Retrieving Patient-Specific Radiomic Feature Sets for Transparent Knee MRI Assessment
Yaxi Chen, Simin Ni, Jingjing Zhang, Shaheer U. Saeed, Yipei Wang, Aleksandra Ivanova, Rikin Hargunani, Chaozong Liu, Jie Huang, Yipeng Hu

TL;DR
This paper introduces a patient-specific radiomic feature selection framework for knee MRI assessment, improving diagnostic accuracy and interpretability over traditional methods by selecting diverse, complementary features tailored to each patient.
Contribution
It proposes a novel two-stage retrieval strategy for patient-specific feature set selection that enhances interpretability and performance compared to existing top-k approaches.
Findings
Outperforms top-k radiomic feature selection in diagnostic tasks.
Achieves competitive performance with end-to-end deep learning models.
Provides interpretable, patient-specific feature sets linking clinical outcomes to anatomy.
Abstract
Classical radiomic features are designed to quantify image appearance and intensity patterns. Compared with end-to-end deep learning (DL) models trained for disease classification, radiomics pipelines with low-dimensional parametric classifiers offer enhanced transparency and interpretability, yet often underperform because of the reliance on population-level predefined feature sets. Recent work on adaptive radiomics uses DL to predict feature weights over a radiomic pool, then thresholds these weights to retain the top-k features from large radiomic pool F (often ~10^3). However, such marginal ranking can over-admit redundant descriptors and overlook complementary feature interactions. We propose a patient-specific feature-set selection framework that predicts a single compact feature set per subject, targeting complementary and diverse evidence rather than marginal top-k features. To…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Artificial Intelligence in Healthcare and Education · Medical Imaging and Analysis
