92 datasets found
  1. H

    DHS_U5M: A flexible SAS macro to calculate childhood mortality estimates and...

    • data.niaid.nih.gov
    pdf +1
    Updated May 30, 2012
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    Sidney Atwood (2012). DHS_U5M: A flexible SAS macro to calculate childhood mortality estimates and standard errors from birth histories [Dataset]. http://doi.org/10.7910/DVN/OLI0ID
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    pdf, text/x-sas-syntax; charset=us-asciiAvailable download formats
    Dataset updated
    May 30, 2012
    Dataset provided by
    Research Core, Division of Global Health Equity, Brigham & Women's Hospital
    Authors
    Sidney Atwood
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Area covered
    global
    Description

    This SAS macro generates childhood mortality estimates (neonatal, post-neonatal, infant (1q0), child (4q1) and under-five (5q0) mortality) and standard errors based on birth histories reported by women during a household survey. We have made the SAS macro flexible enough to accommodate a range of calculation specifications including multi-stage sampling frames, and simple random samples or censuses. Childhood mortality rates are the component death probabilities of dying before a specific age. This SAS macro is based on a macro built by Keith Purvis at MeasureDHS. His method is described in Estimating Sampling Errors of Means, Total Fertility, and Childhood Mortality Rates Using SAS (www.measuredhs.com/pubs/pdf/OD17/OD17.pdf, section 4). More information about Childhood Mortality Estimation can also be found in the Guide to DHS Statistics (www.measuredhs.com/pubs/pdf/DHSG1/Guide_DHS_Statistics.pdf, page 93). We allow the user to specify whether childhood mortality calculations should be based on 5 or 10 years of birth histories, when the birth history window ends, and how to handle age of death with it is reported in whole months (rather than days). The user can also calculate mortality rates within sub-populations, and take account of a complex survey design (unequal probability and cluster samples). Finally, this SAS program is designed to read data in a number of different formats.

  2. c

    Global Subnational Infant Mortality Rates, Version 2.01

    • s.cnmilf.com
    • datasets.ai
    • +3more
    Updated Apr 24, 2025
    + more versions
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    SEDAC (2025). Global Subnational Infant Mortality Rates, Version 2.01 [Dataset]. https://s.cnmilf.com/user74170196/https/catalog.data.gov/dataset/global-subnational-infant-mortality-rates-version-2-01-a5279
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    Dataset updated
    Apr 24, 2025
    Dataset provided by
    SEDAC
    Description

    The Global Subnational Infant Mortality Rates, Version 2.01 consist of Infant Mortality Rate (IMR) estimates for 234 countries and territories, 143 of which include subnational Units. The data are benchmarked to the year 2015 (Version 1 was benchmarked to the year 2000), and are drawn from national offices, Demographic and Health Surveys (DHS), Multiple Indicator Cluster Surveys (MICS), and other sources from 2006 to 2014. In addition to Infant Mortality Rates, Version 2.01 includes crude estimates of births and infant deaths, which could be aggregated or disaggregated to different geographies to calculate infant mortality rates at different scales or resolutions, where births are the rate denominator and infant deaths are the rate numerator. Boundary inputs are derived primarily from the Gridded Population of the World, Version 4 (GPWv4) data collection. National and subnational data are mapped to grid cells at a spatial resolution of 30 arc-seconds (~1 km) (Version 1 has a spatial resolution of 1/4 degree, ~28 km at the equator), allowing for easy integration with demographic, environmental, and other spatial data.

  3. T

    Vital Signs: Life Expectancy – Bay Area

    • data.bayareametro.gov
    application/rdfxml +5
    Updated Apr 7, 2017
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    State of California, Department of Health: Death Records (2017). Vital Signs: Life Expectancy – Bay Area [Dataset]. https://data.bayareametro.gov/dataset/Vital-Signs-Life-Expectancy-Bay-Area/emjt-svg9
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    xml, csv, tsv, application/rssxml, json, application/rdfxmlAvailable download formats
    Dataset updated
    Apr 7, 2017
    Dataset authored and provided by
    State of California, Department of Health: Death Records
    Area covered
    San Francisco Bay Area
    Description

    VITAL SIGNS INDICATOR Life Expectancy (EQ6)

    FULL MEASURE NAME Life Expectancy

    LAST UPDATED April 2017

    DESCRIPTION Life expectancy refers to the average number of years a newborn is expected to live if mortality patterns remain the same. The measure reflects the mortality rate across a population for a point in time.

