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Publication Years
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Toolboxes
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353
273
267
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2
Disability and Related Factors among Road Traffic Accident Victims in Benin: Study from Five Public and Faith-Based Hospitals in Urban and Suburban Areas
Yolaine Glèlè-Ahanhanzo, Alphonse Kpozèhouen, Noël Moussiliou Paraïso, Patrick Makoutodé, Chabi O. Alphonse Biaou, Eric Remacle, Edgard-Marius Ouendo, Alain Levêque
Scientific Research Publishing
(2018)
C2
Open Journal of Epidemiology, 2018, 8, 226-241
Abstract
Introduction: Road traffic accidents (RTAs) are a major public health issue
in developing countries, where roads tend to be built haphazardly and accidents
take a heavy toll on victims—including leaving them disabled. This
study seeks
...
to identify those factors that cause RTA victims to become disabled
as a result of their injuries. Methods: This retrospective community-
based study looked at RTA victims treated in five public and faith-based
hospitals in Benin. Disability was evaluated using the Washington Group on
Disabilities Statistics questionnaire. The independent variables were related to
the victim’s socio-demographic traits, the circumstances of the accident, and
post-crash response mechanisms. The proportions were compared using the
chi-squared test, with a threshold of 5%. Results: The prevalence of disability
among road traffic accident victims is 9.59% (CI 95%: 6.86% - 13.20%). The
occurrence of disability is associated with age (p = 0.002), occupational group
(p = 0.0077), the mode of transport used to transfer the victim (p < 0.001)
and the location of the injuries (p = 0.0035). The study also found that people
fail to make sufficient use of post-crash response mechanisms. Conclusion:
Public policy-makers should therefore focus on stepping up interventions to
get more people using both protective equipment and post-crash response services.
more
This publication describes an arduous campaign to tackle the use of antimicrobials - specifically antibiotics - in the Danish swine-producing sector thanks to the collaboration between the regulatory sector within the Ministry of Environment and Food, private veterinary practitioners and swine produ
...
cers. The document is a retrospective tribute to all those who had the foresight to make significant changes to ensure consumer protection - improving hygiene at primary sites, developing options for intervention, identifying sites for intervention, setting targets, restructuring the relationship between the veterinary services and farmers, and implementing changes in behaviour for greatest impact
more
The compendium compiles practical case studies on the use of Geospatial Artificial Intelligence (GeoAI) to enhance disaster risk reduction and emergency response across diverse geographic and institutional contexts.
The compendium features selected case studies submitted by twenty-seven Regional Su
...
pport Offices (RSOs) working across Asia, Africa, Latin America, and Europe. These examples highlight how GeoAI, is being used to forecast floods, map wildfire risk, assess landslide susceptibility, monitor droughts, and support emergency response. Each project demonstrates how cloud-based platforms and machine learning tools help governments act faster and more precisely when disaster strike.
more
Teacher Handbook
UNAIDS 2017 / Reference
Generating evidence for policy and action on HIV and social protection
Charting the Course of Education and HIV
UNESCO Publishing (United Nations Educational, Scientific and Cultural Organization)
(2014)
C2
Education on the move
On the Fast-Track to end AIDS
UNAIDS
(2019)
C2
UNAIDS | 2016–2021 Strategy
Accessed: 20.11.2019
More time or more money to improve nutrition in Benin Republic?
M. C. D. N. Vodouhe, L. Fakambi
Institut National des Recherches Agricoles du Bénin (INRAB)
(2015)
C2
Children malnutrition eradication in developing countries is a real challenge, especially among
vulnerable population. There are so many effort towards women (who are the main care providers)
socio-economic situation in order to improve their children nutrition. This article aims to identify the
...
impact of mothers’ activities on child nutrition and care. Interviews were used to collect data from
mothers of children less than 5 years old. Pearson correlation test and regression models were
performed to highlight relation and to identify the main factors that affect child nutrition and care. The
nutritional statuses of children show a high prevalence of underweight (38.46%), emaciation (25.17%)
and stunting (23.77%). Statistic results show that a child whose mother has food processing as main
activity has 2,322 more times to not suffer from emaciation malnutrition compared to a child whose
mother has trade as main activity. A child whose mother has high revenue has 1.463 more times to
not be suffering from stunting malnutrition compared to a child whose mother has lower revenue. A
child whose father has fishing as main activity has 8,4 more chance to not be suffering from stunting
malnutrition compared to a child whose father has another activity as main activity. A child whose
father is present in the household has 8.11 more chance to not suffer from stunting malnutrition
compared to a child whose father is absent. A child from mother who has food processing as main
activity is 2,464 more times preserved from fever compared to a child from mother whose main activity
is trade. Moreover child position, child feeding with porridge, child nursing are correlated with mother
activity. This situation is justified by the fact that mother need money to improve child nutrition and
health but they are also confronted to the fact that those activity that provide significant money are
sometime time consuming and not permit to take care of children in term of feeding practices, hygiene
control etc. Therefore it is important that intervention towards women take in consideration those
factors (money and time) but also the family in the whole.
more
Guidelines.
The guidelines set out essential actions that humanitarian actors must take in order to effectively identify and respond to the needs and rights of persons with disabilities who are most at risk of being left behind in humanitarian settings.
The recommended actions in each chapter pl
...
ace persons with disabilities at the centre of humanitarian action, both as actors and as members of affected populations. They are specific to persons with disabilities and to the context of humanitarian action and build on existing and more general standards and guidelines.
