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Publication Years
1
1040
2188
338
11
Category
1294
317
259
196
152
146
8
1
Toolboxes
401
313
243
155
154
135
133
80
79
76
75
73
69
65
54
45
37
34
33
21
18
17
16
13
10
2
2
The information in this report is up-to-date as of June 2016.
The report, which follows a field visit to the country between 28 May and 6 June, also emphasises the need for international organisations to be mindful of the long present efforts of
...
Greek lawyers and NGOs in the field, and recommends that new initiatives should be targeted and sustainable.
more
During the first year of the Covid-19 pandemic, the world’s economy slowed. Yet, the global annual average particulate pollution (PM2.5) was largely unchanged from 2019 levels. At the same time, growing evidence shows air pollution—even when experienced at very low levels—hurts human health. T
...
his recently led the World Health Organization (WHO) to revise its guideline for what it considers a safe level of exposure of particulate pollution, bringing most of the world—97.3 percent of the global population—into the unsafe zone. The AQLI finds that particulate air pollution takes 2.2 years off global average life expectancy, or a combined 17 billion life-years, relative to a world that met the WHO guideline. This impact on life expectancy is comparable to that of smoking, more than three times that of alcohol use and unsafe water, six times that of HIV/AIDS, and 89 times that of conflict and terrorism.
more
Operational Guidelines
Using the Key Informant Method to identify children with disabilities: A working guide
Islay Mactaggart
International Centre for Evidence in Disability (ICED), London School of Hygiene and Tropical Medicine
(2015)
C1
Funded by CBM: www.cbm.org
Mental health disorders remain widely under-reported — in our section on Data Quality & Definitions we discuss the challenges of dealing with this data. Figures presented in this entry should be taken as estimates of mental health disorder prevalence — they do not strictly reflect diagnosis data
...
(which would provide the global perspective on diagnosis, rather than actual prevalence differences), but are imputed from a combination of medical, epidemiological data, surveys and meta-regression modelling where raw data is unavailable. Further information can be found here.
Accessed April 15, 2019
more
Myths & COVID-19 Vaccinations
recommended
Issue Brief no. 16. 20 Sept 2021.
Many studies have shown the effectiveness of vaccination against COVID-19 and that it protects against severe
illness. A high vaccination rate is needed to combat the pandemic worldwide. Due to misinformation
...
and myths,
there is still a great hesitancy to vaccinate . With this Issue Brief, we would like to present various myths and provide
you with educational materials on the respective topics for communication in the MEDBOX
more
This module carries pre-training entry level assessment as well as hands on exercise manual on Geographic Information Systems, Remote Sensing, Geographic Positioning System (GPS) and some applications of these technologies on Disaster Risk Managemen
...
t (DRM) especially for hazard mapping, monitoring and risk assessment module as well as the damage assessment module. Practical manual developed using open source products like Quantum GIS , RStudio, Google Earth Pro and Google Earth Engine.
This module can also can be used by other training facilitators, non-technical professionals and selflearners as well. However, it is strongly recommended that training participants and self-learners already have some basic knowledge of Computer Basic, Geoinformatics and disaster management.
No publication year indicated.
Original file: 29,5 MB more
This module can also can be used by other training facilitators, non-technical professionals and selflearners as well. However, it is strongly recommended that training participants and self-learners already have some basic knowledge of Computer Basic, Geoinformatics and disaster management.
No publication year indicated.
Original file: 29,5 MB more
Artificial intelligence for tuberculosis control: a scoping review of applications in public health
Menon, S.; and K. Ghislein Kuro
(2025)
J Glob Health. 2025;15:04192. This scoping review highlights the potential of AI-driven predictions in national TB programmes to enhance diagnostics, track trends, and strengthen public health surveillance. While promising for reducing transmission
...
and support-
ing TB care in low-resource settings, these models require large-scale validation to ensure real-world applicability, especially for high-risk groups
more
DHS Further Analysis Reports No. 103
You can download the handbook, worksheets and quick reference cards from the website!
The HHEAT is an ethical analysis tool designed to help humanitarian healthcare workers make ethical decisions. It consists of 3 components: (1) a summary card hig
...
hlighting key questions, (2) a handbook providing an overview of the tool, and (3) a worksheet for recording the decision-making process. The tool was inspired by research examining ethical challenges and moral distress experienced by humanitarian workers. The HHEAT has been tested and validated by humanitarian workers and experts from the fields of humanitarian medicine and nursing, as well as applied ethics.
more