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Predicting neoadjuvant therapy response in breast cancer from preoperative biopsy via spatial-semantic-differential learning and interpretable clinicopathological-guided fusion.

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Medical image analysis 📖 저널 OA 10.7% 2025: 0/7 OA 2026: 3/21 OA 2025~2026 2026 Vol.111() p. 104069 AI in cancer detection
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PubMed DOI OpenAlex 마지막 보강 2026-04-30
OpenAlex 토픽 · AI in cancer detection Breast Cancer Treatment Studies Radiomics and Machine Learning in Medical Imaging

Hou WT, Pu ZF, Xu ZY, Wu AH, Liu ZH, Zhao K

📝 환자 설명용 한 줄

Predicting pathological complete response (pCR) to neoadjuvant therapy (NAT) in breast cancer remains challenging due to high tumor heterogeneity and disparities across data modalities.

🔬 핵심 임상 통계 (초록에서 자동 추출 — 원문 검증 권장)
  • 95% CI 0.801-0.886

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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

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.

🏷️ 키워드 / MeSH 📖 같은 키워드 OA만

🏷️ 같은 키워드 · 무료전문 — 이 논문 MeSH/keyword 기반