TY - JOUR
T1 - Population Health Metrics Research Consortium gold standard verbal autopsy validation study: Design, implementation, and development of analysis datasets
AU - Murray, Christopher
AU - Lopez, Alan
AU - Black, Robert
AU - Ahuja, Ramesh
AU - Ali, Said
AU - Baqui, Abdullah
AU - Dandona, Lalit
AU - Dantzer, Emily
AU - Das, Vinita
AU - Dhingra, Usha
AU - Dutta, Arup
AU - Fawzi, Wafaie
AU - Flaxman, Abraham
AU - Gomez, Sara
AU - Hernandez, Bernardo
AU - Joshi, Rohina
AU - Kalter, Henry
AU - Kumar, Aarti
AU - Kumar, Vishwajeet
AU - Lozano, Rafael
AU - Lucero, M
AU - Mehta, Saurabh
AU - Neal, Bruce
AU - Ohno, Summer
AU - Prasad, Rajendra
AU - Praveen, Devarsetty
AU - Premji, Zul
AU - Ramirez-Villalobos, Dolores
AU - Remolador, Hazel
AU - Riley, Ian
AU - Romero, Minerva
AU - Said, Mwanaidi
AU - Sanvictores, Diozele
AU - Sazawal, Sunil
AU - Tallo, Veronica
PY - 2011/8/4
Y1 - 2011/8/4
N2 - Background: Verbal autopsy methods are critically important for evaluating the leading causes of death in populations without adequate vital registration systems. With a myriad of analytical and data collection approaches, it is essential to create a high quality validation dataset from different populations to evaluate comparative method performance and make recommendations for future verbal autopsy implementation. This study was undertaken to compile a set of strictly defined gold standard deaths for which verbal autopsies were collected to validate the accuracy of different methods of verbal autopsy cause of death assignment.Methods: Data collection was implemented in six sites in four countries: Andhra Pradesh, India; Bohol, Philippines; Dar es Salaam, Tanzania; Mexico City, Mexico; Pemba Island, Tanzania; and Uttar Pradesh, India. The Population Health Metrics Research Consortium (PHMRC) developed stringent diagnostic criteria including laboratory, pathology, and medical imaging findings to identify gold standard deaths in health facilities as well as an enhanced verbal autopsy instrument based on World Health Organization (WHO) standards. A cause list was constructed based on the WHO Global Burden of Disease estimates of the leading causes of death, potential to identify unique signs and symptoms, and the likely existence of sufficient medical technology to ascertain gold standard cases. Blinded verbal autopsies were collected on all gold standard deaths.Results: Over 12,000 verbal autopsies on deaths with gold standard diagnoses were collected (7,836 adults, 2,075 children, 1,629 neonates, and 1,002 stillbirths). Difficulties in finding sufficient cases to meet gold standard criteria as well as problems with misclassification for certain causes meant that the target list of causes for analysis was reduced to 34 for adults, 21 for children, and 10 for neonates, excluding stillbirths. To ensure strict independence for the validation of methods and assessment of comparative performance, 500 test-train datasets were created from the universe of cases, covering a range of cause-specific compositions.Conclusions: This unique, robust validation dataset will allow scholars to evaluate the performance of different verbal autopsy analytic methods as well as instrument design. This dataset can be used to inform the implementation of verbal autopsies to more reliably ascertain cause of death in national health information systems.
AB - Background: Verbal autopsy methods are critically important for evaluating the leading causes of death in populations without adequate vital registration systems. With a myriad of analytical and data collection approaches, it is essential to create a high quality validation dataset from different populations to evaluate comparative method performance and make recommendations for future verbal autopsy implementation. This study was undertaken to compile a set of strictly defined gold standard deaths for which verbal autopsies were collected to validate the accuracy of different methods of verbal autopsy cause of death assignment.Methods: Data collection was implemented in six sites in four countries: Andhra Pradesh, India; Bohol, Philippines; Dar es Salaam, Tanzania; Mexico City, Mexico; Pemba Island, Tanzania; and Uttar Pradesh, India. The Population Health Metrics Research Consortium (PHMRC) developed stringent diagnostic criteria including laboratory, pathology, and medical imaging findings to identify gold standard deaths in health facilities as well as an enhanced verbal autopsy instrument based on World Health Organization (WHO) standards. A cause list was constructed based on the WHO Global Burden of Disease estimates of the leading causes of death, potential to identify unique signs and symptoms, and the likely existence of sufficient medical technology to ascertain gold standard cases. Blinded verbal autopsies were collected on all gold standard deaths.Results: Over 12,000 verbal autopsies on deaths with gold standard diagnoses were collected (7,836 adults, 2,075 children, 1,629 neonates, and 1,002 stillbirths). Difficulties in finding sufficient cases to meet gold standard criteria as well as problems with misclassification for certain causes meant that the target list of causes for analysis was reduced to 34 for adults, 21 for children, and 10 for neonates, excluding stillbirths. To ensure strict independence for the validation of methods and assessment of comparative performance, 500 test-train datasets were created from the universe of cases, covering a range of cause-specific compositions.Conclusions: This unique, robust validation dataset will allow scholars to evaluate the performance of different verbal autopsy analytic methods as well as instrument design. This dataset can be used to inform the implementation of verbal autopsies to more reliably ascertain cause of death in national health information systems.
KW - Cause of death
KW - Gold standard
KW - India
KW - Mexico
KW - Philippines
KW - Tanzania
KW - VA
KW - Validation
KW - Verbal autopsy
UR - http://www.scopus.com/inward/record.url?scp=79961118664&partnerID=8YFLogxK
U2 - 10.1186/1478-7954-9-27
DO - 10.1186/1478-7954-9-27
M3 - Article
SN - 1478-7954
VL - 9
JO - Population Health Metrics
JF - Population Health Metrics
IS - 27
M1 - 27
ER -