    DATA SOURCE State of California, Department of Health: Death Records (1990-2013) No link

    California Department of Finance: Population Estimates Annual Intercensal Population Estimates (1990-2010) Table P-2: County Population by Age (2010-2013) http://www.dof.ca.gov/Forecasting/Demographics/Estimates/

    CONTACT INFORMATION vitalsigns.info@mtc.ca.gov

    METHODOLOGY NOTES (across all datasets for this indicator) Life expectancy is commonly used as a measure of the health of a population. Life expectancy does not reflect how long any given individual is expected to live; rather, it is an artificial measure that captures an aspect of the mortality rates across a population. Vital Signs measures life expectancy at birth (as opposed to cohort life expectancy). A statistical model was used to estimate life expectancy for Bay Area counties and Zip codes based on current life tables which require both age and mortality data. A life table is a table which shows, for each age, the survivorship of a people from a certain population.

    Current life tables were created using death records and population estimates by age. The California Department of Public Health provided death records based on the California death certificate information. Records include age at death and residential Zip code. Single-year age population estimates at the regional- and county-level comes from the California Department of Finance population estimates and projections for ages 0-100+. Population estimates for ages 100 and over are aggregated to a single age interval. Using this data, death rates in a population within age groups for a given year are computed to form unabridged life tables (as opposed to abridged life tables). To calculate life expectancy, the probability of dying between the jth and (j+1)st birthday is assumed uniform after age 1. Special consideration is taken to account for infant mortality. For the Zip code-level life expectancy calculation, it is assumed that postal Zip codes share the same boundaries as Zip Code Census Tabulation Areas (ZCTAs). More information on the relationship between Zip codes and ZCTAs can be found at https://www.census.gov/geo/reference/zctas.html. Zip code-level data uses three years of mortality data to make robust estimates due to small sample size. Year 2013 Zip code life expectancy estimates reflects death records from 2011 through 2013. 2013 is the last year with available mortality data. Death records for Zip codes with zero population (like those associated with P.O. Boxes) were assigned to the nearest Zip code with population. Zip code population for 2000 estimates comes from the Decennial Census. Zip code population for 2013 estimates are from the American Community Survey (5-Year Average). The ACS provides Zip code population by age in five-year age intervals. Single-year age population estimates were calculated by distributing population within an age interval to single-year ages using the county distribution. Counties were assigned to Zip codes based on majority land-area.

    Zip codes in the Bay Area vary in population from over 10,000 residents to less than 20 residents. Traditional life expectancy estimation (like the one used for the regional- and county-level Vital Signs estimates) cannot be used because they are highly inaccurate for small populations and may result in over/underestimation of life expectancy. To avoid inaccurate estimates, Zip codes with populations of less than 5,000 were aggregated with neighboring Zip codes until the merged areas had a population of more than 5,000. In this way, the original 305 Bay Area Zip codes were reduced to 218 Zip code areas for 2013 estimates. Next, a form of Bayesian random-effects analysis was used which established a prior distribution of the probability of death at each age using the regional distribution. This prior is used to shore up the life expectancy calculations where data were sparse.

  4. Survey variables needed to calculate fertility and childhood mortality...

    • plos.figshare.com
    xls
    Updated Jun 4, 2023
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    Mahmoud Elkasabi (2023). Survey variables needed to calculate fertility and childhood mortality rates. [Dataset]. http://doi.org/10.1371/journal.pone.0216403.t002
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    xlsAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Mahmoud Elkasabi
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Survey variables needed to calculate fertility and childhood mortality rates.

  5. Death rate in the USA 2023

    • statista.com
    • ai-chatbox.pro
    Updated Jun 4, 2025
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    Statista (2025). Death rate in the USA 2023 [Dataset]. https://www.statista.com/statistics/269970/death-rate-in-the-usa/
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    Dataset updated
    Jun 4, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United States
    Description

    The death rate in the United States decreased by 0.6 deaths per 1,000 inhabitants (-6.12 percent) compared to the previous year. Nevertheless, the last two years recorded a significantly higher death rate than the preceding years.The crude death rate is the annual number of deaths divided by the total population, expressed per 1,000 people.Find more statistics on other topics about the United States with key insights such as total fertility rate, life expectancy of men at birth, and infant mortality rate.

