Radiologist-level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
Lukas Hirsch, Yu Huang, Shaojun Luo, Carolina Rossi Saccarelli,, Roberto Lo Gullo, Isaac Daimiel Naranjo, Almir G.V. Bitencourt, Natsuko, Onishi, Eun Sook Ko, Doris Leithner, Daly Avendano, Sarah Eskreis-Winkler,, Mary Hughes, Danny F. Martinez, Katja Pinker, Krishna Juluru

TL;DR
This study developed a deep learning model that achieves radiologist-level accuracy in segmenting breast cancers on MRI scans, demonstrating potential for automated diagnostic support.
Contribution
The paper introduces a 3D U-Net architecture trained on a large dataset to perform fully automated, radiologist-level breast cancer segmentation on MRI images.
Findings
The 3D U-Net achieved a median Dice score of 0.77.
Model performance was statistically equivalent to radiologists.
Deep learning can match expert radiologists in cancer segmentation.
Abstract
Purpose: To develop a deep network architecture that would achieve fully automated radiologist-level segmentation of cancers at breast MRI. Materials and Methods: In this retrospective study, 38229 examinations (composed of 64063 individual breast scans from 14475 patients) were performed in female patients (age range, 12-94 years; mean age, 52 years +/- 10 [standard deviation]) who presented between 2002 and 2014 at a single clinical site. A total of 2555 breast cancers were selected that had been segmented on two-dimensional (2D) images by radiologists, as well as 60108 benign breasts that served as examples of noncancerous tissue; all these were used for model training. For testing, an additional 250 breast cancers were segmented independently on 2D images by four radiologists. Authors selected among several three-dimensional (3D) deep convolutional neural network architectures,…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Convolution · Concatenated Skip Connection · U-Net
