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Sameen Siddiqi

Researcher at Aga Khan University

Publications -  36
Citations -  394

Sameen Siddiqi is an academic researcher from Aga Khan University. The author has contributed to research in topics: Health care & Population. The author has an hindex of 7, co-authored 36 publications receiving 210 citations. Previous affiliations of Sameen Siddiqi include University of New South Wales.

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Adverse events in a Tunisian hospital: results of a retrospective cohort study

TL;DR: This study confirms that preventable AEs were not rare in this context and caused human harm and consumed a significant part of hospital resources Thus, targeted interventions are needed.
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The path towards universal health coverage in the Arab uprising countries Tunisia, Egypt, Libya, and Yemen.

TL;DR: This report presents selected experiences of other countries that had similar social and political changes, and how these events affected their path towards universal health coverage (UHC), and aims to integrate historical lessons with present contexts in a roadmap for action that addresses the challenges and opportunities for progression towards UHC.
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Implementation of health and health-related sustainable development goals: progress, challenges and opportunities – a systematic literature review

TL;DR: The authors' findings indicate that high-level political commitment is evident in most countries and HHSDGs are being aligned with existing national development strategies and plans, and a multisectoral, integrated approach is being adopted in institutional setups.
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Global strategies and local implementation of health and health-related SDGs: lessons from consultation in countries across five regions.

TL;DR: The study offers messages to LMICs that would allow for a full decade of accelerated implementation of HHSDGs, and points to the need for more implementation research in each domain and for testing interventions that are likely to work before scale-up.