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The Lancet Global Health, published online 18 August 2017;
http://dx.doi.org/10.1016/S2214-109X(17)30332-7
The article "The Political Determinants of the Cholera Outbreak in Yemen" examines how the ongoing civil war has contributed to Yemen’s severe cholera outbreak. The 2017 epidemic was des
...
cribed as the worst in the world, with cholera spreading rapidly due to the collapse of health, water, and sanitation systems.
The analysis shows that Houthi-controlled areas were disproportionately affected, accounting for 77.7% of cases and 80.7% of deaths. The article highlights the role of the Saudi-led coalition in worsening conditions through airstrikes on infrastructure, blockades restricting medical and food supplies, and the overall humanitarian crisis. It criticizes UNICEF for accepting a $67 million donation from Saudi Arabia while the coalition contributed to the crisis.
The article underscores that political actions and conflict have been key factors in the outbreak’s severity, with both warring sides failing to protect civilians.
more
DHS Working Papers No. 69
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and child mortality evolved during a time of significant economic change in India. The main predictor is a new ... measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
This paper uses data from the three Indian National Family Health Surveys (1992-93, 1998-99, 2005-06) to examine how the relationship between household wealth and child mortality evolved during a time of significant economic change in India. The main predictor is a new ... measure of household wealth that captures changes in wealth over time. Outcomes include neonatal mortality, postneonatal mortality, child mortality, and under-five mortality. Multivariate analysis is conducted at the national, urban, rural, and regional levels.
Results indicate that the overall relationship between household wealth and mortality weakened over time, as evidenced by the coefficients for under-five mortality at the national level. more
The GTFCC Laboratory Support for Public Health Surveillance document provides guidelines on using DNA-based molecular techniques for identifying and monitoring Vibrio cholerae strains in cholera outbreaks. It highlights the importance of genetic sequencing for tracking transmission, detecting new va
...
riants, and improving outbreak response. The report explains methods like PCR testing, whole genome sequencing (WGS), and multiple loci VNTR analysis (MLVA), detailing their advantages and applications. It also outlines best practices for sample collection, storage, and transportation, emphasizing collaboration between national and international laboratories to enhance cholera surveillance and control efforts.
more
Loss and damage is an urgent concern, driven by the increasingly harmful effects of climate change. Communities are experiencing new types and forms of climate impact, of higher frequency and intensity, which they are not equipped to handle. These impacts compel vulnerable communities to migrate to
...
find alternative livelihoods and ways to survive. But migration generates grave socioeconomic consequences. Through case study analysis from 12 regions in Asia, Africa and the Pacific, this paper explores how climate change-induced migration is creating physical health, mental health and wellbeing issues — both for migrants and the families they leave behind. It then provides recommendations to policymakers on how to strengthen policy, planning and response frameworks to support communities manage health and wellbeing risks created by climate impacts.
more
Surveillance of NCDs
World Health Organization WHO; Eastern Mediterranean Region
World Health Organization (WHO)
(2024)
C_WHO
The WHO Eastern Mediterranean Region's Noncommunicable Diseases (NCD) Data and Statistics page offers comprehensive information on NCD surveillance, including mortality rates, morbidity, and risk factor exposures. It emphasizes the importance of monitoring NCD trends to inform prevention and control
...
strategies, aligning with global targets such as reducing premature NCD deaths by one-third by 2030. The page also highlights the WHO STEPwise approach to NCD risk factor surveillance, providing standardized methods for data collection and analysis.
more
Surveillance of NCDs - arabic version
World Health Organization WHO; Eastern Mediterranean Region
World Health Organization (WHO)
(2024)
C_WHO
The WHO Eastern Mediterranean Region's Noncommunicable Diseases (NCD) Data and Statistics page offers comprehensive information on NCD surveillance, including mortality rates, morbidity, and risk factor exposures. It emphasizes the importance of monitoring NCD trends to inform prevention and control
...
strategies, aligning with global targets such as reducing premature NCD deaths by one-third by 2030. The page also highlights the WHO STEPwise approach to NCD risk factor surveillance, providing standardized methods for data collection and analysis.
more
Developing health centres and hospital s indices for Syria, based on HeRAMS dataset 2014
World Health Organization
(2017)
C_WHO
This research paper uses the Health Resources and services Availability Mapping System (HeRAMS) database to develop two composite indices – one for health centres and one for hospitals – in order to analyse and assess the health facilities’ performance across time and to evaluate the di
...
sparities among regions in the Syrian Arab Republic. The indices will provide an evidence-based tool for the main actors in the health sector to identify gaps, to intervene accordingly and to assess the impact of their interventions on the health system. The process of constructing the indices includes description and selection of variables, application of normalization techniques and weighting methods, and sensitivity analysis.
