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      Explainable AI in medical imaging: An overview for clinical practitioners - Saliency-based XAI approaches.

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          Abstract

          Since recent achievements of Artificial Intelligence (AI) have proven significant success and promising results throughout many fields of application during the last decade, AI has also become an essential part of medical research. The improving data availability, coupled with advances in high-performance computing and innovative algorithms, has increased AI's potential in various aspects. Because AI rapidly reshapes research and promotes the development of personalized clinical care, alongside its implementation arises an urgent need for a deep understanding of its inner workings, especially in high-stake domains. However, such systems can be highly complex and opaque, limiting the possibility of an immediate understanding of the system's decisions. Regarding the medical field, a high impact is attributed to these decisions as physicians and patients can only fully trust AI systems when reasonably communicating the origin of their results, simultaneously enabling the identification of errors and biases. Explainable AI (XAI), becoming an increasingly important field of research in recent years, promotes the formulation of explainability methods and provides a rationale allowing users to comprehend the results generated by AI systems. In this paper, we investigate the application of XAI in medical imaging, addressing a broad audience, especially healthcare professionals. The content focuses on definitions and taxonomies, standard methods and approaches, advantages, limitations, and examples representing the current state of research regarding XAI in medical imaging. This paper focuses on saliency-based XAI methods, where the explanation can be provided directly on the input data (image) and which naturally are of special importance in medical imaging.

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          Author and article information

          Journal
          Eur J Radiol
          European journal of radiology
          Elsevier BV
          1872-7727
          0720-048X
          May 2023
          : 162
          Affiliations
          [1 ] Institute for Artificial Intelligence in Medicine, University Hospital Essen, Girardetstraße 2, 45131 Essen, Germany; Institute of Diagnostic and Interventional Radiology and Neuroradiology, University Hospital Essen, Hufelandstraße 55, 45147 Essen, Germany. Electronic address: Katarzyna.Borys@uk-essen.de.
          [2 ] Institute for Artificial Intelligence in Medicine, University Hospital Essen, Girardetstraße 2, 45131 Essen, Germany.
          [3 ] Institute for Artificial Intelligence in Medicine, University Hospital Essen, Girardetstraße 2, 45131 Essen, Germany; Data Management & Biometrics Group, University of Twente, Drienerlolaan 5, 7522 NB Enschede, The Netherlands.
          [4 ] Department of Social Psychology, Media and Communication, University of Duisburg-Essen, Forsthausweg 2, 47057 Duisburg, Germany; Research Center "Trustworthy Data Science and Security", Otto-Hahn-Straße 14, 44227 Dortmund, Germany.
          [5 ] Department of Computer Science, University of Applied Sciences and Arts Dortmund, Emil-Figge-Straße 42, 44227 Dortmund, Germany; Institute for Medical Informatics, Biometry, and Epidemiology (IMIBE), Zweigertstraße 37, 45130 Essen, Germany.
          [6 ] Institute for Artificial Intelligence in Medicine, University Hospital Essen, Girardetstraße 2, 45131 Essen, Germany; Institute of Diagnostic and Interventional Radiology and Neuroradiology, University Hospital Essen, Hufelandstraße 55, 45147 Essen, Germany.
          Article
          S0720-048X(23)00101-8
          10.1016/j.ejrad.2023.110787
          37001254
          af81b85a-7931-432e-97cb-6fb0d970f772
          History

          Radiology,Black-Box,Explainability,Explainable AI,Interpretability,Medical imaging

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