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Publication Years
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1
Category
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3
Toolboxes
560
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5
2
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
PLOS ONE | https://doi.org/10.1371/journal.pone.0192068 March 9, 2018
Child Survival Working Group
Accessed: 18.10.2019
PLOS ONE | https://doi.org/10.1371/journal.pone.0193145 February 22, 2018 1 / 13
Disclosure Guidelines for Children and Adolescents in the context of HIV, TB and non-communicable diseases
National Department of Health South Africa; PATA
(2016)
C2
Palliative care for older people: better practices
Hall, S.; H. Petkova, A.D. Tsouros, et al.
World Health Organization WHO, Regional Office for Europe, et al.
(2011)
C_WHO
This publication aims to provide examples of better palliative care practices for older people to help those involved in planning and supporting care-oriented services most appropriately and effectively. Examples have been identifi ed from literature searches and from an international call
...
for examples through various organizations, including the European Association of Palliative Care and the European Union Geriatric Medicine Society. Some examples consider how to improve aspects within the whole health system; specifi c smaller examples consider how to improve palliative care education, support in the community, in hospitals or for specifi c groups of people, such as people in nursing homes and people with dementia and their families. Some examples await rigorous evaluation of effectiveness, and more research is needed in this fi eld, especially the cost–effectiveness and generalizability of these initiatives.
more
The report discusses the epidemiological and social aspects of ageing, health and functional changes experienced with ageing, the impact of physical activity, assessment of the nutritional status of older persons, and nutritional guidelines for healthy ageing.
The HEARTS technical package provides a strategic approach to improving cardiovascular health in countries. It comprises six modules and an implementation guide. This package supports Ministries of Health to strengthen CVD management in primary health care settings. The practical, step-by step modul
...
es are supported by an overarching technical document that provides a rationale and framework for this integrated approach to the management of NCDs.
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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