56 datasets found
  1. COVID-19 cases in India as of October 2023, by type

    • statista.com
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    Statista, COVID-19 cases in India as of October 2023, by type [Dataset]. https://www.statista.com/statistics/1101713/india-covid-19-cases-by-type/
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    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    India
    Description

    India reported over 44 million confirmed cases of the coronavirus (COVID-19) as of October 20, 2023. The number of people infected with the virus was declining across the south Asian country.

    What is the coronavirus?

    COVID-19 is part of a large family of coronaviruses (CoV) that are transmitted from animals to people. The name COVID-19 is derived from the words corona, virus, and disease, while the number 19 represents the year that it emerged. Symptoms of COVID-19 resemble that of the common cold, with fever, coughing, and shortness of breath. However, serious infections can lead to pneumonia, multi-organ failure, severe acute respiratory syndrome, and even death, if appropriate medical help is not provided.

    COVID-19 in India

    India reported its first case of this coronavirus in late January 2020 in the southern state of Kerala. That led to a nation-wide lockdown between March and June that year to curb numbers from rising. After marginal success, the economy opened up leading to some recovery for the rest of 2020. In March 2021, however, the second wave hit the country causing record-breaking numbers of infections and deaths, crushing the healthcare system. The central government has been criticized for not taking action this time around, with "#ResignModi" trending on social media platforms in late April. The government's response was to block this line of content on the basis of fighting misinformation and reducing panic across the country.

  2. Statewise COVID-19 Data (India)

    • kaggle.com
    zip
    Updated Nov 26, 2021
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    Sonali Shanbhag (2021). Statewise COVID-19 Data (India) [Dataset]. https://www.kaggle.com/datasets/sonalishanbhag/statewise-covid19-data-india
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    zip(6941 bytes)Available download formats
    Dataset updated
    Nov 26, 2021
    Authors
    Sonali Shanbhag
    License

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

    Area covered
    India
    Description

    Context

    Data is extremely valuable; it can be considered a key to discovering trends and predicting the future. Studying already existent data can help provide a certain level of preparedness for any situation that may come. The aim is to obtain data of COVID-19 Statistics in India and compile it into a dataset, so that it can be used to visualize and analyze trends and patterns so as to prepare for the possibilities that may come. Presence of missing values allows its use for the study of imputation algorithms. It can also be used for building time-series models.

    Acknowledgements

    https://api.apify.com/v2/datasets/58a4VXwBBF0HtxuQa/items?format=json&clean=1 https://www.mohfw.gov.in/

  3. COVID-19 confirmed, recovered and deceased cumulative cases in India...

    • statista.com
    Updated Apr 29, 2021
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    Statista (2021). COVID-19 confirmed, recovered and deceased cumulative cases in India 2020-2023 [Dataset]. https://www.statista.com/statistics/1104054/india-coronavirus-covid-19-daily-confirmed-recovered-death-cases/
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    Dataset updated
    Apr 29, 2021
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Jan 29, 2020 - Oct 20, 2023
    Area covered
    India
    Description

    India reported almost 45 million cases of the coronavirus (COVID-19) as of October 20, 2023, with more than 44 million recoveries and about 532 thousand fatalities. The number of cases in the country had a decreasing trend in the past months.

    Burden on the healthcare system

    With the world's second largest population in addition to an even worse second wave of the coronavirus pandemic seems to be crushing an already inadequate healthcare system. Despite vast numbers being vaccinated, a new variant seemed to be affecting younger age groups this time around. The lack of ICU beds, black market sales of oxygen cylinders and drugs needed to treat COVID-19, as well as overworked crematoriums resorting to mass burials added to the woes of the country. Foreign aid was promised from various countries including the United States, France, Germany and the United Kingdom. Additionally, funding from the central government was expected to boost vaccine production.

    Situation overview
    Even though days in April 2021 saw record-breaking numbers compared to any other country worldwide, a nation-wide lockdown has not been implemented. The largest religious gathering - the Kumbh Mela, sacred to the Hindus, along with election rallies in certain states continue to be held. Some states and union territories including Maharashtra, Delhi, and Karnataka had issued curfews and lockdowns to try to curb the spread of infections.

  4. Novel Covid-19 Dataset

    • kaggle.com
    Updated Sep 18, 2025
    + more versions
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    GHOST5612 (2025). Novel Covid-19 Dataset [Dataset]. https://www.kaggle.com/datasets/ghost5612/novel-covid-19-dataset
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Sep 18, 2025
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    GHOST5612
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Description

    Context:

    From World Health Organization - On 31 December 2019, WHO was alerted to several cases of pneumonia in Wuhan City, Hubei Province of China. The virus did not match any other known virus. This raised concern because when a virus is new, we do not know how it affects people.

    So daily level information on the affected people can give some interesting insights when it is made available to the broader data science community.

    Johns Hopkins University has made an excellent dashboard using the affected cases data. Data is extracted from the google sheets associated and made available here.

    Edited:

    Now data is available as csv files in the Johns Hopkins Github repository. Please refer to the github repository for the Terms of Use details. Uploading it here for using it in Kaggle kernels and getting insights from the broader DS community.

