Weakly Supervised Deep Learning Approach to Breast MRI Assessment.

Acad Radiol

Associate Professor of Radiology, Director of Research and Education, Breast Imaging Section, Columbia University Medical Center, New York Presbyterian Hospital, New York, NY 10032. Electronic address:

Published: January 2022

AI Article Synopsis

  • A study evaluated a weakly supervised deep learning model for classifying breast MRI lesions, aiming to improve specificity without requiring detailed pixel-level segmentation.
  • The dataset included 278,685 image slices from 438 patients, and the Resnet-101 architecture was utilized for training, resulting in a classifier with high accuracy.
  • The model achieved an AUC of 0.92 and a classification accuracy of 94.2%, demonstrating that this approach effectively distinguishes between benign and malignant MRI images.

Article Abstract

Rationale And Objectives: To evaluate a weakly supervised deep learning approach to breast Magnetic Resonance Imaging (MRI) assessment without pixel level segmentation in order to improve the specificity of breast MRI lesion classification.

Materials And Methods: In this IRB approved study, the dataset consisted of 278,685 image slices from 438 patients. The weakly supervised network was based on the Resnet-101 architecture. Training was implemented using the Adam optimizer and a final SoftMax score threshold of 0.5 was used for two class classification (malignant or benign). 278,685 image slices were combined into 92,895 3-channel images. 79,871 (85%) images were used for training and validation while 13,024 (15%) images were separated for testing. Of the testing dataset, 11,498 (88%) were benign and 1531 (12%) were malignant. Model performance was assessed.

Results: The weakly supervised network achieved an AUC of 0.92 (SD ± 0.03) in distinguishing malignant from benign images. The model had an accuracy of 94.2% (SD ± 3.4) with a sensitivity and specificity of 74.4% (SD ± 8.5) and 95.3% (SD ± 3.3) respectively.

Conclusion: It is feasible to use a weakly supervised deep learning approach to assess breast MRI images without the need for pixel-by-pixel segmentation yielding a high degree of specificity in lesion classification.

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Source
http://dx.doi.org/10.1016/j.acra.2021.03.032DOI Listing

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