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The Boston Medical Center Patient Navigation Toolkit
The Boston Medical Center AVON Foundation for Women
The Boston Medical Center AVON Foundation for Women
(2020)
C1
This toolkit is designed to help you plan and implement a Patient Navigation program with the best chance of reducing health disparities and improving health outcomes for your patients. It contains evidence-based and experience-based examples, case studies, practical tools, and resources to help you
...
:
1. Establish an evidence-based patient navigation program tailored to reduce barriers for your patients
2. Incorporate best practices to enhance current patient navigation programs or services
3. Implement a patient navigation model to address any targeted medical condition
where disparities exist
4. Hire, prepare, supervise, support and retain effective Patient Navigators
5. Navigate patients who experience health disparities
6. Evaluate patient navigation programs with the aim of continuous quality
improvement
more
Trials (2017) 18:152, DOI 10.1186/s13063-017-1881-z
Policy
25 February 2015 Vol 7 Issue 276 276fs8
Year one report
Bulletin of the World Health Organization, 2001, 79 (4)
This CPD Policy relates to all health professionals in the four Health Professional Councils in Rwanda namely; RMDC, NCNM, RAHPC, and RPC. The policy requires all health professionals to participate in the CPD Programs. The purpose of this CPD Policy is to support the professionals in the respective
...
councils to develop a culture of continuing learning, acquire new knowledge and skills, and ensure efficient regulation and appropriate delivery of healthcare services to the community.
more
Anxiety Disorders
Chapter F.4
Curr Psychiatry Rep. 2011 Dec;13(6):493-9. doi: 10.1007/s11920-011-0229-8.
Introduction
Chapter A.6
Lancet Glob Health 2019Published OnlineOctober 22, 2019 https://doi.org/10.1016/S2214-109X(19)30425-5
Nature Reviews Microbiology Vol. 17 (2019)pp.51-62
Antimicrobial susceptibility testing (AST) technologies help to accelerate the
initiation of targeted antimicrobial therapy for patients with infections and could potentially
extend the lifespan of current narrow- spectrum antimicrobials. Althoug
...
h conceptually new and
rapid AST technologies have been described, including new phenotyping methods, digital
imaging and genomic approaches, there is no single major, or broadly accepted, technological
breakthrough that leads the field of rapid AST platform development
more
Antimicrobial resistance (AMR) is an important public health concern shared by developed and developing countries. In developing countries the burden of infectious diseases is greater and exacerbated by limited access to, and availability and affordability of, antimicrobials required to treat infect
...
ions caused by AMR organisms. With drugs not listed on the essential drugs list (EDL), problems of increased morbidity, costs of extended hospitalisation and mortality are extremely serious. The problem of susceptibility to and spread of infections caused by multidrug-resistant (MDR) infectious agents is fuelled by factors such as limited access to clean water and sanitation to ensure personal hygiene, malnutrition, and the HIV/TB epidemic.
more
16-24 February 2020
The International Pharmaceutical Federation (FIP) is a global federation of national associations of pharmacists and
pharmaceutical scientists. In order to support these associations in their fight against AMR, FIP has prepared this
briefing document. It is an overview of the different activities
...
that community and hospital pharmacists are involved
into prevent AMR and to reverse AMR rates.
more
The National Action Plan for Combating Antibiotic-Resistant Bacteria (CARB), 2020-2025, presents
coordinated, strategic actions that the United States Government will take in the next five years to improve the health and wellbeing of all Americans by changing the course of antibiotic resistance.
T
...
his Plan is based on the U.S. Government’s 2014 National Strategy for CARB, and builds on the first National Action Plan released in 2015 by expanding evidence-based activities that have already been shown to reduce antibiotic resistance, such as optimizing the use of antibiotics in human and animal health settings.
more
This study addresses part of the Terms of Reference for a scoping report ‘An analysis of approaches to laboratory capacity strengthening for drug resistant infections in low and middle income countries’. It has been produced as a separate report because it is also very relevant for a second stud
...
y ‘Supporting Surveillance Capacity for Antimicrobial Resistance: Regional Networks and Educational Resources’. This study compares antimicrobial surveillance systems in three low and middle income countries in order to describe the components of these systems and to understand which surveillance models are best suited to particular contexts. Ghana, Nigeria and Nepal were selected as study countries because they cover different continents and include one ‘fragile’ context (Nigeria). Brief information from Malawi is also included.
more
South Africa has faced many challenges over the past two decades, accomplishing profound positive changes in the social structure and government of the nation. This has not yet fully translated into better health for the population, however, particularly the poorest segment. In fact, the p
...
opulation has lost ground since the 1990s in virtually all important health indicators, leaving South Africa with a high burden of infectious disease.
August 2011, Vol. 101, No. 8 SAMJ
more