    Content

    2019 Novel Coronavirus (2019-nCoV) is a virus (more specifically, a coronavirus) identified as the cause of an outbreak of respiratory illness first detected in Wuhan, China. Early on, many of the patients in the outbreak in Wuhan, China reportedly had some link to a large seafood and animal market, suggesting animal-to-person spread. However, a growing number of patients reportedly have not had exposure to animal markets, indicating person-to-person spread is occurring. At this time, it’s unclear how easily or sustainably this virus is spreading between people - CDC

    This dataset has daily level information on the number of affected cases, deaths and recovery from 2019 novel coronavirus. Please note that this is a time series data and so the number of cases on any given day is the cumulative number.

    The data is available from 22 Jan, 2020.

    Here’s a polished version suitable for a professional Kaggle dataset description:

    Dataset Description

    This dataset contains time-series and case-level records of the COVID-19 pandemic. The primary file is covid_19_data.csv, with supporting files for earlier records and individual-level line list data.

    Files and Columns

    1. covid_19_data.csv (Main File)

    This is the primary dataset and contains aggregated COVID-19 statistics by location and date.

    • Sno – Serial number of the record
    • ObservationDate – Date of the observation (MM/DD/YYYY)
    • Province/State – Province or state of the observation (may be missing for some entries)
    • Country/Region – Country of the observation
    • Last Update – Timestamp (UTC) when the record was last updated (not standardized, requires cleaning before use)
    • Confirmed – Cumulative number of confirmed cases on that date
    • Deaths – Cumulative number of deaths on that date
    • Recovered – Cumulative number of recoveries on that date

    2. 2019_ncov_data.csv (Legacy File)

    This file contains earlier COVID-19 records. It is no longer updated and is provided only for historical reference. For current analysis, please use covid_19_data.csv.

    3. COVID_open_line_list_data.csv

    This file provides individual-level case information, obtained from an open data source. It includes patient demographics, travel history, and case outcomes.

    4. COVID19_line_list_data.csv

    Another individual-level case dataset, also obtained from public sources, with detailed patient-level information useful for micro-level epidemiological analysis.

    ✅ Use covid_19_data.csv for up-to-date aggregated global trends.

    ✅ Use the line list datasets for detailed, individual-level case analysis.

    Country level datasets:

    If you are interested in knowing country level data, please refer to the following Kaggle datasets:

    India - https://www.kaggle.com/sudalairajkumar/covid19-in-india

    South Korea - https://www.kaggle.com/kimjihoo/coronavirusdataset

    Italy - https://www.kaggle.com/sudalairajkumar/covid19-in-italy

    Brazil - https://www.kaggle.com/unanimad/corona-virus-brazil

    USA - https://www.kaggle.com/sudalairajkumar/covid19-in-usa

    Switzerland - https://www.kaggle.com/daenuprobst/covid19-cases-switzerland

    Indonesia - https://www.kaggle.com/ardisragen/indonesia-coronavirus-cases

    Acknowledgements :

    Johns Hopkins University for making the data available for educational and academic research purposes

    MoBS lab - https://www.mobs-lab.org/2019ncov.html

    World Health Organization (WHO): https://www.who.int/

    DXY.cn. Pneumonia. 2020. http://3g.dxy.cn/newh5/view/pneumonia.

    BNO News: https://bnonews.com/index.php/2020/02/the-latest-coronavirus-cases/

    National Health Commission of the People’s Republic of China (NHC): http://www.nhc.gov.cn/xcs/yqtb/list_gzbd.shtml

    China CDC (CCDC): http://weekly.chinacdc.cn/news/TrackingtheEpidemic.htm

    Hong Kong Department of Health: https://www.chp.gov.hk/en/features/102465.html

    Macau Government: https://www.ssm.gov.mo/portal/

    Taiwan CDC: https://sites.google....

  5. Coronavirus (COVID-19) cases, recoveries, and deaths worldwide as of May 2,...

    • statista.com
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    Statista, Coronavirus (COVID-19) cases, recoveries, and deaths worldwide as of May 2, 2023 [Dataset]. https://www.statista.com/statistics/1087466/covid19-cases-recoveries-deaths-worldwide/
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    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    May 2, 2023
    Area covered
    Worldwide
    Description

    As of May 2, 2023, there were roughly 687 million global cases of COVID-19. Around 660 million people had recovered from the disease, while there had been almost 6.87 million deaths. The United States, India, and Brazil have been among the countries hardest hit by the pandemic.

    The various types of human coronavirus The SARS-CoV-2 virus is the seventh known coronavirus to infect humans. Its emergence makes it the third in recent years to cause widespread infectious disease following the viruses responsible for SARS and MERS. A continual problem is that viruses naturally mutate as they attempt to survive. Notable new variants of SARS-CoV-2 were first identified in the UK, South Africa, and Brazil. Variants are of particular interest because they are associated with increased transmission.

    Vaccination campaigns Common human coronaviruses typically cause mild symptoms such as a cough or a cold, but the novel coronavirus SARS-CoV-2 has led to more severe respiratory illnesses and deaths worldwide. Several COVID-19 vaccines have now been approved and are being used around the world.

