100+ datasets found
  1. Beta, t and p values for predictors for regression analysis 1.

    • plos.figshare.com
    xls
    Updated Jun 4, 2023
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    Daniel B. Cohen; Morgan Luck; Atousa Hormozaki; Lauren L. Saling (2023). Beta, t and p values for predictors for regression analysis 1. [Dataset]. http://doi.org/10.1371/journal.pone.0244631.t002
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    xlsAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Daniel B. Cohen; Morgan Luck; Atousa Hormozaki; Lauren L. Saling
    License

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

    Description

    Beta, t and p values for predictors for regression analysis 1.

  2. COVID-19 the 'R' value in Poland 2020, by voivodships

    • statista.com
    Updated Apr 10, 2024
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    Statista (2024). COVID-19 the 'R' value in Poland 2020, by voivodships [Dataset]. https://www.statista.com/statistics/1127849/poland-covid-19-r-value-by-region/
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    Dataset updated
    Apr 10, 2024
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Nov 3, 2020
    Area covered
    Poland
    Description

    The highest R-value is recorded in the following voivodships: Dolnoslaskie - 1.43 and Warminsko-Mazurskie - 1.33. Such R-values indicate a continuous development of the COVID-19 epidemic in these regions. The high R-factor is confirmed by data on the incidence of the disease in these voivodeships.

    For further information about the coronavirus (COVID-19) pandemic, please visit our dedicated Facts and Figures page.

  3. f

    Chi-squared p-values under base 4 case numbers.

    • plos.figshare.com
    xls
    Updated Jun 6, 2023
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    Adrian Patrick Kennedy; Sheung Chi Phillip Yam (2023). Chi-squared p-values under base 4 case numbers. [Dataset]. http://doi.org/10.1371/journal.pone.0243123.t003
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    xlsAvailable download formats
    Dataset updated
    Jun 6, 2023
    Dataset provided by
    PLOS ONE
    Authors
    Adrian Patrick Kennedy; Sheung Chi Phillip Yam
    License

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

    Description

    Chi-squared p-values under base 4 case numbers.

  4. Change in sales value of companies due to COVID-19 epidemic in Poland 2020

    • statista.com
    Updated May 20, 2025
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    Statista (2025). Change in sales value of companies due to COVID-19 epidemic in Poland 2020 [Dataset]. https://www.statista.com/statistics/1122429/poland-change-in-sales-value-of-companies-due-to-covid-19/
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    Dataset updated
    May 20, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Apr 2020 - May 2020
    Area covered
    Poland
    Description

    The outbreak of coronavirus (COVID-19) in Poland in 2020 had a significant impact on the sales value among micro and small companies. Nevertheless, in mid-May, the situation of micro and small companies improved compared to the beginning of April. The most significant drop in the value of sales among medium and large companies was recorded in the middle, and at the end of April, it concerned 65 percent of medium and 58 percent of large companies.

    For further information about the coronavirus (COVID-19) pandemic, please visit our dedicated Facts and Figures page.

  5. COVID-19 Case Surveillance Public Use Data

    • data.cdc.gov
    • opendatalab.com
    • +5more
    application/rdfxml +5
    Updated Jul 9, 2024
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    CDC Data, Analytics and Visualization Task Force (2024). COVID-19 Case Surveillance Public Use Data [Dataset]. https://data.cdc.gov/Case-Surveillance/COVID-19-Case-Surveillance-Public-Use-Data/vbim-akqf
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    application/rdfxml, tsv, csv, json, xml, application/rssxmlAvailable download formats
    Dataset updated
    Jul 9, 2024
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Authors
    CDC Data, Analytics and Visualization Task Force
    License

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

    Description

    Note: Reporting of new COVID-19 Case Surveillance data will be discontinued July 1, 2024, to align with the process of removing SARS-CoV-2 infections (COVID-19 cases) from the list of nationally notifiable diseases. Although these data will continue to be publicly available, the dataset will no longer be updated.

    Authorizations to collect certain public health data expired at the end of the U.S. public health emergency declaration on May 11, 2023. The following jurisdictions discontinued COVID-19 case notifications to CDC: Iowa (11/8/21), Kansas (5/12/23), Kentucky (1/1/24), Louisiana (10/31/23), New Hampshire (5/23/23), and Oklahoma (5/2/23). Please note that these jurisdictions will not routinely send new case data after the dates indicated. As of 7/13/23, case notifications from Oregon will only include pediatric cases resulting in death.

    This case surveillance public use dataset has 12 elements for all COVID-19 cases shared with CDC and includes demographics, any exposure history, disease severity indicators and outcomes, presence of any underlying medical conditions and risk behaviors, and no geographic data.

