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1
In this paper they make estimates of the potential short-term economic impact of COVID-19 on global monetary poverty through contractions in per capita household income or consumption.
The estimates
...
are based on three scenarios: low, medium, and high global contractions of 5, 10, and 20 per cent; we calculate the impact of each of these scenarios on the poverty headcount using the international poverty lines of US$1.90, US$3.20 and US$5.50 per day.
The estimates show that COVID poses a real challenge to the UN Sustainable Development Goal of ending poverty by 2030 because global poverty could increase for the first time since 1990 and, depending on the poverty line, such increase could represent a reversal of approximately a decade in the world’s progress in reducing poverty.
In some regions the adverse impacts could result in poverty levels similar to those recorded 30 years ago. Under the most extreme scenario of a 20 per cent income or consumption contraction, the number of people living in poverty could increase by 420–580 million, relative to the latest official recorded figures for 2018.
more
Background
Four methods have previously been used to track aid for reproductive, maternal, newborn, and child health (RMNCH). At a meeting of donors and stakeholders in May, 2018, a single, agreed method was requested to produce accurate, predictable, transparent, and up-to-date
...
estimates that could be used for analyses from both donor and recipient perspectives. Muskoka2 was developed to meet these needs. We describe Muskoka2 and present estimates of levels and trends in aid for RMNCH in 2002–17, with a focus on the latest estimates for 2017.
Methods
Muskoka2 is an automated algorithm that generates disaggregated estimates of aid for reproductive health, maternal and newborn health, and child health at the global, donor, and recipient-country levels. We applied Muskoka2 to the Organisation for Economic Co-operation and Development's Creditor Reporting System (CRS) aid activities database to generate estimates of RMNCH disbursements in 2002–17. The percentage of disbursements that benefit RMNCH was determined using CRS purpose codes for all donors except Gavi, the Vaccine Alliance; the UN Population Fund; and UNICEF; for which fixed percentages of aid were considered to benefit RMNCH. We analysed funding by donor for the 20 largest donors, by recipient-country income group, and by recipient for the 16 countries with the greatest RMNCH need, defined as the countries with the worst levels in 2015 on each of seven health indicators.
Findings
After 3 years of stagnation, reported aid for RMNCH reached $15·9 billion in 2017, the highest amount ever reported. Among donors reporting in both 2016 and 2017, aid increased by 10% ($1·4 billion) to $15·4 billion between 2016 and 2017. Child health received almost half of RMNCH disbursements in 2017 (46%, $7·4 billion), followed by reproductive health (34%, $5·4 billion), and maternal and newborn health (19%, $3·1 billion). The USA ($5·8 billion) and the UK ($1·6 billion) were the largest bilateral donors, disbursing 46% of all RMNCH funding in 2017 (including shares of their core contributions to multilaterals). The Global Fund and Gavi were the largest multilateral donors, disbursing $1·7 billion and $1·5 billion, respectively, for RMNCH from their core budgets. The proportion of aid for RMNCH received by low-income countries increased from 31% in 2002 to 52% in 2017. Nigeria received 7% ($1·1 billion) of all aid for RMNCH in 2017, followed by Ethiopia (6%, $876 million), Kenya (5%, $754 million), and Tanzania (5%, $751 million).
Interpretation
Muskoka2 retains the speed, transparency, and donor buy-in of the G8's previous Muskoka approach and incorporates eight innovations to improve precision. Although aid for RMNCH increased in 2017, low-income and middle-income countries still experience substantial funding gaps and threats to future funding. Maternal and newborn health receives considerably less funding than reproductive health or child health, which is a persistent issue requiring urgent attention.
Funding
Bill & Melinda Gates Foundation; Partnership for Maternal, Newborn & Child Health.
more
National estimates have been developed every two years since 2003, led by the NCASC with close collaboration from a range of technical experts, partners and epidemiologists from the UNAIDS, WHO and FHI. This contains information about estimations of
...
adult HIV prevalence.
more
The Lancet Global Health Published:May 12, 2020DOI:https://doi.org/10.1016/S2214-109X(20)30229-1
The Lancet. 1 December 2020. doi: 10.1016/S0140-6736(20)32340-0.
To our knowledge, this is the first study to produce a global estimate of the need for rehabilitation services and to show that at least one in every three people in the world needs rehabilitation at some point in the course of their
...
illness or injury. This number counters the common view of rehabilitation as a service required by only few people. We argue that rehabilitation needs to be brought close to communities as an integral part of primary health care to reach more people in need.
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Objective: There are an estimated 38 million people with HIV (PWH), with significant economic consequences. We aimed to collate global lifetime costs for managing HIV.
Design: We conducted a systematic review (PROSPERO: CRD42020184490) using five databases from 1999 to 2019.
Methods: Studies were
...
included if they reported primary data on lifetime costs for PWH. Two reviewers independently assessed the titles and abstracts, and data were extracted from full texts: lifetime cost, year of currency, country of currency, discount rate, time horizon, perspective, method used to estimate cost and cost items included. Descriptive statistics were used to summarize the discounted lifetime costs [2019 United States dollars (USD)].
more
Global and regional estimates of violence against women
he report presents the first global systematic review of scientific data on the prevalence of two forms of violence against women: violence by an intimate partner (intimate partner violence) a
...
nd sexual violence by someone other than a partner (non-partner sexual violence). It shows, for the first time, global and regional estimates of the prevalence of these two forms of violence, using data from around the world. Previous reporting on violence against women has not differentiated between partner and non-partner violence. You can download the report in different languages
more
In 2014 UNICEF, WHO and the World Bank report new joint estimates of child malnutrition using available data up to 2013 The Interactive dashboard allows users to generate a variety of graphs and charts, using the newest joint
...
estimates of prevalence and numbers for child stunting, underweight, overweight, wasting and severe wasting. Users can select the different regional country groupings of the UN, MDG, UNICEF, WHO regions as well as World Bank income groups and geographic regions to present the data.
A summary of 4 pages presents the key findings for each indicator, an introduction to the dashboard and updates on methods
more
2016 revision
Data received as of July 3, 2017 | WHO and UNICEF estimates of national immunization coverage - next revision available July 15, 2018
2016 revision
In the spirit of the Sustainable Development Goals, WHO and the International Labour Organization (ILO) produce the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury (WHO/ILO Joint E
...
stimates). The WHO/ILO Joint Estimates quantify the population exposed to occupational risk factors and amount health loss caused by these exposures. Global, regional and national estimates are produced of the numbers of deaths and disability-adjusted life years that can be attributed to exposure to selected occupational risk factors. Estimates are produced disaggregated by sex and age group.
more
The Lancet Published Online June 11, 2019 http://dx.doi.org/10.1016/S0140-6736(19)30934-1
More than one-in-five people living in conflict-affected areas suffers from a mental illness, according to a new UN-backed report, prompting the World Health Organization (WHO) to call for increased, sustained
...
investment in mental health services in those zones.
Around 22 per cent of those affected, suffer depression, anxiety or post-traumatic stress disorder, according to this analysis.
The study also shows that about nine per cent of conflict-affected populations have a moderate to severe mental health condition; substantially higher than the global estimate for these mental health conditions in the general population.
more
HIV and AIDS Estimates, Country factsheets - Albania 2016
UNAIDS; AIDSinfo
(2019)
C2
Accessed: 29.09.2019
HIV and AIDS Estimates - Country factsheets Armenia 2016
UNAIDS; AIDSinfo
(2019)
C2
Accessed: 29.09.2019