Multi-modal AI for comprehensive breast cancer prognostication
Treatment selection in breast cancer is guided by molecular subtypes and clinical characteristics. Recurrence risk assessment plays a crucial role in personalizing treatment. Current methods, including genomic assays, have limited accuracy and clinical utility, leading to suboptimal decisions for ma...
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Zusammenfassung: | Treatment selection in breast cancer is guided by molecular subtypes and
clinical characteristics. Recurrence risk assessment plays a crucial role in
personalizing treatment. Current methods, including genomic assays, have
limited accuracy and clinical utility, leading to suboptimal decisions for many
patients. We developed a test for breast cancer patient stratification based on
digital pathology and clinical characteristics using novel AI methods.
Specifically, we utilized a vision transformer-based pan-cancer foundation
model trained with self-supervised learning to extract features from digitized
H&E-stained slides. These features were integrated with clinical data to form a
multi-modal AI test predicting cancer recurrence and death. The test was
developed and evaluated using data from a total of 8,161 breast cancer patients
across 15 cohorts originating from seven countries. Of these, 3,502 patients
from five cohorts were used exclusively for evaluation, while the remaining
patients were used for training. Our test accurately predicted our primary
endpoint, disease-free interval, in the five external cohorts (C-index: 0.71
[0.68-0.75], HR: 3.63 [3.02-4.37, p |
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DOI: | 10.48550/arxiv.2410.21256 |