100+ datasets found
  1. O

    COVID-19 Case & Death Trends by Date

    • data.kcmo.org
    • splitgraph.com
    csv, xlsx, xml
    Updated Dec 8, 2022
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    Kansas City, MO Health Department (2022). COVID-19 Case & Death Trends by Date [Dataset]. https://data.kcmo.org/Health/COVID-19-Case-Death-Trends-by-Date/nfta-sjx6
    Explore at:
    xml, csv, xlsxAvailable download formats
    Dataset updated
    Dec 8, 2022
    Dataset authored and provided by
    Kansas City, MO Health Department
    Description

    This is an archived dataset & will no longer be updated. Case and Death data related to COVID-19.

    As of April 1, 2022 MODHSS is no longer providing negative test data. As a result we will no longer publish total tests per day

    Cases are based on the date an individual was tested for COVID-19. Using date tested means counts for most recent dates are likely to change as tests are reported to the the Health Department. Cases include those without an address assigned to KCMO by MODHSS to investigate. Antigen tests are not included at this time. Deaths are based on the date the death was reported to the Health Department.

    Additional data available in the link below. Data definitions are also available in the link below.

  2. County Cancer Death Rates

    • kaggle.com
    zip
    Updated Dec 3, 2023
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    The Devastator (2023). County Cancer Death Rates [Dataset]. https://www.kaggle.com/datasets/thedevastator/county-cancer-death-rates/discussion
    Explore at:
    zip(883348 bytes)Available download formats
    Dataset updated
    Dec 3, 2023
    Authors
    The Devastator
    Description

    County Cancer Death Rates

    County-level cancer death rates with related variables

    By Noah Rippner [source]

    About this dataset

    This dataset provides comprehensive information on county-level cancer death and incidence rates, as well as various related variables. It includes data on age-adjusted death rates, average deaths per year, recent trends in cancer death rates, recent 5-year trends in death rates, and average annual counts of cancer deaths or incidence. The dataset also includes the federal information processing standards (FIPS) codes for each county.

    Additionally, the dataset indicates whether each county met the objective of a targeted death rate of 45.5. The recent trend in cancer deaths or incidence is also captured for analysis purposes.

    The purpose of the death.csv file within this dataset is to offer detailed information specifically concerning county-level cancer death rates and related variables. On the other hand, the incd.csv file contains data on county-level cancer incidence rates and additional relevant variables.

    To provide more context and understanding about the included data points, there is a separate file named cancer_data_notes.csv. This file serves to provide informative notes and explanations regarding the various aspects of the cancer data used in this dataset.

    Please note that this particular description provides an overview for a linear regression walkthrough using this dataset based on Python programming language. It highlights how to source and import the data properly before moving into data preparation steps such as exploratory analysis. The walkthrough further covers model selection and important model diagnostics measures.

    It's essential to bear in mind that this example serves as an initial attempt at creating a multivariate Ordinary Least Squares regression model using these datasets from various sources like cancer.gov along with US Census American Community Survey data. This baseline model allows easy comparisons with future iterations intended for improvements or refinements.

    Important columns found within this extensively documented Kaggle dataset include County names along with their corresponding FIPS codes—a standardized coding system by Federal Information Processing Standards (FIPS). Moreover,Met Objective of 45.5? (1) column denotes whether a specific county achieved the targeted objective of a death rate of 45.5 or not.

    Overall, this dataset aims to offer valuable insights into county-level cancer death and incidence rates across various regions, providing policymakers, researchers, and healthcare professionals with essential information for analysis and decision-making purposes

    How to use the dataset

    • Familiarize Yourself with the Columns:

      • County: The name of the county.
      • FIPS: The Federal Information Processing Standards code for the county.
      • Met Objective of 45.5? (1): Indicates whether the county met the objective of a death rate of 45.5 (Boolean).
      • Age-Adjusted Death Rate: The age-adjusted death rate for cancer in the county.
      • Average Deaths per Year: The average number of deaths per year due to cancer in the county.
      • Recent Trend (2): The recent trend in cancer death rates/incidence in the county.
      • Recent 5-Year Trend (2) in Death Rates: The recent 5-year trend in cancer death rates/incidence in the county.
      • Average Annual Count: The average annual count of cancer deaths/incidence in the county.
    • Determine Counties Meeting Objective: Use this dataset to identify counties that have met or not met an objective death rate threshold of 45.5%. Look for entries where Met Objective of 45.5? (1) is marked as True or False.

    • Analyze Age-Adjusted Death Rates: Study and compare age-adjusted death rates across different counties using Age-Adjusted Death Rate values provided as floats.

    • Explore Average Deaths per Year: Examine and compare average annual counts and trends regarding deaths caused by cancer, using Average Deaths per Year as a reference point.

    • Investigate Recent Trends: Assess recent trends related to cancer deaths or incidence by analyzing data under columns such as Recent Trend, Recent Trend (2), and Recent 5-Year Trend (2) in Death Rates. These columns provide information on how cancer death rates/incidence have changed over time.

    • Compare Counties: Utilize this dataset to compare counties based on their cancer death rates and related variables. Identify counties with lower or higher average annual counts, age-adjusted death rates, or recent trends to analyze and understand the factors contributing ...

