11 datasets found
  1. Great Britain: opinion on recent lockdown changes as of May 2020

    • statista.com
    Updated May 10, 2020
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    Statista (2020). Great Britain: opinion on recent lockdown changes as of May 2020 [Dataset]. https://www.statista.com/statistics/1116289/attitudes-towards-lockdown-changes-in-great-britain/
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    Dataset updated
    May 10, 2020
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    May 10, 2020
    Area covered
    Great Britain, United Kingdom
    Description

    On May 10, 2020, the Prime Minister of the British government, Boris Johnson, announced plans for the easing of coronavirus lockdown rules. According to a survey carried out in Great Britain following this announcement, 46 percent of Brits think that the changes go too far in relaxing the rules, while 35 percent believe the balance is about right. The latest number of cases in the UK can be found here. For further information about the coronavirus pandemic, please visit our dedicated Facts and Figures page.

  2. Koronaviruksen (COVID-19) liikkuvuusraportti

    • data.europa.eu
    Updated Oct 11, 2021
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    Greater London Authority (2021). Koronaviruksen (COVID-19) liikkuvuusraportti [Dataset]. https://data.europa.eu/data/datasets/coronavirus-covid-19-mobility-report?locale=fi
    Explore at:
    Dataset updated
    Oct 11, 2021
    Dataset authored and provided by
    Greater London Authorityhttp://www.london.gov.uk/
    Description

    Due to changes in the collection and availability of data on COVID-19, this website will no longer be updated. The webpage will no longer be available as of 11 May 2023. On-going, reliable sources of data for COVID-19 are available via the COVID-19 dashboard and the UKHSA

    GLA Covid-19 Mobility Report

    Since March 2020, London has seen many different levels of restrictions - including three separate lockdowns and many other tiers/levels of restrictions, as well as easing of restrictions and even measures to actively encourage people to go to work, their high streets and local restaurants. This reports gathers data from a number of sources, including google, apple, citymapper, purple wifi and opentable to assess the extent to which these levels of restrictions have translated to a reductions in Londoners' movements.

    The data behind the charts below come from different sources. None of these data represent a direct measure of how well people are adhering to the lockdown rules - nor do they provide an exhaustive data set. Rather, they are measures of different aspects of mobility, which together, offer an overall impression of how people Londoners are moving around the capital. The information is broken down by use of public transport, pedestrian activity, retail and leisure, and homeworking.

    Public Transport

    For the transport measures, we have included data from google, Apple, CityMapper and Transport for London. They measure different aspects of public transport usage - depending on the data source. Each of the lines in the chart below represents a percentage of a pre-pandemic baseline.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/6b096426c4c582dc9568ed4830b4226d.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Citymapper Citymapper mobility index 2021-09-05 Compares trips planned and trips taken within its app to a baseline of the four weeks from 6 Jan 2020 7.9% 28% 19% Google Google Mobility Report 2022-10-15 Location data shared by users of Android smartphones, compared time and duration of visits to locations to the median values on the same day of the week in the five weeks from 3 Jan 2020 20.4% 40% 27% TfL Bus Transport for London 2022-10-30 Bus journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 34% 24% TfL Tube Transport for London 2022-10-30 Tube journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 30% 21% Pedestrian activity

    With the data we currently have it's harder to estimate pedestrian activity and high street busyness. A few indicators can give us information on how people are making trips out of the house:

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/bcf082c07e4d7ff5202012f0a97abc3a.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Walking Apple Mobility Index 2021-11-09 estimates the frequency of trips made on foot compared to baselie of 13 Jan '20 22% 47% 36% Parks Google Mobility Report 2022-10-15 Frequency of trips to parks. Changes in the weather mean this varies a lot. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail & Rec Google Mobility Report 2022-10-15 Estimates frequency of trips to shops/leisure locations. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail and recreation

    In this section, we focus on estimated footfall to shops, restaurants, cafes, shopping centres and so on.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A16/b62d60f723eaafe64a989e4afec4c62b.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Grocery/pharmacy Google Mobility Report 2022-10-15 Estimates frequency of trips to grovery shops and pharmacies. Compared to baseline of 5 weeks from 3 Jan '20 32% 55.00% 45.000% Retail/rec <a href="https://ww

