Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data

Introduction The measurement of progress towards many Sustainable Development Goals (SDG) and other health goals requires accurate and timely all-cause and cause of death (COD) data. However, existing guidance to countries to calculate these indicators is inadequate for populations with incomplete d...

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Main Authors: Alan D Lopez, Tim Adair, Sonja Firth, Tint Pa Pa Phyo, Khin Sandar Bo
Format: Article
Language:English
Published: BMJ Publishing Group 2021-05-01
Series:BMJ Global Health
Online Access:https://gh.bmj.com/content/6/5/e005387.full
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spelling doaj-bd8673d2f316411cbaecb48c977dcf8b2021-06-26T09:31:11ZengBMJ Publishing GroupBMJ Global Health2059-79082021-05-016510.1136/bmjgh-2021-005387Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death dataAlan D Lopez0Tim Adair1Sonja Firth2Tint Pa Pa Phyo3Khin Sandar Bo43 Institute for Health Metrics and Evaluation, University of Washington, Seattle, WA, USA 1 Melbourne School of Population and Global Health, The University of Melbourne, Carlton, Victoria, Australia1 Melbourne School of Population and Global Health, The University of Melbourne, Carlton, Victoria, Australia2 Central Statistical Organization, Nay Pyi Taw, Myanmar1 Melbourne School of Population and Global Health, The University of Melbourne, Carlton, Victoria, AustraliaIntroduction The measurement of progress towards many Sustainable Development Goals (SDG) and other health goals requires accurate and timely all-cause and cause of death (COD) data. However, existing guidance to countries to calculate these indicators is inadequate for populations with incomplete death registration and poor-quality COD data. We introduce a replicable method to estimate national and subnational cause-specific mortality rates (and hence many such indicators) where death registration is incomplete by integrating data from Medical Certificates of Cause of Death (MCCOD) for hospital deaths with routine verbal autopsy (VA) for community deaths.Methods The integration method calculates population-level cause-specific mortality fractions (CSMFs) from the CSMFs of MCCODs and VAs weighted by estimated deaths in hospitals and the community. Estimated deaths are calculated by applying the empirical completeness method to incomplete death registration/reporting. The resultant cause-specific mortality rates are used to estimate SDG Indicator 23: mortality between ages 30 and 70 years from cardiovascular diseases, cancers, chronic respiratory diseases and diabetes. We demonstrate the method using nationally representative data in Myanmar, comprising over 42 000 VAs and 7600 MCCODs.Results In Myanmar in 2019, 89% of deaths were estimated to occur in the community. VAs comprised an estimated 70% of community deaths. Both the proportion of deaths in the community and CSMFs for the four causes increased with older age. We estimated that the probability of dying from any of the four causes between 30 and 70 years was 0.265 for men and 0.216 for women. This indicator is 50% higher if based on CSMFs from the integration of data sources than on MCCOD data from hospitals.Conclusion This integration method facilitates country authorities to use their data to monitor progress with national and subnational health goals, rather than rely on estimates made by external organisations. The method is particularly relevant given the increasing application of routine VA in country Civil Registration and Vital Statistics systems.https://gh.bmj.com/content/6/5/e005387.full
collection DOAJ
language English
format Article
sources DOAJ
author Alan D Lopez
Tim Adair
Sonja Firth
Tint Pa Pa Phyo
Khin Sandar Bo
spellingShingle Alan D Lopez
Tim Adair
Sonja Firth
Tint Pa Pa Phyo
Khin Sandar Bo
Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
BMJ Global Health
author_facet Alan D Lopez
Tim Adair
Sonja Firth
Tint Pa Pa Phyo
Khin Sandar Bo
author_sort Alan D Lopez
title Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
title_short Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
title_full Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
title_fullStr Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
title_full_unstemmed Monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
title_sort monitoring progress with national and subnational health goals by integrating verbal autopsy and medically certified cause of death data
publisher BMJ Publishing Group
series BMJ Global Health
issn 2059-7908
publishDate 2021-05-01
description Introduction The measurement of progress towards many Sustainable Development Goals (SDG) and other health goals requires accurate and timely all-cause and cause of death (COD) data. However, existing guidance to countries to calculate these indicators is inadequate for populations with incomplete death registration and poor-quality COD data. We introduce a replicable method to estimate national and subnational cause-specific mortality rates (and hence many such indicators) where death registration is incomplete by integrating data from Medical Certificates of Cause of Death (MCCOD) for hospital deaths with routine verbal autopsy (VA) for community deaths.Methods The integration method calculates population-level cause-specific mortality fractions (CSMFs) from the CSMFs of MCCODs and VAs weighted by estimated deaths in hospitals and the community. Estimated deaths are calculated by applying the empirical completeness method to incomplete death registration/reporting. The resultant cause-specific mortality rates are used to estimate SDG Indicator 23: mortality between ages 30 and 70 years from cardiovascular diseases, cancers, chronic respiratory diseases and diabetes. We demonstrate the method using nationally representative data in Myanmar, comprising over 42 000 VAs and 7600 MCCODs.Results In Myanmar in 2019, 89% of deaths were estimated to occur in the community. VAs comprised an estimated 70% of community deaths. Both the proportion of deaths in the community and CSMFs for the four causes increased with older age. We estimated that the probability of dying from any of the four causes between 30 and 70 years was 0.265 for men and 0.216 for women. This indicator is 50% higher if based on CSMFs from the integration of data sources than on MCCOD data from hospitals.Conclusion This integration method facilitates country authorities to use their data to monitor progress with national and subnational health goals, rather than rely on estimates made by external organisations. The method is particularly relevant given the increasing application of routine VA in country Civil Registration and Vital Statistics systems.
url https://gh.bmj.com/content/6/5/e005387.full
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