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Publication Years
1
2799
5078
764
53
10
1
Category
3045
687
683
590
503
259
115
2
Toolboxes
813
729
404
391
348
314
262
262
259
228
220
219
184
178
170
160
156
139
138
81
66
63
63
59
41
6
2
Transition and Sustainability of HIV and TB responses in Eastern Europe and Central Asia
Eurasian Harm Reduction Network; The Global Fund
(2015)
C2
A regional consultation report and draft transition framework
Клиническое Руководство
Информационный бюллетень содержит краткое изложение новой стратегии Глобального фонда, опыта, накопленного в ходе первого цикла финансирования на основе выделен
...
ия ресурсов, приоритетных направлений профилактики ТБ, реализации программ по уходу и лечению и включает рекомендации по определению или выявлению основных затронутых или уязвимых к туберкулезу групп населения и выбору приоритетных с точки зрения достижения наибольшего воздействия мероприятий по ТБ.
more
Accessed:10.03.2020
Accessed: 08.10.2019
Cet outil peut être utilisé pour améliorer la qualité du programme ASC. Pour identifier et combler les lacunes dans la conception et la mise en œuvre du programme ASC, veuillez compléter les informations ci-dessous
Preventing Suicide: A Technical Package of Policy, Programs, and Practices
Stone, D.; K. Holland, B. Bartholow, et al.
Centers for Disease Control and Prevention CDC
(2017)
C_CDC
This technical package represents a select group of strategies based on the best available evidence to help communities and states sharpen their focus on prevention activities with the greatest potential to prevent suicide
Повышение эффективности диагностики и лечения детского туберкулеза в Таджикистане
medecins sans frontiers, Министерство здравоохранения Республики Таджикистан
Medecins Sans Frontiers, Министерство здравоохранения Республики Таджикистан
(2013)
C1
В отчете представлено описание комплексной модели лечения детского туберкулеза и опыта работы проекта в Таджикистане. На основе этого опыта сделаны не
...
оторые выводы и рекомендации по расширению масштабов оказания противотуберкулезной помощи детям в регионе Центральной Азии и Восточной Европы.
more
Исследование этого года основано на предыдущем отчете. В нем отслеживается утверждение последних стратегий, руководств и методов в пяти сферах: диагностика и иссл
...
едование лекарственной устойчивости, режимы лечения лекарственно-чувствительного туберкулеза и туберкулеза с МЛУ, модели лечения и нормативная база.
more
Ce profil pays est le résultat d'une évaluation du paysage menée par le personnel et les collègues d'Advancing Partners & Communuties (APC). Cette évaluation du paysage portait sur les pays prioritaires de l'Agence des États-Unis pour le Développement International (USAID) en termes de Popula
...
tion et de Santé de la Reproduction, et s'intéressait plus particulièrement à la planification familiale car c'est le point central du projet APC. Le but de l'évaluation du paysage fut de recueillir les informations les plus récentes disponibles sur le système de santé communautaire, les agents de santé communautaires et les services de santé communautaires dans chaque pays. Ce profil est destiné à refléter les informations recueillies. Lorsque cela est possible, les informations présentées sont justifiées par les politiques nationales et d'autres documents pertinents ; cependant, une grande partie des informations sont le résultat de l'expertise institutionnelle et d'entrevues personnelles en raison de l'absence relative d'informations publiquement disponibles sur les systèmes nationaux de santé communautaires. En conséquence, des lacunes et des incohérences peuvent exister dans ce profil.
more
In many low- and middle-income countries, there is a wide gap between evidencebased recommendations and current practice. Treatment of major CVD risk factors remains suboptimal, and only a minority of patients who are treated reach their target levels for blood pressure, blood sugar and blood choles
...
terol.
In other areas, overtreatment can occur with the use of non-evidence-based
protocols. The aim of using standard treatment protocols is to improve the quality
of clinical care, reduce clinical variability and simplify the treatment options,
particularly in primary health care. Standard treatment protocols can be developed by preparing new national treatment guidelines or by adapting or adopting international guidelines.
The Evidence-based protocols module uses hypertension and diabetes screening
and treatment as an entry point to control cardiovascular risk factors, prevent target organ damage, and reduce premature morbidity and mortality. A comprehensive risk- based approach for integrated management of hypertension, diabetes, and high cholesterol is included in the Risk-based CVD management module.