  3. Raportul privind mobilitatea privind coronavirusul (COVID-19)

    • data.europa.eu
    Updated Nov 7, 2022
    + more versions
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    Greater London Authority (2022). Raportul privind mobilitatea privind coronavirusul (COVID-19) [Dataset]. https://data.europa.eu/data/datasets/coronavirus-covid-19-mobility-report?locale=ro
    Explore at:
    Dataset updated
    Nov 7, 2022
    Dataset authored and provided by
    Greater London Authorityhttp://www.london.gov.uk/
    Description

    Due to changes in the collection and availability of data on COVID-19, this website will no longer be updated. The webpage will no longer be available as of 11 May 2023. On-going, reliable sources of data for COVID-19 are available via the COVID-19 dashboard and the UKHSA

    GLA Covid-19 Mobility Report

    Since March 2020, London has seen many different levels of restrictions - including three separate lockdowns and many other tiers/levels of restrictions, as well as easing of restrictions and even measures to actively encourage people to go to work, their high streets and local restaurants. This reports gathers data from a number of sources, including google, apple, citymapper, purple wifi and opentable to assess the extent to which these levels of restrictions have translated to a reductions in Londoners' movements.

    The data behind the charts below come from different sources. None of these data represent a direct measure of how well people are adhering to the lockdown rules - nor do they provide an exhaustive data set. Rather, they are measures of different aspects of mobility, which together, offer an overall impression of how people Londoners are moving around the capital. The information is broken down by use of public transport, pedestrian activity, retail and leisure, and homeworking.

    Public Transport

    For the transport measures, we have included data from google, Apple, CityMapper and Transport for London. They measure different aspects of public transport usage - depending on the data source. Each of the lines in the chart below represents a percentage of a pre-pandemic baseline.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/6b096426c4c582dc9568ed4830b4226d.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Citymapper Citymapper mobility index 2021-09-05 Compares trips planned and trips taken within its app to a baseline of the four weeks from 6 Jan 2020 7.9% 28% 19% Google Google Mobility Report 2022-10-15 Location data shared by users of Android smartphones, compared time and duration of visits to locations to the median values on the same day of the week in the five weeks from 3 Jan 2020 20.4% 40% 27% TfL Bus Transport for London 2022-10-30 Bus journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 34% 24% TfL Tube Transport for London 2022-10-30 Tube journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 30% 21% Pedestrian activity

    With the data we currently have it's harder to estimate pedestrian activity and high street busyness. A few indicators can give us information on how people are making trips out of the house:

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/bcf082c07e4d7ff5202012f0a97abc3a.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Walking Apple Mobility Index 2021-11-09 estimates the frequency of trips made on foot compared to baselie of 13 Jan '20 22% 47% 36% Parks Google Mobility Report 2022-10-15 Frequency of trips to parks. Changes in the weather mean this varies a lot. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail & Rec Google Mobility Report 2022-10-15 Estimates frequency of trips to shops/leisure locations. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail and recreation

    In this section, we focus on estimated footfall to shops, restaurants, cafes, shopping centres and so on.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A16/b62d60f723eaafe64a989e4afec4c62b.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Grocery/pharmacy Google Mobility Report 2022-10-15 Estimates frequency of trips to grovery shops and pharmacies. Compared to baseline of 5 weeks from 3 Jan '20 32% 55.00% 45.000% Retail/rec <a href="https://ww

  4. f

    Demographic characteristics.

    • plos.figshare.com
    xls
    Updated Jun 26, 2025
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    Emily Wharton; Thomas O’Brien; Richard J. Foster; Clarissa Giebel; Justine Shenton; Asan Akpan; Avril Mills; Mike Roys; Constantinos Maganaris (2025). Demographic characteristics. [Dataset]. http://doi.org/10.1371/journal.pone.0326850.t001
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Jun 26, 2025
    Dataset provided by
    PLOS ONE
    Authors
    Emily Wharton; Thomas O’Brien; Richard J. Foster; Clarissa Giebel; Justine Shenton; Asan Akpan; Avril Mills; Mike Roys; Constantinos Maganaris
    License

