Abstract
The classification of medical images is a pivotal aspect of disease diagnosis, often enhanced by deep learning techniques. However, traditional approaches typically focus on unimodal medical image data, neglecting the integration of diverse non-image patient data. This paper proposes a novel Cross-Graph Modal Contrastive Learning (CGMCL) framework for multimodal structured data from different data domains to improve medical image classification. The model effectively integrates both image and non-image data by constructing cross-modality graphs and leveraging contrastive learning to align multimodal features in a shared latent space. An inter-modality feature scaling module further optimizes the representation learning process by reducing the gap between heterogeneous modalities. The proposed approach is evaluated on two datasets: a Parkinson’s disease (PD) dataset and a public melanoma dataset. Results demonstrate that CGMCL outperforms conventional unimodal methods in accuracy, interpretability, and early disease prediction. Additionally, the method shows superior performance in multi-class melanoma classification. The CGMCL framework provides valuable insights into medical image classification while offering improved disease interpretability and predictive capabilities. The code and data are available fromhttps://github.com/Ding1119/CGMCL.
| Original language | English |
|---|---|
| Article number | 130566 |
| Journal | Expert Systems with Applications |
| Volume | 303 |
| DOIs | |
| State | Published - 25 Mar 2026 |
Keywords
- Classification
- Contrastive learning
- Graph neural networks
- Multimodal fusion
- Neurodegenerative disease
- Parkinson’s disease
- Single photon emission computed tomography
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