    CDC has three COVID-19 case surveillance datasets:

    The following apply to all three datasets:

    Overview

    The COVID-19 case surveillance database includes individual-level data reported to U.S. states and autonomous reporting entities, including New York City and the District of Columbia (D.C.), as well as U.S. territories and affiliates. On April 5, 2020, COVID-19 was added to the Nationally Notifiable Condition List and classified as “immediately notifiable, urgent (within 24 hours)” by a Council of State and Territorial Epidemiologists (CSTE) Interim Position Statement (Interim-20-ID-01). CSTE updated the position statement on August 5, 2020, to clarify the interpretation of antigen detection tests and serologic test results within the case classification (Interim-20-ID-02). The statement also recommended that all states and territories enact laws to make COVID-19 reportable in their jurisdiction, and that jurisdictions conducting surveillance should submit case notifications to CDC. COVID-19 case surveillance data are collected by jurisdictions and reported voluntarily to CDC.

    For more information: NNDSS Supports the COVID-19 Response | CDC.

    The deidentified data in the “COVID-19 Case Surveillance Public Use Data” include demographic characteristics, any exposure history, disease severity indicators and outcomes, clinical data, laboratory diagnostic test results, and presence of any underlying medical conditions and risk behaviors. All data elements can be found on the COVID-19 case report form located at www.cdc.gov/coronavirus/2019-ncov/downloads/pui-form.pdf.

    COVID-19 Case Reports

    COVID-19 case reports have been routinely submitted using nationally standardized case reporting forms. On April 5, 2020, CSTE released an Interim Position Statement with national surveillance case definitions for COVID-19 included. Current versions of these case definitions are available here: https://ndc.services.cdc.gov/case-definitions/coronavirus-disease-2019-2021/.

    All cases reported on or after were requested to be shared by public health departments to CDC using the standardized case definitions for laboratory-confirmed or probable cases. On May 5, 2020, the standardized case reporting form was revised. Case reporting using this new form is ongoing among U.S. states and territories.

    Data are Considered Provisional

    • The COVID-19 case surveillance data are dynamic; case reports can be modified at any time by the jurisdictions sharing COVID-19 data with CDC. CDC may update prior cases shared with CDC based on any updated information from jurisdictions. For instance, as new information is gathered about previously reported cases, health departments provide updated data to CDC. As more information and data become available, analyses might find changes in surveillance data and trends during a previously reported time window. Data may also be shared late with CDC due to the volume of COVID-19 cases.
    • Annual finalized data: To create the final NNDSS data used in the annual tables, CDC works carefully with the reporting jurisdictions to reconcile the data received during the year until each state or territorial epidemiologist confirms that the data from their area are correct.
    • Access Addressing Gaps in Public Health Reporting of Race and Ethnicity for COVID-19, a report from the Council of State and Territorial Epidemiologists, to better understand the challenges in completing race and ethnicity data for COVID-19 and recommendations for improvement.

    Data Limitations

    To learn more about the limitations in using case surveillance data, visit FAQ: COVID-19 Data and Surveillance.

    Data Quality Assurance Procedures

    CDC’s Case Surveillance Section routinely performs data quality assurance procedures (i.e., ongoing corrections and logic checks to address data errors). To date, the following data cleaning steps have been implemented:

    • Questions that have been left unanswered (blank) on the case report form are reclassified to a Missing value, if applicable to the question. For example, in the question “Was the individual hospitalized?” where the possible answer choices include “Yes,” “No,” or “Unknown,” the blank value is recoded to Missing because the case report form did not include a response to the question.
    • Logic checks are performed for date data. If an illogical date has been provided, CDC reviews the data with the reporting jurisdiction. For example, if a symptom onset date in the future is reported to CDC, this value is set to null until the reporting jurisdiction updates the date appropriately.
    • Additional data quality processing to recode free text data is ongoing. Data on symptoms, race and ethnicity, and healthcare worker status have been prioritized.

    Data Suppression

    To prevent release of data that could be used to identify people, data cells are suppressed for low frequency (<5) records and indirect identifiers (e.g., date of first positive specimen). Suppression includes rare combinations of demographic characteristics (sex, age group, race/ethnicity). Suppressed values are re-coded to the NA answer option; records with data suppression are never removed.

    For questions, please contact Ask SRRG (eocevent394@cdc.gov).

