Fr\'echet Radiomic Distance (FRD): A Versatile Metric for Comparing Medical Imaging Datasets
Nicholas Konz, Richard Osuala, Preeti Verma, Yuwen Chen, Hanxue Gu, Haoyu Dong, Yaqian Chen, Andrew Marshall, Lidia Garrucho, Kaisar Kushibar, Daniel M. Lang, Gene S. Kim, Lars J. Grimm, John M. Lewin, James S. Duncan, Julia A. Schnabel, Oliver Diaz, Karim Lekadir

TL;DR
FRD is a new, clinically meaningful metric for comparing medical images that outperforms existing methods in various applications, offering interpretability, efficiency, and robustness.
Contribution
We introduce FRD, a novel perceptual metric tailored for medical images, addressing limitations of existing metrics by incorporating radiomic features and extensive evaluation.
Findings
FRD correlates better with downstream task performance.
FRD is more stable and computationally efficient.
FRD is sensitive to image corruptions and attacks.
Abstract
Determining whether two sets of images belong to the same or different distributions or domains is a crucial task in modern medical image analysis and deep learning; for example, to evaluate the output quality of image generative models. Currently, metrics used for this task either rely on the (potentially biased) choice of some downstream task, such as segmentation, or adopt task-independent perceptual metrics (e.g., Fr\'echet Inception Distance/FID) from natural imaging, which we show insufficiently capture anatomical features. To this end, we introduce a new perceptual metric tailored for medical images, FRD (Fr\'echet Radiomic Distance), which utilizes standardized, clinically meaningful, and interpretable image features. We show that FRD is superior to other image distribution metrics for a range of medical imaging applications, including out-of-domain (OOD) detection, the…
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Taxonomy
MethodsADaptive gradient method with the OPTimal convergence rate