  6. Global Subnational Infant Mortality Rates, Version 2.01 - Dataset - NASA...

    • data.staging.idas-ds1.appdat.jsc.nasa.gov
    • data.nasa.gov
    Updated Apr 23, 2025
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    nasa.gov (2025). Global Subnational Infant Mortality Rates, Version 2.01 - Dataset - NASA Open Data Portal [Dataset]. https://data.staging.idas-ds1.appdat.jsc.nasa.gov/dataset/global-subnational-infant-mortality-rates-version-2-01
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    Dataset updated
    Apr 23, 2025
    Dataset provided by
    NASAhttp://nasa.gov/
    Description

    The Global Subnational Infant Mortality Rates, Version 2.01 consist of Infant Mortality Rate (IMR) estimates for 234 countries and territories, 143 of which include subnational Units. The data are benchmarked to the year 2015 (Version 1 was benchmarked to the year 2000), and are drawn from national offices, Demographic and Health Surveys (DHS), Multiple Indicator Cluster Surveys (MICS), and other sources from 2006 to 2014. In addition to Infant Mortality Rates, Version 2.01 includes crude estimates of births and infant deaths, which could be aggregated or disaggregated to different geographies to calculate infant mortality rates at different scales or resolutions, where births are the rate denominator and infant deaths are the rate numerator. Boundary inputs are derived primarily from the Gridded Population of the World, Version 4 (GPWv4) data collection. National and subnational data are mapped to grid cells at a spatial resolution of 30 arc-seconds (~1 km) (Version 1 has a spatial resolution of 1/4 degree, ~28 km at the equator), allowing for easy integration with demographic, environmental, and other spatial data.

  7. NCHS - Infant Mortality Rates, by Race: United States, 1915-2013

    • catalog.data.gov
    • cloud.csiss.gmu.edu
    • +6more
    Updated Apr 23, 2025
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    Centers for Disease Control and Prevention (2025). NCHS - Infant Mortality Rates, by Race: United States, 1915-2013 [Dataset]. https://catalog.data.gov/dataset/nchs-infant-mortality-rates-by-race-united-states-1915-2013
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    Dataset updated
    Apr 23, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Area covered
    United States
    Description

    All birth data by race before 1980 are based on race of the child; starting in 1980, birth data by race are based on race of the mother. Birth data are used to calculate infant mortality rate. https://www.cdc.gov/nchs/data-visualization/mortality-trends/

  8. s

    Death Rate Calculation - Datasets - Falkland Islands Data Portal

    • dataportal.saeri.org
    Updated May 29, 2024
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    (2024). Death Rate Calculation - Datasets - Falkland Islands Data Portal [Dataset]. https://dataportal.saeri.org/dataset/death-rate-calculation
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    Dataset updated
    May 29, 2024
    Area covered
    Falkland Islands (Islas Malvinas)
    Description

    Contains equation used to calculate death rates for farms. Data held within the Department of Agriculture

  9. NCHS - Age-adjusted Death Rates for Selected Major Causes of Death

    • catalog.data.gov
    Updated Apr 23, 2025
    + more versions
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    Centers for Disease Control and Prevention (2025). NCHS - Age-adjusted Death Rates for Selected Major Causes of Death [Dataset]. https://catalog.data.gov/dataset/nchs-age-adjusted-death-rates-for-selected-major-causes-of-death
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    Dataset updated
    Apr 23, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Description

