Multiple Instance Learning (MIL) is increasingly being used as a support tool within clinical settings for pathological diagnosis decisions, achieving high performance and removing the annotation burden. However, existing approaches for clinical MIL tasks have not adequately addressed the priority issues that exist in relation to pathological symptoms and diagnostic classes, causing MIL models to ignore priority among classes. To overcome this clinical limitation of MIL, we propose a new method that addresses priority issues using two hierarchies: vertical inter-hierarchy and horizontal intra-hierarchy. The proposed method aligns MIL predictions across each hierarchical level and employs an implicit feature re-usability during training to facilitate clinically more serious classes within the same level. Experiments with real-world patient data show that the proposed method effectively reduces misdiagnosis and prioritizes more important symptoms in multiclass scenarios. Further analysis verifies the efficacy of the proposed components and qualitatively confirms the MIL predictions against challenging cases with multiple symptoms.
@article{arxiv.2507.20469,
title = {Priority-Aware Clinical Pathology Hierarchy Training for Multiple Instance Learning},
author = {Sungrae Hong and Kyungeun Kim and Juhyeon Kim and Sol Lee and Jisu Shin and Chanjae Song and Mun Yong Yi},
journal= {arXiv preprint arXiv:2507.20469},
year = {2025}
}
Comments
10 pages, 4 figures, Accepted for oral presentation by The 2nd MICCAI Student Board (MSB) EMERGE Workshop