npj Digital Medicine (Jul 2024)

Orchestrating explainable artificial intelligence for multimodal and longitudinal data in medical imaging

  • Aurélie Pahud de Mortanges,
  • Haozhe Luo,
  • Shelley Zixin Shu,
  • Amith Kamath,
  • Yannick Suter,
  • Mohamed Shelan,
  • Alexander Pöllinger,
  • Mauricio Reyes

DOI
https://doi.org/10.1038/s41746-024-01190-w
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract Explainable artificial intelligence (XAI) has experienced a vast increase in recognition over the last few years. While the technical developments are manifold, less focus has been placed on the clinical applicability and usability of systems. Moreover, not much attention has been given to XAI systems that can handle multimodal and longitudinal data, which we postulate are important features in many clinical workflows. In this study, we review, from a clinical perspective, the current state of XAI for multimodal and longitudinal datasets and highlight the challenges thereof. Additionally, we propose the XAI orchestrator, an instance that aims to help clinicians with the synopsis of multimodal and longitudinal data, the resulting AI predictions, and the corresponding explainability output. We propose several desirable properties of the XAI orchestrator, such as being adaptive, hierarchical, interactive, and uncertainty-aware.