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This guidance addresses one type of generative AI, large multi-modal models (LMMs), which can accept one or more type of data input and generate diverse outputs that are not limited to the type of data fed into the algorithm. It has been predicted that LMMs will have wide use and application in
...
health care, scientific research, public health and drug development. LMMs are also known as “general-purpose foundation models”, although it is not yet proven whether LMMs can accomplish a wide range of tasks and purposes.
more
TArtificial intelligence (AI) is transforming health systems, reshaping how care is planned, delivered and governed. This report presents the first assessment of AI integration into health systems a
...
cross the whole of the WHO European Region, based on findings from the 2024–2025 survey on AI for health care. It examines national strategies, governance models, legal and ethical frameworks, workforce readiness, data governance, stakeholder engagement, private sector roles and the uptake of AI applications. Drawing on insights from 50 Member States, the report explores how countries are navigating opportunities and challenges, highlighting emerging trends, gaps and practices to guide policy-makers towards coherent, ethical and people-centred approaches to AI in health care.
more
The Gulf CDC Technical Guide for Rapid Risk Assessments of Acute Public Health Events provides a structured, multi-sectoral approach to evaluate and manage public health threats in Gulf Cooperation
...
Council (GCC) countries. It focuses on rapid, evidence-based assessments (within 2-5 days) to determine risk levels, propose control measures, and guide communications
more
This document suggests mechanisms that countries can use to respond to emergencies and disasters taking a whole of society and whole of government approach ensuring multisectoral engagement for health actions. It helps to run a participatory process
...
of developing the national health response operations plan that brings together all relevant sectors, public health experts, civil society and the international community under government leadership and facilitate ownership, adoption, testing through simulation and finally successful implementation in responding to emergencies and disasters from multiple hazards.
more
Accessed November 2017
Scientific Paper
Nutrition training of health and agriculture workers can help to reduce child undernutrition. Specifically, trained health extension workers cancontribute through frequent nutrition counselling of c
...
aregivers. Evidence from systematic reviews has showed that providing nutrition training targeting health workers can improve feeding frequency, energy intake, and dietary diversity of children aged six months to two years. Scaling up of nutrition training for health and agriculture workers presents a potential entry point to improve nutrition status among childrenFood insecurity and nutrition deficiency are a common phenomenon in Ethiopia.
more
This report presents findings from research conducted by Economist Impact to assess the health, demographic, social and economic impacts associated with different scenarios for financing the HIV epidemic across 13 selected countries in Sub-Saharan A
...
frica. The sponsorship of UNAIDS towards this report is gratefully acknowledged. However, the findings and ideas expressed herein represent those of Economist Impact. They do not necessarily reflect the views and opinions of UNAIDS, nor do they engage the responsibility of UNAIDS.
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Development assistance for health (DAH) is an important part of financing healthcare in low- and middle-income countries. We estimated the gross disbursement of DAH of the 29 Development Assistance Committee (DAC) member countries of the Organisatio
...
n for Economic Co-operation and Development (OECD) for 2011–2019; and clarified its flows, including aid type,
channel, target region, and target health focus area. Data from the OECD iLibrary were used. The DAH definition was based on the OECD sector classification. For core funding to non-healthspecific multilateral agencies, we estimated DAH and its flows based on the OECD methodology for
calculating imputed multilateral official development assistance (ODA).
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Assessing the impact of the EVD outbreak on health systems in Sierra Leone. Survey concluded 6-17 October 2014
AIDS Free Nigeria Training Manual
This Policy for community-based health insurance answers the will of the Rwandan government to popularize the fundamental aces of the current policy. This document serves as an update to the first policy that was elaborated and published in 2004, an
...
d integrates all the changes that have occurred in the process since then. This new version of the policy for community based health insurance contributes to the fulfillment of the same objectives as the EDPRS and the Millennium Development Goals (MDG). It integrates system experiences but more especially the devices adapted to the challenges with which community base health insurance are confronted at present.
more
A case study of the Essential Health Care Package in Swaziland
Magagula, Samuel V.
Regional Network for Equity in Health in east and southern Africa (EQUINET)
(2017)
C1
Regional Network for Equity in Health in east and southern Africa (EQUINET): Disussion Paper 112
The Essential Health Benefit (EHB) is known as Essential ... Health Care Package (EHCP) in Swaziland. This desk review provides evidence on the experience of EHCPs in Swaziland and includes available policy documents and research reports. more
The Essential Health Benefit (EHB) is known as Essential ... Health Care Package (EHCP) in Swaziland. This desk review provides evidence on the experience of EHCPs in Swaziland and includes available policy documents and research reports. more
The National Health Plan (NHP) aims to strengthen the country’s health system and pave the way towards Universal Health Coverage (UHC),choosing a
...
path that is explicitly pro-poor. The main goal of NHP 2017-2021 is to extend access to a Basic Essential Package of Health Services (EPHS) to the entire population by 2020 while increasing financial protection.
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