Article
Details
Citation
Menon TP, Mahajan A & Powell D (2026) Foundation model embeddings for multimodal oncology data integration. npj Digital Medicine, 9 (1). https://doi.org/10.1038/s41746-025-02312-8
Abstract
Cancer care generates vast quantities of data including clinical records, pathology images, radiology scans, and molecular profiles, yet these modalities are rarely integrated in a systematic,
automated manner within routine clinical workflows, remaining largely siloed across separate departmental and technical systems. Foundation model-driven embeddings—or numerical
representations (vectors) that summarize complex data such as text, images ,and molecular profiles—offer a framework to integrate these data streams into unified patient representations. Here we
examine the HONeYBEE platform’s approach to multimodal integration in oncology, situate it within broader developments in representation learning, and clinical and technical challenges that may.shape its path to implementation1
Journal
npj Digital Medicine: Volume 9, Issue 1
| Status | Published |
|---|---|
| Publication date online | 31/01/2026 |
| Date accepted by journal | 21/12/2025 |
| Publisher | Springer Science and Business Media LLC |
| ISSN | 2398-6352 |
| eISSN | 2398-6352 |
People (1)
Lecturer in Public Health & Innovation, Health Sciences Stirling