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Publication Years
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Category
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Toolboxes
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3
OM Bangladesh Needs and Population Monitoring (NPM) is part of the IOM’s global Displacement Tracking Matrix (DTM) programming. DTM is IOM’s information management system to track and monitor populatio
...
n displacement during crises. Composed of several tools and processes, DTM regularly captures and analyzes multilayered data and disseminates information products that us help better understand the evolving needs of the displaced population, whether on site or en route.
As of Janurary 2018, NPM Bangladesh has two ongoing regular data collection and information management components, the NPM Site Assessment (SA) and the NPM Flow Monitoring (FM). These are designed to complement each other to provide a complete coverage of popuation movements over time.
more
Review of International, Regional and National Policies and Legal Frameworks that Promote Migrants and Mobile Populations' Access to Health and Malaria Services in the Greater Mekong Subregion (Cambodia, Lao People's Democratic Republic, Myanmar, Thailand and Viet Nam)
Migrants and mobile popul ... ations face many obstacles in accessing equitable essential health care services due to factors such as living and working conditions, education level, gender, irregular migration status, language and cultural barriers, anti-migrant sentiments, and lack of migrant-inclusive health policies among others. Despite significant progress having been made in the context of malaria control in the Greater Mekong Subregion (GMS), human movements can impact malaria transmission patterns and potentially introduce drug-resistant parasites. This legal framework review therefore serves as a guidance document on approaches to address malaria and malaria elimination for migrant and mobile populations (MMPs) in five countries of the GMS. more
Migrants and mobile popul ... ations face many obstacles in accessing equitable essential health care services due to factors such as living and working conditions, education level, gender, irregular migration status, language and cultural barriers, anti-migrant sentiments, and lack of migrant-inclusive health policies among others. Despite significant progress having been made in the context of malaria control in the Greater Mekong Subregion (GMS), human movements can impact malaria transmission patterns and potentially introduce drug-resistant parasites. This legal framework review therefore serves as a guidance document on approaches to address malaria and malaria elimination for migrant and mobile populations (MMPs) in five countries of the GMS. more
Report of the Global Thematic Consultation on Population Dynamics
Gapminder: Don’t Panic – The Facts About Population
Gapminder
(2019)
CC
Don’t Panic” is a one-hour long documentary produced by Wingspan Productions and broadcasted on BBC on the 7th of November 2013.
The world’s population is projected to grow from 7.7 billion in 2019 to 8.5 billion in 2030 (10% increase), and further to 9.7 billion in 2050 (26%) and to 10.9 billion in 2100 (42%). The
...
population of sub-Saharan Africa is projected to double by 2050 (99%). Other regions will see varying rates of increase between 2019 and 2050: Oceania excluding Australia/New Zealand (56%), Northern Africa and Western Asia (46%), Australia/New Zealand (28%), Central and Southern Asia (25%), Latin America and the Caribbean (18%), Eastern and South-Eastern Asia (3%), and Europe and Northern America (2%).
more
By 2100, new UN figures show that 4 of today’s 10 most populous nations will be replaced by African countries.
Brazil, Bangladesh, Russia and Mexico—where populations are projected to stagnate or decline—will drop out. In their place: Democratic Republic of the Congo, Ethiopia, Tanzania and E
...
gypt. All 4 are projected to more double in population.
Top 10 rankings in population growth by 2100 include only 2 non-African nations—Pakistan and the US.
c1China will shrink by 374 million fewer people—more than the entire US population.
more
Population Size Estimation of Female Sex Workers In Tbilisi and Batumi, Georgia 2014
Dr. I. Chikovani; Dr. N. Shengelia; L. Sulaberidze; N. Tsereteli; et al.
The Global Fund To fight AIDS, Tuberculosis and Malaria; Curatio International Foundation; Tanadgoma
(2014)
C2
Study Report August 2014
Curatio International Foundation (CIF) and the Association Tanadgoma would like to acknowledge the financial support provided by GFATM under the project “Establishment of evidence base for national HIV/AIDS program by strengthening of HIV/AIDS surveillance system in t
...
he country” (GEO-H-GPIC), which made this study possible.
