Article type
Year
Abstract
Background:
Identifying accurate and robust information on causes of maternal death beyond civil registration data requires looking for information in population- and facility-based studies, specialized surveys, registries and elsewhere. Bibliographic databases (BDs) offer one source but current epidemiologic search filters are suboptimal. We explore development of a robust strategy for searching BDs for epidemiologic information on maternal death.
Objectives:
To identify national and sub-national data of maternal causes of death, particularly from low- and middle-income countries (LMICs), published in BDs.
Methods:
The multidisciplinary research team, including two information specialists, examined previous, similar strategies. We discussed the new strategy extensively to ensure sensitivity for current needs and future updates. We iteratively tested vocabulary pertaining to the study population, death by any cause in pregnant/postpartum women, and associated epidemiologic information. We resolved challenges in distinguishing physical death from its epidemiologic aspects (i.e. mortality). When testing showed missed potentially relevant references using the epidemiologic filter alone, we applied a parallel LMIC filter to identify information from these regions. We searched multiple BDs (MEDLINE, Embase, Popline, Web of Science, Global Index Medicus). We deemed Russian and Chinese BDs to be critical, and engaged teams with requisite language and skills for these searches. We removed animal-only and male-only records from results, where possible, to contain volume.
Results:
Our topic required multiple BDs and extensive vocabulary to identify the desired data. We deduplicated ~110,000 records and are screening ~54,000. We will explore the distribution of included records, particularly for LMICs, in the various BDs.
Conclusions:
A robust, comprehensive search on worldwide maternal mortality requires extensive testing and understanding of vocabulary pertaining to the population and epidemiologic data. It requires searching multiple BDs, including non-English ones. A LMIC filter is required, demonstrating the need for multi-pronged searching for epidemiologic data.
Patient or healthcare consumer involvement:
Hidden data on causes of maternal death, especially for LMICs, are often provided by women, households, or community (e.g. verbal/social autopsies). We incorporated vocabulary and methods not commonly associated with epidemiologic searches to identify these unique sources of data.
Identifying accurate and robust information on causes of maternal death beyond civil registration data requires looking for information in population- and facility-based studies, specialized surveys, registries and elsewhere. Bibliographic databases (BDs) offer one source but current epidemiologic search filters are suboptimal. We explore development of a robust strategy for searching BDs for epidemiologic information on maternal death.
Objectives:
To identify national and sub-national data of maternal causes of death, particularly from low- and middle-income countries (LMICs), published in BDs.
Methods:
The multidisciplinary research team, including two information specialists, examined previous, similar strategies. We discussed the new strategy extensively to ensure sensitivity for current needs and future updates. We iteratively tested vocabulary pertaining to the study population, death by any cause in pregnant/postpartum women, and associated epidemiologic information. We resolved challenges in distinguishing physical death from its epidemiologic aspects (i.e. mortality). When testing showed missed potentially relevant references using the epidemiologic filter alone, we applied a parallel LMIC filter to identify information from these regions. We searched multiple BDs (MEDLINE, Embase, Popline, Web of Science, Global Index Medicus). We deemed Russian and Chinese BDs to be critical, and engaged teams with requisite language and skills for these searches. We removed animal-only and male-only records from results, where possible, to contain volume.
Results:
Our topic required multiple BDs and extensive vocabulary to identify the desired data. We deduplicated ~110,000 records and are screening ~54,000. We will explore the distribution of included records, particularly for LMICs, in the various BDs.
Conclusions:
A robust, comprehensive search on worldwide maternal mortality requires extensive testing and understanding of vocabulary pertaining to the population and epidemiologic data. It requires searching multiple BDs, including non-English ones. A LMIC filter is required, demonstrating the need for multi-pronged searching for epidemiologic data.
Patient or healthcare consumer involvement:
Hidden data on causes of maternal death, especially for LMICs, are often provided by women, households, or community (e.g. verbal/social autopsies). We incorporated vocabulary and methods not commonly associated with epidemiologic searches to identify these unique sources of data.