29 datasets found
  1. d

    COVID-19 Cases and Deaths by Race/Ethnicity - ARCHIVE

    • catalog.data.gov
    • data.ct.gov
    • +2more
    Updated Aug 12, 2023
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    data.ct.gov (2023). COVID-19 Cases and Deaths by Race/Ethnicity - ARCHIVE [Dataset]. https://catalog.data.gov/dataset/covid-19-cases-and-deaths-by-race-ethnicity
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    Dataset updated
    Aug 12, 2023
    Dataset provided by
    data.ct.gov
    Description

    Note: DPH is updating and streamlining the COVID-19 cases, deaths, and testing data. As of 6/27/2022, the data will be published in four tables instead of twelve. The COVID-19 Cases, Deaths, and Tests by Day dataset contains cases and test data by date of sample submission. The death data are by date of death. This dataset is updated daily and contains information back to the beginning of the pandemic. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-Cases-Deaths-and-Tests-by-Day/g9vi-2ahj. The COVID-19 State Metrics dataset contains over 93 columns of data. This dataset is updated daily and currently contains information starting June 21, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-State-Level-Data/qmgw-5kp6 . The COVID-19 County Metrics dataset contains 25 columns of data. This dataset is updated daily and currently contains information starting June 16, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-County-Level-Data/ujiq-dy22 . The COVID-19 Town Metrics dataset contains 16 columns of data. This dataset is updated daily and currently contains information starting June 16, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-Town-Level-Data/icxw-cada . To protect confidentiality, if a town has fewer than 5 cases or positive NAAT tests over the past 7 days, those data will be suppressed. COVID-19 cases and associated deaths that have been reported among Connecticut residents, broken down by race and ethnicity. All data in this report are preliminary; data for previous dates will be updated as new reports are received and data errors are corrected. Deaths reported to the either the Office of the Chief Medical Examiner (OCME) or Department of Public Health (DPH) are included in the COVID-19 update. The following data show the number of COVID-19 cases and associated deaths per 100,000 population by race and ethnicity. Crude rates represent the total cases or deaths per 100,000 people. Age-adjusted rates consider the age of the person at diagnosis or death when estimating the rate and use a standardized population to provide a fair comparison between population groups with different age distributions. Age-adjustment is important in Connecticut as the median age of among the non-Hispanic white population is 47 years, whereas it is 34 years among non-Hispanic blacks, and 29 years among Hispanics. Because most non-Hispanic white residents who died were over 75 years of age, the age-adjusted rates are lower than the unadjusted rates. In contrast, Hispanic residents who died tend to be younger than 75 years of age which results in higher age-adjusted rates. The population data used to calculate rates is based on the CT DPH population statistics for 2019, which is available online here: https://portal.ct.gov/DPH/Health-Information-Systems--Reporting/Population/Population-Statistics. Prior to 5/10/2021, the population estimates from 2018 were used. Rates are standardized to the 2000 US Millions Standard population (data available here: https://seer.cancer.gov/stdpopulations/). Standardization was done using 19 age groups (0, 1-4, 5-9, 10-14, ..., 80-84, 85 years and older). More information about direct standardization for age adjustment is available here: https://www.cdc.gov/nchs/data/statnt/statnt06rv.pdf Categories are mutually exclusive. The category “multiracial” includes people who answered ‘yes’ to more than one race category. Counts may not add up to total case counts as data on race and ethnicity may be missing. Age adjusted rates calculated only for groups with more than 20 deaths. Abbreviation: NH=Non-Hispanic. Data on Connecticut deaths were obtained from the Connecticut Deaths Registry maintained by the DPH Office of Vital Records. Cause of death was determined by a death certifier (e.g., physician, APRN, medical

  2. d

    MD COVID-19 - Confirmed Deaths by Race and Ethnicity Distribution

    • catalog.data.gov
    • opendata.maryland.gov
    • +3more
    Updated Oct 18, 2025
    + more versions
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    opendata.maryland.gov (2025). MD COVID-19 - Confirmed Deaths by Race and Ethnicity Distribution [Dataset]. https://catalog.data.gov/dataset/md-covid-19-confirmed-deaths-by-race-and-ethnicity-distribution
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    Dataset updated
    Oct 18, 2025
    Dataset provided by
    opendata.maryland.gov
    Area covered
    Maryland
    Description

    Note: Note: Starting October 10th, 2025 this dataset is deprecated and is no longer being updated. As of April 27, 2023 updates changed from daily to weekly. Summary The cumulative number of confirmed COVID-19 deaths among Maryland residents by race and ethnicity: African American; White; Hispanic; Asian; Other; Unknown. Description The MD COVID-19 - Confirmed Deaths by Race and Ethnicity Distribution data layer is a collection of the statewide confirmed and probable COVID-19 related deaths that have been reported each day by the Vital Statistics Administration by categories of race and ethnicity. A death is classified as confirmed if the person had a laboratory-confirmed positive COVID-19 test result. Some data on deaths may be unavailable due to the time lag between the death, typically reported by a hospital or other facility, and the submission of the complete death certificate. Probable deaths are available from the MD COVID-19 - Probable Deaths by Race and Ethnicity Distribution data layer. Terms of Use The Spatial Data, and the information therein, (collectively the "Data") is provided "as is" without warranty of any kind, either expressed, implied, or statutory. The user assumes the entire risk as to quality and performance of the Data. No guarantee of accuracy is granted, nor is any responsibility for reliance thereon assumed. In no event shall the State of Maryland be liable for direct, indirect, incidental, consequential or special damages of any kind. The State of Maryland does not accept liability for any damages or misrepresentation caused by inaccuracies in the Data or as a result to changes to the Data, nor is there responsibility assumed to maintain the Data in any manner or form. The Data can be freely distributed as long as the metadata entry is not modified or deleted. Any data derived from the Data must acknowledge the State of Maryland in the metadata.

