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This Guide provides practical guidance for governments regarding how to effectively communicate with communities during the recovery phase following an emergency. It explains how to identify communication needs, and presents “best fit” communication methods and strategies to deploy to support Di
...
saster Recovery Frameworks (DRF) and recovery strategies.
The Guide is divided into six sections, as follows:
SECTION 1 Good Practice Principles for Effective Communication
SECTION 2 Barriers to Effective Communication
SECTION 3 How to Identify Communication Needs during Recovery
SECTION 4 Communication Methods for Recovery Planning and Operations
SECTION 5 Developing a Communication Plan
SECTION 6 Key Take-away Messages
more
How WHO works to prevent drug use, reduce harm and improve safe access to medicines
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
The main objective of this document is to inform and inspire community activists in the EECA region to actively engage in domestic budget advocacy, in order to ensure the sustainability of services and programs for KAPs and to secure funding from national sources for those programs and services.
The Privacy, Confidentiality and Security Assessment Tool - Protecting personal health information
UNAIDS (Joint United Nations Programme on HIVAIDS); PEPFAR
UNAIDS (Joint United Nations Programme on HIVAIDS); PEPFAR
(2016)
C2
UNAIDS 2019 / Guidance
Charting the Course of Education and HIV
UNESCO Publishing (United Nations Educational, Scientific and Cultural Organization)
(2014)
C2
Education on the move
Condoms - The prevention of HIV, other sexually transmitted infections and unintended pregnancies
UNAIDS (Joint United Nations Programme on HIVAIDS)
(2016)
C2
UNAIDS 2016 / Meeting Report
An information package for school staff
Menstrual Hygiene Management
recommended
Operational Guidelines.
Guidelines for the development of educational programmes for MHM, including tips on the topics to address and methods to assess girls’ practices in a respectful way with practical tools
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
Patients with retreatment tuberculosis (TB) represent those
who have been treated previously for onemonth ormorewith
anti-TB drugs and who have been diagnosed once again with
the disease.These patientsmainly include relapses, treatment
after failure, or loss to follow-up on a first-line treatmen
...
t
regimen [1]. The number of these patients is not negligible.
In 2014, of the 6.3 million TB cases that were notified
by National TB Programmes (NTPs) to the World Health
Organization (WHO), approximately 700,000 patients were
already previously treated
more
Follow-up and tracing of tuberculosis patients who fail to attend their scheduled appointments in Cotonou, Benin: a retrospective cohort study
Serge Ade1, Arnaud Trébucq, Anthony D. Harries, Gabriel Ade, Gildas Agodokpessi, Prudence Wachinou, Dissou Affolabi, Sévérin Anagonou
BMC Health Services Research
(2016)
C2
Ade et al. BMC Health Services Research (2016) 16:5
Background: In the “Centre National Hospitalier de Pneumo-Phtisiologie” of Cotonou, Benin, little is known about
the characteristics of patients who have not attended their scheduled appointment, the results of tracing and the
possible b
...
enefits on improving treatment outcomes. This study aimed to determine the contribution of tracing
activities for those who missed scheduled appointments towards a successful treatment outcome.
Methods: A retrospective cohort study was carried out among all smear-positive pulmonary tuberculosis patients
treated between January and September 2013. Data on demographic and diagnostic characteristics and treatment
outcomes were accessed from tuberculosis registers and treatment cards. Information on those who missed their
scheduled appointments was collected from the tracing tuberculosis register. A univariate analysis was performed
to explore factors associated with missing a scheduled appointment
more
Lancet Public Health. 2019 Dec 20. pii: S2468-2667(19)30246-4. doi: 10.1016/S2468-2667(19)30246-4.
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
Ramped-up cancer services could save 7 million lives over the next decade—and addressing huge service gaps between rich and poor countries is key to success, according to this report.
In 2019, over 90% of high-income countries reported that comprehensive cancer treatment services were available
...
through the public health system, compared to fewer than 15% of low-income countries, according to WHO.
But poorer countries can make substantial strides with a universal health coverage approach and use of the latest science to meet their particular needs.
The report lays out proven ways to prevent new cancer cases without breaking the bank, including tobacco-control measures and vaccines that protect against common cancers.
more
Accessed Febr.6, 2020
Accessed Febr. 6, 2020
accessed Febr. 6, 2020