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Publication Years
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Toolboxes
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2
National Family Health Survey (NFHS-5), India, 2019-21: Andhra Pradesh
International Institute for Population Sciences (IIPS) and ICF
Ministry of Health and Family Welfare
(2021)
CC
May 2021
This report presents the key findings of the NFHS-5 survey in Andhra Pradesh, followed by detailed tables and an appendix on sampling errors. The 2019-21 National Family Health Survey (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for Indi
...
a and each state and union territory.
more
National Family Health Survey (NFHS-5), India, 2019-21: Kerala
International Institute for Population Sciences (IIPS) and ICF
Ministry of Health and Family Welfare
(2021)
CC
March 2021
This report presents the key findings of the NFHS-5 survey in Kerala, followed by detailed tables and an appendix on sampling errors. The 2019-21 National Family Health Survey (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for India and
...
each state and union territory.
more
National Family Health Survey (NFHS-5), India, 2019-21: Tamil Nadu
International Institute for Population Sciences (IIPS) and ICF
Ministry of Health and Family Welfare
(2021)
CC
December 2022
This report presents the key findings of the NFHS-5 survey in Tamil Nadu, followed by detailed tables and an appendix on sampling errors. The 2019-21 National Family Health Survey (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for Ind
...
ia and each state and union territory.
more
National Family Health Survey (NFHS-5), India, 2019-21: Telangana
International Institute for Population Sciences (IIPS) and ICF
Ministry of Health and Family Welfare
(2021)
CC
May 2021
This report presents the key findings of the NFHS-5 survey in Telangana, followed by detailed tables and an appendix on sampling errors. The 2019-21 National Family Health Survey (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for India and
...
each state and union territory.
more
National Family Health Survey (NFHS-5), India, 2019-21: Jharkhand
International Institute for Population Sciences (IIPS) and ICF
Ministry of Health and Family Welfare
(2021)
CC
August 2021
This report presents the key findings of the NFHS-5 survey in Jharkhand, followed by detailed tables and an appendix on sampling errors. The 2019-21 National Family Health Survey (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for India
...
and each state and union territory.
more
Infectious disease outbreaks and epidemics are increasing in frequency, scale and impact. Health care facilities can amplify the transmission of emerging infectious diseases or multidrug-resistant organisms (MDRO) within their settings and communities. Therefore, evidence-based infection prevention
...
and control (IPC) measures in health care facilities are critical for preventing and containing outbreaks, while still delivering safe, effective and quality health care. This toolkit is intended to support IPC improvements for outbreak management in all such facilities, both public and private throughout the health system. Specifically, this document systematically describes a framework of overarching principles to approach the preparedness, readiness and response outbreak management phases. The document also provides a toolkit of resource links to guide specific actions for each infectious disease and/or MDRO outbreak management phase at any health facility. This document is specifically tailored to an audience of stakeholders who establish and monitor health care facility-level IPC programs including: IPC focal points, epidemiologists, public health experts, outbreak response incident managers, facility-level IPC committee(s), safety and quality leads and managers, and other facility level IPC stakeholders.
more
Допомога при інсульті є пріоритетом в Україні. Рівень смертності від інсульту є
вищим, ніж у більшості Європейських країн. За підрахунками в Україні щороку
перено
...
сить інсульт близько 130 000 людей; у 2020 році показник
внутрішньолікарняної смертності становив 19,76% усіх госпіталізованих з
інсультом пацієнтів; 30–40% усіх пацієнтів помирали протягом першого місяця
після перенесення інсульту; в цілому інсульт був причиною 13% усіх смертей в
Україні.
more
The Global guidance framework for the responsible use of the life sciences: mitigating biorisks and governing dual-use research (the framework) aims to provide values and principles, tools and mechanisms to support Member States and key stakeholders to mitigate and prevent biorisks and govern dual-u
...
se research.
Digital publication you can download the English, French, Spanish and Russian version
The framework adopts the One health approach and focuses on the role that responsible life sciences research can play in preventing and mitigating risks caused by accidents, inadvertent or deliberate misuse with the intention to cause harm to humans, nonhuman animals, plants and agriculture, and the environment.
more
Implementation guide for national, district and facility levels.