    Additional COVID-19 Data

    COVID-19 data are available to the public as summary or aggregate count files, including total counts of cases and deaths by state and by county. These

  6. ARCHIVED: COVID-19 Testing by Race/Ethnicity Over Time

    • healthdata.gov
    • data.sfgov.org
    • +1more
    application/rdfxml +5
    Updated Apr 8, 2025
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    data.sfgov.org (2025). ARCHIVED: COVID-19 Testing by Race/Ethnicity Over Time [Dataset]. https://healthdata.gov/dataset/ARCHIVED-COVID-19-Testing-by-Race-Ethnicity-Over-T/ntmc-mxb8
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    tsv, csv, json, application/rssxml, application/rdfxml, xmlAvailable download formats
    Dataset updated
    Apr 8, 2025
    Dataset provided by
    data.sfgov.org
    Description

    A. SUMMARY This dataset includes San Francisco COVID-19 tests by race/ethnicity and by date. This dataset represents the daily count of tests collected, and the breakdown of test results (positive, negative, or indeterminate). Tests in this dataset include all those collected from persons who listed San Francisco as their home address at the time of testing. It also includes tests that were collected by San Francisco providers for persons who were missing a locating address. This dataset does not include tests for residents listing a locating address outside of San Francisco, even if they were tested in San Francisco.

    The data were de-duplicated by individual and date, so if a person gets tested multiple times on different dates, all tests will be included in this dataset (on the day each test was collected). If a person tested multiple times on the same date, only one test is included from that date. When there are multiple tests on the same date, a positive result, if one exists, will always be selected as the record for the person. If a PCR and antigen test are taken on the same day, the PCR test will supersede. If a person tests multiple times on the same day and the results are all the same (e.g. all negative or all positive) then the first test done is selected as the record for the person.

    The total number of positive test results is not equal to the total number of COVID-19 cases in San Francisco.

    When a person gets tested for COVID-19, they may be asked to report information about themselves. One piece of information that might be requested is a person's race and ethnicity. These data are often incomplete in the laboratory and provider reports of the test results sent to the health department. The data can be missing or incomplete for several possible reasons:

    • The person was not asked about their race and ethnicity.
    • The person was asked, but refused to answer.
    • The person answered, but the testing provider did not include the person's answers in the reports.
    • The testing provider reported the person's answers in a format that could not be used by the health department.
    

    For any of these reasons, a person's race/ethnicity will be recorded in the dataset as “Unknown.”

    B. NOTE ON RACE/ETHNICITY The different values for Race/Ethnicity in this dataset are "Asian;" "Black or African American;" "Hispanic or Latino/a, all races;" "American Indian or Alaska Native;" "Native Hawaiian or Other Pacific Islander;" "White;" "Multi-racial;" "Other;" and “Unknown."

    The Race/Ethnicity categorization increases data clarity by emulating the methodology used by the U.S. Census in the American Community Survey. Specifically, persons who identify as "Asian," "Black or African American," "American Indian or Alaska Native," "Native Hawaiian or Other Pacific Islander," "White," "Multi-racial," or "Other" do NOT include any person who identified as Hispanic/Latino at any time in their testing reports that either (1) identified them as SF residents or (2) as someone who tested without a locating address by an SF provider. All persons across all races who identify as Hispanic/Latino are recorded as “"Hispanic or Latino/a, all races." This categorization increases data accuracy by correcting the way “Other” persons were counted. Previously, when a person reported “Other” for Race/Ethnicity, they would be recorded “Unknown.” Under the new categorization, they are counted as “Other” and are distinct from “Unknown.”

    If a person records their race/ethnicity as “Asian,” “Black or African American,” “American Indian or Alaska Native,” “Native Hawaiian or Other Pacific Islander,” “White,” or “Other” for their first COVID-19 test, then this data will not change—even if a different race/ethnicity is reported for this person for any future COVID-19 test. There are two exceptions to this rule. The first exception is if a person’s race/ethnicity value i

  7. Change in the sales value of the conducted research due to COVID-19 in...

    • statista.com
    Updated Apr 10, 2024
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    Statista (2024). Change in the sales value of the conducted research due to COVID-19 in Poland 2020 [Dataset]. https://www.statista.com/statistics/1124352/poland-change-in-the-sales-value-of-the-conducted-research-due-to-covid-19/
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    Dataset updated
    Apr 10, 2024
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Apr 23, 2020 - Apr 27, 2020
    Area covered
    Poland
    Description

    Due to the change in the situation of the statistical research market caused by the coronavirus epidemic, Polish companies indicated an increase in sales of research conducted via the Internet CAWI - 73 percent of companies, qualitative online research - 64 percent of companies and CATI telephone research - 53 percent of companies. As many as 93 percent of the agencies expected a decrease in the sales of face-to-face quantitative research, 84 percent of offline qualitative research, and 78 percent of mystery shopping research.

