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3
Surveillance tools for meningitis sentinel hospital surveillance: field guide to rapidly estimate the hospital catchment population (denominator) and the annual rate of hospitalisations
World Health Organization
(2015)
The document will provide information for Ministries of Health and hospital sentinel sites on why and how to determine the denominator of at-risk children <5 years of age and rate of meningitis hospitalizations for a sentinel hospital site conducting IB-VPD surveillance. Such a methodology is currently unavailable and
...
this estimation is critical to enable interpretation of surveillance data, particularly pre- and post- vaccine introduction
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
The scope of this PPC document is to serve as a guide to address the unmet public health need for a PPE system that protects the HW-F in tropical climate
s while caring for patients and providing heavy duty essential health services.
The characteristic
...
s described in this guidance are targeted for PPE used in
health clinics, hospitals and communities in low resource settings where there is lack of advanced environmental controls and equipment. The purpose is to ensure harmonization in PPE design and its use to avoid confusion and exacerbating the risk of infections in HW-F. The principles of this PPC document can also be considered in risk reduction strategies
in other healthcare settings.
more
This document provides a decision-making framework for implementation of mass treatment interventions, active case-finding campaigns and population-based surveys for neglected tropical diseases in the context of the COVID-19 pandemic. A two-step app
...
roach is proposed: a risk–benefit assessment, to decide if the planned activity should proceed; and an examination of a list of precautionary measures that should be applied with the aim of decreasing the risk of transmission of COVID-19 associated with the activity, and strengthening the capacity of the health system to manage any residual risk. This guidance note is intended to health authorities, NTD programme managers and their supporting partners.
more
National Family Health Survey (NFHS-5) West Bengal
International Institute for Population Sciences
Ministry of Health and Family Welfare India
(2021)
CC
This report presents the key findings of the NFHS-5 in West Bengal, followed by detailed tables and an appendix on sampling errors. At the time of finalization of this report, wealth quintiles for the country as a whole were not ready. Therefore, on finalization of the national report, the breakup o
...
f key indicators by wealth quintiles for all states will be provided as an additional document and uploaded on the official website of MoHFW and IIPS.
more
Rapid assessment of disability in the Philippines: understanding prevalence, well-being, and access to the community for people with disabilities to inform the W-DARE project
Manjula Marella, Alexandra Devine, Graeme Ferdinand Armecin et al.
Population Health Metrics
(2016)
CC
BioMed Central DOI 10.1186/s12963-016-0096-y
Community Health Volunteers' Decision Support System Project
P. Bakibinga, Kamande E. , Kisia L., et al.
African Population and Health Research Centre APHRC
(2018)
C1
This report presents the key findings of the end-of-project assessment of households and
community health volunteers, conducted in 2017 in the Kamukunji and Embakasi sub-counties
of Nairobi, Kenya, for a Community Health Volunteers’ Decision Support System (CHV DSS)
intervention project. The re
...
port was prepared by the African Population and Health Research
Center (APHRC). The end-line survey was implemented by APHRC. Implementation of the CHV
DSS project is a joint collaboration among several partners, including APHRC, the City County
of Nairobi, sub-county health management teams (Kamukunji and Embakasi), and community
health volunteers. The opinions expressed in this report are those of the authors and do not
necessarily reflect the views of the donor organization, the County Innovation Challenge Fund
for Kenya.
more
A 16-Year Cohort Analysis of Autism Spectrum Disorder-Associated Morbidity in a Pediatric Population
Front. Psychiatry, 29 November 2018 | https://doi.org/10.3389/fpsyt.2018.00635
Kenya Signature Programme Endline Evaluation Report: Bungoma, Busia and WajirCounties.
Obare F., Abuya T., Mukisa S., Odwe G., Kanyuuru L., Cassar C., Mohamed H.
Population Council and Save the Children
(2018)
CC
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.
F1000Research 2019, 8:323 Last updated: 17 MAY 2019