ट्विट्स

आपण @COVID19Tracking यांना अवरोधित केले आहे

आपणास निश्चितपणे ही ट्विट्स पहायची आहेत? तसे केल्याने @COVID19Tracking यांना अनब्लॉक केले जाणार नाही.

  1. पिन केलेल्या ट्विट्स
    ८ मार्च

    Our daily update is published. States reported 1.2 million tests, 41k cases, 40,212 hospitalized COVID-19 patients, and 839 deaths. This is our final day of data collection after a very long year.

    4 bar charts showing key COVID-19 metrics for the US over time. Today, states reported 1.2M tests, 41k cases, 40,212 currently hospitalized, and 839 deaths.
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  2. २८ मे

    We looked to automation as a way to support and supplement the manual work of our volunteers, rather than replace it. This kept us focused on making sure we understood the data & the conclusions we could draw from it, especially as the pandemic evolved.

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  3. २८ मे

    From March 2020 to March 2021, our volunteers spent well over 20,000 hours manually entering data. In this post, we talk about why we chose not to automate our data collection.

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  4. २४ मे

    We also link to in-depth resources, both from our own site and from others. Ultimately, what we’ve learned is that when people understand why public health metrics are complicated, trust in the data reporting process grows.

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  5. २४ मे

    It’s been valuable for us to revisit our year with COVID-19 data. In this post, we dig into our history of reporting tests, cases, deaths, hospitalizations, and recoveries, and we explore the definitional problems that regularly challenged our analysis.

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  6. २४ मे

    Our data collection ended in March, and soon, the full project will come to a close. In this summary post, we look at how states reported the 5 major COVID-19 metrics & how reporting complexities shaped our understanding of the pandemic.

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  7. २० मे

    The catch? The pipelines needed to send antigen test results to health officials are brand new. It’s likely we’ll never know just how many people with positive antigen results should have been counted as probable cases.

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  8. २० मे

    What we found was that a state’s testing strategy played an important role in shaping probable case counts. States with strong antigen testing programs no longer had to rely on contact tracing and symptom tracking, both difficult to perform at scale.

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  9. २० मे

    When states started updating their probable case definitions, as per guidance from the feds, the share of probable cases in their total case counts grew. Our research set out to explore the extent to which this growth was fueled by antigen tests alone.

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  10. २० मे

    As we’ve seen with many COVID-19 metrics, there’s often a veneer of uniformity obscuring quiet data discrepancies. In this piece, we look at probable COVID-19 case definitions and the decisions states made about how and when to adopt federal guidance.

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  11. १९ मे

    The inability to track death trends when it mattered most speaks to some of the greatest failures in the US handling of COVID-19: the incalculable tragedy of the lost lives & the infrastructure unable to collect data that might have informed a response and prevented such loss.

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  12. १९ मे

    Twice, the nation’s infrastructure was so overwhelmed that the death tally hit a ceiling, reflecting how many deaths out of the true total the US could count. Large backlogs of deaths from the winter were still being processed 4 months after the true peak.

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  13. १९ मे

    Real-time death counts were affected by both slowness in reporting, which made peaks in deaths appear like they happened later than they did, and by reporting capacity limits, which made deaths look like they peaked lower than they did.

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  14. १९ मे

    To understand the effect of reporting lags on state COVID-19 death counts, we compared data compiled by the CDC from state dashboards to retrospective data published by some states that charts deaths on the day they actually occurred.

    Two graphs show 14-day averages and cumulative death counts for both the CDC's date of report COVID-19 data, compiled daily from state dashboards, and date of death data downloaded from states, for the seventeen states where the data is available. In the 14-day average graph, the CDC's data lags behind the date of death data, with lags at their worst during the third wave. In the cumulative graph, date of death counts of total deaths are consistently higher than the CDC's count until April.
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  15. १९ मे

    During the worst moments of the pandemic, the US public health data infrastructure could not keep up with COVID-19 death counts. Our new analysis looks at the effect of reporting lags on death data reported by states and the CDC:

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  16. १३ मे

    Our latest post digs into these issues and explores the tradeoffs we made in order to publish the best possible historical data.

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  17. १३ मे

    Time series charts can provide context on the progression of the pandemic. But presenting a sound time series requires wrestling with data delays, uneven reporting, and different methods of assigning data to dates.

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  18. ४ मे

    In this post, we detail how and why we built our screenshots system. We also hope to offer guidance for any future data collection project that relies on maintaining the provenance, history, and accuracy of data.

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  19. ४ मे

    After months of work, with hundreds of scripted screenshots and dozens of manual screenshots, we reached 100% coverage of our 797 core testing and outcomes data points.

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  20. ४ मे

    One of the foundational principles of The COVID Tracking Project is data transparency. We set out to take screenshots of state COVID-19 websites and dashboards to create an archive, show where our data came from, and maintain data history.

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  21. ३ मे

    We did what we could to explain the data to the people who wrote us, but the people who wrote us also helped us correct errors and understand our own data better. Here’s an inside look at our public help desk.

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