    For further information about the coronavirus (COVID-19) pandemic, please visit our dedicated Facts and Figures page.

  8. COVID-19 High Frequency Phone Survey of Households 2020, Round 2 - Viet Nam

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated Oct 26, 2023
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    World Bank (2023). COVID-19 High Frequency Phone Survey of Households 2020, Round 2 - Viet Nam [Dataset]. https://microdata.worldbank.org/index.php/catalog/4061
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    Dataset updated
    Oct 26, 2023
    Dataset authored and provided by
    World Bankhttps://www.worldbank.org/
    Time period covered
    2020
    Area covered
    Vietnam
    Description

    Geographic coverage

    National, regional

    Analysis unit

    Households

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    The 2020 Vietnam COVID-19 High Frequency Phone Survey of Households (VHFPS) uses a nationally representative household survey from 2018 as the sampling frame. The 2018 baseline survey includes 46,980 households from 3132 communes (about 25% of total communes in Vietnam). In each commune, one EA is randomly selected and then 15 households are randomly selected in each EA for interview. We use the large module of to select the households for official interview of the VHFPS survey and the small module households as reserve for replacement. After data processing, the final sample size for Round 2 is 3,935 households.

    Mode of data collection

    Computer Assisted Telephone Interview [cati]

    Research instrument

    The questionnaire for Round 2 consisted of the following sections

    Section 2. Behavior Section 3. Health Section 5. Employment (main respondent) Section 6. Coping Section 7. Safety Nets Section 8. FIES

    Cleaning operations

    Data cleaning began during the data collection process. Inputs for the cleaning process include available interviewers’ note following each question item, interviewers’ note at the end of the tablet form as well as supervisors’ note during monitoring. The data cleaning process was conducted in following steps: • Append households interviewed in ethnic minority languages with the main dataset interviewed in Vietnamese. • Remove unnecessary variables which were automatically calculated by SurveyCTO • Remove household duplicates in the dataset where the same form is submitted more than once. • Remove observations of households which were not supposed to be interviewed following the identified replacement procedure. • Format variables as their object type (string, integer, decimal, etc.) • Read through interviewers’ note and make adjustment accordingly. During interviews, whenever interviewers find it difficult to choose a correct code, they are recommended to choose the most appropriate one and write down respondents’ answer in detail so that the survey management team will justify and make a decision which code is best suitable for such answer. • Correct data based on supervisors’ note where enumerators entered wrong code. • Recode answer option “Other, please specify”. This option is usually followed by a blank line allowing enumerators to type or write texts to specify the answer. The data cleaning team checked thoroughly this type of answers to decide whether each answer needed recoding into one of the available categories or just keep the answer originally recorded. In some cases, that answer could be assigned a completely new code if it appeared many times in the survey dataset.
    • Examine data accuracy of outlier values, defined as values that lie outside both 5th and 95th percentiles, by listening to interview recordings. • Final check on matching main dataset with different sections, where information is asked on individual level, are kept in separate data files and in long form. • Label variables using the full question text. • Label variable values where necessary.

  9. e

    Values and society during the Covid-19 pandemic - Dataset - B2FIND

    • b2find.eudat.eu
    Updated Jul 23, 2025
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    (2025). Values and society during the Covid-19 pandemic - Dataset - B2FIND [Dataset]. https://b2find.eudat.eu/dataset/38817c3f-11f1-56ce-b2b9-cffdce8bf4aa
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    Dataset updated
    Jul 23, 2025
    Description

    The survey Values and Society During the Covid-19 Pandemic (HODYSE 2020) was designed and conducted by researchers at the Institute for Sociology of the Slovak Academy of Sciences to obtain up-to-date data on public opinion in six thematic areas: social trust, politics and democracy, conspiracy theories, vaccination, environment and leisure. The year 2020 was a year of significant socio-political changes. Since the beginning of the year, the most important topic in the public debate and in the media has been the global pandemic of COVID-19 disease. The pandemic became a central issue of both the ending and the new government after the parliamentary elections in February 2020. Findings from opinion polls have allowed us to capture how a pandemic has changed the traditional view of values, and how traditionally examined values have taken on new meanings. The data also document the severity of the pandemic situation during which the research was conducted (November 2020). In this context, the topics that resonated most in the public debate on COVID-19 were addressed - questions about vaccination, health concerns and the economic situation of respondents, or compliance with the measures. Adult inhabitants of Slovakia, age 18+ Sampling and the fieldwork was provided by the research agency FOCUS. The sample was designed as representative for the following socio-demographic variables: gender, age, education, nationality, size of settlement and region. The research covers both - the population that has an Internet connection (online panel, CAWI) and the elderly population 60+ (interviewers, CAPI data collection):CAWI: 714 respondents (self-administred web questionnaire, 69.9% of the sample)CAPI: 307 respondents (F2F interviews, 30.1% of the sample)The sample was estimated separately for the CAWI part and for the CAPI part of the survey. In summary, the CAWI and CAPI sub-samples gave a representative sample for the Slovak population of 18+ in terms of given variables.