  3. COVID-19 Cases and Deaths by Race/Ethnicity

    • kaggle.com
    zip
    Updated Jul 10, 2020
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    Mukharbek Organokov (2020). COVID-19 Cases and Deaths by Race/Ethnicity [Dataset]. https://www.kaggle.com/muhakabartay/covid19-cases-and-deaths-by-raceethnicity
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    zip(54595 bytes)Available download formats
    Dataset updated
    Jul 10, 2020
    Authors
    Mukharbek Organokov
    License

    https://www.usa.gov/government-works/https://www.usa.gov/government-works/

    Description

    Context

    COVID-19 Cases and Deaths by Race/Ethnicity

    Content

    COVID-19 cases and associated deaths that have been reported among Connecticut residents, broken down by race and ethnicity. All data in this report are preliminary; data for previous dates will be updated as new reports are received and data errors are corrected. Deaths reported to either the Office of the Chief Medical Examiner (OCME) or Department of Public Health (DPH) are included in the COVID-19 update.

    The following data show the number of COVID-19 cases and associated deaths per 100,000 population by race and ethnicity. Crude rates represent the total cases or deaths per 100,000 people. Age-adjusted rates consider the age of the person at diagnosis or death when estimating the rate and use a standardized population to provide a fair comparison between population groups with different age distributions. Age-adjustment is important in Connecticut as the median age of among the non-Hispanic white population is 47 years, whereas it is 34 years among non-Hispanic blacks, and 29 years among Hispanics. Because most non-Hispanic white residents who died were over 75 years of age, the age-adjusted rates are lower than the unadjusted rates. In contrast, Hispanic residents who died tend to be younger than 75 years of age which results in higher age-adjusted rates.

    The age-adjusted rates are directly standardized using the 2018 ASRH Connecticut population estimate denominators (available here: https://portal.ct.gov/DPH/Health-Information-Systems--Reporting/Population/Annual-State--County-Population-with-Demographics).

    Rates are standardized to the 2000 US Millions Standard population (data available here: https://seer.cancer.gov/stdpopulations/). Standardization was done using 19 age groups (0, 1-4, 5-9, 10-14, ..., 80-84, 85 years and older). More information about direct standardization for age adjustment is available here: https://www.cdc.gov/nchs/data/statnt/statnt06rv.pdf Categories are mutually exclusive. The category “multiracial” includes people who answered ‘yes’ to more than one race category. Counts may not add up to total case counts as data on race and ethnicity may be missing. Age-adjusted rates calculated only for groups with more than 20 deaths. Abbreviation: NH=Non-Hispanic.

    This dataset will be updated on a daily basis. Data are subject to future revision as reporting changes.

    Starting in July 2020, this dataset will be updated every weekday.

    Additional notes: A delay in the data pull schedule occurred on 06/23/2020. Data from 06/22/2020 was processed on 06/23/2020 at 3:30 PM. The normal data cycle resumed with the data for 06/23/2020.

    A network outage on 05/19/2020 resulted in a change in the data pull schedule. Data from 5/19/2020 was processed on 05/20/2020 at 12:00 PM. Data from 5/20/2020 was processed on 5/20/2020 8:30 PM. The normal data cycle resumed on 05/20/2020 with the 8:30 PM data pull. As a result of the network outage, the timestamp on the datasets on the Open Data Portal differs from the timestamp in DPH's daily PDF reports.

    Acknowledgements

    Thanks to catalog.data.gov.

  4. South African COVID-19 Provincial Data

    • kaggle.com
    zip
    Updated Feb 1, 2023
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    The Devastator (2023). South African COVID-19 Provincial Data [Dataset]. https://www.kaggle.com/datasets/thedevastator/south-african-covid-19-provincial-data
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    zip(48839 bytes)Available download formats
    Dataset updated
    Feb 1, 2023
    Authors
    The Devastator
    License

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

    Area covered
    South Africa
    Description

    South African COVID-19 Provincial Data

    Timeline of Confirmed Cases, Deaths, Recoveries and Testing Rates

    By [source]

    About this dataset

    This dataset provides a detailed look into the ongoing COVID-19 pandemic in South Africa. It contains data on the number of confirmed cases, deaths, recoveries, and testing rates at both a provincial and national level. With this data set, users are able to gain insight into the current state and trends of the pandemic in South Africa. This provides essential information necessary to help fight the epidemic and make informed decisions surrounding its prevention. Using this set as a resource will allow users to monitor how this devastating virus has impacted communities, plans for containment and treatment strategies all while taking into account cultural, socioeconomic factors that can influence these metrics. This dataset is an invaluable tool for understanding not only South Africa’s specific current challenge with COVID-19 but is relevant on a global scale whenit comes to fighting back against this virus that continues to wreak havoc aroundthe worldl

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    How to use the dataset

    How to use This Dataset

    This Kaggle dataset provides an overview of the South African COVID-19 pandemic situation. It contains data regarding the number of confirmed cases, deaths, recoveries, and testing rates for each province at both the provincial and national level. In order to understand this dataset effectively, it is important to know what each column represents in this dataset. The following is a description of all column names that are included:

    Column Names

    • EC: Number of confirmed cases in Eastern Cape province
    • FS: Number of confirmed cases in Free State province
    • GP: Number of confirmed cases in Gauteng province
    • KZN: Number of confirmed cases in KwaZulu Natal province
    • LP: Number of confirmed cases in Limpopo province
    • MP: Number of confirmed cases in Mpumalanga Province
    • NC: Number total number orconfirmed casews in Northern Cape Province

      • NW :Number total numberurceof confirmes ed cacasesin North WestProvince

      • WC :Number totaconsfirme dcasescinWestern CapProvincee

      • UNKNOWN :Number totalnumberorconfirmesdacsesinsUnknown locations

      • Total :Totalnumberofconfrmecase sacrosseSouthAfrica

      • Source :Sourecodataset fedzile_Dbi ejweleputswaMangaungXharie thabo_MofutsanyanaRecoveriesDeathsYYMMDD

    Research Ideas

    • Creating an interactive map to show the spread of COVID-19 over time, with up date information about confirmed cases, deaths, recoveries and testing rates for each province or district.
    • Constructing a machine learning model to predict the likely number of future cases in each province based on previous data activities.
    • Comparing different districts and provinces within South Africa and drawing out trends among them with comparative graphical representations or independent analyses

    Acknowledgements

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

    License

    License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.

