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Main Authors: Chen, Yaxi, Ni, Simin, Li, Shuai, Saeed, Shaheer U., Ivanova, Aleksandra, Hargunani, Rikin, Huang, Jie, Liu, Chaozong, Hu, Yipeng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.08604
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author Chen, Yaxi
Ni, Simin
Li, Shuai
Saeed, Shaheer U.
Ivanova, Aleksandra
Hargunani, Rikin
Huang, Jie
Liu, Chaozong
Hu, Yipeng
author_facet Chen, Yaxi
Ni, Simin
Li, Shuai
Saeed, Shaheer U.
Ivanova, Aleksandra
Hargunani, Rikin
Huang, Jie
Liu, Chaozong
Hu, Yipeng
contents For automated assessment of knee MRI scans, both accuracy and interpretability are essential for clinical use and adoption. Traditional radiomics rely on predefined features chosen at the population level; while more interpretable, they are often too restrictive to capture patient-specific variability and can underperform end-to-end deep learning (DL). To address this, we propose two complementary strategies that bring individuality and interpretability: radiomic fingerprints and healthy personas. First, a radiomic fingerprint is a dynamically constructed, patient-specific feature set derived from MRI. Instead of applying a uniform population-level signature, our model predicts feature relevance from a pool of candidate features and selects only those most predictive for each patient, while maintaining feature-level interpretability. This fingerprint can be viewed as a latent-variable model of feature usage, where an image-conditioned predictor estimates usage probabilities and a transparent logistic regression with global coefficients performs classification. Second, a healthy persona synthesises a pathology-free baseline for each patient using a diffusion model trained to reconstruct healthy knee MRIs. Comparing features extracted from pathological images against their personas highlights deviations from normal anatomy, enabling intuitive, case-specific explanations of disease manifestations. We systematically compare fingerprints, personas, and their combination across three clinical tasks. Experimental results show that both approaches yield performance comparable to or surpassing state-of-the-art DL models, while supporting interpretability at multiple levels. Case studies further illustrate how these perspectives facilitate human-explainable biomarker discovery and pathology localisation.
format Preprint
id arxiv_https___arxiv_org_abs_2601_08604
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Interpretability and Individuality in Knee MRI: Patient-Specific Radiomic Fingerprint with Reconstructed Healthy Personas
Chen, Yaxi
Ni, Simin
Li, Shuai
Saeed, Shaheer U.
Ivanova, Aleksandra
Hargunani, Rikin
Huang, Jie
Liu, Chaozong
Hu, Yipeng
Computer Vision and Pattern Recognition
Machine Learning
For automated assessment of knee MRI scans, both accuracy and interpretability are essential for clinical use and adoption. Traditional radiomics rely on predefined features chosen at the population level; while more interpretable, they are often too restrictive to capture patient-specific variability and can underperform end-to-end deep learning (DL). To address this, we propose two complementary strategies that bring individuality and interpretability: radiomic fingerprints and healthy personas. First, a radiomic fingerprint is a dynamically constructed, patient-specific feature set derived from MRI. Instead of applying a uniform population-level signature, our model predicts feature relevance from a pool of candidate features and selects only those most predictive for each patient, while maintaining feature-level interpretability. This fingerprint can be viewed as a latent-variable model of feature usage, where an image-conditioned predictor estimates usage probabilities and a transparent logistic regression with global coefficients performs classification. Second, a healthy persona synthesises a pathology-free baseline for each patient using a diffusion model trained to reconstruct healthy knee MRIs. Comparing features extracted from pathological images against their personas highlights deviations from normal anatomy, enabling intuitive, case-specific explanations of disease manifestations. We systematically compare fingerprints, personas, and their combination across three clinical tasks. Experimental results show that both approaches yield performance comparable to or surpassing state-of-the-art DL models, while supporting interpretability at multiple levels. Case studies further illustrate how these perspectives facilitate human-explainable biomarker discovery and pathology localisation.
title Interpretability and Individuality in Knee MRI: Patient-Specific Radiomic Fingerprint with Reconstructed Healthy Personas
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2601.08604