The report was prepared by Dr. Ivdity Chikovani, Dr. Natia Shengelia, Lela Sulaberidze (CIF) and Nino Tsereteli (Tanadgoma).
Special thanks are extended to international consultants – Ali Mirzazadeh (MD, MPH, PhD Postdoctoral Scholar, University of California, San Francisco Institute for Health Policy Studies & Global Health Sciences) for his significant contribution in study preparation, protocol and questionnaire design and data analysis and Abu S. Abdul-Quader (PhD, Epidemiologist, Global AIDS Program Centers for Disease Control and Prevention) for his valuable input in refining methodology and overall guidance during the study implementation.
Special thanks are extended to international consultants – Abu S. Abdul-Quader (PhD, Epidemiologist, Global AIDS Program, Centers for Disease Control and Prevention) for his valuable input in refining methodology and overall guidance during the study implementation and Ali Mirzazadeh (MD, MPH, PhD Postdoctoral Scholar, University of California, San Francisco Institute for Health Policy Studies & Global Health Sciences) for his significant contribution in the NSU study preparation, protocol and questionnaire design and data analysis.
Authors appreciate a highly professional work of Tanadgoma staff: the survey coordinator KhatunaKhazhomia; the interviewers: Ketevan Tchelidze, Nino Kipiani, Koba Bitsadze, Kakhaber Akhvlediani, ZazaBabunashvili, Rati Tsintsadze and the social workers: Archil Rekhviashvili, Tea Chakhrakia, Irina Bregvadze, Kakhaber Kepuladze, Ketevan Jibladze and Shota Makharadze for their input in the recruitment process.
more
The following protocol has been designed to investigate the extent of infection, as determined by seropositivity in the general population, in any country in which COVID-19 virus infection has been reported. Each country may need to tailor some aspe
...
cts of this protocol to align with public health, laboratory and clinical systems, according to capacity, availability of resources and cultural appropriateness. However, using a standardized protocol such as this one below, epidemiological exposure data and biological samples can be systematically collected and shared rapidly in a format that can be easily aggregated, tabulated and analyzed across many different settings globally for timely estimates of COVID-19 virus infection severity and attack rates, as well as to inform public health responses and policy decisions. This is particularly important in the context of a novel respiratory pathogen, such as COVID-19 virus
more
ABSTRACT
Objectives: We developed COVID-19 Outbreak Simulator (https://ictr.github.io/covid19-outbreak-simulator/) to quantitatively estimate the effectiveness of preventative and interventive measures to prevent and battle COVID-19 outbreaks for specific populations.
The Resolution Population and Individual Approaches to the Prevention and Management of Diabetes and Obesity was approved by the 48th Directing Council of the Pan American Health Organization, September 29- October 3, 2008, in response to the epidem
...
ic of obesity and diabetes currently affecting the countries of the Americas. Its main goal is to call on Member States to prioritize the prevention of obesity and diabetes and their common risk factors by establishing and/or strengthening policies and programs, integrating them into public and private health systems and working to ensure adequate allocation of resources to carry out such policies and programs.
more
Obesity and diabetes are affecting the peoples of the Americas at high and increasing rates. National surveys demonstrate that obesity is increasing in prevalence among all age groups; 7% to 12% of children under 5 years old and
one-fi fth of adolescents are obese, while rates of overweight and obe
...
sity among adults approach 60%. Obesity is the major modifi able risk factor for diabetes.
more
DEMOGRAPHIC RESEARCH, VOLUME 36, ARTICLE 37, PAGES 1081-1108; PUBLISHED 5 APRIL 2017; http://www.demographic-research.org/Volumes/Vol36/37/; DOI: 10.4054/DemRes.2017.36.37
Key Populations Brief
Accessed November 2017