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    Why do errors arise in artificial intelligence diagnostic tools in histopathology and how can we minimize them?

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    Author
    Evans, Harriet
    Snead, David
    Affiliation
    University Hospitals Coventry and warwickshire NHS Trust
    Publication date
    2023-11-03
    Subject
    Clinical pathology
    
    Metadata
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    Abstract
    Artificial intelligence (AI)-based diagnostic tools can offer numerous benefits to the field of histopathology, including improved diagnostic accuracy, efficiency and productivity. As a result, such tools are likely to have an increasing role in routine practice. However, all AI tools are prone to errors, and these AI-associated errors have been identified as a major risk in the introduction of AI into healthcare. The errors made by AI tools are different, in terms of both cause and nature, to the errors made by human pathologists. As highlighted by the National Institute for Health and Care Excellence, it is imperative that practising pathologists understand the potential limitations of AI tools, including the errors made. Pathologists are in a unique position to be gatekeepers of AI tool use, maximizing patient benefit while minimizing harm. Furthermore, their pathological knowledge is essential to understanding when, and why, errors have occurred and so to developing safer future algorithms. This paper summarises the literature on errors made by AI diagnostic tools in histopathology. These include erroneous errors, data concerns (data bias, hidden stratification, data imbalances, distributional shift, and lack of generalisability), reinforcement of outdated practices, unsafe failure mode, automation bias, and insensitivity to impact. Methods to reduce errors in both tool design and clinical use are discussed, and the practical roles for pathologists in error minimisation are highlighted. This aims to inform and empower pathologists to move safely through this seismic change in practice and help ensure that novel AI tools are adopted safely.
    Citation
    Histopathology . 2024 Jan;84(2):279-287
    Type
    Article
    Handle
    http://hdl.handle.net/20.500.14200/4622
    Additional Links
    10.1016/j.media.2023.103047
    DOI
    10.1111/his.15071
    PMID
    37921030
    Journal
    Histopathology
    Publisher
    Wiley
    ae974a485f413a2113503eed53cd6c53
    10.1111/his.15071
    Scopus Count
    Collections
    Coventry and Warwickshire Pathology Network (CWPN)

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