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

    Description

    In the United Kingdom (UK), stair falls in older adults’ homes cause up to 575 deaths and 350,000 injuries annually, costing the NHS £435 million. The stair falls may be related to hazards such as poorly designed/absent handrails, too steep/narrow stairs, poor step surface (e.g., loose carpets), and poor lighting. Our study aimed to understand older adults’ experiences of independent living and home stair falls during the first COVID-19 lockdown, and shed light on older adults’ physical staircase dimensions that influence stair fall risks in relation to UK government guidelines. A mixed-methods approach was employed, conducting semi-structured interviews alongside quantitative home stair assessments with 22 participants aged ≥ 60 years. The stair assessments captured the physical dimensions (i.e., measurements of pitch, rise and goings) of their home stairs, and if they perceived their stairs safe to negotiate. We identified four overarching themes common across older people living independently: effects of lockdown on daily living during the COVID-19 pandemic; stair-related accidents and perceived causes; fall preventative measures and safety awareness; and attitudes towards ageing and care services. Although all of the participants perceived their stairs to be safe, nearly half of participants’ staircases (40%) did not meeting the UK government guidelines for pitch, rise and going. While the COVID-19 lockdown provided a unique context for exploring fall risk and stair safety, our findings highlight broader, ongoing issues. Despite emotional attachment to their homes, many lacked staircases that meet current UK government guidelines, highlighting a need for targeted interventions to mitigate environmental hazards. Additionally, financial constraints and education further complicate efforts to enhance home safety. Discrepancies between perceived and objective safety assessments highlight the need for comprehensive care approaches and evidence-based home design guidelines, allowing for collaborative support for ageing in place. Bridging this gap is essential for reducing home stair falls.

  5. Poročilo o mobilnosti zaradi koronavirusa (COVID-19)

    • data.europa.eu
    Updated Mar 21, 2021
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    Greater London Authority (2021). Poročilo o mobilnosti zaradi koronavirusa (COVID-19) [Dataset]. https://data.europa.eu/data/datasets/coronavirus-covid-19-mobility-report?locale=sl
    Explore at:
    Dataset updated
    Mar 21, 2021
    Dataset authored and provided by
    Greater London Authorityhttp://www.london.gov.uk/
    Description

    Due to changes in the collection and availability of data on COVID-19, this website will no longer be updated. The webpage will no longer be available as of 11 May 2023. On-going, reliable sources of data for COVID-19 are available via the COVID-19 dashboard and the UKHSA

    GLA Covid-19 Mobility Report

    Since March 2020, London has seen many different levels of restrictions - including three separate lockdowns and many other tiers/levels of restrictions, as well as easing of restrictions and even measures to actively encourage people to go to work, their high streets and local restaurants. This reports gathers data from a number of sources, including google, apple, citymapper, purple wifi and opentable to assess the extent to which these levels of restrictions have translated to a reductions in Londoners' movements.

    The data behind the charts below come from different sources. None of these data represent a direct measure of how well people are adhering to the lockdown rules - nor do they provide an exhaustive data set. Rather, they are measures of different aspects of mobility, which together, offer an overall impression of how people Londoners are moving around the capital. The information is broken down by use of public transport, pedestrian activity, retail and leisure, and homeworking.

    Public Transport

    For the transport measures, we have included data from google, Apple, CityMapper and Transport for London. They measure different aspects of public transport usage - depending on the data source. Each of the lines in the chart below represents a percentage of a pre-pandemic baseline.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/6b096426c4c582dc9568ed4830b4226d.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Citymapper Citymapper mobility index 2021-09-05 Compares trips planned and trips taken within its app to a baseline of the four weeks from 6 Jan 2020 7.9% 28% 19% Google Google Mobility Report 2022-10-15 Location data shared by users of Android smartphones, compared time and duration of visits to locations to the median values on the same day of the week in the five weeks from 3 Jan 2020 20.4% 40% 27% TfL Bus Transport for London 2022-10-30 Bus journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 34% 24% TfL Tube Transport for London 2022-10-30 Tube journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 30% 21% Pedestrian activity

    With the data we currently have it's harder to estimate pedestrian activity and high street busyness. A few indicators can give us information on how people are making trips out of the house:

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/bcf082c07e4d7ff5202012f0a97abc3a.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Walking Apple Mobility Index 2021-11-09 estimates the frequency of trips made on foot compared to baselie of 13 Jan '20 22% 47% 36% Parks Google Mobility Report 2022-10-15 Frequency of trips to parks. Changes in the weather mean this varies a lot. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail & Rec Google Mobility Report 2022-10-15 Estimates frequency of trips to shops/leisure locations. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail and recreation

    In this section, we focus on estimated footfall to shops, restaurants, cafes, shopping centres and so on.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A16/b62d60f723eaafe64a989e4afec4c62b.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Grocery/pharmacy Google Mobility Report 2022-10-15 Estimates frequency of trips to grovery shops and pharmacies. Compared to baseline of 5 weeks from 3 Jan '20 32% 55.00% 45.000% Retail/rec <a href="https://ww

