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Publication Years
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2
Access to health workers who are fit for purpose, motivated and protected is a fundamental force of health service delivery and the achievement of universal
...
health coverage and the health and health-related Sustainable Development Goals. Data and knowledge of the distribution, skill mix and future development needs of the health workforce can mean the difference between enabling or impeding health systems performance, inclusive economic growth and global health security preparedness and response
more
Guidelines
UNAIDS/WHO working group on global HIV/AIDS and STI surveillance
August 2015
HIV strategic information for impact
31 Janaury 2021
SCORE for health data technical package. The first global assessment on the status and capacity of health information systems in 1
...
33 countries, covering 87% of the global population.
It identifies gaps and provides guidance for investment in areas that can have the greatest impact on the quality, availability, analysis, accessibility and use of health data.
more
The Core Set of Indicators and respective Indicator Data Sheets aim to pave the way towards a common understanding, greater consistency and comparability across countries and alignment of results chains of German Development Cooperation in the field
...
of health and social health protection with the internationally recognized health systems framework of WHO and International Health Partnership (IHP+).
more
14 January 2021
This practical guide can be used to help countries monitor and analyse the impact of COVID-19 on essential health services to inform planning and decision-making. It provides practical recommendations on how to use key performance i
...
ndicators to analyse changes in access to and delivery of essential health services within the context of the COVID-19 pandemic; how to visualize and interpret these data; and how to use the findings to guide modifications for safe delivery of services and transitioning towards restoration and recovery. The guide focuses on existing indicators and data that are captured in routine reporting systems and how they can be used by national and subnational authorities to understand specific contexts, challenges and bottlenecks. This guide supports Maintaining essential health services: operational guidance for the COVID-19 context, which provides an integrated framework to guide countries in their efforts to reorganize, adapt and maintain safe delivery of high-priority essential health services within the context of the pandemic.
more
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)
C2
DHS Analytical Studies No. 51
Child Health, Family Planning, Geographic Information, HIV, Malaria, Maternal Health
Provincial profiles
Original file: 96 MB
Original file: 96 MB
The purpose of Volume 2 is to provide a full set of reference data showing performance over the period of the previous National Health Plan 2001–2010, to provide a baseline against which performan
...
ce over the next ten years can be measured, and to highlight in greater detail some of the context against which the policies and strategies described in Volume 1 can be understood.
This Part A of Volume 2 provides data and context from a whole-of-country perspective. The data will be useful for provinces and national-level program staff within the National Department of Health to establish benchmarks and targets in the Five-year Strategic Implementation Plans to be developed to support implementation of this Plan. Additionally, this Volume will serve as a reference manual for all health sector stakeholders.
Original file: 77 MB more
This Part A of Volume 2 provides data and context from a whole-of-country perspective. The data will be useful for provinces and national-level program staff within the National Department of Health to establish benchmarks and targets in the Five-year Strategic Implementation Plans to be developed to support implementation of this Plan. Additionally, this Volume will serve as a reference manual for all health sector stakeholders.
Original file: 77 MB more
INTRODUCTION: The COVID-19 pandemic has disrupted health systems around the world. The objectives of this study are to estimate the overall effect of the pandemic on essential health service use and
...
outcomes in Mexico, describe observed and predicted trends in services over 24 months, and to estimate the number of visits lost through December 2020.
METHODS: We used health information system data for January 2019 to December 2020 from the Mexican Institute of Social Security (IMSS), which provides health services for more than half of Mexico's population-65 million people. Our analysis includes nine indicators of service use and three outcome indicators for reproductive, maternal and child health and non-communicable disease services. We used an interrupted time series design and linear generalised estimating equation models to estimate the change in service use and outcomes from April to December 2020. Estimates were expressed using average marginal effects on the risk ratio scale.
RESULTS: The study found that across nine health services, an estimated 8.74 million patient visits were lost in Mexico. This included a decline of over two thirds for breast and cervical cancer screenings (79% and 68%, respectively), over half for sick child visits and female contraceptive services, approximately one-third for childhood vaccinations, diabetes, hypertension and antenatal care consultations, and a decline of 10% for deliveries performed at IMSS. In terms of patient outcomes, the proportion of patients with diabetes and hypertension with controlled conditions declined by 22% and 17%, respectively. Caesarean section rate did not change.
CONCLUSION: Significant disruptions in health services show that the pandemic has strained the resilience of the Mexican health system and calls for urgent efforts to resume essential services and plan for catching up on missed preventive care even as the COVID-19 crisis continues in Mexico.
more
Mental health disorders remain widely under-reported — in our section on Data Quality & Definitions we discuss the challenges of dealing with this data
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. 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
more
Further analysis of 2011 Nepal Demographic and Health Survey on Tobacco Data
Khadka, B.B., Karki, Y.B.
National Health Education, Info rmation and Communication Centre MoHP and The Population, Health and Development (PHD) Group.
(2013)
C1
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.
more
In this paper we aim to provide information on the importance of efficiency measurement of health care facilities in developing countries. We state that efficiency measurement can be a substantial contribution to saving lives. Therefore we analyse t
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he performance of health centres in rural Burkina Faso making use of data which were taken from a comprehensive long-term cost information system. In the subsequent parts of this article, the study site is described and the DEA method outlined. The ensuing analysis of the data is carried out in two stages. Firstly, quantitative aspects concerning relative efficiency are presented. Secondly, the measures of performance are explained. The implications of the results are then discussed.
more
Six months in, the indirect impacts of COVID-19 take a toll on health, social and economic outcomes.
Nigeria is Africa’s most populous nation and accounts for nearly one quarter of the continent’s maternal, newborn and child deaths. In the spirit of the global Countdown to 2015 for Maternal, Newborn and Child Health and the Nigerian Saving One
...
Million Lives Initiative, these state data profiles have been designed to prompt and inform policy and programme action.
Without data there can be no accountability. Without accountability we risk making no progress for Nigeria’s women and children. The data included in these profiles come mainly from large-scale, periodic household surveys. Continued efforts are needed to strengthen civil registration, vital statistics and health management information systems, as well as the institutional capacity to gather and use these data.
Updated from 2011, these data profiles can be used to compare progress in different areas, identify opportunities to address specific coverage gaps, and monitor implementation.
more