  10. COVID-19 impacts on people's personal purposes and values of life in China...

    • statista.com
    Updated Jul 11, 2025
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    Statista (2025). COVID-19 impacts on people's personal purposes and values of life in China 2021 [Dataset]. https://www.statista.com/statistics/1276172/china-people-who-changed-their-values-of-life-due-to-covid-19/
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    Dataset updated
    Jul 11, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Feb 25, 2021 - Mar 5, 2021
    Area covered
    China
    Description

    The outbreak of the coronavirus COVID-19 has caused huge impacts on Chinese people's daily life and self-reflection. According to a survey about Chinese consumer behaviors conducted between February and March 2021, around ** percent of respondents agreed that the coronavirus pandemic made them revise their purpose and what they considered important in life. Approximately ** percent of respondents stated that COVID-19 had changed their values of life.

  11. Level of statistical significance (p values) of the second order texture...

    • plos.figshare.com
    • figshare.com
    xls
    Updated Jun 4, 2023
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    Mutlu Gülbay; Bahadır Orkun Özbay; Bökebatur Ahmet Raşit Mendi; Aliye Baştuğ; Hürrem Bodur (2023). Level of statistical significance (p values) of the second order texture parameters between the same type lesions of COVID-19 and atypical pneumonia groups. [Dataset]. http://doi.org/10.1371/journal.pone.0246582.t005
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    xlsAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Mutlu Gülbay; Bahadır Orkun Özbay; Bökebatur Ahmet Raşit Mendi; Aliye Baştuğ; Hürrem Bodur
    License

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

    Description

    Level of statistical significance (p values) of the second order texture parameters between the same type lesions of COVID-19 and atypical pneumonia groups.

  12. D

    Cycle threshold values of COVID PCR

    • detroitdata.org
    xlsx
    Updated Apr 30, 2025
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    Wayne State University (2025). Cycle threshold values of COVID PCR [Dataset]. https://detroitdata.org/dataset/cycle-threshold-values-of-covid-pcr
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    xlsx(115226)Available download formats
    Dataset updated
    Apr 30, 2025
    Dataset provided by
    Wayne State University
    License

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

    Description

    Cycle threshold values of COVID PCR. Project reviewed and approved by Wayne State / DMC IRB

    https://journals.plos.org/plosone/article/authors?id=10.1371/journal.pone.0255981

  13. d

    Pre-pandemic Alcohol consumption highly predicts Covid-19 mortality

    • search.dataone.org
    Updated Nov 14, 2023
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    Errasfa, Mourad; Mourad Errasfa (2023). Pre-pandemic Alcohol consumption highly predicts Covid-19 mortality [Dataset]. http://doi.org/10.7910/DVN/FS5TFU
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    Dataset updated
    Nov 14, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Errasfa, Mourad; Mourad Errasfa
    Description

    Pre-pandemic (data of 2019) epidemiologic and demographic data have shown that some parameters such as cancer, Alzheimer's disease, advanced age, and alcohol intake levels are positively correlated to Covid-19 mortality, instead, birth and fertility rates are negatively correlated to Covid-19 mortality. A stepwise multiple regression analysis of the above parameters against Covid-19 mortality in 32 countries from Asia, America, Africa, and Europe has generated two main predictors of Covid-19 mortality: alcohol consumption and birth/mortality ratio. A first-order equation correlated alcohol intake to Covid-19 mortality as follows; Covid-19 mortality= 0.1057 x (liters of alcohol intake) + 0.2214 (Coefficient of determination = 0.750, F value = 38.63 , P-value = 7.64x10-7). A second equation correlated (birth rate/mortality rate) to Covid-19 mortality as follows; Covid-19 mortality= - 0.3129 x (birth rate/mortality) ratio +1.638 (coefficient of determination = 0.799, F value = 51.2, P-value = 7.09x10-8). Thus, pre-pandemic alcohol consumption is a high predictor of Covid-19 mortality that should be taken into account as a serious risk factor for future safety measures against SARS-CoV-2 infection.