This implementation guide contains practical guidance for policy-makers,
programme managers, health practitioners and other actors working to
establish and implement quality of care (QoC) programmes for maternal,
newborn and child
...
health (MNCH) at national, district and facility levels.
It is intended to help anyone, throughout the health system, who wants
to take action to improve the QoC for MNCH.
more
This document sets out, therefore, to explain the socioeconomic value of investing in the fight against NTDs and highlights priorities for global investment attention. Our work was guided by the need not only for
additional funding and funders but also for the need to understand the current funding
...
climate, in which value for money and the efficient use of resources to fill the most critical of gaps are more relevant than ever.
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This report’s central premise is that diagnostics and therapeutics, and associated test to treat strategies, are fundamental components of the pandemic response, both for COVID-19 and for future health threats. Two years into the COVID-19 pandemic, this report reflects on the main challenges and k
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ey solutions on the road to equitable access to diagnostics and therapeutics.
This report draws from experience gained through the Access to COVID-19 Tools (ACT) Accelerator Diagnostics and Therapeutics pillars, and includes the perspectives of collaborating stakeholders (countries, civil society representatives and the private sector). Building on these findings, this report proposes sixteen recommended actions to address what have been identified as key structural challenges and specifies a potential owner for each action.
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Bangladesh: Demographic Health Survey 2017-2018
National Institute of Population Research and Training (NIPORT) and ICF
USAID (from the american people)
(2020)
C2
The survey highlights changes that have taken place in Bangladesh’s demographic and health situation since the previous BDHS surveys. The survey provides important information for policymakers and program personnel in addressing the monitoring and evaluation needs of the 4th Health, Population and
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Nutrition Sector Program (4th HPNSP) of the Ministry of Health Family Welfare (MOHFW).
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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 first stage. The second stage was a complete listing
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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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Assessment in English on South Sudan about Education, Food and Nutrition, Drought, Epidemic and more; published on 22 Jul 2022 by IOM
This policy brief aims to provide a review of the current progress on implementing the Malawi national action plan on AMR, identifies critical gaps, and highlights findings to accelerate further progress in the human health sector. The target audience includes all those concerned with implementing a
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ctions to combat antimicrobial resistance in Malawi.
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The primary audience for these recommendations includes health professionals who are responsible for developing national and local health-care guidelines and protocols and health workers involved in the provision of care to women and their newborns during pregnancy, labour and childbirth; this inclu
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des midwives, nurses, general medical practitioners and obstetricians. The primary audience also includes managers of maternal and child health programmes, and relevant staff in ministries of health and educational and training institutions, in all settings.
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The primary audience for these recommendations includes health professionals who are responsible for developing national and local health-care guidelines and protocols and health workers involved in the provision of care to women and their newborns during pregnancy, labour and childbirth; this inclu
...
des midwives, nurses, general medical practitioners and obstetricians. The primary audience also includes managers of maternal and child health programmes, and relevant staff in ministries of health and educational and training institutions, in all settings.
more
The primary audience for these recommendations includes health professionals who are responsible for developing national and local health-care guidelines and protocols and health workers involved in the provision of care to women and their newborns during pregnancy, labour and childbirth; this inclu
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des midwives, nurses, general medical practitioners and obstetricians. The primary audience also includes managers of maternal and child health programmes, and relevant staff in ministries of health and educational and training institutions, in all settings.
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As of September 2022, just over one million forced
migrants from Ukraine have entered Germany, making Germany the third largest recipient of migrants
(Ukraine Refugee Situation, 2022).
As early as March 2022, several news outlets reported that accommodation centers were at or near
capacity in ma
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ny German states and lacked the resources to quickly register new arrivals (Süddeutsche
Zeitung, 2022; Herz, 2022). Consequently, some states asked for the use of the Königstein Key —
an algorithm used to redistribute forced migrants to different states based on each state’s capacity.5
Depending on which state forced migrants arrive in or where they relocate to, their first stop is typically
a reception facility where they are able to register, begin the asylum application procedure, and access
support services
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