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2
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
Best practice guidelines are systematically developed statements designed to assist nurses working in partnership with persons and their families to make decisions about health care and services (Fi
...
eld & Lohr, 1990). This nursing Best Practice Guideline (BPG) is intended to replace the RNAO BPGs Screening for Delirium, Dementia and Depression in Older Adults (2010b) and Caregiving Strategies for Older Adults with Delirium, Dementia and Depression (2010a).
more
Bangladesh has been going through incremental trend of GDP growth rates for a long time. The GDP is the key aspect to measure the economic growth of a country. But the current world wide pandemic due to the COVID-19 hardly affects the world’s economy as well as Bangladesh. The present
...
lockdown make the wheel of the industries uncertain. The main source of the GDP of this country is ready made garment sector which has been shut down since mid of March 2020. Already 20 billion of cancellation of foreign order makes the situation worse. Also, the foreign remittance has been decline dramatically due to the loss of jobs of Bangladeshi workers in foreign countries. The overall economic situation declines in this country due to the COVID-19 which has huge impact on the health care system especially in maternal and child health. In this paper, the economic situation of Bangladesh before and during the COVID-19 has been shown. Also, how the COVID-19 would affect the condition
more
In 2020, the COVID-19 pandemic impacted the world beyond imagination. To date, it has infected more than 135 million people, killed over 2.9 million people, and is projected to plunge up to 115 million people into extreme poverty.1 As countries have gone into lockdown, gender-based violence has incr
...
eased, unemployment has soared, and access to health care for the poorest and most vulnerable has been cut. COVID-19 has made people less likely to seek health care because they are afraid of getting infected with the virus. Fear and uncertainty surrounding COVID-19 have also increased stigma and discrimination. As frontline workers without enough access to personal protective equipment (PPE) risk their lives to treat patients, the virus pushes already fragile health systems to the brink.
more
Background: The amount of resources, particularly prepaid resources, available for health can affect access to health care and
...
health outcomes. Although health spending tends to increase with economic development, tremendous variation exists among health financing systems. Estimates of future spending can be beneficial for policy makers and planners, and can identify financing gaps. In this study, we estimate future gross domestic product (GDP), all-sector government spending, and health spending disaggregated by source, and we compare expected future spending to potential future spending. Methods: We extracted GDP, government spending in 184 countries from 1980–2015, and health spend data from 1995–2014. We used a series of ensemble models to estimate future GDP, all-sector government spending, development assistance for health, and government, out-of-pocket, and prepaid private health spending through 2040. We used frontier analyses to identify patterns exhibited by the countries that dedicate the most funding to health, and used these frontiers to estimate potential health spending for each low-income or middle-income country. All estimates are inflation and purchasing power adjusted.
more
This field guide is designed for use by FHI 360 staff and partner organizations responsible for ensuring quality clinical services, at both facility and non-facility levels. The guide provides general information on how to organize, implement and fo
...
llow up on quality assurance/quality improvement clinical facility and service assessments.
The accompanying checklists are intended to be used with the clinical facility assessment guide.
more
This Clinic Supervisor’s Manual is helpful for focusing managers on the key elements of integrated primary health care as they simultaneously integrate new interventions for HIV/AIDS, tuberculosis
...
, and malaria. This tool contains 12 sections. Section 1 explains how to use the manual. Section 2 helps the clinic supervisors organize their supervisory visit. The remainder of the sections focus on a number of key areas during a clinic supervision visit.
more
This implementation guide has been developed to help birth attendants and health-care leaders successfully launch and sustain use of the WHO Safe Childbirth Checklist. Development, use and implement
...
ation of the Checklist are described in this guide.
It covers how to introduce and ensure continuous use of the Checklist by engaging relevant stakeholders, how to launch the Checklist formally, and provides support for the process through coaching and data-sharing
more
Declaration of Astana
recommended
Global Conference on Primary Health Care From Alma-Ata towards universal health coverage and the Sustainable Development Goals
Astana, Kazakhstan,
...
25 and 26 October 2018
more
Basic Expectations for Safe Care
This guidance describes a catalogue of indicators for maternal, newborn, child and adolescent health (MNCAH) that can be monitored through health management information system data. It is a module o
...
f the WHO Toolkit for Routine Health Information Systems (RHIS) Data and links to relevant indicators from other programmatic modules of the WHO toolkit. The document provides guidance on possible analysis and visualization of the indicators, including considerations for interpreting and using the data for decision-making. An annex on data quality considerations for MNCAH managers provides suggestions for reviewing and interpreting routine health facility data through a quality lens.
more
Clinical care for severe acute respiratory infection: toolkit: COVID-19 adaptation
Clinical care for severe acute respiratory infection: toolkit: COVID-19 adaptation
Laboratory diagnosis of Buruli ulcer
recommended
A manual for health care providers.
This manual provides expert guidance on the laboratory techniques and procedures used in the diagnosis of Buruli ulcer, a disease caused by Mycobacterium ulceran
...
s. Aimed at laboratory technicians and scientists working on this disease, the manual details the exact procedures to follow when performing a range of diagnostic tests. Recommended procedures, intended for use throughout the health system, are presented at levels appropriate for peripheral, district and central services and in accordance with the varying resources, skills and equipment typically found in countries where Buruli ulcer is endemic.
more
Early Essential Newborn Care (EENC) Module 2.
This handbook builds on lessons learned from surveys implemented 2015-2017 and advice provided by the Global task force on TB patient cost surveys. It provides a standardized methodology for conducting health facility-based cross-sectional surveys t
...
o assess the direct and indirect costs incurred by TB patients and their households. In addition, it provides recommendations on results dissemination, engaging across sectors in policy dialogue and enabling action and related research for effective modifications in care delivery models, in patient support, and wider cross-sectoral interventions.
more
Benin’s National Malaria Strategy calls for eliminating
malaria as a public health threat by 2030. ARM3 was
developed to measurably and significantly speed up
progress toward that goal.
Policy Brief.
Our understanding of how to diagnose and manage Long COVID is still evolving but the condition can be very debilitating. It is associated with a range of overlapping symptoms including generalized chest and muscle pain, fatigue, shortness of breath, and cognitive dysfunction, and the
...
mechanisms involved affect multiple system and include persisting inflammation, thrombosis, and autoimmunity. It can affect anyone, but women and health care workers seem to be at greater risk.
more
For health care providers.
Sub-Saharan Africa has the highest maternal mortality in the world. According to estimates by the United Nations Maternal Mortality Estimation Inter-Agency Group (UN MMEI
...
G)1 in September 2017, while the African Region had recorded a significant decline in maternal mortality rate (MMR) of 37.8% between 2000 and 2017, 66% of the 295 000 maternal deaths reported globally occurred in sub-Saharan Africa. The African Region is also noted to have an extremely high MMR, estimated at 542 per 100000 livebirths, with an average annual rate of reduction of 2.9%.
more
Glaucoma is a leading cause of irreversible blindness globally. In Malawi, glaucoma accounts for 15.8% of the blindness among people aged 50 years and above. Blindness from glaucoma is preventable with early detection and timely treatment. However, glaucoma management remains a challenge to eye
...
care providers due to its asymptomatic progression.
These guidelines inform eye care providers about the requirements for early detection of glaucoma, and the appropriate assessment and management of glaucoma patients. The guidelines also demonstrate the need for ophthalmologists to work with secondary-level eye care providers. With
glaucoma being a permanently blinding condition, it is vital to ensure that all eye care providers are adequately equipped with skills and resources for the early detection and management of glaucoma.
more