A literature review, analysis of the scope of the HeRAMS database, analysis of the crisis situation, data limitation and expert consultations were the main aspects of the construction process of the indices.
more
Epi Info™ is a public domain suite of interoperable software tools designed for the global community of public health practitioners and researchers. It provides for easy data entry form and database construction, a customized data entry experience, and data analyses with epidemiologic statistics,
...
maps, and graphs for public health professionals who may lack an information technology background. Epi Info™ is used for outbreak investigations; for developing small to mid-sized disease surveillance systems; as analysis, visualization, and reporting (AVR) components of larger systems; and in the continuing education in the science of epidemiology and public health analytic methods at schools of public health around the world.
more
Medical Peace Work Textbook, 2nd edition, Course 3: War, weapons and conflict strategies
Salvage J, Rowson M, Melf K, Wilmen A
(2012)
C1
This course describes the health effects of war, weapons and strategies of violent conflict. Beginning with weapons of mass destruction it then moves on to other weapons and strategies of war such as the use of landmines and mass rape. The course concludes with a number of lessons which give an hist
...
orical and practical analysis of the response of health professional groups to war and militarisation.
more
The primary objectives of the 2017 TMIS are to measure the level of ownership and use of mosquito nets; assess coverage of intermittent preventive treatment for pregnant women; identify treatment practices, including the use of specific antimalarial medications to treat malaria among c
...
hildren age 6-59 months; measure the prevalence of malaria and anemia among children age 6-59 months; and assess knowledge, attitudes, and practices among adults with malaria.
This table provides estimates of key indicators for the country as a whole and for each of the 31 geographic regions in Tanzania. A comprehensive analysis of the 2017 TMIS data will be presented in a final report. more
This table provides estimates of key indicators for the country as a whole and for each of the 31 geographic regions in Tanzania. A comprehensive analysis of the 2017 TMIS data will be presented in a final report. more
The aim of the Annual Inspection Report is to present findings of public sector health establishments inspected by the OHSC to monitor compliance with the National Core Standards (NCS) during the 2016/2017 financial year in South Africa.
The NCS define fundamentals for quality of care based on six
...
dimensions of quality: Acceptability,Safety, Reliability, Equity, Accessibility, and Efficiency.
The NCS structured assessment tools were used to collect data during inspections across the seven domains namely: Patient Rights; Patient Safety, Clinical Governance and Clinical Care; Clinical Support Services; Public Health; Leadership and Governance; Operational Management and Facilities and Infrastructure. A total of 851 routine inspections were conducted with 201 of these facilities re-inspected. Inspection data was captured on District Health Information System (DHIS) data entry forms and exported for analysis to Statistical Analysis Software (SAS) version 9.4.
more
In 2014, the Ministry of Health (MOH) in Malawi conducted a nationwide assessment of emergency obstetric and newborn care (EmONC) services. This cross-sectional facility-based survey used 10 data collection modules. Data collection began on 23rd September 2014 and concluded on 17th October 2014, in
...
all 28 districts. Facilities in both the public and private sector (for-profit and not-for-profit) were included. Since the focus of the assessment was obstetric and newborn care, health facilities that did not offer maternal and newborn health (MNH) services were not selected. In all districts, a census of all hospitals and a 60 percent random sample of health centres that ought to have performed deliveries in the previous year yielded a total of 365 facilities: 87 hospitals and 278 health centres. All these facilities were visited during the assessment. During analysis, weighting procedures were applied to extrapolate results to the district and national level, representing all 87 hospitals and 464 health centres. Such weighting was necessary as a stratified random sample of health centres was taken and weighting applied to all indicators and presentations that have health facility as a unit of measurement. Case reviews and provider’s interviews, on the other hand, are not weighted as their sampling strategy is based on convenience.
more
Nepal is on target to meet the Millennium Development Goals for maternal and child health despite high levels of poverty, poor infrastructure, difficult terrain and recent conflict. Each year, nearly 35000 Nepali children die before their fifth birthday, with almost two-thirds of these deaths occurr
...
ing in the first month of life, the neonatal period. As part of a multi-country analysis, we examined changes for newborn survival between 2000 and 2010 in terms of mortality, coverage and health system indicators as well as national and donor funding.
more
A case study of the Essential Health Benefit in Tanzania mainland
Todd G.; Nswilla A.; Kisanga O.; Mamdani M.
