies in the past.
• GBD 2010 is an asset for Global Health:
  o More data then ever before
  o New methods for improving the quality of data and the modeling.

• GBD 2010 has demonstrated that public health priorities
 everywhere are changing, or soon will be.




                                                                      17

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Global and regional mortality from 235 causes of death for 20 age groups in 1990 and 2010: a systematic analysis for the Global Burden of Disease Study 2010

  • 1. Global and regional mortality for 235 causes of death from 1990 to 2010 Assessing premature and avoidable mortality Rafael Lozano, MD, on behalf of 189 authors of the paper “Global and regional mortality from 235 causes of death for 20 age groups in 1990 and 2010: a systematic analysis for the Global Burden of Disease Study 2010”
  • 2. Background • Causes of death (CoD) is one of the most fundamental metrics for population health. • Trends in CoD provide an important summary of whether society is or is not making progress in reducing burden of premature mortality and especially avoidable mortality. • Usually CoD assessments show success and failures of Health Information Systems and provide directions of how to improve them. • GBD 1990 was the first comprehensive study to present the global leading causes of death. 2
  • 3. Global cause of death assessment: main issues • The universe of data • Efforts to assess and enhance quality and comparability of data • The statistical modeling strategy • Causes of death constrained to sum to all cause mortality 3
  • 4. The universe of CoD data We attempted to identify all Type Site years Countries Vital Registration 2,798 130 available data on causes of Verbal Autopsy 486 66 death for 187 countries from Cancer registries 2,715 93 1980 to 2010 Police Reports 1,129 122 • We used 9 different sources Surveys/Census 1,564 82 of CoD data Maternal Mortality Surveillance 83 8 • We collected data on around Deaths in health Facilities 21 9 Burial and Mortuary 32 11 600 million deaths in the last Country−years of vital registration, 1980−2010 30 years • Data available varies by disease: o More on maternal, cancer, injuries o Less on NTD, diarrhea and LRI pathogens 4
  • 5. Assessment and enhancement of data quality and comparability 1. Assessment of completeness Percent garbage from ICD vital registration 2. Causes of death mapping 3. Redistribution of misclassified causes of death 4. Age and age-sex splitting 5. Smoothing for stochastic variation due to small numbers 6. Outlier detection 5
  • 6. Modeling causes of death 1. Causes of death ensemble modeling, CODEm (133 causes), including all major causes except HIV. CODEm selects models and ensembles of models based on out-of-sample performance. 2. Negative binomial (12 causes). 3. Fixed proportion models (27 causes). 4. Disaggregation by pathogens or sub-causes (36 causes). 5. Natural history models (8 causes). 6. Mortality shock regressions (2 causes). 6
  • 7. Combining results: CoDCorrect algorithm • Because we developed single-cause models, it was imperative as a final step to ensure that individual cause estimates summed to the all-cause mortality estimate for every age-sex- country-year group. • This is one of the innovations of this study: o Implemented taking into account uncertainty in every cause of death model outcome o We proportionately rescaled every cause such that the sum of the cause-specific estimates equaled the number of deaths from all causes generated from the demographic analysis (by country, year, age, and sex). o We applied CoDCorrect in a hierarchical way. 7
  • 8. Shift of causes of death in the last 20 years 1990 2010 Injuries Injuries 10% 9% Comm/Mater /Neonat/Nutr Comm/Mater/ 25% Neonat/Nutr 34% Non Communicable Non Communicable Diseases Diseases 57% 65% 46.5 million 52.7 million 8
  • 9. Death decomposition analysis by changes in population 75% 50% 25% 0% -25% -50% -75% All Causes Com/Mat NCD Injuries Neo/Nut % change 1990-2000 % change due to change in rates % change due to pop ageing % change due to pop growth 9
  • 10. Percentage of global deaths for female and male individuals in 2010 by cause and age Males Females
  • 12. Years of life lost puts more emphasis on leading causes in children 12
  • 13. Percentage of YLLs for all ages and both sexes combined by cause and region in 1990 and 2010 1990 2010
  • 14. YLL top 25 leading causes across 21 regions, 2010 14
  • 15. Main findings • The shifting pattern of the number of deaths by cause across time, regions, and age groups is consistent with the three key drivers of change. • Our estimates of 235 causes of deaths are internally consistent by age, sex, region, and year, but could be: o Different from other publications (higher or lower), o Similar to other estimates, or o New data for global health. • Causes of “millionaires” deaths o HIV, LRI, diarrhea, malaria, TB (preterm, hepatitis) o IHD, stroke, lung cancer, diabetes, cirrhosis (CKD) o Road injuries (suicide). 15
  • 16. Limitations • Data on CoD even in settings with medical certification might not always accurately capture the UCD. • Redistribution of misclassified deaths could be improved with more empirical data. • Verbal autopsy data are more accurate for some causes and less for others. • For some cause models only a weak covariate selection was possible. • The use of negative binomial, fixed proportion models, and natural history are in principle related to the lack of quality of data. • UI are good for CODEm results but weak for other modeling strategies. • When expert opinion and data diverge, we tended to follow the available data. 16
  • 17. Final remarks • GBD 2010 is the most comprehensive and systematic analysis of causes of death undertaken to date. • Adding time trends and quantifying the uncertainty differentiate GBD 2010 from similar studies in the past. • GBD 2010 is an asset for Global Health: o More data then ever before o New methods for improving the quality of data and the modeling. • GBD 2010 has demonstrated that public health priorities everywhere are changing, or soon will be. 17