    This dataset of U.S. mortality trends since 1900 highlights trends in age-adjusted death rates for five selected major causes of death. Age-adjusted death rates (deaths per 100,000) after 1998 are calculated based on the 2000 U.S. standard population. Populations used for computing death rates for 2011–2017 are postcensal estimates based on the 2010 census, estimated as of July 1, 2010. Rates for census years are based on populations enumerated in the corresponding censuses. Rates for noncensus years between 2000 and 2010 are revised using updated intercensal population estimates and may differ from rates previously published. Data on age-adjusted death rates prior to 1999 are taken from historical data (see References below). Revisions to the International Classification of Diseases (ICD) over time may result in discontinuities in cause-of-death trends. SOURCES CDC/NCHS, National Vital Statistics System, historical data, 1900-1998 (see https://www.cdc.gov/nchs/nvss/mortality_historical_data.htm); CDC/NCHS, National Vital Statistics System, mortality data (see http://www.cdc.gov/nchs/deaths.htm); and CDC WONDER (see http://wonder.cdc.gov). REFERENCES National Center for Health Statistics, Data Warehouse. Comparability of cause-of-death between ICD revisions. 2008. Available from: http://www.cdc.gov/nchs/nvss/mortality/comparability_icd.htm. National Center for Health Statistics. Vital statistics data available. Mortality multiple cause files. Hyattsville, MD: National Center for Health Statistics. Available from: https://www.cdc.gov/nchs/data_access/vitalstatsonline.htm. Kochanek KD, Murphy SL, Xu JQ, Arias E. Deaths: Final data for 2017. National Vital Statistics Reports; vol 68 no 9. Hyattsville, MD: National Center for Health Statistics. 2019. Available from: https://www.cdc.gov/nchs/data/nvsr/nvsr68/nvsr68_09-508.pdf. Arias E, Xu JQ. United States life tables, 2017. National Vital Statistics Reports; vol 68 no 7. Hyattsville, MD: National Center for Health Statistics. 2019. Available from: https://www.cdc.gov/nchs/data/nvsr/nvsr68/nvsr68_07-508.pdf. National Center for Health Statistics. Historical Data, 1900-1998. 2009. Available from: https://www.cdc.gov/nchs/nvss/mortality_historical_data.htm.

  10. f

    lillies: An R package for the estimation of excess Life Years Lost among...

    • figshare.com
    • plos.figshare.com
    pdf
    Updated Mar 6, 2020
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    Oleguer Plana-Ripoll; Vladimir Canudas-Romo; Nanna Weye; Thomas M. Laursen; John J. McGrath; Per Kragh Andersen (2020). lillies: An R package for the estimation of excess Life Years Lost among patients with a given disease or condition [Dataset]. http://doi.org/10.1371/journal.pone.0228073
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    pdfAvailable download formats
    Dataset updated
    Mar 6, 2020
    Dataset provided by
    PLOS ONE
    Authors
    Oleguer Plana-Ripoll; Vladimir Canudas-Romo; Nanna Weye; Thomas M. Laursen; John J. McGrath; Per Kragh Andersen
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Life expectancy at a given age is a summary measure of mortality rates present in a population (estimated as the area under the survival curve), and represents the average number of years an individual at that age is expected to live if current age-specific mortality rates apply now and in the future. A complementary metric is the number of Life Years Lost, which is used to measure the reduction in life expectancy for a specific group of persons, for example those diagnosed with a specific disease or condition (e.g. smoking). However, calculation of life expectancy among those with a specific disease is not straightforward for diseases that are not present at birth, and previous studies have considered a fixed age at onset of the disease, e.g. at age 15 or 20 years. In this paper, we present the R package lillies (freely available through the Comprehensive R Archive Network; CRAN) to guide the reader on how to implement a recently-introduced method to estimate excess Life Years Lost associated with a disease or condition that overcomes these limitations. In addition, we show how to decompose the total number of Life Years Lost into specific causes of death through a competing risks model, and how to calculate confidence intervals for the estimates using non-parametric bootstrap. We provide a description on how to use the method when the researcher has access to individual-level data (e.g. electronic healthcare and mortality records) and when only aggregated-level data are available.

  11. f

    Table_1_Why Does Child Mortality Decrease With Age? Modeling the...

    • frontiersin.figshare.com
    xlsx
    Updated Jun 8, 2023
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    Josef Dolejs; Helena Homolková (2023). Table_1_Why Does Child Mortality Decrease With Age? Modeling the Age-Associated Decrease in Mortality Rate Using WHO Metadata From 25 Countries.XLSX [Dataset]. http://doi.org/10.3389/fped.2021.657298.s003
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    xlsxAvailable download formats
    Dataset updated
    Jun 8, 2023
    Dataset provided by
    Frontiers
    Authors
    Josef Dolejs; Helena Homolková
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Background: Our previous study analyzed the age trajectory of mortality (ATM) in 14 European countries, while this study aimed at investigating ATM in other continents and in countries with a higher level of mortality. Data from 11 Non-European countries were used.Methods: The number of deaths was extracted from the WHO mortality database. The Halley method was used to calculate the mortality rates in all possible calendar years and all countries combined. This method enables us to combine more countries and more calendar years in one hypothetical population.Results: The age trajectory of total mortality (ATTM) and also ATM due to specific groups of diseases were very similar in the 11 non-European countries and in the 14 European countries. The level of mortality did not affect the main results found in European countries. The inverse proportion was valid for ATTM in non-European countries with two exceptions.Slower or no mortality decrease with age was detected in the first year of life, while the inverse proportion model was valid for the age range (1, 10) years in most of the main chapters of ICD10.Conclusions: The decrease in child mortality with age may be explained as the result of the depletion of individuals with congenital impairment. The majority of deaths up to the age of 10 years were related to congenital impairments, and the decrease in child mortality rate with age was a demonstration of population heterogeneity. The congenital impairments were latent and may cause death even if no congenital impairment was detected.