  3. d

    Principal Cause of Death by Year

    • data.gov.qa
    • qatar.opendatasoft.com
    csv, excel, json
    Updated Jun 3, 2025
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    (2025). Principal Cause of Death by Year [Dataset]. https://www.data.gov.qa/explore/dataset/principal-cause-of-death-by-year/
    Explore at:
    json, excel, csvAvailable download formats
    Dataset updated
    Jun 3, 2025
    License

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

    Description

    This dataset presents the principal causes of death in the State of Qatar, classified according to ICD-10 chapters. It includes annual death counts for various disease categories over a ten-year period. The dataset is structured by cause of death and provides a time series that enables trend analysis and comparison across years.This information is valuable for health policymakers, researchers, and public health professionals to monitor disease burdens, design interventions, and evaluate national health outcomes. It supports health planning, epidemic tracking, and resource allocation in line with international classification standards.

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

    • data.virginia.gov
    • datahub.hhs.gov
    • +6more
    csv, json, rdf, xsl
    Updated Apr 21, 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://data.virginia.gov/dataset/nchs-age-adjusted-death-rates-for-selected-major-causes-of-death
    Explore at:
    xsl, rdf, csv, jsonAvailable download formats
    Dataset updated
    Apr 21, 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

    1. 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.

    2. 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.

    3. 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.

    4. 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.

    5. National Center for Health Statistics. Historical Data, 1900-1998. 2009. Available from: https://www.cdc.gov/nchs/nvss/mortality_historical_data.htm.

  5. Cancer Mortality & Incidence Rates: (Country LVL)

    • kaggle.com
    zip
    Updated Dec 3, 2022
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    The Devastator (2022). Cancer Mortality & Incidence Rates: (Country LVL) [Dataset]. https://www.kaggle.com/datasets/thedevastator/us-county-level-cancer-mortality-and-incidence-r
    Explore at:
    zip(146998 bytes)Available download formats
    Dataset updated
    Dec 3, 2022
    Authors
    The Devastator
    Description

    Cancer Mortality & Incidence Rates: (Country LVL)

    Investigating Cancer Trends over time

    By Data Exercises [source]

    About this dataset

    This dataset is a comprehensive collection of data from county-level cancer mortality and incidence rates in the United States between 2000-2014. This data provides an unprecedented level of detail into cancer cases, deaths, and trends at a local level. The included columns include County, FIPS, age-adjusted death rate, average death rate per year, recent trend (2) in death rates, recent 5-year trend (2) in death rates and average annual count for each county. This dataset can be used to provide deep insight into the patterns and effects of cancer on communities as well as help inform policy decisions related to mitigating risk factors or increasing preventive measures such as screenings. With this comprehensive set of records from across the United States over 15 years, you will be able to make informed decisions regarding individual patient care or policy development within your own community!

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    How to use the dataset

    This dataset provides comprehensive US county-level cancer mortality and incidence rates from 2000 to 2014. It includes the mortality and incidence rate for each county, as well as whether the county met the objective of 45.5 deaths per 100,000 people. It also provides information on recent trends in death rates and average annual counts of cases over the five year period studied.

    This dataset can be extremely useful to researchers looking to study trends in cancer death rates across counties. By using this data, researchers will be able to gain valuable insight into how different counties are performing in terms of providing treatment and prevention services for cancer patients and whether preventative measures and healthcare access are having an effect on reducing cancer mortality rates over time. This data can also be used to inform policy makers about counties needing more target prevention efforts or additional resources for providing better healthcare access within at risk communities.

    When using this dataset, it is important to pay close attention to any qualitative columns such as “Recent Trend” or “Recent 5-Year Trend (2)” that may provide insights into long term changes that may not be readily apparent when using quantitative variables such as age-adjusted death rate or average deaths per year over shorter periods of time like one year or five years respectively. Additionally, when studying differences between different counties it is important to take note of any standard FIPS code differences that may indicate that data was collected by a different source with a difference methodology than what was used in other areas studied

    Research Ideas

    • Using this dataset, we can identify patterns in cancer mortality and incidence rates that are statistically significant to create treatment regimens or preventive measures specifically targeting those areas.
    • This data can be useful for policymakers to target areas with elevated cancer mortality and incidence rates so they can allocate financial resources to these areas more efficiently.
    • This dataset can be used to investigate which factors (such as pollution levels, access to medical care, genetic make up) may have an influence on the cancer mortality and incidence rates in different US counties

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    License: Dataset copyright by authors - You are free to: - Share - copy and redistribute the material in any medium or format for any purpose, even commercially. - Adapt - remix, transform, and build upon the material for any purpose, even commercially. - You must: - Give appropriate credit - Provide a link to the license, and indicate if changes were made. - ShareAlike - You must distribute your contributions under the same license as the original. - Keep intact - all notices that refer to this license, including copyright notices.

    Columns

    File: death .csv | Column name | Description | |:-------------------------------------------|:-------------------------------------------------------------------...