  6. Koronavírus (COVID-19) Mobilitási jelentés

    • data.europa.eu
    Updated Mar 21, 2021
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    Greater London Authority (2021). Koronavírus (COVID-19) Mobilitási jelentés [Dataset]. https://data.europa.eu/data/datasets/coronavirus-covid-19-mobility-report?locale=hu
    Explore at:
    Dataset updated
    Mar 21, 2021
    Dataset authored and provided by
    Greater London Authorityhttp://www.london.gov.uk/
    Description

    Due to changes in the collection and availability of data on COVID-19, this website will no longer be updated. The webpage will no longer be available as of 11 May 2023. On-going, reliable sources of data for COVID-19 are available via the COVID-19 dashboard and the UKHSA

    GLA Covid-19 Mobility Report

    Since March 2020, London has seen many different levels of restrictions - including three separate lockdowns and many other tiers/levels of restrictions, as well as easing of restrictions and even measures to actively encourage people to go to work, their high streets and local restaurants. This reports gathers data from a number of sources, including google, apple, citymapper, purple wifi and opentable to assess the extent to which these levels of restrictions have translated to a reductions in Londoners' movements.

    The data behind the charts below come from different sources. None of these data represent a direct measure of how well people are adhering to the lockdown rules - nor do they provide an exhaustive data set. Rather, they are measures of different aspects of mobility, which together, offer an overall impression of how people Londoners are moving around the capital. The information is broken down by use of public transport, pedestrian activity, retail and leisure, and homeworking.

    Public Transport

    For the transport measures, we have included data from google, Apple, CityMapper and Transport for London. They measure different aspects of public transport usage - depending on the data source. Each of the lines in the chart below represents a percentage of a pre-pandemic baseline.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/6b096426c4c582dc9568ed4830b4226d.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Citymapper Citymapper mobility index 2021-09-05 Compares trips planned and trips taken within its app to a baseline of the four weeks from 6 Jan 2020 7.9% 28% 19% Google Google Mobility Report 2022-10-15 Location data shared by users of Android smartphones, compared time and duration of visits to locations to the median values on the same day of the week in the five weeks from 3 Jan 2020 20.4% 40% 27% TfL Bus Transport for London 2022-10-30 Bus journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 34% 24% TfL Tube Transport for London 2022-10-30 Tube journey ‘taps' on the TfL network compared to same day of the week in four weeks starting 13 Jan 2020 - 30% 21% Pedestrian activity

    With the data we currently have it's harder to estimate pedestrian activity and high street busyness. A few indicators can give us information on how people are making trips out of the house:

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A15/bcf082c07e4d7ff5202012f0a97abc3a.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Walking Apple Mobility Index 2021-11-09 estimates the frequency of trips made on foot compared to baselie of 13 Jan '20 22% 47% 36% Parks Google Mobility Report 2022-10-15 Frequency of trips to parks. Changes in the weather mean this varies a lot. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail & Rec Google Mobility Report 2022-10-15 Estimates frequency of trips to shops/leisure locations. Compared to baseline of 5 weeks from 3 Jan '20 30% 55% 41% Retail and recreation

    In this section, we focus on estimated footfall to shops, restaurants, cafes, shopping centres and so on.

    https://cdn.datapress.cloud/london/img/dataset/60e5834b-68aa-48d7-a8c5-7ee4781bde05/2025-06-09T20%3A54%3A16/b62d60f723eaafe64a989e4afec4c62b.webp" alt="Embedded Image" />

    activity Source Latest Baseline Min value in Lockdown 1 Min value in Lockdown 2 Min value in Lockdown 3 Grocery/pharmacy Google Mobility Report 2022-10-15 Estimates frequency of trips to grovery shops and pharmacies. Compared to baseline of 5 weeks from 3 Jan '20 32% 55.00% 45.000% Retail/rec <a href="https://ww

  7. f

    Themes and quotes from participants on the impact of covid-19 and falls on...