    Columns

    File: covid19za_provincial_cumulative_timeline_recoveries.csv | Column name | Description | |:--------------|:---------------------------------------------------------------| | date | Date of the data entry. (Date) | | YYYYMMDD | Date in YYYYMMDD format. (String) | | EC | Number of confirmed cases in Eastern Cape Province. (Integer) | | FS | Number of confirmed cases in Free State Province. (Integer) | | GP | Number of confirmed cases in Gauteng Province. (Integer) | | KZN | Number of confirmed cases in Kwazulu Natal Province. (Integer) | | LP | Number of confirmed cases in Limpopo Province. (Integer) | | MP | Number of confirmed cases in Mpumalanga Province. (Integer) | | NC | Number of confirmed cases in Northern Cape Province. (Integer) | | ...

  5. m

    MDCOVID19 ProbableDeathsByRaceAndEthnicityDistribution

    • data.imap.maryland.gov
    • dev-maryland.opendata.arcgis.com
    • +2more
    Updated May 22, 2020
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    ArcGIS Online for Maryland (2020). MDCOVID19 ProbableDeathsByRaceAndEthnicityDistribution [Dataset]. https://data.imap.maryland.gov/datasets/69f155c5f9774a2c9ea6e1fe56428991
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    Dataset updated
    May 22, 2020
    Dataset authored and provided by
    ArcGIS Online for Maryland
    Description

    Notice:Starting October 10th, 2025 this dataset is deprecated and is no longer being updated. Please refer to the Open Data resource at https://data.maryland.gov/Health-and-Human-Services/COVID-Master-Tracker/37gh-4yqf for continued weekly updates. SummaryThe cumulative number of probable COVID-19-related deaths among Maryland residents by race and ethnicity: African American; White; Hispanic; Asian; Other; Unknown.DescriptionThe MD COVID-19 - Probable Deaths by Race and Ethnicity Distribution data layer is a collection of the statewide confirmed and probable COVID-19 related deaths that have been reported each day by the Vital Statistics Administration by categories of race and ethnicity. A death is classified as probable if the person's death certificate notes COVID-19 to be a probable, suspect or presumed cause or condition. Probable deaths are not yet been confirmed by a laboratory test. Some data on deaths may be unavailable due to the time lag between the death, typically reported by a hospital or other facility, and the submission of the complete death certificate. Confirmed deaths are available from the MD COVID-19 - Confirmed Deaths by Race and Ethnicity Distribution data layer.COVID-19 is a disease caused by a respiratory virus first identified in Wuhan, Hubei Province, China in December 2019. COVID-19 is a new virus that hasn't caused illness in humans before. Worldwide, COVID-19 has resulted in thousands of infections, causing illness and in some cases death. Cases have spread to countries throughout the world, with more cases reported daily. The Maryland Department of Health reports daily on COVID-19 cases by county.

  6. l

    Cumulative COVID-19 Mortality

    • data.lacounty.gov
    • geohub.lacity.org
    • +1more
    Updated Dec 21, 2023
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    County of Los Angeles (2023). Cumulative COVID-19 Mortality [Dataset]. https://data.lacounty.gov/datasets/lacounty::cumulative-covid-19-mortality/about
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    Dataset updated
    Dec 21, 2023
    Dataset authored and provided by
    County of Los Angeles
    Area covered
    Description

    Deaths were determined to be COVID-associated if they met the Department of Public Health's surveillance definition at the time of death.The cumulative COVID-19 mortality rate can be used to measure the most severe impacts of COVID-19 in a community. There have been documented inequities in COVID-19 mortality rates by demographic and geographic factors. Black and Brown residents, seniors, and those living in areas with higher rates of poverty have all been disproportionally impacted.For more information about the Community Health Profiles Data Initiative, please see the initiative homepage.

  7. Data from: Lost on the frontline, and lost in the data: COVID-19 deaths...

    • figshare.com
    zip
    Updated Jul 22, 2022
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    Loraine Escobedo (2022). Lost on the frontline, and lost in the data: COVID-19 deaths among Filipinx healthcare workers in the United States [Dataset]. http://doi.org/10.6084/m9.figshare.20353368.v1
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jul 22, 2022
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    Loraine Escobedo
    License

