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Complexity-Driven Adversarial Validation for Corrupted Medical Imaging Data

Journal
Information
ISSN
2078-2489
Publisher
MDPI AG
Date Issued
2026
Author(s)
Renza, Diego
Brieva, Jorge  
Facultad de Ingeniería - CampCM  
Moya-Albor, Ernesto  
Facultad de Ingeniería - CampCM  
Type
text::journal::journal article
DOI
10.3390/info17020125
URL
https://scripta.up.edu.mx/handle/20.500.12552/12820
Abstract
Distribution shifts commonly arise in real-world machine learning scenarios in which the fundamental assumption that training and test data are drawn from independent and identically distributed samples is violated. In the case of medical data, such distribution shifts often occur during data acquisition and pose a significant challenge to the robustness and reliability of artificial intelligence systems in clinical practice. Additionally, quantifying these shifts without training a model remains a key open problem. This paper proposes a comprehensive methodological framework for evaluating the impact of such shifts on medical image datasets under artificial transformations that simulate acquisition variations, leveraging the Cumulative Spectral Gradient (CSG) score as a measure of multiclass classification complexity induced by distributional changes. Building on prior work, the proposed approach is meaningfully extended to twelve 2D medical imaging benchmarks from the MedMNIST collection, covering both binary and multiclass tasks, as well as grayscale and RGB modalities. We evaluate the metric analyzing its robustness to clinically inspired distribution shifts that are systematically simulated through motion blur, additive noise, brightness and contrast variation, and sharpness variation, each applied at three severity levels. This results in a large-scale benchmark that enables a detailed analysis of how dataset characteristics, transformation types, and distortion severity influence distribution shifts. Thus, the findings show that while the metric remains generally stable under noise and focus distortions, it is highly sensitive to variations in brightness and contrast. On the other hand, the proposed methodology is compared against Cleanlab’s widely used Non-IID score on the RetinaMNIST dataset using a pre-trained ResNet-50 model, including both class-wise analysis and correlation assessment between metrics. Finally, interpretability is incorporated through class activation map analysis on BloodMNIST and its corrupted variants to support and contextualize the quantitative findings. ©The authors ©MDPI.
Subjects

Data distribution shi...

Cumulative Spectral G...

CSG

MedMNIST

Image classification

Deep learning

License
Acceso Abierto
URL License
https://creativecommons.org/licenses/by-nc-sa/4.0/
How to cite
Renza, D., Brieva, J., & Moya-Albor, E. (2026). Complexity-Driven Adversarial Validation for Corrupted Medical Imaging Data. Information, 17(2), 125. https://doi.org/10.3390/info17020125

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