These are the first humanitarian guidelines to be developed with and by persons with disabilities and their representative organizations in association with traditional humanitarian stakeholders. Based on the outcomes of a comprehensive global and regional multi-stakeholder consultation process, they are designed to promote the implementation of quality humanitarian programmes in all contexts and across all regions, and to establish and increase both the inclusion of persons with disabilities and their meaningful participation in all decisions that concern them.
more
l’IMC et le gain de poids gestationnel sont des facteurs déterminants des risques de
résultats de grossesse, de la santé de la mère et de l’enfant. Cette étude analyse l’incidence de la
nutrition chez les femmes enceintes sur la santé néonatale au Bénin. Les résultats d’estimation
...
par les
équations simultanées montrent que le gain de poids gestationnel insuffisant ou excessif a des effets
néfastes aussi bien sur la santé de la mère que sur celui de l’enfant. L’étude montre que la majorité des
femmes béninoises étudiées, avec un IMC faible ou normal n’atteignent pas le gain de poids
gestationnel recommandé en fin de grossesse. La plupart des nouveau-nés de petits poids de naissance
sont nés de femme dont l’IMC est normal, ce qui renforce la théorie bien connue que l’IMC n’est pas un
bon indicateur de la malnutrition chez la femme enceinte.
more
A resource for improving menstraul hygiene around the world.
Comprehensive guidance with examples of good practice, information for colleagues and pupils in class and tips on how to break the taboo
Guideline: Adherence to antiretroviral therapy in adolescents and young adults (expanded version)
L. Fairlie; L. Jankelowitz; H. Ronald; et al.
Southern African HIV Clinicians Society; Right to Care (Training Health Seriously)
(2017)
C2
Recommendations, resources and references
A publication of the Southern African HIV Clinicians Society
The classification of digital health interventions (DHIs) categorizes the different ways in which digital and mobile technologies are being used to support health system needs. Historically, the diverse communities working in digital health—including government stakeholders, technologists, clinic
...
ians, implementers, network operators, researchers, donors— have lacked a mutually understandable language with which to assess and articulate functionality. A shared and standardized vocabulary was recognized as necessary to identify gaps and duplication, evaluate effectiveness, and facilitate alignment across different digital health implementations. Targeted primarily at public health audiences, this Classification framework aims to promote an accessible and bridging language for health program planners to articulate functionalities of digital health implementations.
more
Politique Nationale de Promotion de la Santé, Version Finale
Objective: The study aimed to describe the current epidemiological, clinical and immunological profile of newly
detected HIV - positive patients in Northern Benin by 2016. Methods: It was a prospective study conducted from May 2 to
October 31, 2016 on three main sites of care of people living with
...
HIV (PLHIV) in the department of Borgou in Benin. All
new cases of HIV infection have been systematically and comprehensively recruited. Initial epidemiological, clinical and
immunological data were collected using a questionnaire. These data were entered and analyzed using the Epi Info 7 software.
Results: In total, 185 adults (68 male and 117 female) newly screened HIV positive were included in this study. The middle age
was 36.2 ± 10.9 years and the sex ratio was 0.6 One hundred and thirty-five patients (73%) were between 25 and 50 years old.
In terms of the profession, 132 patients (71.3%) were engaged in liberal activities (craftmen, traders and retailers). The
majority was schooled (113 or 61.1%) and resided in urban areas (146 or 79%). One hundred and sixteen patients lived in
couple (62.7%) with an average monthly income estimated at 70 US Dollars. Clinically, 123 patients (66.5%) were in WHO
stage III. The body mass index was over 18.5 kg/m2 in 124 patients (67%). The median number of TCD4 lymphocytes was
254.5 cells/ml and 25 patients (13.5%) had a number of CD4 over 500 cells/ml. HIV1 was really predominant (97.8%). Most
patients (152 or 82.2%) had been screened for clinical suspicion. Conclusion: HIV infection in Benin remains the prerogative
of young, female, educated and poor people. Screening is delayed and hence the need to develop innovative strategies for early
more
Progress in reducing tobacco use is a key indicator for measuring countries’ efforts to implement the WHO Framework Convention on Tobacco Control – target 3.a under the Sustainable Development Goals agenda. Countries have adopted this indicator to report progress also towards the tobacco reducti
...
on target under the Global Action Plan for the Prevention and Control of Noncommunicable Diseases 2013–2020 and the WHO’s Global Programme of Work triple billions target.
Fourth edition.
more
Cities can help nations achieve their Paris Agreement commitment by supporting the implementation of transformational actions to increase the supply of renewable energy, improve building energy efficiency, increase access to affordable, low carbon transport options, and change consumption patterns.
...
Seventy per cent of C40 cities report that they are already experiencing the impacts of climate change. Cities need to adapt and improve their resilience to climate hazards that may impact them, both in the short-term and in future climate change scenarios. Cities are already leading the way with ambitious plans to accelerate action on climate change. With more political will, community support and collaboration, cities can make an even greater contribution to securing a climate safe future.
more
Accessed: 30.01.2020
Strengthening the capacities of SUN Countries by sharing and disseminating good practices in the fight against malnutrition.
This report is a summary of the results of the preparation and implementation of the Learning Route (LR) organized jointly by the SUN (Scaling Up Nutrition) Movement’s S
...
ecretariat, the Fight Against Malnutrition Unit (CLM, Cellule de Lutte contre la Malnutrition) and PROCASUR Corporation; this Learning Route was held in Senegal from the 26th of May to the 1st of June, 2014. The aim of this publication is to illustrate the experience, its main outcomes, and the lessons learned.
more