  6. Changing trends in mortality by leading causes of death, England and Wales

    • ons.gov.uk
    • cy.ons.gov.uk
    xlsx
    Updated Mar 10, 2020
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    Office for National Statistics (2020). Changing trends in mortality by leading causes of death, England and Wales [Dataset]. https://www.ons.gov.uk/peoplepopulationandcommunity/birthsdeathsandmarriages/deaths/datasets/changingtrendsinmortalitybyleadingcausesofdeathenglandandwales
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    xlsxAvailable download formats
    Dataset updated
    Mar 10, 2020
    Dataset provided by
    Office for National Statisticshttp://www.ons.gov.uk/
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Area covered
    England, Wales
    Description

    Annual age-standardised and age-specific mortality rates by leading causes of death for England and Wales, 2001 to 2018 (Experimental Statistics)

  7. Selected Trend Table from Health, United States, 2011. Leading causes of...

    • catalog.data.gov
    • data.virginia.gov
    • +6more
    Updated Jun 28, 2025
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    Centers for Disease Control and Prevention (2025). Selected Trend Table from Health, United States, 2011. Leading causes of death and numbers of deaths, by sex, race, and Hispanic origin: United States, 1980 and 2009 [Dataset]. https://catalog.data.gov/dataset/selected-trend-table-from-health-united-states-2011-leading-causes-of-death-and-numbers-of
    Explore at:
    Dataset updated
    Jun 28, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Area covered
    United States
    Description

    Health, United States is an annual report on trends in health statistics, find more information at http://www.cdc.gov/nchs/hus.htm.

  8. Annual cause death numbers

    • kaggle.com
    zip
    Updated Mar 17, 2024
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    willian oliveira (2024). Annual cause death numbers [Dataset]. https://www.kaggle.com/datasets/willianoliveiragibin/annual-cause-death-numbers
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    zip(405869 bytes)Available download formats
    Dataset updated
    Mar 17, 2024
    Authors
    willian oliveira
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    this graph was created in Tableu and Ourdataworld :

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F16731800%2Fc5bb0b21c8b3a126eca89160e1d25d03%2Fgraph1.png?generation=1710708871099084&alt=media" alt="">

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F16731800%2Ff81fcfa72e97f08202ba1cb06fe138da%2Fgraph2.png?generation=1710708877558039&alt=media" alt="">

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F16731800%2Fabbdfd146844a7e8d19e277c2eecb83b%2Fgraph3.png?generation=1710708883608541&alt=media" alt="">

    Understanding the Global Distribution of HIV/AIDS Deaths

    Introduction:

    HIV/AIDS remains one of the most significant public health challenges globally, with its impact varying widely across countries and regions. While the overall share of deaths attributed to HIV/AIDS stands at around 1.5% globally, this statistic belies the stark disparities observed on a country-by-country basis. This essay delves into the global distribution of deaths from HIV/AIDS, examining both the overarching trends and the localized impacts across different regions, particularly focusing on Southern Sub-Saharan Africa.

    Understanding Global Trends:

    At a global level, HIV/AIDS accounts for approximately 1.5% of all deaths. This figure, though relatively low in comparison to other causes of mortality, represents a significant burden on public health systems and communities worldwide. However, when zooming in on specific regions, such as Europe, the share of deaths attributable to HIV/AIDS drops significantly, often comprising less than 0.1% of total mortality. This pattern suggests varying levels of prevalence and effectiveness of HIV/AIDS prevention and treatment strategies across different parts of the world.

    Regional Disparities:

    The distribution of HIV/AIDS deaths is not uniform across the globe, with certain regions experiencing disproportionately high burdens. Southern Sub-Saharan Africa emerges as a focal point of the HIV/AIDS epidemic, with a significant portion of deaths attributed to the virus occurring in this region. Factors such as limited access to healthcare, socio-economic disparities, cultural stigmatization, and insufficient education about HIV/AIDS contribute to the heightened prevalence and impact of the disease in this area.

    Southern Sub-Saharan Africa: A Hotspot for HIV/AIDS Deaths:

    Within Southern Sub-Saharan Africa, countries such as South Africa, Botswana, and Swaziland stand out for their exceptionally high rates of HIV/AIDS-related mortality. In these nations, HIV/AIDS can account for up to a quarter of all deaths, highlighting the acute nature of the epidemic in these regions. The reasons behind this disproportionate burden are multifaceted, encompassing issues ranging from inadequate healthcare infrastructure to socio-cultural barriers inhibiting prevention and treatment efforts.

    Challenges and Responses:

    Addressing the unequal distribution of HIV/AIDS deaths necessitates a multi-faceted approach that encompasses both prevention and treatment strategies tailored to the specific needs of affected communities. Efforts to expand access to antiretroviral therapy (ART), promote comprehensive sexual education, combat stigma, and strengthen healthcare systems are crucial components of an effective response. Moreover, fostering partnerships between governments, civil society organizations, and international entities is essential for coordinating resources and expertise to tackle the HIV/AIDS epidemic comprehensively.

    Lessons Learned and Future Directions:

    The global distribution of deaths from HIV/AIDS underscores the importance of context-specific interventions that take into account the unique social, economic, and cultural factors influencing the spread and impact of the disease. While progress has been made in reducing HIV/AIDS-related mortality in some regions, much work remains to be done, particularly in areas where the burden of the epidemic remains disproportionately high. Going forward, sustained investment in research, healthcare infrastructure, and community empowerment initiatives will be vital for achieving meaningful reductions in HIV/AIDS deaths worldwide.