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

    Area covered
    United States
    Description

    To estimate county of residence of Filipinx healthcare workers who died of COVID-19, we retrieved data from the Kanlungan website during the month of December 2020.22 In deciding who to include on the website, the AF3IRM team that established the Kanlungan website set two standards in data collection. First, the team found at least one source explicitly stating that the fallen healthcare worker was of Philippine ancestry; this was mostly media articles or obituaries sharing the life stories of the deceased. In a few cases, the confirmation came directly from the deceased healthcare worker's family member who submitted a tribute. Second, the team required a minimum of two sources to identify and announce fallen healthcare workers. We retrieved 86 US tributes from Kanlungan, but only 81 of them had information on county of residence. In total, 45 US counties with at least one reported tribute to a Filipinx healthcare worker who died of COVID-19 were identified for analysis and will hereafter be referred to as “Kanlungan counties.” Mortality data by county, race, and ethnicity came from the National Center for Health Statistics (NCHS).24 Updated weekly, this dataset is based on vital statistics data for use in conducting public health surveillance in near real time to provide provisional mortality estimates based on data received and processed by a specified cutoff date, before data are finalized and publicly released.25 We used the data released on December 30, 2020, which included provisional COVID-19 death counts from February 1, 2020 to December 26, 2020—during the height of the pandemic and prior to COVID-19 vaccines being available—for counties with at least 100 total COVID-19 deaths. During this time period, 501 counties (15.9% of the total 3,142 counties in all 50 states and Washington DC)26 met this criterion. Data on COVID-19 deaths were available for six major racial/ethnic groups: Non-Hispanic White, Non-Hispanic Black, Non-Hispanic Native Hawaiian or Other Pacific Islander, Non-Hispanic American Indian or Alaska Native, Non-Hispanic Asian (hereafter referred to as Asian American), and Hispanic. People with more than one race, and those with unknown race were included in the “Other” category. NCHS suppressed county-level data by race and ethnicity if death counts are less than 10. In total, 133 US counties reported COVID-19 mortality data for Asian Americans. These data were used to calculate the percentage of all COVID-19 decedents in the county who were Asian American. We used data from the 2018 American Community Survey (ACS) five-year estimates, downloaded from the Integrated Public Use Microdata Series (IPUMS) to create county-level population demographic variables.27 IPUMS is publicly available, and the database integrates samples using ACS data from 2000 to the present using a high degree of precision.27 We applied survey weights to calculate the following variables at the county-level: median age among Asian Americans, average income to poverty ratio among Asian Americans, the percentage of the county population that is Filipinx, and the percentage of healthcare workers in the county who are Filipinx. Healthcare workers encompassed all healthcare practitioners, technical occupations, and healthcare service occupations, including nurse practitioners, physicians, surgeons, dentists, physical therapists, home health aides, personal care aides, and other medical technicians and healthcare support workers. County-level data were available for 107 out of the 133 counties (80.5%) that had NCHS data on the distribution of COVID-19 deaths among Asian Americans, and 96 counties (72.2%) with Asian American healthcare workforce data. The ACS 2018 five-year estimates were also the source of county-level percentage of the Asian American population (alone or in combination) who are Filipinx.8 In addition, the ACS provided county-level population counts26 to calculate population density (people per 1,000 people per square mile), estimated by dividing the total population by the county area, then dividing by 1,000 people. The county area was calculated in ArcGIS 10.7.1 using the county boundary shapefile and projected to Albers equal area conic (for counties in the US contiguous states), Hawai’i Albers Equal Area Conic (for Hawai’i counties), and Alaska Albers Equal Area Conic (for Alaska counties).20

  8. T

    CORONAVIRUS DEATHS by Country in AFRICA

    • tradingeconomics.com
    csv, excel, json, xml
    Updated Apr 18, 2020
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    TRADING ECONOMICS (2020). CORONAVIRUS DEATHS by Country in AFRICA [Dataset]. https://tradingeconomics.com/country-list/coronavirus-deaths?continent=africa
    Explore at:
    csv, xml, json, excelAvailable download formats
    Dataset updated
    Apr 18, 2020
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    2025
    Area covered
    Africa
    Description

    This dataset provides values for CORONAVIRUS DEATHS reported in several countries. The data includes current values, previous releases, historical highs and record lows, release frequency, reported unit and currency.

  9. m

    MDCOVID19 ConfirmedDeathsByRaceAndEthnicityDistribution

    • data.imap.maryland.gov
    Updated May 22, 2020
    + more versions
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    ArcGIS Online for Maryland (2020). MDCOVID19 ConfirmedDeathsByRaceAndEthnicityDistribution [Dataset]. https://data.imap.maryland.gov/datasets/312715a843064ef18879eb726f64c63a
    Explore at:
    Dataset updated
    May 22, 2020
    Dataset authored and provided by
    ArcGIS Online for Maryland
    Description

    Notice:Starting October 10th, 2025 this dataset is deprecated and is no longer being updated. Please refer to the Open Data resource at https://opendata.maryland.gov/Health-and-Human-Services/MD-COVID-19-MASTER-Case-Tracker/mgd3-qk8t/ for continued weekly updates. SummaryThe cumulative number of confirmed COVID-19-related deaths among Maryland residents by race and ethnicity: African American; White; Hispanic; Asian; Other; Unknown.DescriptionThe MD COVID-19 - Confirmed Deaths by Race and Ethnicity Distribution data layer is a collection of the statewide confirmed and probable COVID-19 related deaths that have been reported each day by the Vital Statistics Administration by categories of race and ethnicity. A death is classified as confirmed if the person had a laboratory-confirmed positive COVID-19 test result. Some data on deaths may be unavailable due to the time lag between the death, typically reported by a hospital or other facility, and the submission of the complete death certificate. Probable deaths are available from the MD COVID-19 - Probable Deaths by Race and Ethnicity Distribution data layer.COVID-19 is a disease caused by a respiratory virus first identified in Wuhan, Hubei Province, China in December 2019. COVID-19 is a new virus that hasn't caused illness in humans before. Worldwide, COVID-19 has resulted in thousands of infections, causing illness and in some cases death. Cases have spread to countries throughout the world, with more cases reported daily. The Maryland Department of Health reports daily on COVID-19 cases by county.

