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    Con: artificial intelligence-derived algorithms to guide perioperative blood management decision making

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    Author
    Yusuff, Hakeem
    Zochios, Vasileios
    Keyword
    Perioperative blood management
    Artificial intelligence
    Date
    2023-10
    
    Metadata
    Show full item record
    DOI
    10.1053/j.jvca.2023.04.021
    Publisher's URL
    https://www.jcvaonline.com/article/S1053-0770(23)00256-2/fulltext
    Abstract
    Artificial intelligence has the potential to improve the care that is given to patients; however, the predictive models created are only as good as the base data used in their design. Perioperative blood management presents a complex clinical conundrum in which significant variability and the unstructured nature of the required data make it difficult to develop precise prediction models. There is a potential need for training clinicians to ensure they can interrogate the system and override when errors occur. Current systems created to predict perioperative blood transfusion are not generalizable across clinical settings, and there is a considerable cost implication required to research and develop artificial intelligence systems that would disadvantage resource-poor health systems. In addition, a lack of strong regulation currently means it is difficult to prevent bias.
    Citation
    Mbbs, Y. H., & Md, Z. V. (2023). Con: Artificial Intelligence-Derived Algorithms to Guide Perioperative Blood Management Decision Making. Journal of cardiothoracic and vascular anesthesia, 37(10), 2145–2147. https://doi.org/10.1053/j.jvca.2023.04.021
    Type
    Article
    URI
    http://hdl.handle.net/20.500.12904/17572
    Collections
    Intensive Care
    Theatres and Anaesthetics

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