    Conclusion:

    In conclusion, the global distribution of deaths from HIV/AIDS reveals a complex landscape characterized by both overarching trends and localized disparities. While the overall share of deaths attributable to HIV/AIDS may seem relatively modest on a global scale, the stark contrasts observed across different countries and regions underscore the need for targeted interventions tailored to the specific contexts in which the epidemic is most pronounced. By addressing the underlying social, economic, and healthcare-related factors driving the unequal distribution of HIV/AIDS deaths, the global co...

  9. Cardiovascular Disease Death Rates, Trends, and Excess Death Rates Among US...

    • catalog.data.gov
    • data.virginia.gov
    • +2more
    Updated Feb 3, 2025
    + more versions
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    Centers for Disease Control and Prevention (2025). Cardiovascular Disease Death Rates, Trends, and Excess Death Rates Among US Adults (35+) by County and Age Group – 2010-2020 [Dataset]. https://catalog.data.gov/dataset/cardiovascular-disease-death-rates-trends-and-excess-death-rates-among-us-adults-35-b-2010
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    Dataset updated
    Feb 3, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Description

    This dataset documents cardiovascular disease (CVD) death rates, relative and absolute excess death rates, and trends. Specifically, this report presents county (or county equivalent) estimates of CVD death rates in 2000-2020, trends during 2010-2019, and relative and absolute excess death rates in 2020 by age group (ages 35–64 years, ages 65 years and older). All estimates were generated using a Bayesian spatiotemporal model and a smoothed over space, time, and 10-year age groups. Rates are age-standardized in 10-year age groups using the 2010 US population. Data source: National Vital Statistics System.

  10. Selected Trend Table from Health, United States, 2011. Leading causes of...

    • healthdata.gov
    csv, xlsx, xml
    Updated Jul 16, 2025
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    (2025). Selected Trend Table from Health, United States, 2011. Leading causes of death and numbers of deaths, by sex, race, and Hispanic origin: United States, 1980 and 2009 - anzq-wbh4 - Archive Repository [Dataset]. https://healthdata.gov/dataset/Selected-Trend-Table-from-Health-United-States-201/cjqr-3x4v
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    xlsx, csv, xmlAvailable download formats
    Dataset updated
    Jul 16, 2025
    Area covered
    United States
    Description

    This dataset tracks the updates made on the dataset "Selected Trend Table from Health, United States, 2011. Leading causes of death and numbers of deaths, by sex, race, and Hispanic origin: United States, 1980 and 2009" as a repository for previous versions of the data and metadata.

  11. d

    Compendium – Mortality from all causes

    • digital.nhs.uk
    csv, xls
    Updated Jul 21, 2022
    + more versions
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    (2022). Compendium – Mortality from all causes [Dataset]. https://digital.nhs.uk/data-and-information/publications/statistical/compendium-mortality/current/mortality-from-all-causes
    Explore at:
    csv(3.3 MB), xls(622.5 kB)Available download formats
    Dataset updated
    Jul 21, 2022
    License

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

    Time period covered
    Jan 1, 1995 - Dec 31, 2020
    Area covered
    Wales, England
    Description

    Mortality from all causes (for ages < 1yr all deaths, including where no cause is recorded; for ages >= 1 yr ICD-10 A00-Y99 equivalent to ICD-9 001-E999). To reduce mortality. Legacy unique identifier: P00345

  12. Heart Disease Deaths

    • kaggle.com
    zip
    Updated Jan 12, 2023
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    The Devastator (2023). Heart Disease Deaths [Dataset]. https://www.kaggle.com/thedevastator/heart-disease-deaths-in-oklahoma-2000-2018
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    zip(642 bytes)Available download formats
    Dataset updated
    Jan 12, 2023
    Authors
    The Devastator
    Description

    Heart Disease Deaths in Oklahoma

    Current Trends and Target Rates

    By Oklahoma [source]

    About this dataset

    This dataset contains an overview of historical heart disease death rates in Oklahoma from 2000 to 2018. The dataset consists of yearly figures and target figures for the numbers of deaths due to heart diseases, allowing a comparison between the expected rate and the actual rate over time. This data is important as it can be used to analyze trends in heart disease death rates, helping inform public health initiatives and policy decisions

    More Datasets

    For more datasets, click here.

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    How to use the dataset

    This dataset includes the number of death due to heart disease in Oklahoma. It provides a single, comprehensive data set that captures detailed information on the historical prevalence of heart disease death rates in the state. This dataset can be used for various research or analytical purposes such as epidemiological studies or health services planning.

    To use this dataset, one must first understand that it contains three main pieces: the year of reported deaths, the actual number of deaths related to heart disease during each year and a target total for expected deaths from heart disease per year, which are used as reference points when analyzing other years. The years column includes all relevant dates while historical data column provides more specifics such as exact numbers and percentages related to those who perished due to heart-related conditions.

    By utilizing this data set users can easily find out how many persons died due to cardiac-related diseases along with what risks were most prevalent at certain times over that period by comparing provided figures with reference targets at any given time slice in question (time point). Additionally, one can observe trends carefully within different groups such as males versus females or rural versus urban locations thus allowing them more robust insight into factors associated with mortality from cardiac conditions across different demographics

    Research Ideas

    • Identifying which geographic areas in Oklahoma are at highest risk for heart disease and creating targeted public health initiatives to reduce its incidence.
    • Determining correlations between changes in vital health indicators (e.g., increase of physical activity) with changes in heart disease death rates to better inform policy and research direction.
    • Analyzing overall mortality rates compared to other counties or states with comparable demographics to assess the effectiveness of existing public health interventions over time

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    Unknown License - Please check the dataset description for more information.