    • plos.figshare.com
    xls
    Updated Jun 26, 2025
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    Emily Wharton; Thomas O’Brien; Richard J. Foster; Clarissa Giebel; Justine Shenton; Asan Akpan; Avril Mills; Mike Roys; Constantinos Maganaris (2025). Themes and quotes from participants on the impact of covid-19 and falls on home stairs. [Dataset]. http://doi.org/10.1371/journal.pone.0326850.t002
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Jun 26, 2025
    Dataset provided by
    PLOS ONE
    Authors
    Emily Wharton; Thomas O’Brien; Richard J. Foster; Clarissa Giebel; Justine Shenton; Asan Akpan; Avril Mills; Mike Roys; Constantinos Maganaris
    License

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

    Description

    Themes and quotes from participants on the impact of covid-19 and falls on home stairs.

  8. Number of ministerial resignations in UK governments 1979-2022, by prime...

    • statista.com
    Updated Jun 23, 2025
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    Statista (2025). Number of ministerial resignations in UK governments 1979-2022, by prime minister [Dataset]. https://www.statista.com/statistics/1318986/uk-resignations-by-prime-minister/
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    Dataset updated
    Jun 23, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United Kingdom
    Description

    Boris Johnson is resigning as Prime Minister of the United Kindom after a large number of government ministers resigned from their positions between July 5-7, 2022. As of July 7, 45 government ministers had resigned from Johnson's government since taking power in 2019, the highest of any Prime Minister since 1979, including that of Margaret Thatcher and Tony Blair who were in office for much longer periods. Johnsons's popularity had been declining for some time, with just 25 percent of people thinking he was the best choice for Prime Minister in May 2022, compared with 40 percent a year earlier. Johnson's sinking popularity is heavily associated with a number of scandals, especially 'partygate', which concerned Johnson and government officials breaking their own lockdown rules to attend social gatherings at the height of the COVID-19 pandemic. Although Johnsons survived a vote of no confidence in his leadership on June 6, 2022, his authority was badly shaken by two by-election defeats that month.

  9. General election results in the United Kingdom 2019

    • statista.com
    Updated Apr 25, 2025
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    Statista (2025). General election results in the United Kingdom 2019 [Dataset]. https://www.statista.com/statistics/1083275/uk-general-election-results/
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    Dataset updated
    Apr 25, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Dec 12, 2019
    Area covered
    United Kingdom
    Description

    The Conservative party and Boris Johnson were the clear victors in the United Kingdom's general election of 2019, winning 365 seats out of 650, earning them a majority of 80 seats in the House of Commons. The Conservative party's main rivals, the Labour Party, suffered their worst defeat since 1935, after seeing their share of the vote decline by 7.8 percent. Overall, the Labour Party lost 59 seats across the whole country, with historic losses recorded in the party's traditional heartlands of Northern England. Johnson's downfall Despite winning a large majority in this general election, Boris Johnson's popularity fell significantly throughout his time as Prime Minister. From the middle of 2021 onwards, the approval rating of his government declined dramatically. The start of this downturn began when Johnson, came under scrutiny for breaking lockdown rules at the height of the COVID-19 lockdowns. Due to the nature of the violations, which concerned celebratory social gatherings at Downing Street, the scandal became known as 'Partygate'. Johnson was ultimately served a fixed-penalty notice for breaking lockdown rules, and despite surviving a vote of no-confidence in his leadership in June 2022, his authority was badly shaken. Truss and Sunak struggle to steady the ship A series of damaging ministerial resignations between July 5-7, 2022 forced Johnson's hand, and he resigned on July 7, 2022, remaining as Prime Minister until the Conservative party elected the ill-fated Liz Truss as his replacement in September 2022. Even by post-Brexit standards, Truss' time in office was very brief. Just 45 days after becoming Prime Minister, Truss resigned. The economic damage unleashed by her mini-budget was too severe for her to continue. In her place stepped Rishi Sunak, who became the third Prime Minister of 2022, and the fifth since the Brexit vote of 2016. Although Sunak restored a degree of political stability to after Truss, he failed to improve the Conservative's poor polling position and ultimately lost the 2024 election, to the Labour Party, ending 14 years of Conservative rule.