  6. COVID 19 Dataset - INDIA

    • kaggle.com
    zip
    Updated May 2, 2020
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    Ambili (2020). COVID 19 Dataset - INDIA [Dataset]. https://www.kaggle.com/ambilidn/covid19-dataset-india
    Explore at:
    zip(109621 bytes)Available download formats
    Dataset updated
    May 2, 2020
    Authors
    Ambili
    Area covered
    India
    Description

    Context

    This is a Covid 19 data set for India. The data set is updated frequently and is analysed using tableau. Click on the link to visit the tableau story. Click each of the caption in the story to unveil its content.

    https://public.tableau.com/profile/ambili.nair#!/vizhome/COVID19Indiastory/Indiastory?publish=yes

    The first Covid 19 case in India was reported on 30th January 2020 in South Indian state of Kerala on a medical student who was pursuing the studies at Wuhan University, China. Two more students were found to be infected in Kerala in the consecutive days. The Kerala government was successful in containing the disease with its proactive measures back then. The second outbreak of Covid 19 in India started in the first week of March from various parts of India in various people who visited the foreign countries and in some of the tourists from different countries.

    The tableau story consists of the following data analysis : 1. State-wise number of infected and number of death count in India map. Hover the mouse on each state in the India map to know the count. 2. Click on the next caption to know the state-wise number of confirmed, active, recovered and deceased cases in the form of bar chart. 3. The next caption takes you to the bar chart which shows the number of cases getting confirmed in India each day starting from January 30, 2020. 4. Next caption takes us to an analysis of the Mortality rate and the Recovery rate (in percentage) of each of the Indian state. We get an idea how hard each of the state is hit by the pandemic. 5. Next caption gives a detailed analysis of the state Kerala which has the mortality rate of 0.806% and the recovery rate of 74.4% as of now. Hover the mouse to know the count in each district. Don't forget to have a look at the line graph of 'number of active cases' in Kerala. It looks almost flattened ! As everyday we hear the increasing number of cases and deaths across the country, this graph may make you feel better...! 6. Finally the caption takes you to the statistics from the topmost district of Kerala - Kasaragod. The total number of cases reported is 179 at Kasaragod. The active number of cases is just 12 as of now... !!! Have a look at the statistics from Kasaragod and the story of 'Kasaragod model' as some of the national media in India call it !!!

    Content

    This data set consists of the following data: 1. state-wise statistics - Confirmed, Active, Recovered, Deceased cases 2. day-wise count of infected and deceased from various states 3. Statistics from Kerala - day-wise count of confirmed, Active, Recovered, Deceased cases 4. Statistics from Kasaragod district, Kerala - day-wise count of confirmed, Active, Recovered, Deceased cases 5. Count of confirmed cases from various districts of India

    Acknowledgements

    Ministry of Health and Family Welfare - India covid19india.org Wikipedia page - Covid 19 Pandemic India Govt. of Kerala dashboard - official Kerala Covid 19 statistics

    Inspiration

    Inspiration

    Your data will be in front of the world's largest data science community. What questions do you want to see answered?

  7. Economic recovery after COVID-19 India 2022

    • statista.com
    Updated Nov 26, 2025
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    Statista (2025). Economic recovery after COVID-19 India 2022 [Dataset]. https://www.statista.com/statistics/1203678/india-economic-recovery-after-covid-19/
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    Dataset updated
    Nov 26, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Mar 11, 2022 - Mar 24, 2022
    Area covered
    India
    Description

    In a survey conducted in March 2022, over ** percent of the participants felt optimistic about the recovery of India's economic situation after the COVID-19 pandemic. In comparison, **** percent of the respondents believed that the pandemic would have a long-lasting impact on the country's economic progress.

  8. Latest Covid-19 Cases Maharashtra, India

    • kaggle.com
    zip
    Updated May 3, 2022
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    Anandhu H (2022). Latest Covid-19 Cases Maharashtra, India [Dataset]. https://www.kaggle.com/anandhuh/latest-covid19-cases-maharashtra-india
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    zip(996 bytes)Available download formats
    Dataset updated
    May 3, 2022
    Authors
    Anandhu H
    License

    http://opendatacommons.org/licenses/dbcl/1.0/http://opendatacommons.org/licenses/dbcl/1.0/

    Area covered
    Maharashtra, India
    Description

    Content

    District-wise Covid-19 data of Maharashtra, a state in India as on April 29, 2022. The data include number of positive cases, active cases, recovered, deceased cases, recovery rate and fatality rate.