  10. T

    South Africa Coronavirus COVID-19 Deaths

    • tradingeconomics.com
    csv, excel, json, xml
    Updated Mar 5, 2020
    + more versions
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    TRADING ECONOMICS (2020). South Africa Coronavirus COVID-19 Deaths [Dataset]. https://tradingeconomics.com/south-africa/coronavirus-deaths
    Explore at:
    xml, json, excel, csvAvailable download formats
    Dataset updated
    Mar 5, 2020
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    Jan 4, 2020 - May 17, 2023
    Area covered
    South Africa
    Description

    South Africa recorded 102595 Coronavirus Deaths since the epidemic began, according to the World Health Organization (WHO). In addition, South Africa reported 4072533 Coronavirus Cases. This dataset includes a chart with historical data for South Africa Coronavirus Deaths.

  11. f

    Characteristics associated with COVID-19 death rates among Florida county...

    • plos.figshare.com
    xls
    Updated Jun 6, 2023
    + more versions
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    Katherine Freeman; Judith P. Monestime (2023). Characteristics associated with COVID-19 death rates among Florida county populations (per 1000). [Dataset]. http://doi.org/10.1371/journal.pdig.0000047.t001
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Jun 6, 2023
    Dataset provided by
    PLOS Digital Health
    Authors
    Katherine Freeman; Judith P. Monestime
    License

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

    Area covered
    Florida
    Description

    Characteristics associated with COVID-19 death rates among Florida county populations (per 1000).

  12. H

    Replication Data for Harell and Lieberman How Information About Race-based...

    • datasetcatalog.nlm.nih.gov
    • dataverse.harvard.edu
    Updated Apr 3, 2021
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    Lieberman, Evan; Harell, Allison (2021). Replication Data for Harell and Lieberman How Information About Race-based Health Disparities Affects Policy Preferences: Evidence from a Survey Experiment About the COVID-19 Pandemic in the United States [Dataset]. http://doi.org/10.7910/DVN/GD9UCW
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    Dataset updated
    Apr 3, 2021
    Authors
    Lieberman, Evan; Harell, Allison
    Area covered
    United States
    Description

    Replication data for journal article appearing in Social Science & Medicine: In this article, we report on the results of an experimental study to estimate the effects of delivering information about racial disparities in COVID-19-related death rates. On the one hand, we find that such information led to increased perception of risk among those Black respondents who lacked prior knowledge; and to increased support for a more concerted public health response among those White respondents who expressed favorable views towards Blacks at baseline. On the other hand, for Whites with colder views towards Blacks, the informational treatment had the opposite effect: it led to decreased risk perception and to lower levels of support for an aggressive response. Our findings highlight that well-intentioned public health campaigns spotlighting disparities might have adverse side effects and those ought to be considered as part of a broader strategy. The study contributes to a larger scholarly literature on the challenges of making and implementing social policy in racially-divided societies.

  13. Outcomes of male vs female adults with COVID-19.

    • figshare.com
    • plos.figshare.com
    xls
    Updated Jun 9, 2023
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    Ninh T. Nguyen; Justine Chinn; Morgan De Ferrante; Katharine A. Kirby; Samuel F. Hohmann; Alpesh Amin (2023). Outcomes of male vs female adults with COVID-19. [Dataset]. http://doi.org/10.1371/journal.pone.0254066.t002
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Jun 9, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Ninh T. Nguyen; Justine Chinn; Morgan De Ferrante; Katharine A. Kirby; Samuel F. Hohmann; Alpesh Amin
    License

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

    Description

    Outcomes of male vs female adults with COVID-19.

  14. a

    MD COVID19 TotalVaccinationsRace DataMart

    • data-maryland.opendata.arcgis.com
    • dev-maryland.opendata.arcgis.com
    • +1more
    Updated Mar 30, 2022
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    ArcGIS Online for Maryland (2022). MD COVID19 TotalVaccinationsRace DataMart [Dataset]. https://data-maryland.opendata.arcgis.com/maps/md-covid19-totalvaccinationsrace-datamart
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    Dataset updated
    Mar 30, 2022
    Dataset authored and provided by
    ArcGIS Online for Maryland
    Description

    Deprecated as of 4/21/2023On 4/27/2023 several COVID-19 datasets were retired and no longer included in public COVID-19 data dissemination. For more information, visit https://imap.maryland.gov/pages/covid-dataSummaryThe cumulative number of COVID-19 vaccinations by race: American Indian or Alaska Native; Asian; Black or African American; White; Native Hawaiian or Other Pacific Islander; Other; Unknown.DescriptionMD COVID-19 - Vaccinations by Race Distribution data layer is a collection of COVID-19 vaccinations that have been reported each day into ImmuNet.COVID-19 is a disease caused by a respiratory virus first identified in Wuhan, Hubei Province, China in December 2019. COVID-19 is a new virus that hasn't caused illness in humans before. Worldwide, COVID-19 has resulted in thousands of infections, causing illness and in some cases death. Cases have spread to countries throughout the world, with more cases reported daily. The Maryland Department of Health reports daily on COVID-19 cases by county.

  15. COVID-19 data for the second wave

    • figshare.com
    txt
    Updated Nov 24, 2020
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    Nasim Vahabi (2020). COVID-19 data for the second wave [Dataset]. http://doi.org/10.6084/m9.figshare.13283801.v1
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    txtAvailable download formats
    Dataset updated
    Nov 24, 2020
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    Nasim Vahabi
    License

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

    Description

    We collected county-level cumulative COVID-19 confirmed cases and death from Mar 25 to Nov 12, 2020, across the contiguous United States from USAFacts (usafacts.org). We considered Mar 25 to Jun 3 as the “1st wave”, Jun 4 to Sep 2 as the “2nd wave”, and Sep 3 to Nov 12 as the “3rd wave” of COVID-19. For the 2nd and 3rd waves, we analyzed the targeted counties in the sunbelt region (including AL, AZ, AR, CA, FL, GA, KS, LA, MS, NV, NM, NC, OK, SC, TX, TN, and UT states) and great plains region (including IA, IL, IN, KS, MI, MO, MN, ND, NE, OH, SD, and WI states), respectively. MIR, as a proxy for survival rate, is calculated by dividing the number of confirmed deaths in each county by the confirmed cases in the same county at the same time-period multiplied by 100. MIR ranges from 0%-100%, 100% indicating the worst situation where all confirmed cases have died.

