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Incorporating global-local tissue changes to predict future breast cancer from longitudinal screening mammograms.

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Medical image analysis 📖 저널 OA 7.1% 2025: 0/7 OA 2026: 2/21 OA 2025~2026 2026 Vol.110() p. 103990 cited 1 AI in cancer detection
TL;DR The proposed Tarcking-Aware Breast Cancer Risk model (TA-BreaCR), a novel framework that integrates local-to-global multiscale longitudinal tissue changes and explicitly models the ordinal relationship of time to BC events, outperforming existing and state-of-the-art methods in both risk classification and time-to-event prediction tasks.
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PubMed DOI OpenAlex Semantic 마지막 보강 2026-04-29
OpenAlex 토픽 · AI in cancer detection Machine Learning in Healthcare Global Cancer Incidence and Screening

Wang X, Tan T, Gao Y, Marcus E, Zhou HY, Lu C

📝 환자 설명용 한 줄

The proposed Tarcking-Aware Breast Cancer Risk model (TA-BreaCR), a novel framework that integrates local-to-global multiscale longitudinal tissue changes and explicitly models the ordinal relationshi

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↓ .bib ↓ .ris
APA Xin Wang, Tao Tan, et al. (2026). Incorporating global-local tissue changes to predict future breast cancer from longitudinal screening mammograms.. Medical image analysis, 110, 103990. https://doi.org/10.1016/j.media.2026.103990
MLA Xin Wang, et al.. "Incorporating global-local tissue changes to predict future breast cancer from longitudinal screening mammograms.." Medical image analysis, vol. 110, 2026, pp. 103990.
PMID 41747525 ↗

Abstract

Early detection of breast cancer (BC) through mammography screening is critical for reducing mortality and improving patient outcomes. However, full-population-based, age-driven screening might not lead to optimal resource use and may enlarge screening associated harms in low risk women. Accurate and interpretable BC risk prediction is essential to improve strategies and make screening more personalized. Although recent deep learning models have shown promise in leveraging mammograms for risk stratification, challenges remain in interpretable modeling of temporal changes, efficiently capturing multi-scale risk tissue features from large-scale images, and precise time prediction to enhance clinical interpretability. In this study, we propose Tarcking-Aware Breast Cancer Risk model (TA-BreaCR), a novel framework that integrates local-to-global multiscale longitudinal tissue changes and explicitly models the ordinal relationship of time to BC events, enabling joint prediction of both future BC risk and estimated time to onset. The model is evaluated on two datasets (In-house and EMBED), outperforming existing and state-of-the-art methods in both risk classification and time-to-event prediction tasks. Visualization analysis reveals consistent attention to high-risk regions over time, enhancing interpretability. These results highlight the potential of TA-BreaCR to support individualized BC screening and prevention.

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