    Columns

    File: res_heart_disease_deaths_kdjx-hayj.csv | Column name | Description | |:--------------------|:-----------------------------------------------------------------------------------------------------------------------------------------| | Years | The year associated with the data. (Integer) | | Historical Data | The number of deaths due to heart disease in Oklahoma in that particular year from 2000-2018. (Integer) | | Target | A value generated based on Historical Data indicating what should be targeted as a baseline performance measure going forward. (Integer) |

    File: res_heart_disease_deaths_-_column_chart_3a28-gndr.csv | Column name | Description | |:--------------------|:-----------------------------------------------------------------------------------------------------------------------------------------| | Years | The year associated with the data. (Integer) | | Historical Data | The number of deaths due to heart disease in Oklahoma in that particular year from 2000-2018. (Integer) | | Target | A value generated based on Historical Data indicating what should be targeted as a baseline performance measure going forward. (Integer) |

    Acknowledgements

    ...

  13. Data from: Change in mortality rates of respiratory disease during the...

    • tandf.figshare.com
    • datasetcatalog.nlm.nih.gov
    jpeg
    Updated Feb 13, 2024
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    Chunyan Huang; Yan Lu; Linchi Wang; Yujie Hua; Jianrong Xu; Xiaolin Wei; Zhengji Zhang; Jun Zhang (2024). Change in mortality rates of respiratory disease during the COVID-19 pandemic [Dataset]. http://doi.org/10.6084/m9.figshare.14345721.v1
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    jpegAvailable download formats
    Dataset updated
    Feb 13, 2024
    Dataset provided by
    Taylor & Francishttps://taylorandfrancis.com/
    Authors
    Chunyan Huang; Yan Lu; Linchi Wang; Yujie Hua; Jianrong Xu; Xiaolin Wei; Zhengji Zhang; Jun Zhang
    License

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

    Description

    This study explored the change in mortality rates of respiratory disease during the corona virus disease 2019 (COVID-19) pandemic. Death data of registered residents of Suzhou from 2014 to 2020 were collected and the weekly mortality rates due to respiratory disease and all deaths were analyzed. The differences in mortality rates during the pandemic and the same period in previous years were compared. Before the pandemic, the crude mortality rate (CMR) and standardized mortality rate (SMR) of Suzhou residents including respiratory disease, were not much different from those in previous years. During the emergency period, the CMR of Suzhou residents was 180.2/100,000 and the SMR was 85.5/100,000, decreasing by 9.1% and 14.6%, respectively; the CMR of respiratory disease was 16.4/100,000 and the SMR was 6.8/100,000, down 41.4% and 44.9%, respectively. Regardless of the mortality rates of all deaths or respiratory disease, the rates were higher in males than in females, although males had aslightly greater decrease in all deaths during the emergency period compared with females, and the opposite was true for respiratory disease. During the pandemic, the death rate of residents decreased, especially that due to respiratory disease.

  14. NCHS - Death rates and life expectancy at birth

    • catalog.data.gov
    • data.virginia.gov
    • +6more
    Updated Apr 23, 2025
    + more versions
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    Centers for Disease Control and Prevention (2025). NCHS - Death rates and life expectancy at birth [Dataset]. https://catalog.data.gov/dataset/nchs-death-rates-and-life-expectancy-at-birth
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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 the differences in age-adjusted death rates and life expectancy at birth by race and sex. 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). Life expectancy data are available up to 2017. Due to changes in categories of race used in publications, data are not available for the black population consistently before 1968, and not at all before 1960. More information on historical data on age-adjusted death rates is available at https://www.cdc.gov/nchs/nvss/mortality/hist293.htm. 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.

  15. World: annual birth rate, death rate, and rate of natural population change...

    • statista.com
    Updated Nov 28, 2025
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    Statista (2025). World: annual birth rate, death rate, and rate of natural population change 1950-2100 [Dataset]. https://www.statista.com/statistics/805069/death-rate-worldwide/
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    Dataset updated
    Nov 28, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    World
    Description

    The COVID-19 pandemic increased the global death rate, reaching *** in 2021, but had little to no significant impact on birth rates, causing population growth to dip slightly. On a global level, population growth is determined by the difference between the birth and death rates, known as the rate of natural change. On a national or regional level, migration also affects population change. Ongoing trends Since the middle of the 20th century, the global birth rate has been well above the global death rate; however, the gap between these figures has grown closer in recent years. The death rate is projected to overtake the birth rate in the 2080s, which means that the world's population will then go into decline. In the future, death rates will increase due to ageing populations across the world and a plateau in life expectancy. Why does this change? There are many reasons for the decline in death and birth rates in recent decades. Falling death rates have been driven by a reduction in infant and child mortality, as well as increased life expectancy. Falling birth rates were also driven by the reduction in child mortality, whereby mothers would have fewer children as survival rates rose - other factors include the drop in child marriage, improved contraception access and efficacy, and women choosing to have children later in life.