    Thirty-eight potential risk factors (covariates), including county-level MR of comorbidities & disorders, demographics & social factors, and environmental factors, were retrieved from the University of Washington Global Health Data Exchange (http://ghdx.healthdata.org/us-data). Comorbidities and disorders include CVD, cardiomyopathy and myocarditis and myocarditis, hypertensive heart disease, peripheral vascular disease, atrial fibrillation, cerebrovascular disease, diabetes, hepatitis, HIV/AIDS, tuberculosis (TB), lower respiratory infection, interstitial lung disease and pulmonary sarcoidosis, asthma, COPD, ischemia, mesothelioma, tracheal cancer, leukemia, pancreatic cancer, rheumatic disease, drug use disorder, and alcohol use disorder. Demographics & social factors include age, female African American%, female white American%, male African American%, male white American%, Asian%, smokers%, unemployed%, income rate, food insecurity, fair/poor health, and uninsured%. Environmental factors include county population density, air quality index (AQI), temperature, and PM. A descriptive table, including all potential risk factors, is provided in Table S1).

  16. Crude, age-specific, and age-standardized COVID-19 mortality rates per...

    • plos.figshare.com
    xls
    Updated Jun 4, 2023
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    Mary T. Bassett; Jarvis T. Chen; Nancy Krieger (2023). Crude, age-specific, and age-standardized COVID-19 mortality rates per 100,000 person-years for non-Hispanic White, non-Hispanic Black, Hispanic, non-Hispanic American Indian or Alaska Native, and non-Hispanic Asian or Pacific Islander populations, and age-specific mortality rate ratios and rate differences per 100,000 person-years. [Dataset]. http://doi.org/10.1371/journal.pmed.1003402.t001
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    xlsAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Mary T. Bassett; Jarvis T. Chen; Nancy Krieger
    License

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

    Description

    Crude, age-specific, and age-standardized COVID-19 mortality rates per 100,000 person-years for non-Hispanic White, non-Hispanic Black, Hispanic, non-Hispanic American Indian or Alaska Native, and non-Hispanic Asian or Pacific Islander populations, and age-specific mortality rate ratios and rate differences per 100,000 person-years.

  17. f

    Predictors of all-cause mortality.

    • datasetcatalog.nlm.nih.gov
    • figshare.com
    Updated Mar 27, 2023
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    Narula, Nupoor; Safford, Monika M.; RoyChoudhury, Arindam; Ndhlovu, Lishomwa; Tak, Katherine A.; Ramasubbu, Kumudha; Agoglia, Hannah K.; Kushman, Arielle; Horn, Evelyn; Shaw, Leslee; Devereux, Richard B.; Weinsaft, Jonathan W.; Pollie, Meridith P.; Homan, Edwin A.; Mitlak, Hannah W.; Goyal, Parag; Kim, Jiwon; Volodarskiy, Alexander; Zhang, David T.; Tafreshi, Romina (2023). Predictors of all-cause mortality. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0000956404
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    Dataset updated
    Mar 27, 2023
    Authors
    Narula, Nupoor; Safford, Monika M.; RoyChoudhury, Arindam; Ndhlovu, Lishomwa; Tak, Katherine A.; Ramasubbu, Kumudha; Agoglia, Hannah K.; Kushman, Arielle; Horn, Evelyn; Shaw, Leslee; Devereux, Richard B.; Weinsaft, Jonathan W.; Pollie, Meridith P.; Homan, Edwin A.; Mitlak, Hannah W.; Goyal, Parag; Kim, Jiwon; Volodarskiy, Alexander; Zhang, David T.; Tafreshi, Romina
    Description

    BackgroundCOVID-19 is associated with cardiac dysfunction. This study tested the relative prognostic role of left (LV), right and bi- (BiV) ventricular dysfunction on mortality in a large multicenter cohort of patients during and after acute COVID-19 hospitalization.Methods/ResultsAll hospitalized COVID-19 patients who underwent clinically indicated transthoracic echocardiography within 30 days of admission at four NYC hospitals between March 2020 and January 2021 were studied. Images were re-analyzed by a central core lab blinded to clinical data. Nine hundred patients were studied (28% Hispanic, 16% African-American), and LV, RV and BiV dysfunction were observed in 50%, 38% and 17%, respectively. Within the overall cohort, 194 patients had TTEs prior to COVID-19 diagnosis, among whom LV, RV, BiV dysfunction prevalence increased following acute infection (p<0.001). Cardiac dysfunction was linked to biomarker-evidenced myocardial injury, with higher prevalence of troponin elevation in patients with LV (14%), RV (16%) and BiV (21%) dysfunction compared to those with normal BiV function (8%, all p<0.05). During in- and out-patient follow-up, 290 patients died (32%), among whom 230 died in the hospital and 60 post-discharge. Unadjusted mortality risk was greatest among patients with BiV (41%), followed by RV (39%) and LV dysfunction (37%), compared to patients without dysfunction (27%, all p<0.01). In multivariable analysis, any RV dysfunction, but not LV dysfunction, was independently associated with increased mortality risk (p<0.01).ConclusionsLV, RV and BiV function declines during acute COVID-19 infection with each contributing to increased in- and out-patient mortality risk. RV dysfunction independently increases mortality risk.

