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Publication Years
765
2364
252
6
2
Category
1923
185
166
138
120
27
12
Toolboxes
207
185
150
119
111
109
72
69
62
59
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50
50
46
36
34
30
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14
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7
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4
The Compendium of data and evidence-related tools for use in TB planning and programming was developed as a companion document to the People-centred framework for tuberculosis programme planning and prioritization – user guide, pu
...
blished by the World Health Organization (WHO) in 2019. The compendium is intended to support implementation of the people-centred framework user guide. It can also be used independently to inform decisions taken by national tuberculosis (TB) programmes about the implementation of the tools included in this document.
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Nutrition data and information systems (ND&IS) are critical to guide the prioritisation, collection, analysis and
dissemination of nutrition data in countries. However, there is limited guidance fo
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r countries regarding how to invest
in their ND&IS and little is known about current financing allocations by both countries and donors
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The WHO handbook “Epidemiological Data Analysis for the Early Warning Alert and Response Network (EWARN) in Humanitarian Emergencies” explains how to collect, analyse, interpret, and share health data
...
during crises such as conflicts or natural disasters. It is a practical guide for health and surveillance officers to detect disease outbreaks early and guide quick public health responses. The document outlines steps for managing data at different levels (local, regional, national), analysing disease trends by time, place, and person, and using indicators to monitor outbreak risks. It also provides methods for interpreting and communicating results clearly to decision-makers to support effective health interventions in emergencies.
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Operational Guideline
The Relationship between the Health Service Environment and Service Utilization: Linking Population Data to Health Facilities Data in Haiti and Malawi.
Wenjuan Wang, Rebecca Winter, Lindsay Mallick, Lia Florey, Clara Burgert-Brucker, and Emily Carter
ICF International
(2015)
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DHS Analytical Studies No. 51
Child Health, Family Planning, Geographic Information, HIV, Malaria, Maternal Health
DHS Working Papers No. 113
Predictors of IPTp Uptake among Pregnant Women in the 2010-2011 Zimbabwe Demographic and Health Survey
Chikwasha, Vasco, Isaac Phiri, Pugie Chimberengwa, Donewell Bangure, and Simbarashe Rusakaniko
ICF International
(2014)
C2
DHS Working Papers No. 112 | Zimbabwe Working Papers No. 13
Spousal Gender-Based Violence and Women’s Empowerment in the 2010-2011 Zimbabwe Demographic and Health Survey
Netsayi Wekwete, Naomi, Hamfrey Sanhokwe, Wellington Murenjekwa, Felicia Takavarasha, and Nyasha Madzingira.
ICF International
(2014)
C2
DHS Working Papers No. 108 | Zimbabwe Working Papers
No. 9
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to g
...
uide a well-informed polciy required to propel Rwanda towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
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