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    Excess mortality in low-and lower-middle-income countries:
    asystematic review and meta-analysis (2023)

    Art
    Zeitschriftenartikel / wissenschaftlicher Beitrag
    Autoren
    Gmanyami, J.
    Jarynowski, A. (WE 16)
    Belik, V. (WE 16)
    Lambert, O.
    Amuasi, J. H.
    Quentin, W.
    Quelle
    European Journal of Public Health
    Bandzählung: 33
    Heftzählung: Supplement 2
    Seiten: Artikelnummer ii7
    ISSN: 1101-1262
    Sprache
    Englisch
    Verweise
    URL (Volltext): https://academic.oup.com/eurpub/article/doi/10.1093/eurpub/ckad160.017/7327624
    DOI: 10.1093/eurpub/ckad160.017
    Kontakt
    Institut für Veterinär-Epidemiologie und Biometrie

    Königsweg 67
    14163 Berlin
    +49 30 838 56034
    epi@vetmed.fu-berlin.de

    Abstract / Zusammenfassung

    Background:
    The COVID-19 pandemic caused a massive death toll, but its effect on mortality remains uncertain in low- and lower-middle-income countries (LLMICs). This review summarized the available literature on excess mortality in LLMICs, including methods, data sources, and drivers of excess mortality.
    Methods:
    A protocol was registered in PROSPERO (ID: CRD42022378267). We searched PubMed, Embase, Web of Science, Cochrane Library, Google Scholar, and Scopus for studies conducted in LLMICs on excess mortality which included at least a one-year non-COVID-19 period as the comparator, and with publication date from 2019 to date. The meta-analysis included studies with extractable data on excess mortality, methods, population size, and observed and expected deaths. We used the Mantel-Haenszel method to estimate the pooled risk ratio with 95% confidence intervals.
    Results:
    The review included 21 studies (5 from Africa), of which 11 were included in the meta-analysis (2 from Africa). Of 1,405,128,717 individuals, 2,161,846 deaths were expected, and 3,633,661 deaths were reported. The pooled excess mortality was 104.7 deaths per 100,000 population. The risk of excess mortality was 1.68 (95% CI: 1.67, 1.68 p < 0.001). Data sources included public cemeteries, civil registration systems, obituary notifications, surveys, funeral counts, burial site imaging, and demographic surveillance systems. Techniques used to estimate excess mortality were mainly statistical modelling and geospatial analysis. Of the 21 studies, only one reported on drivers of excess mortality and found higher excess mortality in urban settings.
    Conclusions:
    Our results show that excess mortality in LLMICs during the pandemic was substantial even if it was considerably lower than in high-income countries. There is uncertainty around excess mortality estimates given comparatively weak data. Further studies are needed to identify the drivers of excess mortality by exploring different methods and data sources.