  12. NCHS - Childhood Mortality Rates

    • catalog.data.gov
    • healthdata.gov
    • +5more
    Updated Apr 23, 2025
    + more versions
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    Centers for Disease Control and Prevention (2025). NCHS - Childhood Mortality Rates [Dataset]. https://catalog.data.gov/dataset/nchs-childhood-mortality-rates
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    Dataset updated
    Apr 23, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Description

    This dataset of U.S. mortality trends since 1900 highlights childhood mortality rates by age group for age at death. Age-adjusted death rates (deaths per 100,000) after 1998 are calculated based on the 2000 U.S. standard population. Populations used for computing death rates for 2011–2017 are postcensal estimates based on the 2010 census, estimated as of July 1, 2010. Rates for census years are based on populations enumerated in the corresponding censuses. Rates for noncensus years between 2000 and 2010 are revised using updated intercensal population estimates and may differ from rates previously published. Data on age-adjusted death rates prior to 1999 are taken from historical data (see References below). Age groups for childhood death rates are based on age at death. SOURCES CDC/NCHS, National Vital Statistics System, historical data, 1900-1998 (see https://www.cdc.gov/nchs/nvss/mortality_historical_data.htm); CDC/NCHS, National Vital Statistics System, mortality data (see http://www.cdc.gov/nchs/deaths.htm); and CDC WONDER (see http://wonder.cdc.gov). REFERENCES National Center for Health Statistics, Data Warehouse. Comparability of cause-of-death between ICD revisions. 2008. Available from: http://www.cdc.gov/nchs/nvss/mortality/comparability_icd.htm. National Center for Health Statistics. Vital statistics data available. Mortality multiple cause files. Hyattsville, MD: National Center for Health Statistics. Available from: https://www.cdc.gov/nchs/data_access/vitalstatsonline.htm. Kochanek KD, Murphy SL, Xu JQ, Arias E. Deaths: Final data for 2017. National Vital Statistics Reports; vol 68 no 9. Hyattsville, MD: National Center for Health Statistics. 2019. Available from: https://www.cdc.gov/nchs/data/nvsr/nvsr68/nvsr68_09-508.pdf. Arias E, Xu JQ. United States life tables, 2017. National Vital Statistics Reports; vol 68 no 7. Hyattsville, MD: National Center for Health Statistics. 2019. Available from: https://www.cdc.gov/nchs/data/nvsr/nvsr68/nvsr68_07-508.pdf. National Center for Health Statistics. Historical Data, 1900-1998. 2009. Available from: https://www.cdc.gov/nchs/nvss/mortality_historical_data.htm.

  13. d

    SHMI primary diagnosis coding contextual indicators

    • digital.nhs.uk
    csv, pdf, xlsx
    Updated Jul 11, 2024
    + more versions
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    (2024). SHMI primary diagnosis coding contextual indicators [Dataset]. https://digital.nhs.uk/data-and-information/publications/statistical/shmi/2024-07
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    xlsx(76.4 kB), xlsx(49.9 kB), pdf(231.3 kB), pdf(228.8 kB), csv(8.9 kB), csv(9.3 kB)Available download formats
    Dataset updated
    Jul 11, 2024
    License

    https://digital.nhs.uk/about-nhs-digital/terms-and-conditionshttps://digital.nhs.uk/about-nhs-digital/terms-and-conditions

    Time period covered
    Mar 1, 2023 - Feb 29, 2024
    Area covered
    England
    Description

