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Publication Years
975
2127
435
42
3
2
3
Category
1318
345
324
235
161
93
72
Toolboxes
341
215
165
149
148
119
113
110
103
102
101
98
85
73
56
53
51
48
43
35
33
27
20
12
11
1
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 heal
...
th 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.
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Support Collaborative Risk Assessment for health threats
The COVID-19 pandemic is the most severe health crisis in a century, exposing deep gaps in the world’s defences against epidemics and pandemics, and teaching us painful
lessons. One of them is that in our intimately connected world, pathogens can spread around the world very quickly, demanding sy
...
stems that can respond equally quickly. That
includes systems to facilitate the rapid exchange of biological materials and related data, to support the development of guidance and medical countermeasures including vaccines,
tests and treatments.
Based on the lessons that COVID-19 was teaching us, World Health Organization announced the
establishment of the WHO BioHub System at the height of the pandemic, in January 2021. Developed collaboratively and iteratiely with the active engagement of Member States and other partners, the BioHub System has now been through a pilot-testing phase that has demonstrated its value as a multilateral model and a tangible asset that Member States can harness to bolster their preparedness against emergent viral threats.
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The ultimate aim of the framework is to assist the user to thoughtfully, deliberately, ethically, and rationally determine whether or not the delivery of one or more vaccines to specific target populations during the acute phase of an emergency would result in an overall saving of lives, a reduction
...
in the population burden of disease, and generally more favourable outcomes than would otherwise be the case.
more
This guidance document, titled 'Preparedness Enabler's Guide (PEG)', published in May 2023, aims to promote effective and sustainable localization in humanitarian preparedness through insights and practical tools derived from the Global Logistics Cluster's experience.
The manual elaborates on a wide rang of logistics management issues such as carrying assessements, procurement, storing, transporting and distribution of emergency supplies
Biodiversity and healthy natural ecosystems, including protected areas in and around cities, provide ecosystem benefits and services that support human health, including reducing flood risk, filtering air pollutants, and providing a reliable supply of clean drinking water. These services help to red
...
uce the incidence of infectious diseases and respiratory disorders, and assist with adaptation to climate change. Access to nature offers many other direct health benefits, including opportunities for physical activity, reduction of developmental disorders and improved mental health.
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