  18. f

    Table_1_Racial and ethnic disparities in COVID-19 booster vaccination among...

    • datasetcatalog.nlm.nih.gov
    • frontiersin.figshare.com
    Updated Aug 10, 2023
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    McMahill-Walraven, Cheryl; Taitel, Michael S.; Wen, Katherine J.; Zullo, Andrew R.; Pralea, Alexander; Mor, Vincent; Djibo, Djeneba Audrey; Deng, Yalin; Harris, Daniel A.; McCarthy, Ellen P.; Chachlani, Preeti; Hayes, Kaleen N.; Gravenstein, Stefan; Singh, Tanya G.; Smith-Ray, Renae L. (2023). Table_1_Racial and ethnic disparities in COVID-19 booster vaccination among U.S. older adults differ by geographic region and Medicare enrollment.docx [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0000973342
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    Dataset updated
    Aug 10, 2023
    Authors
    McMahill-Walraven, Cheryl; Taitel, Michael S.; Wen, Katherine J.; Zullo, Andrew R.; Pralea, Alexander; Mor, Vincent; Djibo, Djeneba Audrey; Deng, Yalin; Harris, Daniel A.; McCarthy, Ellen P.; Chachlani, Preeti; Hayes, Kaleen N.; Gravenstein, Stefan; Singh, Tanya G.; Smith-Ray, Renae L.
    Description

    IntroductionCOVID-19 booster vaccines are highly effective at reducing severe illness and death from COVID-19. Research is needed to identify whether racial and ethnic disparities observed for the primary series of the COVID-19 vaccines persist for booster vaccinations and how those disparities may vary by other characteristics. We aimed to measure racial and ethnic differences in booster vaccine receipt among U.S. Medicare beneficiaries and characterize potential variation by demographic characteristics.MethodsWe conducted a cohort study using CVS Health and Walgreens pharmacy data linked to Medicare claims. We included community-dwelling Medicare beneficiaries aged ≥66 years who received two mRNA vaccine doses (BNT162b2 and mRNA-1273) as of 8/1/2021. We followed beneficiaries from 8/1/2021 until booster vaccine receipt, death, Medicare disenrollment, or end of follow-up (12/31/2021). Adjusted Poisson regression was used to estimate rate ratios (RRs) and 95% confidence intervals (CIs) comparing vaccine uptake between groups.ResultsWe identified 11,339,103 eligible beneficiaries (mean age 76 years, 60% female, 78% White). Overall, 67% received a booster vaccine (White = 68.5%; Asian = 67.0%; Black = 57.0%; Hispanic = 53.3%). Compared to White individuals, Black (RR = 0.78 [95%CI = 0.78–0.78]) and Hispanic individuals (RR = 0.72 [95% = CI 0.72–0.72]) had lower rates of booster vaccination. Disparities varied by geographic region, urbanicity, and Medicare plan/Medicaid eligibility. The relative magnitude of disparities was lesser in areas where vaccine uptake was lower in White individuals.DiscussionRacial and ethnic disparities in COVID-19 vaccination have persisted for booster vaccines. These findings highlight that interventions to improve vaccine uptake should be designed at the intersection of race and ethnicity and geographic location.

  19. f

    Table1_Genetic Loci Associated With COVID-19 Positivity and Hospitalization...

    • figshare.com
    • frontiersin.figshare.com
    xlsx
    Updated May 30, 2023
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    Gina M. Peloso; Catherine Tcheandjieu; John E. McGeary; Daniel C. Posner; Yuk-Lam Ho; Jin J. Zhou; Austin T. Hilliard; Jacob Joseph; Christopher J. O’Donnell; Jimmy T. Efird; Dana C. Crawford; Wen-Chih Wu; Mehrdad Arjomandi; VA Million Veteran Program COVID-19 Science Initiative; Yan V. Sun; Themistocles L Assimes; Jennifer E. Huffman (2023). Table1_Genetic Loci Associated With COVID-19 Positivity and Hospitalization in White, Black, and Hispanic Veterans of the VA Million Veteran Program.XLSX [Dataset]. http://doi.org/10.3389/fgene.2021.777076.s002
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    xlsxAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    Frontiers
    Authors
    Gina M. Peloso; Catherine Tcheandjieu; John E. McGeary; Daniel C. Posner; Yuk-Lam Ho; Jin J. Zhou; Austin T. Hilliard; Jacob Joseph; Christopher J. O’Donnell; Jimmy T. Efird; Dana C. Crawford; Wen-Chih Wu; Mehrdad Arjomandi; VA Million Veteran Program COVID-19 Science Initiative; Yan V. Sun; Themistocles L Assimes; Jennifer E. Huffman
    License

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

    Description

    SARS-CoV-2 has caused symptomatic COVID-19 and widespread death across the globe. We sought to determine genetic variants contributing to COVID-19 susceptibility and hospitalization in a large biobank linked to a national United States health system. We identified 19,168 (3.7%) lab-confirmed COVID-19 cases among Million Veteran Program participants between March 1, 2020, and February 2, 2021, including 11,778 Whites, 4,893 Blacks, and 2,497 Hispanics. A multi-population genome-wide association study (GWAS) for COVID-19 outcomes identified four independent genetic variants (rs8176719, rs73062389, rs60870724, and rs73910904) contributing to COVID-19 positivity, including one novel locus found exclusively among Hispanics. We replicated eight of nine previously reported genetic associations at an alpha of 0.05 in at least one population-specific or the multi-population meta-analysis for one of the four MVP COVID-19 outcomes. We used rs8176719 and three additional variants to accurately infer ABO blood types. We found that A, AB, and B blood types were associated with testing positive for COVID-19 compared with O blood type with the highest risk for the A blood group. We did not observe any genome-wide significant associations for COVID-19 severity outcomes among those testing positive. Our study replicates prior GWAS findings associated with testing positive for COVID-19 among mostly White samples and extends findings at three loci to Black and Hispanic individuals. We also report a new locus among Hispanics requiring further investigation. These findings may aid in the identification of novel therapeutic agents to decrease the morbidity and mortality of COVID-19 across all major ancestral populations.

