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Publication Years
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Toolboxes
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Updated September 2021.
Provision of water and sanitation and good hygiene practices play an essential role in protecting human health during all disease outbreaks, including during Ebola Virus Disease (EVD) outbreaks. This question and answer do
...
cument provides practical, evidence-based recommendations on minimum requirements and best practices for water, sanitation, hygiene (WASH). It was originally developed in 2014 during the West Africa Ebola Outbreak and has been updated in 2021 to reflect lessons learned and new operational research data. The key recommendations on WASH remain the same.
more
A user-friendly instrument designed to collect and calculate indicators of effective inventory management. The IMAT guides the user through a process of collecting data on the physical and theoretical stock balance and the duration of stockouts for
...
a set of up to 25 frequently-used products, calculating indicators, analyzing the results, and identifying strategies for improving record-keeping and stock management practices. The IMAT comes as a computerized spreadsheet in Excel and includes instructions, a data collection form, analysis guidelines, recommendations, and a graphical display of the indicator results.
more
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
Version 1.0, 2014-11-21
Introduction:
This document lists TB indicators that can be derived from the recording and reporting tools defined
in Definitions and reporting framework for tuberculosis – 2013 revision (WHO/HTM/TB/2013.2).
Geneva, World Heal
...
th Organization; 2013. (http://www.who.int/tb/publications/definitions/en/).
More details on the rationale, calculation and use of these indicators are available in the following
publications:
• Understanding and using tuberculosis data (WHO/HTM/TB/2014.09). Geneva, World Health
Organization. 2014.
(http://www.who.int/tb/publications/understanding_and_using_tb_data/en/)
• Companion handbook to the WHO guidelines for the programmatic management of drugresistant
tuberculosis (WHO/HTM/TB/2014.11). Geneva, World Health Organization. 2014.
(http://www.who.int/tb/publications/pmdt_companionhandbook/en/)
• A guide to monitoring and evaluation for collaborative TB/HIV activities: 2014 revision. Geneva,
World Health Organization. 2014.
more
The primary objectives of the 2017 TMIS are to measure the level of ownership and use of mosquito nets; assess coverage of intermittent preventive treatment for pregnant women; identify treatment practices, including the use of specific antimalarial medications to treat malaria among c
...
hildren age 6-59 months; measure the prevalence of malaria and anemia among children age 6-59 months; and assess knowledge, attitudes, and practices among adults with malaria.
This table provides estimates of key indicators for the country as a whole and for each of the 31 geographic regions in Tanzania. A comprehensive analysis of the 2017 TMIS data will be presented in a final report. more
This table provides estimates of key indicators for the country as a whole and for each of the 31 geographic regions in Tanzania. A comprehensive analysis of the 2017 TMIS data will be presented in a final report. more
The aim of the Annual Inspection Report is to present findings of public sector health establishments inspected by the OHSC to monitor compliance with the National Core Standards (NCS) during the 2016/2017 financial year in South Africa.
The NCS de
...
fine fundamentals for quality of care based on six dimensions of quality: Acceptability,Safety, Reliability, Equity, Accessibility, and Efficiency.
The NCS structured assessment tools were used to collect data during inspections across the seven domains namely: Patient Rights; Patient Safety, Clinical Governance and Clinical Care; Clinical Support Services; Public Health; Leadership and Governance; Operational Management and Facilities and Infrastructure. A total of 851 routine inspections were conducted with 201 of these facilities re-inspected. Inspection data was captured on District Health Information System (DHIS) data entry forms and exported for analysis to Statistical Analysis Software (SAS) version 9.4.
more
This report documents the findings from the Behavioral Surveillance Survey conducted among youuth aged 15-24 in Rwanda in 2009. The 2009 Youth BSS documented HIV knowledge, attitudes, and behaviors (KAB) among youth in Rwanda. The data provided a c
...
ross-sectional look at the current HIV KAB among youth, and allowed for changes over time to be detected when analyzing these data against the results of the 2006 Youth BSS.
more
The World Health Organization (WHO) endorses the use of population-based prevalence surveys for estimating the prevalence of trachoma. In general, the prevalence of TF in children aged 1–9 years and the prevalence of TT in adults aged ≥ 15 years
...
are measured at the same time in any district being surveyed. This was the approach of the Global Trachoma Mapping Project, which undertook baseline surveys in > 1500 districts worldwide in order to provide the data required to start interventions where needed.
