Healthcare utilization and maternal and child mortality during the COVID-19 pandemic in 18 low- and middle-income countries: An interrupted time-series analysis with mathematical modeling of administrative data
Public Library of Science (2022) • Volume 19, Issue 8, Pages e1004070-e1004070
Overall Assessment
Adequate Methodological Quality
Assessment created by PaperScorers Medical AI v0.1.0 on Dec 29, 2025
Key Takeaways
- •HMIS-based ITS shows sizeable service drops, especially OPD (−13.1%) across 18 LMICs.
- •LiST projects ~110.7k additional child and 3.3k maternal deaths (Mar 2020–Jun 2021).
- •Largest disruptions in early Q2 2020; correlated with mobility restriction stringency.
- •Data/code not open; no preregistration; sensitivity analyses support robustness.
Conclusion
Essential service disruptions during COVID-19 likely caused notable excess maternal/child deaths; preserving routine services must be integral to pandemic response.
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Disclaimer: This assessment is generated by AI and should not be the sole basis for clinical or research decisions. Always review the original paper and consult with domain experts.
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