    Attribute Information

    Cumulative Cases by Districts

    1. Districts - Name of districts in Maharashtra, India
    2. Positive Cases - Number of positive cases
    3. Active Cases - Number of active cases
    4. Recovered - Number of recovered cases
    5. Deceased - Number of deaths
    6. Recovery Rate (%) - Ratio of number of recovered cases to positive cases
    7. Fatality Rate (%) - Ratio of number of deaths to positive cases

    Source

    Link : https://www.covid19maharashtragov.in/mh-covid/dashboard

    Other Updated Covid19 Datasets

    Link : https://www.kaggle.com/anandhuh/datasets

    If you find it useful, please support by upvoting 👍

    Thank You

  9. COVID-19 cases in Indian states 2023, by type

    • statista.com
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    Statista, COVID-19 cases in Indian states 2023, by type [Dataset]. https://www.statista.com/statistics/1103458/india-novel-coronavirus-covid-19-cases-by-state/
    Explore at:
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    India
    Description

    The Indian state of Punjab reported the highest number of active coronavirus (COVID-19) cases of over one thousand cases as of October 20, 2023. Kerala and Karnataka followed, with relatively lower casualties. That day, there were a total of over 44 million confirmed infections across India.

  10. D

    Impact of Covid 19 on the Indian Economy

    • ssh.datastations.nl
    pdf, zip
    Updated Oct 7, 2021
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    RAKSHIT Madan Bagde; RAKSHIT Madan Bagde (2021). Impact of Covid 19 on the Indian Economy [Dataset]. http://doi.org/10.17026/DANS-XV6-5CC9
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    zip(14849), pdf(639199)Available download formats
    Dataset updated
    Oct 7, 2021
    Dataset provided by
    DANS Data Station Social Sciences and Humanities
    Authors
    RAKSHIT Madan Bagde; RAKSHIT Madan Bagde
    License

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

    Area covered
    India
    Description

    At a time when the Indian economy is in full swing and the growth rate has been declining since 2014, the picture is that Covid 19 has reached the economy by early 2020. Corona, a contagious disease that originated in China, is now spreading all over the world and across India. The disease has infected over 41,94,728 people worldwide to date. And you see it growing steadily. Developed as well as developing countries have not escaped its effects. The result of this Covid 19 is a question mark over human existence. The question is how to sustain the means of survival. The development to date has been hampered by Covid 19. It will create new solutions on how to sustain the development, but it will be difficult and laborious to fill the gaps that have been reached. The lockdown accepted by India has had an impact on the entire economy. In this, many global organizations have indicated that India's growth rate will be 0%.

  11. Coronavirus (COVID-19) In-depth Dataset

    • kaggle.com
    zip
    Updated May 29, 2021
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    Pranjal Verma (2021). Coronavirus (COVID-19) In-depth Dataset [Dataset]. https://www.kaggle.com/pranjalverma08/coronavirus-covid19-indepth-dataset
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    zip(9882078 bytes)Available download formats
    Dataset updated
    May 29, 2021
    Authors
    Pranjal Verma
    License

    http://opendatacommons.org/licenses/dbcl/1.0/http://opendatacommons.org/licenses/dbcl/1.0/

    Description

    Context

    Covid-19 Data collected from various sources on the internet. This dataset has daily level information on the number of affected cases, deaths, and recovery from the 2019 novel coronavirus. Please note that this is time-series data and so the number of cases on any given day is the cumulative number.

    Content

    The dataset includes 28 files scrapped from various data sources mainly the John Hopkins GitHub repository, the ministry of health affairs India, worldometer, and Our World in Data website. The details of the files are as follows

    • countries-aggregated.csv A simple and cleaned data with 5 columns with self-explanatory names. -covid-19-daily-tests-vs-daily-new-confirmed-cases-per-million.csv A time-series data of daily test conducted v/s daily new confirmed case per million. Entity column represents Country name while code represents ISO code of the country. -covid-contact-tracing.csv Data depicting government policies adopted in case of contact tracing. 0 -> No tracing, 1-> limited tracing, 2-> Comprehensive tracing. -covid-stringency-index.csv The nine metrics used to calculate the Stringency Index are school closures; workplace closures; cancellation of public events; restrictions on public gatherings; closures of public transport; stay-at-home requirements; public information campaigns; restrictions on internal movements; and international travel controls. The index on any given day is calculated as the mean score of the nine metrics, each taking a value between 0 and 100. A higher score indicates a stricter response (i.e. 100 = strictest response). -covid-vaccination-doses-per-capita.csv A total number of vaccination doses administered per 100 people in the total population. This is counted as a single dose, and may not equal the total number of people vaccinated, depending on the specific dose regime (e.g. people receive multiple doses). -covid-vaccine-willingness-and-people-vaccinated-by-country.csv Survey who have not received a COVID vaccine and who are willing vs. unwilling vs. uncertain if they would get a vaccine this week if it was available to them. -covid_india.csv India specific data containing the total number of active cases, recovered and deaths statewide. -cumulative-deaths-and-cases-covid-19.csv A cumulative data containing death and daily confirmed cases in the world. -current-covid-patients-hospital.csv Time series data containing a count of covid patients hospitalized in a country -daily-tests-per-thousand-people-smoothed-7-day.csv Daily test conducted per 1000 people in a running week average. -face-covering-policies-covid.csv Countries are grouped into five categories: 1->No policy 2->Recommended 3->Required in some specified shared/public spaces outside the home with other people present, or some situations when social distancing not possible 4->Required in all shared/public spaces outside the home with other people present or all situations when social distancing not possible 5->Required outside the home at all times regardless of location or presence of other people -full-list-cumulative-total-tests-per-thousand-map.csv Full list of total tests conducted per 1000 people. -income-support-covid.csv Income support captures if the government is covering the salaries or providing direct cash payments, universal basic income, or similar, of people who lose their jobs or cannot work. 0->No income support, 1->covers less than 50% of lost salary, 2-> covers more than 50% of the lost salary. -internal-movement-covid.csv Showing government policies in restricting internal movements. Ranges from 0 to 2 where 2 represents the strictest. -international-travel-covid.csv Showing government policies in restricting international movements. Ranges from 0 to 2 where 2 represents the strictest. -people-fully-vaccinated-covid.csv Contains the count of fully vaccinated people in different countries. -people-vaccinated-covid.csv Contains the total count of vaccinated people in different countries. -positive-rate-daily-smoothed.csv Contains the positivity rate of various countries in a week running average. -public-gathering-rules-covid.csv Restrictions are given based on the size of public gatherings as follows: 0->No restrictions 1 ->Restrictions on very large gatherings (the limit is above 1000 people) 2 -> gatherings between 100-1000 people 3 -> gatherings between 10-100 people 4 -> gatherings of less than 10 people -school-closures-covid.csv School closure during Covid. -share-people-fully-vaccinated-covid.csv Share of people that are fully vaccinated. -stay-at-home-covid.csv Countries are grouped into four categories: 0->No measures 1->Recommended not to leave the house 2->Required to not leave the house with exceptions for daily exercise, grocery shopping, and ‘essent...
  12. f