  10. An infoveillance analysis of public interest, national data and wastewater...

    • zenodo.org
    bin, csv
    Updated Aug 10, 2023
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    Jordan P. Cuff; Jordan P. Cuff; Shrinivas Nivrutti Dighe; Shrinivas Nivrutti Dighe; Sophie E. Watson; Sophie E. Watson; Rafael A. Badell-Grau; Rafael A. Badell-Grau; Andrew J. Weightman; Andrew J. Weightman; Davey L. Jones; Davey L. Jones; Peter Kille; Peter Kille (2023). An infoveillance analysis of public interest, national data and wastewater monitoring in Wales, UK [Dataset]. http://doi.org/10.5281/zenodo.7260269
    Explore at:
    csv, binAvailable download formats
    Dataset updated
    Aug 10, 2023
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Jordan P. Cuff; Jordan P. Cuff; Shrinivas Nivrutti Dighe; Shrinivas Nivrutti Dighe; Sophie E. Watson; Sophie E. Watson; Rafael A. Badell-Grau; Rafael A. Badell-Grau; Andrew J. Weightman; Andrew J. Weightman; Davey L. Jones; Davey L. Jones; Peter Kille; Peter Kille
    License

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

    Area covered
    Wales, United Kingdom
    Description

    Infoveillance, wastewater and national data.R - The R script used for the analyses and figures present in the manuscript.

    SWalesNormqPCRandGT.csv - File containing the data used for this manuscript, including the following columns:

    Study Week: The number of weeks into the period used for this study.

    WC Date: The date of the first day of each week used for this study.

    COVIDCount: The average normalised copy numbers of SARS-CoV-2 across sites and dates in South Wales for each week.

    covid symptoms: The relative prevalence of Google searches for the string “covid symptoms’.

    covid test: The relative prevalence of Google searches for the string “covid test’.

    covid vaccine: The relative prevalence of Google searches for the string “covid vaccine’.

    covid rules: The relative prevalence of Google searches for the string “covid rules’.

    covid lockdown: The relative prevalence of Google searches for the string “covid lockdown’.

    Cases: The number of COVID cases reported by Welsh Government for that week.

    Deaths: The number of COVID-related deaths reported by Welsh Government for that week.

    Vaccines: The number of COVID vaccines reported by Welsh Government for that week.

  11. Z

    Coping with Fibromyalgia during the COVID-19 pandemic: adjustment and...

    • data.niaid.nih.gov
    • zenodo.org
    Updated Dec 30, 2020
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    Bacon, Alison M. (2020). Coping with Fibromyalgia during the COVID-19 pandemic: adjustment and wellbeing [Dataset]. https://data.niaid.nih.gov/resources?id=ZENODO_4399468
    Explore at:
    Dataset updated
    Dec 30, 2020
    Dataset provided by
    Norman, Alyson
    White, Leah
    Bacon, Alison M.
    License

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

    Description

    Abstract

    Objective: Individuals with pre-existing health conditions may be experiencing particular distress under Covid-19 pandemic-related lifestyle restrictions. Fibromyalgia syndrome (FMS) is a chronic condition where symptoms are known to be exacerbated by stress. The present study examined wellbeing, perceived symptom change and coping in individuals with and without FMS during pandemic-related social lockdown in the UK.

    Design: Participants with a diagnosis of FMS (N = 390) and a general public sample with no FMS (N = 151) completed questionnaires at three time points.

    Main Outcome Measures: BBC Wellbeing Scale, Cognitive-Emotional Regulation Questionnaire measure of coping, perception of extent to which symptoms have worsened or improved over time.

    Results: Contrary to expectations, FMS participants reported improved symptoms and wellbeing over the study period. Non-FMS participants experienced worsening health symptoms and no change in wellbeing. Coping strategies involving positive reappraisal, refocussing and planning were positively associated with wellbeing in the FMS group,

    Conclusion: The unpredictable symptom profile in FMS, and the regular readjustment to coping this necessitates, may support a form of resilience which has been adaptive during the pandemic. The results have implications for supporting people with FMS, and potentially other chronic conditions, especially at times of stress.

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Statista (2020). Great Britain: opinion on recent lockdown changes as of May 2020 [Dataset]. https://www.statista.com/statistics/1116289/attitudes-towards-lockdown-changes-in-great-britain/
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Great Britain: opinion on recent lockdown changes as of May 2020

Explore at:
Dataset updated
May 10, 2020
Dataset authored and provided by
Statistahttp://statista.com/
Time period covered
May 10, 2020
Area covered
Great Britain, United Kingdom
Description

On May 10, 2020, the Prime Minister of the British government, Boris Johnson, announced plans for the easing of coronavirus lockdown rules. According to a survey carried out in Great Britain following this announcement, 46 percent of Brits think that the changes go too far in relaxing the rules, while 35 percent believe the balance is about right. The latest number of cases in the UK can be found here. For further information about the coronavirus pandemic, please visit our dedicated Facts and Figures page.

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