Multimodal data integration in early-stage breast cancer
Date
2025-04Permanent link
http://hdl.handle.net/11351/12829DOI
10.1016/j.breast.2025.103892
ISSN
0960-9776
WOS
001424560700001
PMID
39922065
Abstract
The use of biomarkers in breast cancer has significantly improved patient outcomes through targeted therapies, such as hormone therapy anti-Her2 therapy and CDK4/6 or PARP inhibitors. However, existing knowledge does not fully encompass the diverse nature of breast cancer, particularly in triple-negative tumors. The integration of multi-omics and multimodal data has the potential to provide new insights into biological processes, to improve breast cancer patient stratification, enhance prognosis and response prediction, and identify new biomarkers. This review presents a comprehensive overview of the state-of-the-art multimodal (including molecular and image) data integration algorithms developed and with applicability to breast cancer stratification, prognosis, or biomarker identification. We examined the primary challenges and opportunities of these multimodal data integration algorithms, including their advantages, limitations, and critical considerations for future research. We aimed to describe models that are not only academically and preclinically relevant, but also applicable to clinical settings.
Keywords
Deep learning; Multi-omics; Multimodal data integrationBibliographic citation
Llinas-Bertran A, Butjosa-Espín M, Barberi V, Seoane JA. Multimodal data integration in early-stage breast cancer. The Breast. 2025 Apr;80:103892.
Audience
Professionals
This item appears in following collections
- VHIO - Articles científics [1250]
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