    Data_Sheet_1_Patient Flow Dynamics in Hospital Systems During Times of...

    • datasetcatalog.nlm.nih.gov
    • frontiersin.figshare.com
    Updated Dec 8, 2020
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    Dube, Amitabh; Shukla, Jyotsna; Dia, Sunita; Singhal, Sanjay; Bhandari, Sudhir; Gupta, Jitendra; Wehner, Todd C.; Shaktawat, Ajit Singh; Tak, Amit; Dia, Mahendra; Patel, Bhoopendra; Kakkar, Shivankan (2020). Data_Sheet_1_Patient Flow Dynamics in Hospital Systems During Times of COVID-19: Cox Proportional Hazard Regression Analysis.PDF [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0000542594
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    Dataset updated
    Dec 8, 2020
    Authors
    Dube, Amitabh; Shukla, Jyotsna; Dia, Sunita; Singhal, Sanjay; Bhandari, Sudhir; Gupta, Jitendra; Wehner, Todd C.; Shaktawat, Ajit Singh; Tak, Amit; Dia, Mahendra; Patel, Bhoopendra; Kakkar, Shivankan
    Description

    Objectives: The present study is aimed at estimating patient flow dynamic parameters and requirement for hospital beds. Second, the effects of age and gender on parameters were evaluated.Patients and Methods: In this retrospective cohort study, 987 COVID-19 patients were enrolled from SMS Medical College, Jaipur (Rajasthan, India). The survival analysis was carried out from February 29 through May 19, 2020, for two hazards: Hazard 1 was hospital discharge, and Hazard 2 was hospital death. The starting point for survival analysis of the two hazards was considered to be hospital admission. The survival curves were estimated and additional effects of age and gender were evaluated using Cox proportional hazard regression analysis.Results: The Kaplan Meier estimates of lengths of hospital stay (median = 10 days, IQR = 5–15 days) and median survival rate (more than 60 days due to a large amount of censored data) were obtained. The Cox model for Hazard 1 showed no significant effect of age and gender on duration of hospital stay. Similarly, the Cox model 2 showed no significant difference of age and gender on survival rate. The case fatality rate of 8.1%, recovery rate of 78.8%, mortality rate of 0.10 per 100 person-days, and hospital admission rate of 0.35 per 100,000 person-days were estimated.Conclusion: The study estimates hospital bed requirements based on median length of hospital stay and hospital admission rate. Furthermore, the study concludes there are no effects of age and gender on average length of hospital stay and no effects of age and gender on survival time in above-60 age groups.

  13. COVID-19 Community Mobility Reports

    • google.com
    • google.com.tr
    • +4more
    csv, pdf
    Updated Oct 17, 2022
    + more versions
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    Google (2022). COVID-19 Community Mobility Reports [Dataset]. https://www.google.com/covid19/mobility/
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    csv, pdfAvailable download formats
    Dataset updated
    Oct 17, 2022
    Dataset authored and provided by
    Googlehttp://google.com/
    Description

    As global communities responded to COVID-19, we heard from public health officials that the same type of aggregated, anonymized insights we use in products such as Google Maps would be helpful as they made critical decisions to combat COVID-19. These Community Mobility Reports aimed to provide insights into what changed in response to policies aimed at combating COVID-19. The reports charted movement trends over time by geography, across different categories of places such as retail and recreation, groceries and pharmacies, parks, transit stations, workplaces, and residential.