  14. Monthly added value loss due to the coronavirus (COVID-19) in Switzerland in...

    • statista.com
    • ai-chatbox.pro
    Updated Jul 9, 2025
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    Statista (2025). Monthly added value loss due to the coronavirus (COVID-19) in Switzerland in 2020 [Dataset]. https://www.statista.com/statistics/1110282/coronavirus-covid-19-monthly-added-value-loss-shutdown-switzerland/
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    Dataset updated
    Jul 9, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Mar 2020
    Area covered
    Switzerland
    Description

    The coronavirus (COVID-19) of 2020 is affecting the economy in Switzerland across industries. Based on figures from **********, industries affected directly estimate monthly added value losses of **** billion Swiss francs.

  15. United States COVID-19 County Level of Community Transmission as Originally...

    • healthdata.gov
    • data.virginia.gov
    • +1more
    application/rdfxml +5
    Updated Oct 28, 2021
    + more versions
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    data.cdc.gov (2021). United States COVID-19 County Level of Community Transmission as Originally Posted - ARCHIVED [Dataset]. https://healthdata.gov/dataset/United-States-COVID-19-County-Level-of-Community-T/n7kn-5qdx
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    xml, tsv, csv, application/rdfxml, application/rssxml, jsonAvailable download formats
    Dataset updated
    Oct 28, 2021
    Dataset provided by
    data.cdc.gov
    Area covered
    United States
    Description

    On October 20, 2022, CDC began retrieving aggregate case and death data from jurisdictional and state partners weekly instead of daily. This dataset contains archived community transmission and related data elements by county as originally displayed on the COVID Data Tracker. Although these data will continue to be publicly available, this dataset has not been updated since October 20, 2022. An archived dataset containing weekly community transmission data by county as originally posted can also be found here: Weekly COVID-19 County Level of Community Transmission as Originally Posted | Data | Centers for Disease Control and Prevention (cdc.gov).

    Related data CDC has been providing the public with two versions of COVID-19 county-level community transmission level data: this dataset with the daily values as originally posted on the COVID Data Tracker, and an historical dataset with daily data as well as the updates and corrections from state and local health departments. Similar to this dataset, the original historical dataset is archived on 10/20/2022. It will continue to be publicly available but will no longer be updated. A new dataset containing historical community transmission data by county is now published weekly and can be found at: Weekly COVID-19 County Level of Community Transmission Historical Changes | Data | Centers for Disease Control and Prevention (cdc.gov).

    This public use dataset has 7 data elements reflecting community transmission levels for all available counties and jurisdictions. It contains reported daily transmission levels at the county level with the same values used to display transmission maps on the COVID Data Tracker. Each day, the dataset is appended to contain the most recent day's data. Transmission level is set to low, moderate, substantial, or high using the calculation rules below.

    Methods for calculating county level of community transmission indicator The County Level of Community Transmission indicator uses two metrics: (1) total new COVID-19 cases per 100,000 persons in the last 7 days and (2) percentage of positive SARS-CoV-2 diagnostic nucleic acid amplification tests (NAAT) in the last 7 days. For each of these metrics, CDC classifies transmission values as low, moderate, substantial, or high (below and here). If the values for each of these two metrics differ (e.g., one indicates moderate and the other low), then the higher of the two should be used for decision-making.

    CDC core metrics of and thresholds for community transmission levels of SARS-CoV-2

    Total New Case Rate Metric: "New cases per 100,000 persons in the past 7 days" is calculated by adding the number of new cases in the county (or other administrative level) in the last 7 days divided by the population in the county (or other administrative level) and multiplying by 100,000. "New cases per 100,000 persons in the past 7 days" is considered to have a transmission level of Low (0-9.99); Moderate (10.00-49.99); Substantial (50.00-99.99); and High (greater than or equal to 100.00).

    Test Percent Positivity Metric: "Percentage of positive NAAT in the past 7 days" is calculated by dividing the number of positive tests in the county (or other administrative level) during the last 7 days by the total number of tests conducted over the last 7 days. "Percentage of positive NAAT in the past 7 days" is considered to have a transmission level of Low (less than 5.00); Moderate (5.00-7.99); Substantial (8.00-9.99); and High (greater than or equal to 10.00).

    If

  16. Z

    COVID-19 Mobility Dataset (without Missing Values)

    • data.niaid.nih.gov
    Updated Apr 6, 2021
    + more versions
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    Webb, Geoff (2021). COVID-19 Mobility Dataset (without Missing Values) [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_4663808
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    Dataset updated
    Apr 6, 2021
    Dataset provided by
    Montero-Manso, Pablo
    Godahewa, Rakshitha
    Hyndman, Rob
    Bergmeir, Christoph
    Webb, Geoff
    License

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

    Description

    This dataset contains a set of daily time series representing the percentage changes of 6 aspects due to COVID-19: retail/recreation, grocery/pharmacy, parks, workplaces, residential and transit stations in a set of countries and regions. This file contains 559 daily time series which represent the average percentage changes of the above 6 aspects in 131 countries.