  20. Data from: Racial inequalities and death on the horizon: COVID-19 and...

    • scielo.figshare.com
    jpeg
    Updated May 30, 2023
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    Roberta Gondim de Oliveira; Ana Paula da Cunha; Ana Giselle dos Santos Gadelha; Christiane Goulart Carpio; Rachel Barros de Oliveira; Roseane Maria Corrêa (2023). Racial inequalities and death on the horizon: COVID-19 and structural racism [Dataset]. http://doi.org/10.6084/m9.figshare.14280810.v1
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    jpegAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    SciELOhttp://www.scielo.org/
    Authors
    Roberta Gondim de Oliveira; Ana Paula da Cunha; Ana Giselle dos Santos Gadelha; Christiane Goulart Carpio; Rachel Barros de Oliveira; Roseane Maria Corrêa
    License

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

    Description

    COVID-19 incidence and mortality in countries with heavy social inequalities differ in population terms. In countries like Brazil with colonial histories and traditions, the social markers of differences are heavily anchored in social and racial demarcation, and the political and social dynamics and processes based on structural racism act on this demarcation. The pandemic’s actual profile in Brazil clashes with narratives according to which COVID-19 is a democratic pandemic, an argument aligned with the rhetoric of racial democracy that represents a powerful strategy aimed at maintaining the subaltern place of racialized populations such as indigenous peoples and blacks, as a product of modern coloniality. This essay focuses on the pandemic’s profile in the Brazilian black population, in dialogue with decolonial contributions and critical readings of racism. The authors discuss government responses and COVID-19 indicators according to race/color, demonstrating the maintenance of historical storylines that continue to threaten black lives. The article also discusses the importance of local resistance movements, organized in the favelas, precarious urban spaces underserved by the State and occupied by black Brazilians.

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data.ct.gov (2023). COVID-19 Cases and Deaths by Race/Ethnicity - ARCHIVE [Dataset]. https://catalog.data.gov/dataset/covid-19-cases-and-deaths-by-race-ethnicity

COVID-19 Cases and Deaths by Race/Ethnicity - ARCHIVE

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Dataset updated
Aug 12, 2023
Dataset provided by
data.ct.gov
Description

Note: DPH is updating and streamlining the COVID-19 cases, deaths, and testing data. As of 6/27/2022, the data will be published in four tables instead of twelve. The COVID-19 Cases, Deaths, and Tests by Day dataset contains cases and test data by date of sample submission. The death data are by date of death. This dataset is updated daily and contains information back to the beginning of the pandemic. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-Cases-Deaths-and-Tests-by-Day/g9vi-2ahj. The COVID-19 State Metrics dataset contains over 93 columns of data. This dataset is updated daily and currently contains information starting June 21, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-State-Level-Data/qmgw-5kp6 . The COVID-19 County Metrics dataset contains 25 columns of data. This dataset is updated daily and currently contains information starting June 16, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-County-Level-Data/ujiq-dy22 . The COVID-19 Town Metrics dataset contains 16 columns of data. This dataset is updated daily and currently contains information starting June 16, 2022 to the present. The data can be found at https://data.ct.gov/Health-and-Human-Services/COVID-19-Town-Level-Data/icxw-cada . To protect confidentiality, if a town has fewer than 5 cases or positive NAAT tests over the past 7 days, those data will be suppressed. COVID-19 cases and associated deaths that have been reported among Connecticut residents, broken down by race and ethnicity. All data in this report are preliminary; data for previous dates will be updated as new reports are received and data errors are corrected. Deaths reported to the either the Office of the Chief Medical Examiner (OCME) or Department of Public Health (DPH) are included in the COVID-19 update. The following data show the number of COVID-19 cases and associated deaths per 100,000 population by race and ethnicity. Crude rates represent the total cases or deaths per 100,000 people. Age-adjusted rates consider the age of the person at diagnosis or death when estimating the rate and use a standardized population to provide a fair comparison between population groups with different age distributions. Age-adjustment is important in Connecticut as the median age of among the non-Hispanic white population is 47 years, whereas it is 34 years among non-Hispanic blacks, and 29 years among Hispanics. Because most non-Hispanic white residents who died were over 75 years of age, the age-adjusted rates are lower than the unadjusted rates. In contrast, Hispanic residents who died tend to be younger than 75 years of age which results in higher age-adjusted rates. The population data used to calculate rates is based on the CT DPH population statistics for 2019, which is available online here: https://portal.ct.gov/DPH/Health-Information-Systems--Reporting/Population/Population-Statistics. Prior to 5/10/2021, the population estimates from 2018 were used. Rates are standardized to the 2000 US Millions Standard population (data available here: https://seer.cancer.gov/stdpopulations/). Standardization was done using 19 age groups (0, 1-4, 5-9, 10-14, ..., 80-84, 85 years and older). More information about direct standardization for age adjustment is available here: https://www.cdc.gov/nchs/data/statnt/statnt06rv.pdf Categories are mutually exclusive. The category “multiracial” includes people who answered ‘yes’ to more than one race category. Counts may not add up to total case counts as data on race and ethnicity may be missing. Age adjusted rates calculated only for groups with more than 20 deaths. Abbreviation: NH=Non-Hispanic. Data on Connecticut deaths were obtained from the Connecticut Deaths Registry maintained by the DPH Office of Vital Records. Cause of death was determined by a death certifier (e.g., physician, APRN, medical

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