• AI helps radiologists detect bone fractu

    From ScienceDaily@1:317/3 to All on Tue Mar 29 22:30:40 2022
    AI helps radiologists detect bone fractures

    Date:
    March 29, 2022
    Source:
    Radiological Society of North America
    Summary:
    Artificial intelligence (AI) is an effective tool for fracture
    detection that has potential to aid clinicians in busy emergency
    departments, according to a new study.



    FULL STORY ========================================================================== Artificial intelligence (AI) is an effective tool for fracture detection
    that has potential to aid clinicians in busy emergency departments,
    according to a study in Radiology.


    ========================================================================== Missed or delayed diagnosis of fractures on X-ray is a common error with potentially serious implications for the patient. Lack of timely access
    to expert opinion as the growth in imaging volumes continues to outpace radiologist recruitment only makes the problem worse.

    AI may help address this problem by acting as an aid to radiologists,
    helping to speed and improve fracture diagnosis.

    To learn more about the technology's potential in the fracture setting, a
    team of researchers in England reviewed 42 existing studies comparing the diagnostic performance in fracture detection between AI and clinicians. Of
    the 42 studies, 37 used X-ray to identify fractures, and five used CT.

    The researchers found no statistically significant differences between clinician and AI performance. AI's sensitivity for detecting fractures
    was 91- 92%.

    "We found that AI performed with a high degree of accuracy, comparable
    to clinician performance," said study lead author Rachel Kuo,
    M.B. B.Chir., from the Botnar Research Centre, Nuffield Department
    of Orthopaedics, Rheumatology and Musculoskeletal Sciences in Oxford,
    England. "Importantly, we found this to be the case when AI was validated
    using independent external datasets, suggesting that the results may
    be generalizable to the wider population." The study results point
    to several promising educational and clinical applications for AI in
    fracture detection, Dr. Kuo said. It could reduce the rate of early misdiagnosis in challenging circumstances in the emergency setting,
    including cases where patients may sustain multiple fractures. It has
    potential as an educational tool for junior clinicians.

    "It could also be helpful as a 'second reader,' providing clinicians
    with either reassurance that they have made the correct diagnosis or
    prompting them to take another look at the imaging before treating
    patients," Dr. Kuo said.

    Dr. Kuo cautioned that research into fracture detection by AI remains in
    a very early, pre-clinical stage. Only a minority of the studies that she
    and her colleagues looked at evaluated the performance of clinicians with
    AI assistance, and there was only one example where an AI was evaluated
    in a prospective study in a clinical environment.

    "It remains important for clinicians to continue to exercise their own judgment," Dr. Kuo said. "AI is not infallible and is subject to bias
    and error."

    ========================================================================== Story Source: Materials provided by
    Radiological_Society_of_North_America. Note: Content may be edited for
    style and length.


    ========================================================================== Journal References:
    1. Rachel Y. L. Kuo, Conrad Harrison, Terry-Ann Curran, Benjamin Jones,
    Alexander Freethy, David Cussons, Max Stewart, Gary S. Collins,
    Dominic Furniss. Artificial Intelligence in Fracture Detection:
    A Systematic Review and Meta-Analysis. Radiology, 2022; DOI:
    10.1148/radiol.211785
    2. Je're'mie F. Cohen, Matthew D. F. McInnes. Deep Learning
    Algorithms to
    Detect Fractures: Systematic Review Shows Promising Results but
    Many Limitations. Radiology, 2022; DOI: 10.1148/radiol.212966 ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2022/03/220329114710.htm

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