Multi-modal AI for comprehensive breast cancer prognostication
Jan Witowski, Ken G. Zeng, Joseph Cappadona, Jailan Elayoubi, Khalil, Choucair, Elena Diana Chiru, Nancy Chan, Young-Joon Kang, Frederick Howard,, Irina Ostrovnaya, Carlos Fernandez-Granda, Freya Schnabel, Zoe Steinsnyder,, Ugur Ozerdem, Kangning Liu, Waleed Abdulsattar, Yu Zong

TL;DR
This study introduces a multi-modal AI approach combining digital pathology images and clinical data to improve breast cancer recurrence prediction, outperforming current standard tests across diverse patient cohorts.
Contribution
The paper presents a novel AI-based prognostic tool integrating imaging and clinical data, demonstrating superior accuracy over existing genomic assays in breast cancer prognosis.
Findings
AI test outperforms Oncotype DX in predicting recurrence
The model maintains high accuracy across breast cancer subtypes
The approach is applicable to a broader patient population
Abstract
Treatment selection in breast cancer is guided by molecular subtypes and clinical characteristics. However, current tools including genomic assays lack the accuracy required for optimal clinical decision-making. We developed a novel artificial intelligence (AI)-based approach that integrates digital pathology images with clinical data, providing a more robust and effective method for predicting the risk of cancer recurrence in breast cancer patients. Specifically, we utilized a vision transformer 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 female breast cancer patients across 15 cohorts originating from seven countries. Of…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification
MethodsAttention Is All You Need · Softmax · Dense Connections · Residual Connection · Linear Layer · Layer Normalization · Multi-Head Attention · Vision Transformer