    These indicators are designed to accompany the SHMI publication. Information on the main condition the patient is in hospital for (the primary diagnosis) is used to calculate the expected number of deaths used in the calculation of the SHMI. A high percentage of records with an invalid primary diagnosis may indicate a data quality problem. A high percentage of records with a primary diagnosis which is a symptom or sign may indicate problems with data quality or timely diagnosis of patients, but may also reflect the case-mix of patients or the service model of the trust (e.g. a high level of admissions to acute admissions wards for assessment and stabilisation). Contextual indicators on the percentage of provider spells with an invalid primary diagnosis and the percentage of provider spells with a primary diagnosis which is a symptom or sign are produced to support the interpretation of the SHMI. Notes: 1. There is a shortfall in the number of records for East Lancashire Hospitals NHS Trust (trust code RXR) and Harrogate and District NHS Foundation Trust (trust code RCD). Values for these trusts are based on incomplete data and should therefore be interpreted with caution. 2. Frimley Health NHS Foundation Trust (trust code RDU) stopped submitting data to the Secondary Uses Service (SUS) during June 2022 and did not start submitting data again until April 2023 due to an issue with their patient records system. This is causing a large shortfall in records and values for this trust should be viewed in the context of this issue. 3. A number of trusts are now submitting Same Day Emergency Care (SDEC) data to the Emergency Care Data Set (ECDS) rather than the Admitted Patient Care (APC) dataset. The SHMI is calculated using APC data. Removal of SDEC activity from the APC data may impact a trust’s SHMI value and may increase it. More information about this is available in the SHMI background quality report. 4. Further information on data quality can be found in the SHMI background quality report, which can be downloaded from the 'Resources' section of this page.

  14. g

    Infant Mortality Rate

    • globalmidwiveshub.org
    • global-midwives-hub-directrelief.hub.arcgis.com
    • +1more
    Updated Jun 1, 2021
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    Direct Relief (2021). Infant Mortality Rate [Dataset]. https://www.globalmidwiveshub.org/datasets/infant-mortality-rate
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    Dataset updated
    Jun 1, 2021
    Dataset authored and provided by
    Direct Relief
    Area covered
    Description

    The probability of dying between birth and the exact age of 1, expressed per 1,000 live births. The data is sorted by both sex and total and includes a range of values from 1900 to 2019. The calculation for infant mortality rates is derived from a standard period abridged life table using the age-specific deaths and mid-year population counts from civil registration data. This data is sourced from the UN Inter-Agency Group for Child Mortality Estimation. The UN IGME uses the same estimation method across all countries to arrive at a smooth trend curve of age-specific mortality rates. The estimates are based on high quality nationally representative data including statistics from civil registration systems, results from household surveys, and censuses. The child mortality estimates are produced in conjunction with national level agencies such as a country’s Ministry of Health, National Statistics Office, or other relevant agencies.

  15. Death rate in India 2023

    • statista.com
    Updated Jun 27, 2025
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    Statista (2025). Death rate in India 2023 [Dataset]. https://www.statista.com/statistics/580178/death-rate-in-india/
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    Dataset updated
    Jun 27, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    India
    Description

    In 2023, the death rate in India remained nearly unchanged at around **** deaths per 1,000 inhabitants. The crude death rate is the annual number of deaths in a given population, expressed per 1,000 people. When looked at in unison with the crude birth rate, the rate of natural increase can be determined.Find more statistics on other topics about India with key insights such as life expectancy of women at birth, total fertility rate, and crude birth rate.

  16. Death rate in Cameroon 2023

    • statista.com
    • ai-chatbox.pro
    Updated Jun 5, 2025
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    Statista (2025). Death rate in Cameroon 2023 [Dataset]. https://www.statista.com/statistics/579966/death-rate-in-cameroon/
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    Dataset updated
    Jun 5, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Cameroon
    Description

    The death rate in Cameroon decreased to **** deaths per 1,000 inhabitants compared to the previous year. Therefore, the death rate in Cameroon saw its lowest number in that year with **** deaths per 1,000 inhabitants. Notably, the death rate is continuously decreasing over the last years.The crude death rate is the annual number of deaths divided by the total population, expressed per 1,000 people.Find more statistics on other topics about Cameroon with key insights such as infant mortality rate, total fertility rate, and total life expectancy at birth.

