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    AboutPolicies Privacy NoticeBlack Country Healthcare NHS Foundation TrustCoventry and Warwickshire Partnership NHS TrustDudley Group NHS Foundation TrustGeorge Eliot Hospital NHS TrustSandwell and West Birmingham NHS TrustSouth Warwickshire University NHS Foundation TrustUniversity Hospitals Birmingham NHS Foundation TrustUniversity Hospitals Coventry and Warwickshire NHS TrustWalsall Healthcare NHS Trust

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    Evaluating explainable Artificial Intelligence (XAI) techniques in chest radiology imaging through a human-centered lens

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    Author
    E Ihongbe, Izegbua
    Fouad, Shereen
    F Mahmoud, Taha
    Rajasekaran, Arvind
    Bhatia, Bahadar cc
    Affiliation
    Aston University; University Hospital of Sharjah; Sandwell and West Birmingham NHS Trust; University of Leicester
    Publication date
    2024-10-09
    Subject
    Radiology
    
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    Abstract
    The field of radiology imaging has experienced a remarkable increase in using of deep learning (DL) algorithms to support diagnostic and treatment decisions. This rise has led to the development of Explainable AI (XAI) system to improve the transparency and trust of complex DL methods. However, XAI systems face challenges in gaining acceptance within the healthcare sector, mainly due to technical hurdles in utilizing these systems in practice and the lack of human-centered evaluation/validation. In this study, we focus on visual XAI systems applied to DL-enabled diagnostic system in chest radiography. In particular, we conduct a user study to evaluate two prominent visual XAI techniques from the human perspective. To this end, we created two clinical scenarios for diagnosing pneumonia and COVID-19 using DL techniques applied to chest X-ray and CT scans. The achieved accuracy rates were 90% for pneumonia and 98% for COVID-19. Subsequently, we employed two well-known XAI methods, Grad-CAM (Gradient-weighted Class Activation Mapping) and LIME (Local Interpretable Model-agnostic Explanations), to generate visual explanations elucidating the AI decision-making process. The visual explainability results were shared through a user study, undergoing evaluation by medical professionals in terms of clinical relevance, coherency, and user trust. In general, participants expressed a positive perception of the use of XAI systems in chest radiography. However, there was a noticeable lack of awareness regarding their value and practical aspects. Regarding preferences, Grad-CAM showed superior performance over LIME in terms of coherency and trust, although concerns were raised about its clinical usability. Our findings highlight key user-driven explainability requirements, emphasizing the importance of multi-modal explainability and the necessity to increase awareness of XAI systems among medical practitioners. Inclusive design was also identified as a crucial need to ensure better alignment of these systems with user needs.
    Citation
    E Ihongbe I, Fouad S, F Mahmoud T, Rajasekaran A, Bhatia B. Evaluating Explainable Artificial Intelligence (XAI) techniques in chest radiology imaging through a human-centered Lens. PLoS One. 2024 Oct 9;19(10):e0308758. doi: 10.1371/journal.pone.0308758
    Type
    Article
    Handle
    http://hdl.handle.net/20.500.14200/6663
    Journal
    PLoS ONE
    Publisher
    Public Library of Science
    Collections
    Research (Articles)

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