  16. M

    COVID-19 County-Wide Test, Case, and Death Trends - Indiana

    • catalog.midasnetwork.us
    Updated Apr 27, 2008
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    Indiana State Department of Health (2008). COVID-19 County-Wide Test, Case, and Death Trends - Indiana [Dataset]. https://catalog.midasnetwork.us/collection/197
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    Dataset updated
    Apr 27, 2008
    Dataset provided by
    MIDAS COORDINATION CENTER
    Authors
    Indiana State Department of Health
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

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

    Area covered
    County
    Variables measured
    Viruses, disease, COVID-19, pathogen, Homo sapiens, host organism, mortality data, Population count, diagnostic tests, infectious disease, and 4 more
    Dataset funded by
    National Institute of General Medical Sciences
    Description

    The dataset includes the number of COVID-19 cases, tests, and deaths by report date, by county. New positive cases, deaths and tests have occurred over a range of dates but were reported to ISDH (Indiana State Department of Health) in the last 24 hours. Tests are displayed by the date the test was performed and deaths are displayed by the date the death occurred. Expect historical data to change as data is reported to ISDH

  17. Data from: Mortality of women of fertile age between 2006 and 2019: causes...

    • scielo.figshare.com
    jpeg
    Updated Jun 4, 2023
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    Silmara Bruna Zambom Albert; Katrini Guidolini Martinelli; Eliana Zandonade; Edson Theodoro do Santos Neto (2023). Mortality of women of fertile age between 2006 and 2019: causes and trends [Dataset]. http://doi.org/10.6084/m9.figshare.21971443.v1
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    jpegAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    SciELOhttp://www.scielo.org/
    Authors
    Silmara Bruna Zambom Albert; Katrini Guidolini Martinelli; Eliana Zandonade; Edson Theodoro do Santos Neto
    License

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

    Description

    Abstract The aim of this study is to analyze the trend of the main causes of death of women of reproductive age (WRA) in Brazil by age group from 2006 to 2019. Data used are from the Mortality Information System (SIM) and the Brazilian Institute of Geography and Statistics (IBGE) of Brazil. The main causes of death of WRA (10 to 49 years) were divided by chapters as per the International Statistical Classification of Diseases and Related Health Problems (ICD-10). Subsequently, a temporal trend analysis was performed using polynomial regression models for the main causes of death in WRA. In Brazil, the highest mortality rates by cause by 100,000 WRA occurred due to: neoplasms (25.34), diseases of the circulatory system (20.15), external causes (18.69), infectious and parasitic diseases (8.79) and respiratory system diseases (6.37). For the analyzed period, after standardization, the mortality rate due to diseases of the circulatory and respiratory systems, and infectious and parasitic conditions showed a decreasing trend, with a significant drop of 26.6% for diseases of the circulatory system; while external causes and neoplasms showed an increasing trend from 2006 to 2012 and decreasing from 2013 onwards. Identifying the main causes of death of WRA in each age group is required to guide the planning of actions to optimize resources and obtain better results in women’s health.

  18. Data_Sheet_1_Comparison of trend in chronic kidney disease burden between...

    • frontiersin.figshare.com
    • datasetcatalog.nlm.nih.gov
    docx
    Updated Jun 13, 2023
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    Haoyu Wen; Donghui Yang; Cong Xie; Fang Shi; Yan Liu; Jiaming Zhang; Chuanhua Yu (2023). Data_Sheet_1_Comparison of trend in chronic kidney disease burden between China, Japan, the United Kingdom, and the United States.docx [Dataset]. http://doi.org/10.3389/fpubh.2022.999848.s001
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    docxAvailable download formats
    Dataset updated
    Jun 13, 2023
    Dataset provided by
    Frontiers Mediahttp://www.frontiersin.org/
    Authors
    Haoyu Wen; Donghui Yang; Cong Xie; Fang Shi; Yan Liu; Jiaming Zhang; Chuanhua Yu
    License

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

    Area covered
    Japan, China, United Kingdom, United States
    Description

    Chronic kidney disease (CKD) caused heavy burden globally. This study aimed to investigate the patterns and temporal variations in the burden of CKD in China, Japan, the United Kingdom (U.K.), and the United States (U.S.) from 1990 to 2019, and decompose the difference in CKD disease burden between 1990 and 2019 into demographic factors. From 1990 to 2019, although the age-standardized rate (ASR) of incidence remained stable in the four countries, and the ASR of mortality and disability-adjusted life years (DALY) have declined in four countries (except for the increase in U.S.), the number of CKD incidence, death, and DALY increased significantly. The average disease burden per case in U.S. has increased between 1990 and 2019, with an increasing proportion of death-related disease burden. For the CKD due to diabetes and hypertension, whose incidences accounted for < 25% of the total CKD, while it accounts for more than 70% of the deaths (except in U.K. with 54.14% in women and 51.75% in men). CKD due to diabetes and hypertension should be the focus of CKD prevention and control. Considering the high treatment costs of CKD and ESRD, it is urgent and necessary to transform CKD treatment into primary and secondary prevention.

  19. Trends in COVID-19 Cases and Deaths in the United States, by County-level...

    • data.virginia.gov
    • healthdata.gov
    • +1more
    csv, json, rdf, xsl
    Updated Jan 13, 2025
    + more versions
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    Centers for Disease Control and Prevention (2025). Trends in COVID-19 Cases and Deaths in the United States, by County-level Population Factors - ARCHIVED [Dataset]. https://data.virginia.gov/dataset/trends-in-covid-19-cases-and-deaths-in-the-united-states-by-county-level-population-factors-arc
    Explore at:
    csv, json, xsl, rdfAvailable download formats
    Dataset updated
    Jan 13, 2025
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Area covered
    United States
    Description

    Reporting of Aggregate Case and Death Count data was discontinued on May 11, 2023, with the expiration of the COVID-19 public health emergency declaration. Although these data will continue to be publicly available, this dataset will no longer be updated.