  17. d

    Mortality rate for children under 5 years old

    • data.gov.tw
    csv
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    Health Promotion Administration, Mortality rate for children under 5 years old [Dataset]. https://data.gov.tw/en/datasets/152385
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    csvAvailable download formats
    Dataset authored and provided by
    Health Promotion Administration
    License

    https://data.gov.tw/licensehttps://data.gov.tw/license

    Description
    1. Data source: Calculated by the Department of Health using the National Simple Life Table issued by the Statistics Department of the Ministry of the Interior. 2. Definition: The probability of death from birth to less than 5 years of age.
  18. Standardised excess mortality levels during the COVID-19 outbreak

    • data.europa.eu
    csv
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    Santé publique France, Standardised excess mortality levels during the COVID-19 outbreak [Dataset]. https://data.europa.eu/data/datasets/5ea7eaf11739179063ca0847?locale=en
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    csv(294), csv(3448), csv(20080), csv(158)Available download formats
    Dataset authored and provided by
    Santé publique France
    License

    https://www.etalab.gouv.fr/licence-ouverte-open-licencehttps://www.etalab.gouv.fr/licence-ouverte-open-licence

    Description

    The actions of Public Health France

    Public Health France’s mission is to improve and protect the health of populations. During the health crisis linked to the COVID-19 epidemic, Public Health France is responsible for monitoring and understanding the dynamics of the epidemic, anticipating the various scenarios and implementing actions to prevent and limit the transmission of this virus on the national territory.

    Description of the dataset

    This dataset describes the level of standardised excess mortality during the COVID-19 outbreak, at the departmental and regional level.

    The level of excess mortality is described for two age categories: — for all ages; — for persons over 65 years of age.

    Method of calculating levels

    The data are derived from the administrative part of the death certificate, collected by the civil registry offices of the municipalities having a dematerialised transmission with INSEE. The observed number of deaths is compared to an expected number, estimated from a statistical model established by the EuroMomo consortium and used by 24 countries or regions in Europe.

    The estimation of excess deaths is based on the calculation of a standardised indicator (Z-score), which makes it possible to compare excesses between different geographical levels or age groups.

    The Z-score is calculated by the formula: (observed number — expected number)/standard deviation of expected number.

    The five categories of excess are defined as follows: — No excess: standardised Death Indicator (Z-score) < 2 — Moderate excess of death: standardised Death Indicator (Z-score) between 2 and 4.99 — High excess of death: standardised Death Indicator (Z-score) between 5 and 6.99: — Very high excess of death: standardised Death Indicator (Z-score) between 7 and 11.99: Exceptional excess of standardised death indicator of death (Z-score) greater than 12

    Limits of the calculation method

    The estimated excesses are established on a set of 3000 municipalities for which Santé publique France has a long history of data. These 3000 municipalities account for 77 % of national mortality, varying from 63 % to 96 % depending on the regions and from 42 % to 98 % depending on the departments.

    Taking into account the legal deadlines for declaring a death to civil status and the time taken by the civil registry office to enter the information, a period between the occurrence of the death and the arrival of the information at Santé publique France is observed. This period can be extended punctually (public holidays, extended weekends, bridges, school holidays, very strong epidemic period, confinement). Mortality data are considered consolidated within 30 days.

  19. O

    Strategic Measure_Infant mortality rate (number of deaths of infants younger...

    • data.austintexas.gov
    • datahub.austintexas.gov
    • +2more
    application/rdfxml +5
    Updated Dec 20, 2022
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    City of Austin, Texas - data.austintexas.gov (2022). Strategic Measure_Infant mortality rate (number of deaths of infants younger than 1-year-old per 1,000 live births) [Dataset]. https://data.austintexas.gov/Health-and-Community-Services/Strategic-Measure_Infant-mortality-rate-number-of-/qxch-wiie
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    csv, tsv, xml, application/rdfxml, application/rssxml, jsonAvailable download formats
    Dataset updated
    Dec 20, 2022
    Dataset authored and provided by
    City of Austin, Texas - data.austintexas.gov
    License

    U.S. Government Workshttps://www.usa.gov/government-works
    License information was derived automatically

    Description

    This dataset includes counts of infant births and deaths within Austin city limits by year. The counts are calculated into an infant mortality rate for each year. Both infant deaths and infant births are reported through the Office of Vital Records.