This module includes clinical practice points and sample protocols for:
1. hypertension detection and treatment
2. type 2 diabetes detection and treatment
3. identifying basic emergencies – care and referral.
HEARTS emphasizes adaptation, dissemination, and use of a standardized set of
simple clinical-management protocols, which should be drug- and dose-specific,
and include a core set of medications. The simpler the protocols and management tools, the more likely they are to be used correctly, and the higher the likelihood that a programme will achieve its goals.
more
Many low-resource settings have a shortage of physicians and health workers. (1) In order to provide patient-centred continuous care more effectively, primary care systems can include team-based care strategies in their clinic workflows and protocols. Team-based care uses multidisciplinary teams (wh
...
ich may involve new staff, or the shifting of tasks among existing staff). Teams can include patients themselves, primary care physicians, and other allied health professionals, such as nurses, pharmacists, counsellors, social workers, nutritionists, community health workers, or others. Teams reduce the burden on physicians by utilizing the skills of trained health workers. Strong evidence shows that team-based care is effective in improving hypertension control among patients in a cost-effective way. (2) Some amount of task shifting/team-based care is already taking place in many settings; this module provides further guidance on how to maximize this approach for greater impact.
more
Monitoring is a crucial element in any successful programme. It is important to
know if health care facilities – and ultimately countries – are meeting the agreed
goals and objectives for preventing and managing cardiovascular diseases (CVD).
Monitoring is the on-going collection, management
...
and use of information to
assess whether an activity or programme is proceeding according to plan and/
or achieving defined targets. Not all outcomes of interest can be monitored. Clear
outcomes must be identified that relate to the most important changes expected to result from the project and to what is realistic and measurable within the timescale of the project. Once these outcomes have been articulated, indicators can be chosen that best measure whether the desired outcomes are being met.
To allow progress to be monitored, this module provides a set of indicators on
CVD management. Agreeing on a set of indicators allows countries to compare
progress in CVD management and treatment across different districts or
subnational jurisdictions, as well as at a facility level, identify where performance
can be improved, and track trends in implementation over time. Monitoring
these indicators also helps identify problems that may be encountered so that
implementation efforts can be redirected.
This module starts from the collection of data at facility level, which is then
“transferred up” the system: facility-level data are aggregated at subnational level
to produce reports that allow tracking of facility and subnational performance over time and allow for comparison among facilities. National-level data are obtained through population-based surveys.
Implementing a monitoring system requires action at many levels. At national and
subnational levels, staff can determine how best to integrate data elements into
existing data collection systems – such as the routine service-delivery data that are collected through facility-level Health Management Information Systems (HMIS).
In the facility setting, personnel must be aware of what data are needed. Sample
data-collection tools are included, recognizing that countries use different datamanagement systems for HMIS, so the CVD monitoring tools will be adapted to work with the HMIS system being used by the country, such that the indicators can be collected with minimal disruption/work to existing systems and tools
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Best Practices Guidelines
Accessed: 06.11.2019
Par ses propriétés thérapeutiques, le médicament permet aux professionnels de santé
ainsi quaux pouvoirs publics dassurer la santé des populations. De ce fait, sa disponibilité et
son efficacité sont essentielles et sont le résultat dun circuit complexe (de sa fabrication
...
à sa
destruction en passant par sa distribution).
Laccessibilité au médicament est un élément déterminant de toute politique de santé.
Elle est garantie par la politique pharmaceutique de chaque pays qui vise à rendre le
médicament disponible pour tous, sur lensemble du territoire (accessibilité géographique), à
tout moment (accessibilité physique), à un prix abordable (accessibilité financière) et en
garantissant son efficacité et sa qualité (accessibilité qualitative
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
ГЛОБАЛЬНАЯ СТРАТЕГИЯ СЕКТОРА ЗДРАВООХРАНЕНИЯ ПО ЛИКВИДАЦИИ ВИЧ 2016-2021
Всемирную организацию здравоохранения
(2016)
C_WHO
НА ПУТИ К ЛИКВИДАЦИИ СПИДА
ИЮНЬ 2016 Г.