    The surveillance case definition for COVID-19, a nationally notifiable disease, was first described in a position statement from the Council for State and Territorial Epidemiologists, which was later revised. However, there is some variation in how jurisdictions implemented these case definitions. More information on how CDC collects COVID-19 case surveillance data can be found at FAQ: COVID-19 Data and Surveillance.

    Aggregate Data Collection Process Since the beginning of the COVID-19 pandemic, data were reported from state and local health departments through a robust process with the following steps:

    • Aggregate county-level counts were obtained indirectly, via automated overnight web collection, or directly, via a data submission process.
    • If more than one official county data source existed, CDC used a comprehensive data selection process comparing each official county data source to retrieve the highest case and death counts, unless otherwise specified by the state.
    • A CDC data team reviewed counts for congruency prior to integration and set up alerts to monitor for discrepancies in the data.
    • CDC routinely compiled these data and post the finalized information on COVID Data Tracker.
    • County level data were aggregated to obtain state- and territory- specific totals.
    • Counting of cases and deaths is based on date of report and not on the date of symptom onset. CDC calculates rates in these data by using population estimates provided by the US Census Bureau Population Estimates Program (2019 Vintage).
    • COVID-19 aggregate case and death data are organized in a time series that includes cumulative number of cases and deaths as reported by a jurisdiction on a given date. New case and death counts are calculated as the week-to-week change in cumulative counts of cases and deaths reported (i.e., newly reported cases and deaths = cumulative number of cases/deaths reported this week minus the cumulative total reported the prior week.

    This process was collaborative, with CDC and jurisdictions working together to ensure the accuracy of COVID-19 case and death numbers. County counts provided the most up-to-date numbers on cases and deaths by report date. Throughout data collection, CDC retrospectively updated counts to correct known data quality issues.

    Description This archived public use dataset focuses on the cumulative and weekly case and death rates per 100,000 persons within various sociodemographic factors across all states and their counties. All resulting data are expressed as rates calculated as the number of cases or deaths per 100,000 persons in counties meeting various classification criteria using the US Census Bureau Population Estimates Program (2019 Vintage).

    Each county within jurisdictions is classified into multiple categories for each factor. All rates in this dataset are based on classification of counties by the characteristics of their population, not individual-level factors. This applies to each of the available factors observed in this dataset. Specific factors and their corresponding categories are detailed below.

    Population-level factors Each unique population factor is detailed below. Please note that the “Classification” column describes each of the 12 factors in the dataset, including a data dict

  20. Z

    Life table data for "Bounce backs amid continued losses: Life expectancy...

    • data.niaid.nih.gov
    • zenodo.org
    Updated Jul 20, 2022
    + more versions
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    Schöley, Jonas; Aburto, José Manuel; Kashnitsky, Ilya; Kniffka, Maxi S.; Zhang, Luyin; Jaadla, Hannaliis; Dowd, Jennifer B.; Kashyap, Ridhi (2022). Life table data for "Bounce backs amid continued losses: Life expectancy changes since COVID-19" [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_6241024
    Explore at:
    Dataset updated
    Jul 20, 2022
    Dataset provided by
    Max Planck Institute for Demographic Research, Rostock
    Interdisciplinary Centre on Population Dynamics, University of Southern Denmark
    Cambridge Group for the History of Population and Social Structure, Department of Geography, University of Cambridge
    Leverhulme Centre for Demographic Science and Department of Sociology, University of Oxford
    Authors
    Schöley, Jonas; Aburto, José Manuel; Kashnitsky, Ilya; Kniffka, Maxi S.; Zhang, Luyin; Jaadla, Hannaliis; Dowd, Jennifer B.; Kashyap, Ridhi
    License

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

    Description

    Life table data for "Bounce backs amid continued losses: Life expectancy changes since COVID-19"

    cc-by Jonas Schöley, José Manuel Aburto, Ilya Kashnitsky, Maxi S. Kniffka, Luyin Zhang, Hannaliis Jaadla, Jennifer B. Dowd, and Ridhi Kashyap. "Bounce backs amid continued losses: Life expectancy changes since COVID-19".

    These are CSV files of life tables over the years 2015 through 2021 across 29 countries analyzed in the paper "Bounce backs amid continued losses: Life expectancy changes since COVID-19".

    40-lifetables.csv

    Life table statistics 2015 through 2021 by sex, region and quarter with uncertainty quantiles based on Poisson replication of death counts. Actual life tables and expected life tables (under the assumption of pre-COVID mortality trend continuation) are provided.

