Predicting breast cancer with AI for individual risk-adjusted MRI screening and early detection
Lukas Hirsch, Yu Huang, Hernan A. Makse, Danny F. Martinez, Mary, Hughes, Sarah Eskreis-Winkler, Katja Pinker, Elizabeth Morris, Lucas C., Parra, Elizabeth J. Sutton

TL;DR
This study develops an AI model to predict breast cancer risk within a year from MRI scans, aiming to reduce screening burden and enable earlier detection in high-risk women.
Contribution
The paper introduces a novel AI framework combining lesion segmentation and risk prediction to improve breast cancer screening efficiency and early detection.
Findings
AI identified regions of concern matching future tumors in 52% of cases.
71.3% of cancers had visible correlates on MRI prior to diagnosis.
Up to 33% early detections could be achieved by AI-guided review.
Abstract
Women with an increased life-time risk of breast cancer undergo supplemental annual screening MRI. We propose to predict the risk of developing breast cancer within one year based on the current MRI, with the objective of reducing screening burden and facilitating early detection. An AI algorithm was developed on 53,858 breasts from 12,694 patients who underwent screening or diagnostic MRI and accrued over 12 years, with 2,331 confirmed cancers. A first U-Net was trained to segment lesions and identify regions of concern. A second convolutional network was trained to detect malignant cancer using features extracted by the U-Net. This network was then fine-tuned to estimate the risk of developing cancer within a year in cases that radiologists considered normal or likely benign. Risk predictions from this AI were evaluated with a retrospective analysis of 9,183 breasts from a high-risk…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · AI in cancer detection · MRI in cancer diagnosis
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Concatenated Skip Connection · Convolution · U-Net
