The authors propose a novel method, named OA-BreaCR, to precisely model the ordinal relationship of the time to and between breast cancer (BC) events while incorporating longitudinal breast tissue changes in a more explainable manner.
The key highlights and insights are:
The ordinal learning framework is introduced to concurrently consider both time-to-event BC prediction and risk stratification tasks. This enables not only the precision of time predictions but also augments the model's capability to identify features indicative of BC development more effectively.
Attention alignment mechanisms are incorporated to explicitly capture risk-related changes from multi-time point mammograms in an interpretable manner, addressing the challenges posed by the inherent two-dimensional projection principle of mammography.
The proposed OA-BreaCR model is validated on public EMBED and in-house datasets, outperforming existing BC risk prediction and time prediction methods in both tasks.
Ordinal heatmap visualizations show the model's attention over time, underscoring the importance of interpretable and precise risk assessment for enhancing BC screening and prevention efforts.
翻譯成其他語言
從原文內容
arxiv.org
深入探究