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Data sources for measuring maternal mortality. November 1, 2010 Rafael Lozano Professor of Global Health. Outline . Input data and correction process by source PMDF to maternal deaths to rates Modeling approaches I: linear models Outlier detection
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Data sources for measuring maternal mortality November 1, 2010 Rafael Lozano Professor of Global Health
Outline • Input data and correction process by source • PMDF to maternal deaths to rates • Modeling approaches I: linear models • Outlier detection • Modeling approaches II: space-time regression • Predictive validity • Uncertainty
Four major categories of data • Vital registration • Deaths in the household data from censuses and surveys • Sibling histories from surveys • National and subnational peer reviewed studies of maternal mortality (i.e. verbal autopsy studies, etc)
Four major categories of data • Vital registration • Deaths in the household data from censuses and surveys • Sibling histories from surveys • National and subnational peer reviewed studies of maternal mortality (i.e. verbal autopsy studies, etc)
Sources for vital registration data • WHO Mortality Database • Reported civil registration data from countries • Periodically updated and released by WHO • Country websites and official publications • Sample registration systems, such as in India or China
Issues with vital registration • Changes in the International Classification of Diseases (ICD) results in changes in coding assignments to underlying causes of death • The use of tabulation lists in the ICD results in the loss of substantial detail of cause of death • Deaths can be (and often are) assigned to causes that should not be considered underlying causes of death (garbage codes) Together, this means that what counts as a “maternal death” in one country in one year, may not count as a “maternal death” in another country or another year.
Correcting vital registration • Shortened cause of death list: 56 causes of interest to public health practitioners • Causes mapped across ICD revisions to these 56 causes • Maternal conditions encompass all O codes (O00 – O99)
Garbage codes • Garbage coding is the biggest challenge to comparability across countries and over time in vital registration data • Garbage codes: assigned causes of death which are not useful for public health analysis of cause-of-death data • General approach to address problem: • Identify garbage codes • Identify target codes to which garbage codes should be reassigned • Choose the fraction of deaths assigned to a garbage code that should be reassigned to each target code
Fraction of deaths assigned to GCs in the latest ICD-10 year since 2000
Garbage codes • General approach to address problem: • Identify garbage codes • Identify target codes to which garbage codes should be reassigned • Choose the fraction of deaths assigned to a garbage code that should be reassigned to each target code
Redistribution of garbage codes • Identify garbage codes 4 classifications of garbage codes: • Type 1: Causes that should not be considered underlying causes of death • i.e. R95-R99: Ill-defined and unknown causes of mortality • Type 2: Intermediate causes of death • i.e. I51: Heart failure • Type 3: Immediate causes of death • i.e. E87: Other disorders of fluid, electrolyte and acid-base balance • Type 4: Unspecified causes within a larger grouping • i.e. Malignant neoplasm without specification of site
Percentage of Type of Garbage Codes All country years by ICD All country years by age, only ICD 10
Redistribution of garbage codes • Identify target codes to which garbage codes should be reassigned • Based on pathophysiology, i.e.: Garbage code Target causes Digestive diseases Genitourinary diseases Peritonitis Maternal conditions Injuries
Redistribution of garbage codes • Choose the fraction of deaths assigned to a garbage code that should be reassigned to each target code 3 approaches: • Proportionate redistribution • For causes with little information content • Statistical models • For heart failure • Expert judgment • Via review of published literature and consultation with experts, taking into account time trends in causes of death
Garbage codes redistributed to maternal causes, based on expert judgment (ICD-10)
Garbage codes redistributed to maternal causes, based on proportions (ICD-10)
Maternal Mortality Audit Studies • 32 studies have been published that use detailed audits of reproductive-aged deaths to ascertain the true number of maternal deaths compared to those registered. • Assessment of these studies should exclude late maternal deaths and incidental causes to make them comparable to the GC algorithms for maternal mortality estimation. • 30 studies identify either late maternal and incidental deaths, but only 5 studiesidentify both • These studies provide an opportunity to validate the GC approach to maternal death correction.
Four major categories of data • Vital registration • Deaths in the household data from censuses and surveys • Sibling histories from surveys • National and subnational peer reviewed studies of maternal mortality (i.e. verbal autopsy studies, etc)
Deaths in the household • Some censuses and surveys include a module on deaths occurring in the household over a specified period of time • Was the deceased between the ages 15-49 and female? • If yes: did she die while pregnant? During child birth? In the 6 weeks after giving birth or terminating the pregnancy? • Direct questioning about events in the household tends to lead to undercounting of vital events
Four major categories of data • Vital registration • Deaths in the household data from censuses and surveys • Sibling histories from surveys • National and subnational peer reviewed studies of maternal mortality (i.e. verbal autopsy studies, etc)
Survey data for maternal mortality • Difficult to capture in a survey because maternal deaths are rare – a very large sample size required • Sibling histories yield high return of observations per respondent • Availability of large datasets with information on sibling survival from household surveys • DHS “maternal mortality” module • CDC Reproductive Health Surveys • However, naïve analysis of sibling histories can be misleading • Survivor bias • Recall bias
Gakidou-King weights • An algebraic correction for underrepresentation of high mortality families • “Upweight” observations from high mortality families • Calculate a family-level weight in the survey micro-data • This weight (Wf=Bf /Sf) is the inverse of the probability of surviving to the time of the survey • Similar to a population sampling weight: the inverse of the probability of selection into the sample
Four major categories of data • Vital registration • Sibling histories from surveys • Deaths in the household data from censuses and surveys • National and subnational peer reviewed studies of maternal mortality (i.e. verbal autopsy studies, etc)
Literature review to identify studies • In PubMed, searched for “maternal mortality” and “country name” • Included studies had to be peer-reviewed, population-based, and provide clear description of methods • 25 additional verbal autopsy studies which included “maternal” in the cause list 9,659 titles 593 abstracts 209 papers 61 extracted
Final Database by Source • No data for 21 countries, representing 2.2% of births
Data sources in each country • National and subnational sources included • Since the time of publication, new data sources have come to light: • Italicized: incorporated into model since the Lancet 2010 publication • Italicized and in blue font: sources that we are aware of but have not yet identified and incorporated