    30-lt_input.csv

    Life table input data.

    id: unique row identifier

    region_iso: iso3166-2 region codes

    sex: Male, Female, Total

    year: iso year

    age_start: start of age group

    age_width: width of age group, Inf for age_start 100, otherwise 1

    nweeks_year: number of weeks in that year, 52 or 53

    death_total: number of deaths by any cause

    population_py: person-years of exposure (adjusted for leap-weeks and missing weeks in input data on all cause deaths)

    death_total_nweeksmiss: number of weeks in the raw input data with at least one missing death count for this region-sex-year stratum. missings are counted when the week is implicitly missing from the input data or if any NAs are encounted in this week or if age groups are implicitly missing for this week in the input data (e.g. 40-45, 50-55)

    death_total_minnageraw: the minimum number of age-groups in the raw input data within this region-sex-year stratum

    death_total_maxnageraw: the maximum number of age-groups in the raw input data within this region-sex-year stratum

    death_total_minopenageraw: the minimum age at the start of the open age group in the raw input data within this region-sex-year stratum

    death_total_maxopenageraw: the maximum age at the start of the open age group in the raw input data within this region-sex-year stratum

    death_total_source: source of the all-cause death data

    death_total_prop_q1: observed proportion of deaths in first quarter of year

    death_total_prop_q2: observed proportion of deaths in second quarter of year

    death_total_prop_q3: observed proportion of deaths in third quarter of year

    death_total_prop_q4: observed proportion of deaths in fourth quarter of year

    death_expected_prop_q1: expected proportion of deaths in first quarter of year

    death_expected_prop_q2: expected proportion of deaths in second quarter of year

    death_expected_prop_q3: expected proportion of deaths in third quarter of year

    death_expected_prop_q4: expected proportion of deaths in fourth quarter of year

    population_midyear: midyear population (July 1st)

    population_source: source of the population count/exposure data

    death_covid: number of deaths due to covid

    death_covid_date: number of deaths due to covid as of

    death_covid_nageraw: the number of age groups in the covid input data

    ex_wpp_estimate: life expectancy estimates from the World Population prospects for a five year period, merged at the midpoint year

    ex_hmd_estimate: life expectancy estimates from the Human Mortality Database

    nmx_hmd_estimate: death rate estimates from the Human Mortality Database

    nmx_cntfc: Lee-Carter death rate projections based on trend in the years 2015 through 2019

    Deaths

    source:

    STMF input data series (https://www.mortality.org/Public/STMF/Outputs/stmf.csv)

    ONS for GB-EAW pre 2020

    CDC for US pre 2020

    STMF:

    harmonized to single ages via pclm

    pclm iterates over country, sex, year, and within-year age grouping pattern and converts irregular age groupings, which may vary by country, year and week into a regular age grouping of 0:110

    smoothing parameters estimated via BIC grid search seperately for every pclm iteration

    last age group set to [110,111)

    ages 100:110+ are then summed into 100+ to be consistent with mid-year population information

    deaths in unknown weeks are considered; deaths in unknown ages are not considered

    ONS:

    data already in single ages

    ages 100:105+ are summed into 100+ to be consistent with mid-year population information

    PCLM smoothing applied to for consistency reasons

    CDC:

    The CDC data comes in single ages 0:100 for the US. For 2020 we only have the STMF data in a much coarser age grouping, i.e. (0, 1, 5, 15, 25, 35, 45, 55, 65, 75, 85+). In order to calculate life-tables in a manner consistent with 2020, we summarise the pre 2020 US death counts into the 2020 age grouping and then apply the pclm ungrouping into single year ages, mirroring the approach to the 2020 data

    Population

    source:

    for years 2000 to 2019: World Population Prospects 2019 single year-age population estimates 1950-2019

    for year 2020: World Population Prospects 2019 single year-age population projections 2020-2100

    mid-year population

    mid-year population translated into exposures:

    if a region reports annual deaths using the Gregorian calendar definition of a year (365 or 366 days long) set exposures equal to mid year population estimates

    if a region reports annual deaths using the iso-week-year definition of a year (364 or 371 days long), and if there is a leap-week in that year, set exposures equal to 371/364*mid_year_population to account for the longer reporting period. in years without leap-weeks set exposures equal to mid year population estimates. further multiply by fraction of observed weeks on all weeks in a year.

    COVID deaths

    source: COVerAGE-DB (https://osf.io/mpwjq/)

    the data base reports cumulative numbers of COVID deaths over days of a year, we extract the most up to date yearly total

    External life expectancy estimates

    source:

    World Population Prospects (https://population.un.org/wpp/Download/Files/1_Indicators%20(Standard)/CSV_FILES/WPP2019_Life_Table_Medium.csv), estimates for the five year period 2015-2019

    Human Mortality Database (https://mortality.org/), single year and age tables

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Kansas City, MO Health Department (2022). COVID-19 Case & Death Trends by Date [Dataset]. https://data.kcmo.org/Health/COVID-19-Case-Death-Trends-by-Date/nfta-sjx6

COVID-19 Case & Death Trends by Date

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xml, csv, xlsxAvailable download formats
Dataset updated
Dec 8, 2022
Dataset authored and provided by
Kansas City, MO Health Department
Description

This is an archived dataset & will no longer be updated. Case and Death data related to COVID-19.

As of April 1, 2022 MODHSS is no longer providing negative test data. As a result we will no longer publish total tests per day

Cases are based on the date an individual was tested for COVID-19. Using date tested means counts for most recent dates are likely to change as tests are reported to the the Health Department. Cases include those without an address assigned to KCMO by MODHSS to investigate. Antigen tests are not included at this time. Deaths are based on the date the death was reported to the Health Department.

Additional data available in the link below. Data definitions are also available in the link below.

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