  14. Data from: REcovery and SURvival of patients with moderate to severe acute...

    • tandf.figshare.com
    docx
    Updated Aug 9, 2024
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    Raveendra KR; Chirag Rathod; Rahul Darnule; Subramanian Loganathan; Sarika Deodhar; Radhika A; Ashwani Marwah; Nitin M Chaudhari; Binay K Thakur; Sivakumar Vaidyanathan; Sandeep Nilkanth Athalye (2024). REcovery and SURvival of patients with moderate to severe acute REspiratory distress syndrome (ARDS) due to COVID-19: a multicenter, single-arm, Phase IV itolizumab Trial: RESURRECT [Dataset]. http://doi.org/10.6084/m9.figshare.22716526.v1
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    docxAvailable download formats
    Dataset updated
    Aug 9, 2024
    Dataset provided by
    Taylor & Francishttps://taylorandfrancis.com/
    Authors
    Raveendra KR; Chirag Rathod; Rahul Darnule; Subramanian Loganathan; Sarika Deodhar; Radhika A; Ashwani Marwah; Nitin M Chaudhari; Binay K Thakur; Sivakumar Vaidyanathan; Sandeep Nilkanth Athalye
    License

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

    Description

    Itolizumab, an anti-CD6 monoclonal antibody, down-regulates COVID-19-mediated inflammation and the acute effects of cytokine release syndrome. This study aimed to evaluate the safety and efficacy of itolizumab in hospitalized COVID-19 patients with PaO2/FiO2 ratio (PFR) ≤200 requiring oxygen therapy. This multicenter, single-arm, Phase 4 study enrolled 300 hospitalized adults with SARS-CoV-2 infection, PFR ≤200, oxygen saturation ≤94%, and ≥1 elevated inflammatory markers from 17 COVID-19 specific tertiary Indian hospitals. Patients received 1.6 mg/kg of itolizumab infusion, were assessed for 1 month, and followed-up to Day 90. Primary outcome measures included incidence of severe acute infusion-related reactions (IRRs) (≥Grade-3) and mortality rate at 1 month. Incidence of severe acute IRRs was 1.3% and mortality rate at 1 month was 6.7% (n = 20/300). Mortality rate at Day 90 was 8.0% (n = 24/300). By Day 7, most patients had stable/improved SpO2 without increasing FiO2 and by Day 30, 91.7% patients were off oxygen therapy. Overall, 63 and 10 patients, respectively, reported 123 and 11 treatment-emergent adverse events up to Days 30 and 90. No deaths were attributable to itolizumab. Patient-reported outcomes showed gradual and significant improvement for all five dimensions on EQ-5D-5L. Itolizumab demonstrated acceptable safety with a favorable prognosis in hospitalized COVID-19 patients. CTRI/2020/09/027941 (Clinical Trials Registry of India).

  15. Data from: Estimation of the economic burden of COVID-19 using...

    • figshare.com
    xlsx
    Updated Jul 17, 2021
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    M.S. Narassima; Denny John; Guru Rajesh Jammy; Jaideep Menon; Amitava Banerjee (2021). Estimation of the economic burden of COVID-19 using Disability-Adjusted Life Years (DALYs) and Productivity Losses in Kerala, India: A model based analysis [Dataset]. http://doi.org/10.6084/m9.figshare.14999616.v1
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    xlsxAvailable download formats
    Dataset updated
    Jul 17, 2021
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    M.S. Narassima; Denny John; Guru Rajesh Jammy; Jaideep Menon; Amitava Banerjee
    License

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

    Area covered
    Kerala, India
    Description

    Objectives: From the beginning of the COVID-19 pandemic, clinical practice and research, globally, have centered on the prevention of transmission and treatment of the disease. The pandemic has had a huge impact on the economy and stressed the healthcare systems worldwide. The present study estimates Disability-Adjusted Life Years (DALYs), Years of Potential Productive Life Lost (YPPLL), and Cost of Productivity Lost (CPL) due to premature mortality and absenteeism, secondary to COVID-19 in Kerala state, India.

    Setting: Details on sociodemography, incidence, death, quarantine, recovery time, etc were derived from public sources and CODD-K for Kerala. The working proportion for 5-year age-gender cohorts and corresponding life expectancy were obtained from the Census of India 2011.

    Primary and secondary outcome measures: The impact of disease was computed through model based analysis on various age-gender cohorts. Sensitivity Analysis has been conducted by adjusting six variables across 21 scenarios. We present two estimates, one till November 15, 2020, and later updated till June 10, 2021.

    Results: Severity of infection and mortality were higher among the older cohorts, with males being more susceptible than females in most sub-groups. The DALYs for males and females were 15954.5 and 8638.4 till November 15, 2020, and 83853.0 and 56628.3 till June 10, 2021. The corresponding YPPLL were 1323.57 and 612.31 till November 15, 2020, and 6993.04 and 3811.57 till June 10, 2021 and CPL (premature mortality) were 263780579.94 and 41836001.82 till November 15, 2020, and 1419557903.76 and 278275495.29 till June 10, 2021.

