Section 01
Introduction: CMML Framework Empowers Robust Medical Diagnosis
This article introduces the Context-driven Missing-Modality Learning (CMML) framework, which addresses the challenge of missing modalities in medical diagnosis through innovative designs such as the Cascaded Residual Transformer Autoencoder (CRTA) and learnable context tokens. The framework outperforms state-of-the-art methods on three datasets: skin lesions (Derm7pt), eye diseases (ODIR), and meningiomas (MEN).
Original Authors and Source
- Original Author/Maintainer: arXiv authors
- Source Platform: arXiv
- Original Title: Context-driven Missing-Modality Learning for Robust Medical Diagnosis with Image-Tabular Data
- Original Link: http://arxiv.org/abs/2605.25968v1
- Source Publication/Update Time: 2026-05-25T15:44:26Z