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ChEX: Interactive Localization and Region Description in Chest X-Rays

MCML Authors

Georgios Kaissis

Dr.

Associate

* Former Associate

Abstract

Report generation models offer fine-grained textual interpretations of medical images like chest X-rays, yet they often lack interactivity (i.e. the ability to steer the generation process through user queries) and localized interpretability (i.e. visually grounding their predictions), which we deem essential for future adoption in clinical practice. While there have been efforts to tackle these issues, they are either limited in their interactivity by not supporting textual queries or fail to also offer localized interpretability. Therefore, we propose a novel multitask architecture and training paradigm integrating textual prompts and bounding boxes for diverse aspects like anatomical regions and pathologies. We call this approach the Chest X-Ray Explainer (ChEX). Evaluations across a heterogeneous set of 9 chest X-ray tasks, including localized image interpretation and report generation, showcase its competitiveness with SOTA models while additional analysis demonstrates ChEX's interactive capabilities.

inproceedings


ECCV 2024

18th European Conference on Computer Vision. Milano, Italy, Sep 29-Oct 04, 2024.
Conference logo
A* Conference

Authors

P. Müller • G. KaissisD. Rückert

Links

DOI GitHub

Research Area

 C1 | Medicine

BibTeXKey: MKR+24

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