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 109
This report describes the evolution of mainland Tanzania’s EHB; the motivations for developing the EHBs, the methods used to develop, define and cost them; how it is being disseminated, communicat ... ed, and used; and the facilitators (and barriers) to its development, uptake or use. Findings presented in this report are from three stages of analysis: literature review, key informant perspectives and a national consultative meeting. more
This report describes the evolution of mainland Tanzania’s EHB; the motivations for developing the EHBs, the methods used to develop, define and cost them; how it is being disseminated, communicat ... ed, and used; and the facilitators (and barriers) to its development, uptake or use. Findings presented in this report are from three stages of analysis: literature review, key informant perspectives and a national consultative meeting. more
Attraction and Retention of Rural Primary Health-care Workers in the Asia Pacific Region
Liu Xiaoyun; Zhu, Anna; Tang, Shenglan
World Health Organization, Regional Office for South-East Asia
(2018)
C_WHO
The Asia Pacific Observatory on Health Systems and Policies is a collaborative partnership which supports and promotes evidence-based health policy making in the Asia Pacific Region. Based in WHO’s Regional Office for South-East Asia, it brings together governments, international agencies, foundat
...
ions, civil society and the research community with the aim of linking systematic and scientific analysis of health systems in the Asia Pacific Region with the decision-makers who shape policy and practice.
more
The Kabeho Mwana project (2006–2011) supported the Rwanda Ministry of Health (MOH) in scaling up integrated community case management (iCCM) of childhood illness in 6 of Rwanda’s 30 districts. The project trained and equipped community health workers (CHWs) according to national guidelines. In p
...
roject districts, Kabeho Mwana staff also trained CHWs to conduct household-level health promotion and established supervision and reporting mechanisms through CHW peer support groups (PSGs) and quality improvement systems. The iCCM model implemented by Kabeho Mwana resulted in greater improvements in care-seeking than those seen in the rest of the country. Intensive monitoring, collaborative supervision, community mobilization, and CHW PSGs contributed to this success. The PSGs were a unique contribution of the project, playing a critical role in improving care-seeking in project districts. Effective implementation of iCCM should therefore include CHW management and social support mechanisms. Finally, re-analysis of national survey data improved evaluation findings by providing impact estimates.
more
TRAINING MANUAL on DISABILITY STATISTICS
World Health Organization United Nations Economic and Social Commission for Asia and the Pacific
United Nations
(2008)
C2
WHO/ESCAP Training Manual on Disability Statistics | This training manual intends to enhance the understanding of the ICF-based approach to disability measurement. It provides an overview of the ICF framework as well as guidelines on how to operationalize the underlying concepts of functioning and
...
disability into data collection, dissemination and analysis.
more
The primary objective of the 2015-16 MDHS project is to provide up-to-date estimates of basic demographic and health indicators. Specifically, the MDHS collected information on fertility levels, marriage, fertility preferences, awareness and use of family planning methods, breastfeeding practices, n
...
utrition, maternal and child health and mortality, awareness and behavior regarding HIV/AIDS and other sexually transmitted infections (STIs), and other health-related issues such as smoking and knowledge of tuberculosis. As the 2015-16 MDHS is the first DHS survey in the country, trend analysis is not carried out in this report.
more
This baseline survey and report examine the Durable Peace Programme (DPP) in Myanmar, which delivers a broad range of activities. The report provides an insight into the current situation facing both internally displaced persons (IDPs) and conflict-affected non-IDP communities in Kachin state, Myanm
...
ar. It is based on a comprehensive and systematic research process involving just over 2,200 interviews conducted in 12 townships across Kachin. The research provides data and analysis on the socioeconomic situation, attitudes towards peace and conflict, gender dynamics, return and resettlement, among others. The Durable Peace Programme Consortium has decided to share the results of this baseline, as it provides insights into the Kachin context for interested stakeholders, and also to encourage cooperation and information sharing. The report adopts a highly visual approach to communicate the large amount of data collected.
more
No publication year indicated
In the context of the floods in August 2015 in Myanmar, the Disaster Risk Reduction Working Group (DRR WG) was requested to provide clear recommendations to the DMH (Department of Hydrology and Meteorology)to strengthen preparedness activities, in particular for t ... he next Monsoon season. UNDP as the lead of the DRR WG’s Policy Technical Task force carried out a desk review on EW (Early Warning) from all the DRR WG’s members at national and community levels. The document synthesizes the received information related to baseline surveys, lessons learned from the 2015’s floods, studies, project documents and initial recommendations on EW. Those serve as a base to this analysis and its overall recommendations. more
In the context of the floods in August 2015 in Myanmar, the Disaster Risk Reduction Working Group (DRR WG) was requested to provide clear recommendations to the DMH (Department of Hydrology and Meteorology)to strengthen preparedness activities, in particular for t ... he next Monsoon season. UNDP as the lead of the DRR WG’s Policy Technical Task force carried out a desk review on EW (Early Warning) from all the DRR WG’s members at national and community levels. The document synthesizes the received information related to baseline surveys, lessons learned from the 2015’s floods, studies, project documents and initial recommendations on EW. Those serve as a base to this analysis and its overall recommendations. more