    View more details and insights related to this data set on the story page: https://data.austintexas.gov/stories/s/HE-B-3-Infant-mortality-rate-number-of-deaths-of-i/jwg4-2djc/

  20. COVID-19 death rates in 2020 countries worldwide as of April 26, 2022

    • statista.com
    Updated Apr 15, 2022
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    Statista (2022). COVID-19 death rates in 2020 countries worldwide as of April 26, 2022 [Dataset]. https://www.statista.com/statistics/1105914/coronavirus-death-rates-worldwide/
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    Dataset updated
    Apr 15, 2022
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

    COVID-19 rate of death, or the known deaths divided by confirmed cases, was over ten percent in Yemen, the only country that has 1,000 or more cases. This according to a calculation that combines coronavirus stats on both deaths and registered cases for 221 different countries. Note that death rates are not the same as the chance of dying from an infection or the number of deaths based on an at-risk population. By April 26, 2022, the virus had infected over 510.2 million people worldwide, and led to a loss of 6.2 million. The source seemingly does not differentiate between "the Wuhan strain" (2019-nCOV) of COVID-19, "the Kent mutation" (B.1.1.7) that appeared in the UK in late 2020, the 2021 Delta variant (B.1.617.2) from India or the Omicron variant (B.1.1.529) from South Africa.

    Where are these numbers coming from?

    The numbers shown here were collected by Johns Hopkins University, a source that manually checks the data with domestic health authorities. For the majority of countries, this is from national authorities. In some cases, like China, the United States, Canada or Australia, city reports or other various state authorities were consulted. In this statistic, these separately reported numbers were put together. Note that Statista aims to also provide domestic source material for a more complete picture, and not to just look at one particular source. Examples are these statistics on the confirmed coronavirus cases in Russia or the COVID-19 cases in Italy, both of which are from domestic sources. For more information or other freely accessible content, please visit our dedicated Facts and Figures page.

    A word on the flaws of numbers like this

    People are right to ask whether these numbers are at all representative or not for several reasons. First, countries worldwide decide differently on who gets tested for the virus, meaning that comparing case numbers or death rates could to some extent be misleading. Germany, for example, started testing relatively early once the country’s first case was confirmed in Bavaria in January 2020, whereas Italy tests for the coronavirus postmortem. Second, not all people go to see (or can see, due to testing capacity) a doctor when they have mild symptoms. Countries like Norway and the Netherlands, for example, recommend people with non-severe symptoms to just stay at home. This means not all cases are known all the time, which could significantly alter the death rate as it is presented here. Third and finally, numbers like this change very frequently depending on how the pandemic spreads or the national healthcare capacity. It is therefore recommended to look at other (freely accessible) content that dives more into specifics, such as the coronavirus testing capacity in India or the number of hospital beds in the UK. Only with additional pieces of information can you get the full picture, something that this statistic in its current state simply cannot provide.

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Sidney Atwood (2012). DHS_U5M: A flexible SAS macro to calculate childhood mortality estimates and standard errors from birth histories [Dataset]. http://doi.org/10.7910/DVN/OLI0ID

DHS_U5M: A flexible SAS macro to calculate childhood mortality estimates and standard errors from birth histories

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pdf, text/x-sas-syntax; charset=us-asciiAvailable download formats
Dataset updated
May 30, 2012
Dataset provided by
Research Core, Division of Global Health Equity, Brigham & Women's Hospital
Authors
Sidney Atwood
License

CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically

Area covered
global
Description

This SAS macro generates childhood mortality estimates (neonatal, post-neonatal, infant (1q0), child (4q1) and under-five (5q0) mortality) and standard errors based on birth histories reported by women during a household survey. We have made the SAS macro flexible enough to accommodate a range of calculation specifications including multi-stage sampling frames, and simple random samples or censuses. Childhood mortality rates are the component death probabilities of dying before a specific age. This SAS macro is based on a macro built by Keith Purvis at MeasureDHS. His method is described in Estimating Sampling Errors of Means, Total Fertility, and Childhood Mortality Rates Using SAS (www.measuredhs.com/pubs/pdf/OD17/OD17.pdf, section 4). More information about Childhood Mortality Estimation can also be found in the Guide to DHS Statistics (www.measuredhs.com/pubs/pdf/DHSG1/Guide_DHS_Statistics.pdf, page 93). We allow the user to specify whether childhood mortality calculations should be based on 5 or 10 years of birth histories, when the birth history window ends, and how to handle age of death with it is reported in whole months (rather than days). The user can also calculate mortality rates within sub-populations, and take account of a complex survey design (unequal probability and cluster samples). Finally, this SAS program is designed to read data in a number of different formats.

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