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Abstract

Modern medical imaging systems increasingly use AI for analysis and diagnosis, yet the "black-box" nature of current deep learning algorithms limits their practical use in radiology. Explainable AI (XAI) aims to address this by making AI decisions more transparent and interpretable. In medical imaging, XAI tools often highlight critical regions in images to explain AI decisions, but their complex visual explanations and poor UI design impede their clinical adoption. This study introduced CHERIE, an XAI prototype designed to enhance transparency in AI-assisted chest radiology. Using our pre-developed XAI diagnostic tool for chest radiology, we adopted a user-centered design (UCD) methodology to develop user interfaces for the AI-enabled diagnostic tool. In particular, we engaged medical practitioners, AI developers, and HCI experts in a multidisciplinary co-design workshop. This collaborative effort was crucial in identifying requirements from the user perspectives, aiming to boost understanding and trust in AI-driven diagnostics. Our findings emphasise the need for UCD for the adoption of XAI systems, proposing user requirements to seamlessly integrate these systems into clinical workflows and effectively address end-user needs.
Original languageEnglish
Title of host publication 37th International BCS Human-Computer Interaction Conference
PublisherACM
Pages205-210
Number of pages6
DOIs
Publication statusPublished - 15 Jul 2024
Event37th International BCS Human-Computer Interaction Conference, BCS HCI 2024 - Preston, United Kingdom
Duration: 15 Jul 202417 Jul 2024

Conference

Conference37th International BCS Human-Computer Interaction Conference, BCS HCI 2024
Country/TerritoryUnited Kingdom
CityPreston
Period15/07/2417/07/24

Funding

FundersFunder number
Aston Digital Futures Institute

    Keywords

    • Co-design
    • Explainable AI
    • Medical imaging
    • User-centred design

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