CHIP Informatics

@Bos_CHIP

Boston Children's Hospital Computational Health Informatics Program | Harvard Medical School

Boston, Massachusetts
Vrijeme pridruživanja: kolovoz 2014.

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  1. proslijedio/la je Tweet

    Out today is the first peer-reviewed basic reproduction number (R_0) estimate for . Consistent with ranges presented by others in pre-print (including me & 's), this team finds a mean R_0 of 2.2 []. Useful time-to-event distributions too.

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  2. proslijedio/la je Tweet
    27. sij

    This is huge. Thank you and thank you for being the first company to implement on

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  3. proslijedio/la je Tweet
    29. sij
    Odgovor korisnicima i sljedećem broju korisnika:

    Our approach to increasing the value for precision med is to embed biobanking in a federated network of medical centers and to link to *longitudinal* EHR-based phenotype. Creating a Genomic Information Commons.

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  4. proslijedio/la je Tweet
    28. sij

    Biomedical and computational health informatics open opportunities to move from generic evidence-based medicine to patient-specific medicine-based evidence. Read/listen to our conversation with expert :

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  5. proslijedio/la je Tweet
    24. sij

    Honored to have met Clayton many times, including through advisory board. Just this week I quoted Clayon on S1 vs S2 innovation at a top 10 pharma meeting: “I have no opinion but the models says...”. I say, RIP and thank you.

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  6. proslijedio/la je Tweet
    29. sij

    “People make the mistake of thinking that a high R0 means that you’re inevitably going to end up with a pandemic, and that’s not what it means at all.” ’s demystifies Ro in Thanks for a great piece.

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  7. proslijedio/la je Tweet
    27. sij

    . has been trying to get a copy of his health record for a month and can’t get his call returned. At the annual meeting, he advocated for personal control of health data, interoperability, and preventing information blocking,

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  8. proslijedio/la je Tweet

    We've updated our transmissibility assessment for ! R_0 estimates (based off of publicly reported confirmed cases through 1/26/20 & subject to change) remain ~stable, now ranging from 2.0 to 3.1. Pre-print will be updated soon: See thread below.

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  9. proslijedio/la je Tweet
    27. sij

    Excited to announce a new version of our course at Harvard, BMI704: Data Science for Medical Decision Making, and to be teaching with . We'll release lectures, data, and an interactive text of data science methods at link below. Sched + Readings:

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  10. proslijedio/la je Tweet
    27. sij

    Many factors in the coming days will inform updates to the nCoV2019 transmissibility model (reproductive number) that and I published last week. Great summary here by in ’s The Health 202.

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  11. proslijedio/la je Tweet
    27. sij

    In a opinion essay I wrote with we ask Epic to stop its aggressive campaign opposing interoperability and to not block patients' rights to computable copies of their health data.

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  12. proslijedio/la je Tweet
    26. sij

    Essential, broad-based support for -based interoperability in healthcare IT. Many leading companies, including , a major EHR vendor as well as and , are proudly opposing healthcare information blocking.

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  13. proslijedio/la je Tweet
    24. sij

    Clay was among the earliest supporters of an App Store model for Health. Here is the white paper we co-authored in 2009.

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  14. proslijedio/la je Tweet
    24. sij

    4) Harvard's & released a prelim analysis of 's infection rate (aka reproduction number aka R0 aka R-naught). Their results say a person infected w/ the coronavirus will likely transmit it to 2-3 people if close contact occurs

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  15. proslijedio/la je Tweet
    24. sij

    Patient-generated health data () to forecast . "An increase in the proportion of Fitbit users experiencing elevated resting heart rate might signal the occurrence of an infectious disease outbreak”

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  16. proslijedio/la je Tweet
    23. sij

    Google Dataset Search is now officially out of beta. "Dataset Search has indexed almost 25 million of these datasets, giving you a single place to search for datasets & find links to where the data is." Nice work, Natasha Noy and everyone else involved!

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  17. proslijedio/la je Tweet
    23. sij

    Collecting patient generated data as a fundamental property of health IT. SMART Markers, from the team. Digital Medicine

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  18. proslijedio/la je Tweet

    New pre-print by myself & : Early basic reproduction number estimates for range from 2.0 to 3.3 (based off of publicly reported confirmed cases through 1/22/20 & subject to change) []. Short explainer & several caveats in the thread below.

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  19. proslijedio/la je Tweet

    Happy ! Today we spotlight one of our terrific fellows, ! Dr. Arfè defended his dissertation in Italy THIS WEEK and works with Dr. Giovanni Parmigiani at

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  20. proslijedio/la je Tweet
    16. sij

    Our team, led by , just published 1st use of wearable resting heart rate, sleep sensor to study an infectious disease (flu) outbreak w/ Editorial by Cecile Viboud

    , , i još njih 4
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