    Conclusions: Most of the COVID-19 disease burden was contributed by YLL. Losses due to YPPLL were reduced as the impact of COVID-19 infection was lesser among productive cohorts. CPL values for 40-49 year-olds were the highest. These estimates provide the data necessary for policymakers to work on, to reduce the economic burden of COVID-19 in Kerala.

  16. COVID-19 cases and deaths per million in 210 countries as of July 13, 2022

    • statista.com
    Updated Jul 13, 2022
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    Statista (2022). COVID-19 cases and deaths per million in 210 countries as of July 13, 2022 [Dataset]. https://www.statista.com/statistics/1104709/coronavirus-deaths-worldwide-per-million-inhabitants/
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    Dataset updated
    Jul 13, 2022
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

    Based on a comparison of coronavirus deaths in 210 countries relative to their population, Peru had the most losses to COVID-19 up until July 13, 2022. As of the same date, the virus had infected over 557.8 million people worldwide, and the number of deaths had totaled more than 6.3 million. Note, however, that COVID-19 test rates can vary per country. Additionally, big differences show up between countries when combining the number of deaths against confirmed COVID-19 cases. The source seemingly does not differentiate between "the Wuhan strain" (2019-nCOV) of COVID-19, "the Kent mutation" (B.1.1.7) that appeared in the UK in late 2020, the 2021 Delta variant (B.1.617.2) from India or the Omicron variant (B.1.1.529) from South Africa.

    The difficulties of death figures

    This table aims to provide a complete picture on the topic, but it very much relies on data that has become more difficult to compare. As the coronavirus pandemic developed across the world, countries already used different methods to count fatalities, and they sometimes changed them during the course of the pandemic. On April 16, for example, the Chinese city of Wuhan added a 50 percent increase in their death figures to account for community deaths. These deaths occurred outside of hospitals and went unaccounted for so far. The state of New York did something similar two days before, revising their figures with 3,700 new deaths as they started to include “assumed” coronavirus victims. The United Kingdom started counting deaths in care homes and private households on April 29, adjusting their number with about 5,000 new deaths (which were corrected lowered again by the same amount on August 18). This makes an already difficult comparison even more difficult. Belgium, for example, counts suspected coronavirus deaths in their figures, whereas other countries have not done that (yet). This means two things. First, it could have a big impact on both current as well as future figures. On April 16 already, UK health experts stated that if their numbers were corrected for community deaths like in Wuhan, the UK number would change from 205 to “above 300”. This is exactly what happened two weeks later. Second, it is difficult to pinpoint exactly which countries already have “revised” numbers (like Belgium, Wuhan or New York) and which ones do not. One work-around could be to look at (freely accessible) timelines that track the reported daily increase of deaths in certain countries. Several of these are available on our platform, such as for Belgium, Italy and Sweden. A sudden large increase might be an indicator that the domestic sources changed their methodology.

    Where are these numbers coming from?

    The numbers shown here were collected by Johns Hopkins University, a source that manually checks the data with domestic health authorities. For the majority of countries, this is from national authorities. In some cases, like China, the United States, Canada or Australia, city reports or other various state authorities were consulted. In this statistic, these separately reported numbers were put together. For more information or other freely accessible content, please visit our dedicated Facts and Figures page.

  17. India COVID-19 data(January to September)

    • kaggle.com
    zip
    Updated Sep 29, 2020
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    Akshat Dubey (2020). India COVID-19 data(January to September) [Dataset]. https://www.kaggle.com/akshat0007/india-covid19-datajanuary-to-september
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    zip(3531 bytes)Available download formats
    Dataset updated
    Sep 29, 2020
    Authors
    Akshat Dubey
    Area covered
    India
    Description

    Context

    Coronavirus disease (COVID-19) is an infectious disease caused by a newly discovered coronavirus. Most people who fall sick with COVID-19 will experience mild to moderate symptoms and recover without special treatment. The virus that causes COVID-19 is mainly transmitted through droplets generated when an infected person coughs, sneezes, or exhales. These droplets are too heavy to hang in the air and quickly fall on floors or surfaces. You can be infected by breathing in the virus if you are within close proximity of someone who has COVID-19, or by touching a contaminated surface and then your eyes, nose o or mouth.

    Content

    The dataset contains data related to COVID-19 in India only. The dataset contains the date and the number of confirmed patients recovered patients, and deaths found on that particular date.

    Acknowledgements

    The data is provided by John Hopkins University, Baltimore, Maryland.

    Inspiration

    You can perform data analysis and visualization to discover trends and patterns in the data. Also, one can predict the forecast for next 15 days.

  18. Consumer perception regarding economic recovery after COVID-19 India 2020

    • statista.com
    Updated Sep 15, 2020
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    Statista (2020). Consumer perception regarding economic recovery after COVID-19 India 2020 [Dataset]. https://www.statista.com/statistics/1196203/india-consumer-perception-regarding-economic-recovery-after-covid-19/
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    Dataset updated
    Sep 15, 2020
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Sep 2020
    Area covered
    India
    Description

    In a survey conducted in September 2020, regarding consumer perception surrounding the economic recovery after coronavirus (COVID-19) in India, ** percent of the respondents are positive that the economy will bounce back to pre-COVID levels in the next few months. Majority of the respondents disagree that COVID-19 would cause a significant recession or a major economic depression.

