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The classification of digital health interventions (DHIs) categorizes the different ways in which digital and mobile technologies are being used to support health system needs. Historically, the di
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verse communities working in digital health—including government stakeholders, technologists, clinicians, implementers, network operators, researchers, donors— have lacked a mutually understandable language with which to assess and articulate functionality. A shared and standardized vocabulary was recognized as necessary to identify gaps and duplication, evaluate effectiveness, and facilitate alignment across different digital health implementations. Targeted primarily at public health audiences, this Classification framework aims to promote an accessible and bridging language for health program planners to articulate functionalities of digital health implementations.
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A guide to support implementation of health service Quality Improvement activities in Ethiopian health facilities
Community Health Volunteers' Decision Support System Project
P. Bakibinga, Kamande E. , Kisia L., et al.
African Population and Health Research Centre APHRC
(2018)
C1
This report presents the key findings of the end-of-project assessment of households and
community health volunteers, conducted in 2017 in the Kamukunji and Embakasi sub-counties
of Nairobi, Kenya, for a Community
...
Health Volunteers’ Decision Support System (CHV DSS)
intervention project. The report was prepared by the African Population and Health Research
Center (APHRC). The end-line survey was implemented by APHRC. Implementation of the CHV
DSS project is a joint collaboration among several partners, including APHRC, the City County
of Nairobi, sub-county health management teams (Kamukunji and Embakasi), and community
health volunteers. The opinions expressed in this report are those of the authors and do not
necessarily reflect the views of the donor organization, the County Innovation Challenge Fund
for Kenya.
more
his publication provides an overview of social inequalities in several indicators related to the health of women, children, and adolescents in a region deemed as one with high levels of inequality: Latin America and the Caribbean (LAC). In order for
...
it to serve as a baseline for the 2030 Agenda, emphasis is placed on examining these inequalities around the year 2014. The analysis suggests that reducing within-country disparities is a priority, as widespread social inequalities in health are identified among LAC countries.
more
Strengthening health financing to accelerate progress towards universal health coverage. Total Government Health Expenditure exceeds the commitmen
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t by African Union member states to commit at least 15% of their budgets to the health sector. With a sector allocation of 16.6% of total budget in 2022/23 and average per capita spending estimated at US$407 (N$6,500.00), health spending in Namibia is one of the highest in SADC. The Government is thus encouraged to sustain this level of investment to safeguard the gains achieved and make progress towards SDGs. This could be achieved through the development of a national health financing strategy to mobilise additional and innovative resources for the sector.
more
The humanitarian crisis in Northeast Nigeria, driven by conflict, climate-related shocks, and food insecurity, has created immense challenges for the health sector in Borno, Adamawa, and Yobe (BAY) States. About 1.8 million people remain displaced(1
...
), with inadequate access to healthcare services and persistent disease outbreaks, malnutrition, and mental health challenges. This strategy outlines a comprehensive localization approach to strengthen the health sector's capacity by empowering local and national actors (L/NAs) include state and local government structures to lead humanitarian responses at respective levels with minimal oversight functions.
The localization strategy aligns with the global commitments of the Grand Bargain 2.0, prioritizing equitable partnerships, capacity sharing, and resource mobilization to enhance sustainable, community-owned health systems(2). Key components include increasing the visibility and meaningful participation of L/NAs in health sector coordination, promoting direct funding to local actors, and addressing systemic barriers such as governance, leadership, capacity, and resource gaps.
The global humanitarian community made a commitment, as reflected in the Grand Bargain 2.0, to localization (3) to improve the efficiency and effectiveness of humanitarian aid. A key priority of this commitment is to empower local actors to take a leading role in delivering assistance, ultimately leading to better outcomes for affected communities. A localized health response, strengthened by partnerships, can achieve several key outcomes, including rapid response and access, community acceptance, cost-effectiveness, links to long-term development, and increased accountability to the community. Localization in health matters because it ensures sustainable and community-owned health responses.
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The 2024 edition reviews more than 50 health-related indicators from the Sustainable Development Goals and WHO’s Thirteenth General Programme of Work. It also highlights the findings from the Global heal
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th estimates 2021, notably the impact of the COVID-19 pandemic on life expectancy and healthy life expectancy.
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National HIV Strategic Plan 2016-2021
The humanitarian-development-peace nexus (HDPNX) is a new way of working that offers a framework for coherent joined-up planning and implementation of shared priorities between humanitarian development and peacebuilding actors in emergency settings. To advance the HDPNx in a given country a sh
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ared foundational understanding of the current situation is needed. However it can be challenging to find such a resource perpetuating poor understanding planning and operationalization. This is one of a series of country profiles that have been developed by WHO to address that need. Each profile provides an overview of health-related nexus efforts in the country and will be updated regularly.
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CONCLUSIONS: The roles performed by CHWs are broad, varied and essential for diabetes and hypertension management. However, basic knowledge about diabetes and hypertension remains poor while training is unstandardised and haphazard. These need to be improved if community-based NCD management is to b
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e successful. The potential of peer education as a complementary mechanism to formal training needs as well as support and supervision in the workplace requires further assessment
more
The 2019 SLDHS is a national sample survey that provides up-to-date information on demographic and health indicators. The sample was selected using a stratified, two-stage cluster design, with enumeration areas (EAs) as the sampling units for the fi
...
rst stage. The second stage was a complete listing of households carried out in each of the 578 selected EAs. The target groups were women age 15-49 and men age 15-59 in
randomly selected households across the country. A representative sample of approximately 13,872 households was selected for the survey. Half of the households (6,936) were selected for biomarker and men’s interview. The men’s survey was conducted in half (50%) of the sample households, and all men age 15-59 in these households were included. In this subsample, one eligible woman in each household was randomly selected to be asked additional questions about domestic violence.
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Tanzania Demographic and Health Survey
National Bureau of Statistics
inistry of Health and Social Welfare (MoHSW), Tanzania Food and Nutrition Centre (TFNC), et al.
(2011)
C1
LIFE-SAVING SERVICES FOR SOUTH SUDANESE WOMEN AND GIRLS