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Publication Years
1163
2051
106
1
1
Category
878
317
296
199
114
36
28
3
2
Toolboxes
372
364
275
197
183
174
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1
This report investigates the impact of potential misclassification of samples on HIV prevalence estimates for 23 surveys conducted from 2010-2014. In addition to visual inspection of laboratory results, we examined how accounting for potential misclassification of HIV status through Bayesian latent
...
class models affected the prevalence estimates. Two types of Bayesian models were specified: a model that only uses the individual dichotomous test results and a continuous model that uses the quantitative information of the EIA (i.e., the signal-to-cutoff values). Overall, we found that adjusted prevalence estimates matched the surveys’ original results, with overlapping uncertainty intervals. This suggested that misclassification of HIV status should not affect the prevalence estimates in most surveys. However, our analyses suggested that two surveys may be problematic. The prevalence could have been overestimated in the Uganda AIDS Indicator Survey 2011 and the Zambia Demographic and Health Survey 2013-14, although the magnitude of overestimation remains difficult to ascertain. Interpreting results from the Uganda survey is difficult because of the lack of internal quality control and potential violation of the multivariate normality assumption of the continuous Bayesian latent class model. In conclusion, despite the limitations of our latent class models, our analyses suggest that prevalence estimates from most of the surveys reviewed are not affected by sample misclassification.
more
At the threshold of Sustainable Development Goals (SDG) era, this document captures the remarkable achievements by Member States towards achieving MDGs 4 and 5. It acknowledges new opportunities in the post-2015 phase shaped by the SDGs and the Global Strategy for women’s, children’s and adoles
...
cents’ health and presents an advanced state of preparedness in the Region. This also highlights the region’s renewed commitment for a more inclusive and more dynamic flagship action for ending preventable maternal, newborn and child mortality as well as to improve women’s, children’s and adolescents’ health and wellbeing in the South-East Asia Region.
more
This study highlights the challenges and areas in need of improvement as perceived by CHWs and beneficiaries, in regards to a nationwide scale-up of CHW interventions in a resource-challenged country. Identifying and understanding these barriers, and addressing them accordingly, particularly within
...
the context of performance-based financing, will serve to strengthen the current CHW system and provide key guidance for the continuing evolution of the CHW system in Rwanda.
more
Asia-Pacific Disaster Report 2017
The report looks at the extent and impact of natural disasters across the region and how these intersect with poverty, inequality and the effects of violent conflict. But it also shows how scientific and other advances have increased the potential for building di ... saster resilience and ensuring that even in the most extreme circumstances people can survive disaster impacts and rebuild their communities and livelihoods.
Disaster resilience is a key element of the 2030 Agenda for Sustainable Development. The Sustainable Development Goals are based on the premise of reaching absolutely everyone. When the drought is assessed, when the flood warnings are broadcast, when the tsunami siren sounds, the aim is to ‘leave no one behind’. more
The report looks at the extent and impact of natural disasters across the region and how these intersect with poverty, inequality and the effects of violent conflict. But it also shows how scientific and other advances have increased the potential for building di ... saster resilience and ensuring that even in the most extreme circumstances people can survive disaster impacts and rebuild their communities and livelihoods.
Disaster resilience is a key element of the 2030 Agenda for Sustainable Development. The Sustainable Development Goals are based on the premise of reaching absolutely everyone. When the drought is assessed, when the flood warnings are broadcast, when the tsunami siren sounds, the aim is to ‘leave no one behind’. more
Sixth Meeting of the mhGAP Forum Hosted by WHO in Geneva on 4-5 September 2014 Summary Report
Global Happiness Policy Report 2018
Sachs, J. D.; Dr. Bin Bishr, A; De Neve. J.-E.; et al.
World Government Summit, Sustainable Development Solutions Network
(2018)
C2
Global Happiness Council
Published OnlineNovember 13, 2018 http://dx.doi.org/10.1016/ S2468-2667(18)30238-X
Some of the key findings of the report include:
Almost 80% of the general public are concerned about developing dementia at some point and 1 in 4 people think that there is nothing we can do to prevent dementia
35% of carers across the world said that they have hidden the diagnosis of de
...
mentia of a family member
Over 50% of carers globally say their health has suffered as a result of their caring responsibilities even whilst expressing positive sentiments about their role
Almost 62% of healthcare providers worldwide think that dementia is part of normal ageing
40% of the general public think doctors and nurses ignore people with dementia
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Can J Anesth/J Can Anesth June 2018, Volume 65, Issue 6, pp 698–708
Executive Summary
ATLAS on substance use (2010)— Resources for the prevention and treatment of substance use disorder; WHO
(2019)
C_WHO
ATLAS on substance use (2010) — Resources for the prevention and treatment of substance use disorders
Accessed: 14.03.2019
Tobacco control & the sustainable development goals
World Health Organization (Europe)
(2019)
C_WHO
Accessed: 15.03.2019
Health, Rights and Drugs
recommended
Harm Reducation, Decriminalization and Zero Discrimination for People who use Drugs
Developmental disorders
Chapter C.3
Psychiatry and Pediatrics
Chapter I.4
Miscellaneous
Chapter J.5
Cerebrum. 2016 Jul-Aug; 2016: cer-10-16.
Published online 2016 Jul 1.
Diagnostic profiles and predictors of treatment outcome among children and adolescents attending a national psychiatric hospital in Botswana
A. A. Olashore; B. Frank‐Hatitchki: O. Ogunwobi
BioMed Central; Child and Adolescent Psychiatry and Mental Health
(2017)
CC
Olashore et al.
Child Adolesc Psychiatry Ment Health (2017) 11:8 DOI 10.1186/s13034-017-0144-9
Психические расстройства имеют общие черты с другими неинфекционными заболеваниями, в том числе многие основные причины и общие последствия, высокую степень взаи
...
мозависимости и склонность развиваться одновременно, а также то, что их наиболее эффективное лечению связано с использованием интегрированных подходов. Схемы более интегрированного планирования и программирования включают: вмешательства популяционного уровня, направленные на повышение осведомленности о факторах риска НИЗ и психических расстройств и их снижение (посредством изменения законодательства, регулирования и повышения информированости); внедрение программ, осуществляемых в школах, на рабочих местах и в сообществах в целях укрепления психического и физического благополучия; предоставление более индивидуальных услуг здравоохранения, и предоставление более координированной помощи людям с (часто коморбидными) психическими и соматическими заболеваниями.
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Mental health disorders remain widely under-reported — in our section on Data Quality & Definitions we discuss the challenges of dealing with this data. Figures presented in this entry should be taken as estimates of mental health disorder prevalence — they do not strictly reflect diagnosis data
...
(which would provide the global perspective on diagnosis, rather than actual prevalence differences), but are imputed from a combination of medical, epidemiological data, surveys and meta-regression modelling where raw data is unavailable. Further information can be found here.
Accessed April 15, 2019
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