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Infection https://doi.org/10.1007/s15010-024-02408-5
Guidelines approved by the WHO Guidelines -Review Committee; second edition
Dermatologic Clinics Volume 29, Issue 1p1-8January 2011
A review of prospects for existing antibiotics ad new therapeutics
n October 2019, WHO convened the first meeting of the Buruli ulcer laboratory network (BU-LABNET) in Yaoundé, Cameroon, bringing together 11 laboratories from nine countries at the Pasteur Centre of Cameroon (CPC), the network’s Coordinating Centre. The network was formally established at th
...
is meeting (1) and its members were those present. The objective of BU LABNET is to improve diagnosis of Buruli ulcer based on polymerase chain reaction (PCR) using standardized testing protocols, involving external quality assurance programmes and sharing knowledge among member laboratories.
more
PLoS Negl Trop Dis 16(11): e0010885. https://doi.org/10.1371/journal.pntd.0010885
HAT diagnosis in non-endemic countries is rare and can be challenging, but alertness and
surveillance must be maintained to contribute to WHO’s elimination goals. Early detection is
particularly important as it co
...
nsiderably improves the prognosis.
more
Front. Trop. Dis. , 09 May 2023 Sec. Neglected Tropical Diseases Volume 4 - 2023 | https://doi.org/10.3389/fitd.2023.1087003
How to successfully apply for, administer, and manage the Zithromax® donation for trachoma elimination
Comment réussir à demander, administrer et gérer les dons de Zithromax® pour l’élimination du trachome
The Zithromax® Supply Chain Assessment Tool is designed to guide assessment team members through a series of interviews
with key informants and to establish inspection procedures when conducting logistics field assessments. The protocol allows
the assessment team to examine the readiness of the N
...
ational Trachoma Control Program and the District- level health
management structures to receive, manage, distribute and administer donated Zithromax® for mass drug administrati
more
Cet outil d’évaluation de la chaîne d’approvisionnement du Zithromax® est conçu pour aider les membres de
l’équipe d’évaluation au travers d’une série d’entretiens avec les principaux informateurs et pour mettre en place des
procédures d’inspection lorsque l’on procède à
...
des évaluations de la logistique sur le terrain. Ce protocole permet à
l’équipe d’évaluation d’examiner le niveau de préparation du programme national de lutte contre le trachome et de la
capacite des structures de gestion sanitaire dans le district à recevoir, gérer, distribuer et administrer les dons de
Zithromax® destinés aux campagnes de traitement de masse
more
More and more countries are completing their epidemiological mapping of trachoma in suspected
endemic districts and are preparing to distribute Zithromax® in those districts where the prevalence of
“trachomatous inflammation – follicular” (TF) is above 5% among children aged 1-9 years. Mass
...
drug
administration (MDA) is normally at the district level and targets the whole population with Zithromax®
tablets to those 5 years old and above; Zithromax® suspension for children between 6 months and 5
years of age; and tetracycline eye ointment 1% for infants up to 6 months old.
more
The second edition of the Women and Trachoma: Achieving Gender Equity in the Implementation of SAFE manual provides an updated resource for realistically increasing, improving, and supporting gender representation within trachoma elimination efforts at all levels. From the trachoma workforce to the
...
patients, from trichiasis surgeons to schoolteachers, and from national to international managers and coordinators, the manual breaks down the various levels of trachoma elimination programming to highlight the areas where women and girls can have a greater impact in elimination effort
more
Cureus 2024 Jan 16;16(1):e52358. doi: 10.7759/cureus.52358
COMMUNITY EYE HEALTH JOURNAL | VOLUME 33 | NUMBER 110 | 2020
Twenty-Fourth Annual Trachoma Control Program Review, Summary Proceedings
This paper was commissioned by N´weti and Wemos as part
of the project “Equitable health financing for a strong health
system in Mozambique”. Its purpose is to contribute to the
debate of the Mozambican Ministry of Health’s draft Health
Sector Financing Strategy (HSFS) 2025 – 2034
To realize Agenda 2030, aid agencies, private philanthropies, and their partners in the Global South need better data to monitor how official development finance (ODF) dollars advance the Sustainable Development Goals (SDGs) and avoid missing the mark. In this report, we summarize the results of a n
...
ovel effort to tag and analyze 2.7 million ODF projects between 2010-2021 using machine learning to understand their contributions to the SDG thematic areas at a goal
and target level. This time frame is instructive: it compares the last six years of the Millennium Development Goals era and the first six years of the new SDG age, from early optimism to later uncertainty about the resilience of the agenda to drive collective commitments amid unanticipated global shocks.
more
In contrast to bilateral aid, aid disbursed from
multilateral institutions increased significantly at the onset
of the COVID-19 pandemic. Yet, at a time when a coherent
and effective multilateral response is needed most, the
COVID-19 pandemic revealed a shifting landscape of donor
agencies that
...
struggle with basic functions, such as crossnational coordination. While multilaterals are uniquely
positioned to transcend national priorities and respond
to pandemics, functionally we find official development
assistance (ODA) from these entities may increasingly
mimic the attributes of bilateral aid. We explore three
important, but not comprehensive, attributes of aid leading
up to and during the COVID-19 pandemic: (1) earmarking,
(2) donor concentration and (3) aid modality.
more
One approach to development assistance for health, or health aid, emphasizes the ex ante selection of cost-effective health interventions, an approach that began with the World Development Report (1993) on Investing in Health and has since been adopted by the Effective Altruism community. But just h
...
ow much of health aid is cost-effective? In this paper, we examine projects in the Organisation for Economic Co-operation and Development (OECD) Creditor Reporting System, the standard dataset that measures and characterizes development assistance for health, for the
years 2019 to 2021, and count the number of projects that refer to interventions from a list of highly cost-effective interventions as defined by the Disease Control Priorities Project, third edition. This exploratory quantitative analysis indicates that 61% of projects used a key word/phrase of a costeffective intervention. There were 11.9 interventions mapped per project on average. There is little evidence that donors tailor the set of interventions to country income levels by cost-effectiveness.
Policymakers may benefit from reviewing the full portfolio of interventions covered by domestic and external resources.
more