The survey design recommended by WHO is a two-stage cluster random sample survey, which uses probability proportional to size sampling to select 20–30 villages, and random, systematic or quasi-random sampling to select 25–30 households in each of those villages. In most surveys, everyone aged ≥ 1 year living in selected households is examined. more
The survey design recommended by WHO is a two-stage cluster random sample survey, which uses probability proportional to size sampling to select 20–30 villages, and random, systematic or quasi-random sampling to select 25–30 households in each of those villages. In most surveys, everyone aged ≥ 1 year living in selected households is examined. more
When setting national drinking-water quality regulations and standards, many countries consider the WHO Guidelines for drinking-water quality (GDWQ). To better understand the extent to which the GDWQ are used and reflected in these standards, this global review summarizes information from 104
...
countries and territories on values specified in national drinking-water quality standards for aesthetic, chemical, microbiological and radiological parameters.
The information provided will support regulatory agencies and other key stakeholders to access and compare data when setting or revising national drinking-water quality regulations and standards. more
The information provided will support regulatory agencies and other key stakeholders to access and compare data when setting or revising national drinking-water quality regulations and standards. more
A concept (leaflet)
This document outlines the concept of a stimulus package for rabies elimination. The aim of a stimulus package is to catalyse rabies control by starting community projects, building local capacity and using success to generate momentum for growth. Governments could apply for ... a package, which would provide technical and material support to run small, successful rabies control projects. These in turn build evidence for the feasibility of larger scale elimination, generate enthusiasm foaction and promote investment for sustainability and up scaling. Data reporting in return for the packages would allow the documentation of successes and lessons learnt to benefit global elimination efforts more broadly. more
This document outlines the concept of a stimulus package for rabies elimination. The aim of a stimulus package is to catalyse rabies control by starting community projects, building local capacity and using success to generate momentum for growth. Governments could apply for ... a package, which would provide technical and material support to run small, successful rabies control projects. These in turn build evidence for the feasibility of larger scale elimination, generate enthusiasm foaction and promote investment for sustainability and up scaling. Data reporting in return for the packages would allow the documentation of successes and lessons learnt to benefit global elimination efforts more broadly. more
2nd edition. The 2018 Roadmap incorporates an additional critical population: adolescents. Despite making up 1 in 6 of the world’s people, adolescents have been largely overlooked as global momentum to address TB has grown. Spanning the ages of 10–19 years, adolescents are both at risk of TB and
...
represent an important population for TB control. They often present with infectious TB and frequently have multiple contacts in congregate settings, such as schools and other educational institutions. Nevertheless, few countries capture TB data in suitably age-disaggregated ways to allow full understanding of its impact in this group and even fewer provide the adolescent-friendly services our young people need to access diagnosis and care.
more
Global Burden of Disease Country Profiles
recommended
The Country Profiles provide an overview of findings from the Global Burden of Disease (GBD). They are based on over 80,000 different data sources used by researchers to produce the most scientifically rigorous estimates possible. Estimates from the
...
GBD study may differ from national statistics due to differences in data sources and methodology. These profiles are meant to be freely downloaded and distributed
more
The National Action Plan (NAP) has been developed based on the model recommended in the global Action Plan. Local data on on-going interventions were collected from technical informants in the various areas of work. These were analysed using the pol
...
icy framework provided by the AMR policy document. Interventions were developed to address gaps in all five objectives of the global Action Plan. Further consultations were done to ensure that the recommended interventions were feasible, valid and relevant within the systemic contexts pertaining to the various affected sectors.
more
The STEPS survey of noncommunicable disease (NCD) risk factors in Zambia was carried out from July to September 2017. Zambia carried out Step 1, Step 2 and Step 3. Socio demographic and behavioural information was collected in Step 1. Physical measurements such as height, weight and blood pressure w
...
ere collected in Step 2. Biochemical measurements were collected to assess blood glucose and cholesterol levels in Step 3. The survey was a population-based survey of adults aged 18-69. A multi-stage cluster sample design was used to produce representative data for that age range in Zambia. A total of 4,302 adults participated in the survey. The overall response rate was 74% for Step 1 and 2 and 65% for Step 3. A repeat survey is planned for 2022 if funds permit.
more
This guide is a revised edition to the previous version published in 2017.
