Predicting neoadjuvant therapy response in breast cancer from preoperative biopsy via spatial-semantic-differential learning and interpretable clinicopathological-guided fusion.
2/5 보강
OpenAlex 토픽 ·
AI in cancer detection
Breast Cancer Treatment Studies
Radiomics and Machine Learning in Medical Imaging
Predicting pathological complete response (pCR) to neoadjuvant therapy (NAT) in breast cancer remains challenging due to high tumor heterogeneity and disparities across data modalities.
- 95% CI 0.801-0.886
APA
Wen-Tai Hou, Zi-Fei Pu, et al. (2026). Predicting neoadjuvant therapy response in breast cancer from preoperative biopsy via spatial-semantic-differential learning and interpretable clinicopathological-guided fusion.. Medical image analysis, 111, 104069. https://doi.org/10.1016/j.media.2026.104069
MLA
Wen-Tai Hou, et al.. "Predicting neoadjuvant therapy response in breast cancer from preoperative biopsy via spatial-semantic-differential learning and interpretable clinicopathological-guided fusion.." Medical image analysis, vol. 111, 2026, pp. 104069.
PMID
41934741 ↗
Abstract 한글 요약
Predicting pathological complete response (pCR) to neoadjuvant therapy (NAT) in breast cancer remains challenging due to high tumor heterogeneity and disparities across data modalities. This study introduces a multimodal learning framework that integrates whole-slide image (WSI) from preoperative biopsy with clinicopathological (CP) variables to predict pCR. The framework is built on two novel components: (1) a spatial-semantic-differential (SSD) learning layer that jointly models the multi-view heterogeneity of the tumor microenvironment in WSIs, and (2) an interpretable, CP-guided (ICG) fusion strategy that leverages CP variables to steer the fine-grained integration of WSI representations, further enriched by transcriptomic profiling. This design ensures dual-layer biological interpretability-semantic (linking CP variables to tissue types) and molecular (connecting decisions to pathways). Evaluated on a retrospective multi-center cohort of 950 breast cancer patients, our method achieved ROC-AUCs of 0.845 (95% CI: 0.801-0.886) on the internal set and 0.815 (95% CI: 0.755-0.873) on the external set, outperforming state-of-the-art benchmarks. Subgroup analysis confirmed robust performance across molecular subtypes (Luminal, HER2+, TNBC), and disease-free survival stratification affirmed its prognostic relevance, highlighting its potential to guide personalized treatment planning.
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