    The original dataset contains missing values and they have been replaced by zeros.

  17. Z

    Where2Test Saxony-Czechia COVID-19 new cases dataset

    • data.niaid.nih.gov
    Updated Jan 3, 2023
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    Adam Mertel (2023). Where2Test Saxony-Czechia COVID-19 new cases dataset [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_6328303
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    Dataset updated
    Jan 3, 2023
    Dataset authored and provided by
    Adam Mertel
    License

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

    Area covered
    Czechia, Saxony
    Description

    Data in the repository were used in the study "Fine-scale variation in the effect of national border on COVID-19 spread: A case study of the Saxon-Czech border region", published in Spatial and Spatio-temporal Epidemiology.

    This repository consists of two files:

    saxony-westczechia_cases7

    Weekly numbers of new COVID-19 cases in all municipalities in Saxony and Northwestern Czechia (Liberec, Ústí nad Labem, and Karlovy Vary regions) in the first half of 2021. Data are extracted from the websites coronavirus.sachsen and onemocneni-aktualne.mzcr.cz/covid-19. The missing values were interpolated, and daily values were recalculated to weekly values.

    municipalities

    The second file consists of a list of all municipalities with their names, geometries, and population values. For Germany, we used the dataset "Gemeindegrenzen 2018 mit Einwohnerzahl" (© GeoBasis-DE / BKG, Statistisches Bundesamt (Destatis) (2020), dl-de/by-2-0) as a source of geometries and population sizes of the municipalities (“Gemeinde”) in Saxony. Czech population numbers on the municipality level ("obec") were taken from the Czech Statistical Office, while the geometries were obtained from RÚIAN (@Czech Office for Surveying, Mapping and Cadastre, 2021). To keep the same geometry detail on both sides of the borders, we applied the Douglas-Peucker simplification algorithm implemented in the Python library TopoJSON.

  18. Export value of goods after the coronavirus outbreak from Norway 2020

    • statista.com
    Updated Dec 15, 2021
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    Statista (2021). Export value of goods after the coronavirus outbreak from Norway 2020 [Dataset]. https://www.statista.com/statistics/1108485/export-value-of-goods-after-the-coronavirus-outbreak-from-norway/
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    Dataset updated
    Dec 15, 2021
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Norway
    Description

    The export value of goods from Norway after the coronavirus outbreak (as of March 25, 2020) was similar to the weekly values in the first quarter of 2019. The weekly figures up to week 11 show no obvious coronavirus impact on Norwegian exports, as in this week the exports value was 10.5 billion Norwegian kroner in 2020 and 10.41 billion Norwegian kroner in the previous year.

    The first case of COVID-19 in Norway was confirmed on February 26, 2020. For further information about the coronavirus (COVID-19) pandemic, please visit our dedicated Facts and Figures page.

  19. United States COVID-19 Community Levels by County

    • healthdata.gov
    • data.virginia.gov
    • +1more
    application/rdfxml +5
    Updated Mar 8, 2022
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    data.cdc.gov (2022). United States COVID-19 Community Levels by County [Dataset]. https://healthdata.gov/CDC/United-States-COVID-19-Community-Levels-by-County/nn5b-j5u9
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    csv, application/rdfxml, application/rssxml, json, xml, tsvAvailable download formats
    Dataset updated
    Mar 8, 2022
    Dataset provided by
    data.cdc.gov
    Area covered
    United States
    Description

    Reporting of Aggregate Case and Death Count data was discontinued 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.

    This archived public use dataset has 11 data elements reflecting United States COVID-19 community levels for all available counties.

    The COVID-19 community levels were developed using a combination of three metrics — new COVID-19 admissions per 100,000 population in the past 7 days, the percent of staffed inpatient beds occupied by COVID-19 patients, and total new COVID-19 cases per 100,000 population in the past 7 days. The COVID-19 community level was determined by the higher of the new admissions and inpatient beds metrics, based on the current level of new cases per 100,000 population in the past 7 days. New COVID-19 admissions and the percent of staffed inpatient beds occupied represent the current potential for strain on the health system. Data on new cases acts as an early warning indicator of potential increases in health system strain in the event of a COVID-19 surge.

    Using these data, the COVID-19 community level was classified as low, medium, or high.