This updated publication provides programme managers with a user-friendly tool that can: (i) analyse and draw conclusions from historic dengue datasets; (ii) identify appropriate alarm indicators that can predict forthcoming
...
outbreaks at smaller spatial scales; and (iii) use these results and analyses to build an early warning system to detect dengue outbreaks in real time and respond accordingly. This web-based tool can ensure enhanced, fast and secured communication between national and subnational levels, and standardized utilization of surveillance data.
more
Follow-up and tracing of tuberculosis patients who fail to attend their scheduled appointments in Cotonou, Benin: a retrospective cohort study
Serge Ade1, Arnaud Trébucq, Anthony D. Harries, Gabriel Ade, Gildas Agodokpessi, Prudence Wachinou, Dissou Affolabi, Sévérin Anagonou
BMC Health Services Research
(2016)
C2
Ade et al. BMC Health Services Research (2016) 16:5
Background: In the “Centre National Hospitalier de Pneumo-Phtisiologie” of Cotonou, Benin, little is known about
the characteristics of patients who have not attended their scheduled appo
...
intment, the results of tracing and the
possible benefits on improving treatment outcomes. This study aimed to determine the contribution of tracing
activities for those who missed scheduled appointments towards a successful treatment outcome.
Methods: A retrospective cohort study was carried out among all smear-positive pulmonary tuberculosis patients
treated between January and September 2013. Data on demographic and diagnostic characteristics and treatment
outcomes were accessed from tuberculosis registers and treatment cards. Information on those who missed their
scheduled appointments was collected from the tracing tuberculosis register. A univariate analysis was performed
to explore factors associated with missing a scheduled appointment
more
The following protocol has been designed to investigate the First Few X cases (FFX) and their close contacts. It is envisioned that the FFX 2019-nCoV investigation will be conducted across several countries or sites with geographical and demographical diversity. Using a standardized protocol such a
...
s the protocol provided here, 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 2019-nCoV infection severity and transmissibility, 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 2019-nCoV
more
Module 12:
Adolescents and young adults
July 2018
Module 12: Adolescents and young adults. This module is for people who are interested in providing PrEP services to older adolescents and young adults who are at substantial risk for HIV. It provides information on: factors that influence HIV
...
susceptibility among young people; clinical considerations for safety and continuation on PrEP; ways to improve access and service utilization; and inclusive monitoring approaches to improve the recording and reporting of data on young people.
more
Tanzania: The National Action Plan on AMR 2017-2022
The United Republic of Tanzania - Ministry of Health Community Development Gender Elderly and Children
World Health Organization WHO
(2017)
C_WHO
This National Action Plan addresses actions needed to be taken in order to combat antimicrobial resistance (AMR) in the country. It is obligatory to raise awareness of antimicrobial resistance and promote behavioral change through public communication
programmes that targets human, animal and plant
...
health. Inclusion of the use of antimicrobial agents and resistance in school curricula will further promote better understanding and awareness from an early age. Antimicrobial Resistance knowledge, surveillance and research will be strengthened through establishing a national surveillance system for antimicrobial resistance, establishing and building capacity for a national reference laboratory and designated laboratories for AMR surveillance, developing a national research agenda on AMR and establishing and supporting a coordinated mechanism that will ensure harmonized AMR guidelines, data management and sharing systems in human, animal and plant health settings.
more
Myanmar, as a country going through rapid socio-political transition and institutional development also suffers with a high burden of infectious disease. An ongoing challenge has been to effectively reach its 51 million population, most of whom battle tuberculosis, acute respiratory infections, diar
...
rhoea and malaria including amongst under-five children.
Limited research data on the occurrence of resistant organisms in the nation have, makes it hard to estimate the exact antimicrobial resistance (AMR) scenario. Limited peer reviewed evidence indicates significant divergence from the average resistance trends in APAC region. Nevertheless, several key steps by Government of Myanmar have been instrumental in paving the way for the country to join other nations in the South East Asia Region to speed up its plan on addressing the AMR crisis. Combating antimicrobial resistance would, however, require highest political commitment, multi-sectoral coordination, sustained investment and technical assistance.
more