  19. f

    TB indicators evaluated.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Jan 7, 2025
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    Trajman, Anete; Meehan, Sue-Ann; Marx, Florian M.; Verma, Sunita; de Villiers, Abigail K.; Hesseling, Anneke C.; Shah, Vaibhav V.; Osman, Muhammad; Tumu, Dheeraj; Struchiner, Claudio J.; Singh, Urvashi B.; Mattoo, Sanjay K.; Werneck, Guilherme L.; Alves, Layana C.; Choudhary, Megha (2025). TB indicators evaluated. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001286195
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    Dataset updated
    Jan 7, 2025
    Authors
    Trajman, Anete; Meehan, Sue-Ann; Marx, Florian M.; Verma, Sunita; de Villiers, Abigail K.; Hesseling, Anneke C.; Shah, Vaibhav V.; Osman, Muhammad; Tumu, Dheeraj; Struchiner, Claudio J.; Singh, Urvashi B.; Mattoo, Sanjay K.; Werneck, Guilherme L.; Alves, Layana C.; Choudhary, Megha
    Description

    Tuberculosis (TB) is the leading infectious disease cause of death worldwide. In recent years, stringent measures to contain the spread of SARS-CoV-2 have led to considerable disruptions of healthcare services for TB in many countries. The extent to which these measures have affected TB testing, treatment initiation and outcomes has not been comprehensively assessed. We aimed to estimate TB healthcare service disruptions occurring during the COVID-19 pandemic in Brazil, India, and South Africa. We obtained country-level TB programme and laboratory data and used autoregressive integrated moving average (ARIMA) time-series models to estimate healthcare service disruptions with respect to TB testing, treatment initiation, and treatment outcomes. We quantified disruptions as the percentage difference between TB indicator data observed during the COVID-19 pandemic compared with values for a hypothetical no-COVID scenario, predicted through forecasting of trends during a three-year pre-pandemic period. Annual estimates for 2020–2022 were derived from aggregated monthly data. We estimated that in 2020, the number of bacteriological tests conducted for TB diagnosis was 24.3% (95% uncertainty interval: 8.4%;36.6%) lower in Brazil, 27.8% (19.8;3 4.8%) lower in India, and 32.0% (28.9%;34.9%) lower in South Africa compared with values predicted for the no-COVID scenario. TB treatment initiations were 17.4% (13.9%;20.6%) lower than predicted in Brazil, 43.3% (39.8%;46.4%) in India, and 27.0% (15.2%;36.3%) in South Africa. Reductions in 2021 were less severe compared with 2020. The percentage deaths during TB treatment were 13.7% (8.1%; 19.7%) higher than predicted in Brazil, 1.7% (-8.9%;14.0%) in India and 21.8% (7.4%;39.2%) in South Africa. Our analysis suggests considerable disruptions of TB healthcare services occurred during the early phase of the COVID-19 pandemic in Brazil, India, and South Africa, with at least partial recovery in the following years. Sustained efforts to mitigate the detrimental impact of COVID-19 on TB healthcare services are needed.

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

    • statista.com
    Updated Mar 28, 2020
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    Statista (2020). COVID-19 death rates countries worldwide as of April 26, 2022 [Dataset]. https://www.statista.com/statistics/1105914/coronavirus-death-rates-worldwide/
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    Dataset updated
    Mar 28, 2020
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

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

    Where are these numbers coming from?

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

    A word on the flaws of numbers like this

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

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Statista, COVID-19 cases in India as of October 2023, by type [Dataset]. https://www.statista.com/statistics/1101713/india-covid-19-cases-by-type/
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COVID-19 cases in India as of October 2023, by type

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6 scholarly articles cite this dataset (View in Google Scholar)
Dataset authored and provided by
Statistahttp://statista.com/
Area covered
India
Description

India reported over 44 million confirmed cases of the coronavirus (COVID-19) as of October 20, 2023. The number of people infected with the virus was declining across the south Asian country.

What is the coronavirus?

COVID-19 is part of a large family of coronaviruses (CoV) that are transmitted from animals to people. The name COVID-19 is derived from the words corona, virus, and disease, while the number 19 represents the year that it emerged. Symptoms of COVID-19 resemble that of the common cold, with fever, coughing, and shortness of breath. However, serious infections can lead to pneumonia, multi-organ failure, severe acute respiratory syndrome, and even death, if appropriate medical help is not provided.

COVID-19 in India

India reported its first case of this coronavirus in late January 2020 in the southern state of Kerala. That led to a nation-wide lockdown between March and June that year to curb numbers from rising. After marginal success, the economy opened up leading to some recovery for the rest of 2020. In March 2021, however, the second wave hit the country causing record-breaking numbers of infections and deaths, crushing the healthcare system. The central government has been criticized for not taking action this time around, with "#ResignModi" trending on social media platforms in late April. The government's response was to block this line of content on the basis of fighting misinformation and reducing panic across the country.

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