    COVID-19 Community Levels were used to help communities and individuals make decisions based on their local context and their unique needs. Community vaccination coverage and other local information, like early alerts from surveillance, such as through wastewater or the number of emergency department visits for COVID-19, when available, can also inform decision making for health officials and individuals.

    For the most accurate and up-to-date data for any county or state, visit the relevant health department website. COVID Data Tracker may display data that differ from state and local websites. This can be due to differences in how data were collected, how metrics were calculated, or the timing of web updates.

    Archived Data Notes:

    This dataset was renamed from "United States COVID-19 Community Levels by County as Originally Posted" to "United States COVID-19 Community Levels by County" on March 31, 2022.

    March 31, 2022: Column name for county population was changed to “county_population”. No change was made to the data points previous released.

    March 31, 2022: New column, “health_service_area_population”, was added to the dataset to denote the total population in the designated Health Service Area based on 2019 Census estimate.

    March 31, 2022: FIPS codes for territories American Samoa, Guam, Commonwealth of the Northern Mariana Islands, and United States Virgin Islands were re-formatted to 5-digit numeric for records released on 3/3/2022 to be consistent with other records in the dataset.

    March 31, 2022: Changes were made to the text fields in variables “county”, “state”, and “health_service_area” so the formats are consistent across releases.

    March 31, 2022: The “%” sign was removed from the text field in column “covid_inpatient_bed_utilization”. No change was made to the data. As indicated in the column description, values in this column represent the percentage of staffed inpatient beds occupied by COVID-19 patients (7-day average).

    March 31, 2022: Data values for columns, “county_population”, “health_service_area_number”, and “health_service_area” were backfilled for records released on 2/24/2022. These columns were added since the week of 3/3/2022, thus the values were previously missing for records released the week prior.

    April 7, 2022: Updates made to data released on 3/24/2022 for Guam, Commonwealth of the Northern Mariana Islands, and United States Virgin Islands to correct a data mapping error.

    April 21, 2022: COVID-19 Community Level (CCL) data released for counties in Nebraska for the week of April 21, 2022 have 3 counties identified in the high category and 37 in the medium category. CDC has been working with state officials t

  20. d

    COVID-19 Vaccinations by Demographics and Tempe Zip Codes

    • catalog.data.gov
    • open.tempe.gov
    • +9more
    Updated Mar 18, 2023
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    City of Tempe (2023). COVID-19 Vaccinations by Demographics and Tempe Zip Codes [Dataset]. https://catalog.data.gov/dataset/covid-19-vaccinations-by-demographics-and-tempe-zip-codes-3b599
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    Dataset updated
    Mar 18, 2023
    Dataset provided by
    City of Tempe
    Area covered
    Tempe
    Description

    This Power BI dashboard shows the COVID-19 vaccination rate by key demographics including age groups, race and ethnicity, and sex for Tempe zip codes.Data Source: Maricopa County GIS Open Data weekly count of COVID-19 vaccinations. The data were reformatted from the source data to accommodate dashboard configuration. The Maricopa County Department of Public Health (MCDPH) releases the COVID-19 vaccination data for each zip code and city in Maricopa County at ~12:00 PM weekly on Wednesdays via the Maricopa County GIS Open Data website (https://data-maricopa.opendata.arcgis.com/). More information about the data is available on the Maricopa County COVID-19 Vaccine Data page (https://www.maricopa.gov/5671/Public-Vaccine-Data#dashboard). The dashboard’s values are refreshed at 3:00 PM weekly on Wednesdays. The most recent date included on the dashboard is available by hovering over the last point on the right-hand side of each chart. Please note that the times when the Maricopa County Department of Public Health (MCDPH) releases weekly data for COVID-19 vaccines may vary. If data are not released by the time of the scheduled dashboard refresh, the values may appear on the dashboard with the next data release, which may be one or more days after the last scheduled release.Dates: Updated data shows publishing dates which represents values from the previous calendar week (Sunday through Saturday). For more details on data reporting, please see the Maricopa County COVID-19 data reporting notes at https://www.maricopa.gov/5460/Coronavirus-Disease-2019.

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Daniel B. Cohen; Morgan Luck; Atousa Hormozaki; Lauren L. Saling (2023). Beta, t and p values for predictors for regression analysis 1. [Dataset]. http://doi.org/10.1371/journal.pone.0244631.t002
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Beta, t and p values for predictors for regression analysis 1.

Related Article
Explore at:
xlsAvailable download formats
Dataset updated
Jun 4, 2023
Dataset provided by
PLOShttp://plos.org/
Authors
Daniel B. Cohen; Morgan Luck; Atousa Hormozaki; Lauren L. Saling
License

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

Description

Beta, t and p values for predictors for regression analysis 1.

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