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A deep learning framework to classify breast density with noisy labels regularization.

Authors :
Lopez-Almazan H
Javier Pérez-Benito F
Larroza A
Perez-Cortes JC
Pollan M
Perez-Gomez B
Salas Trejo D
Casals M
Llobet R
Source :
Computer methods and programs in biomedicine [Comput Methods Programs Biomed] 2022 Jun; Vol. 221, pp. 106885. Date of Electronic Publication: 2022 May 12.
Publication Year :
2022

Abstract

Background and Objective: Breast density assessed from digital mammograms is a biomarker for higher risk of developing breast cancer. Experienced radiologists assess breast density using the Breast Image and Data System (BI-RADS) categories. Supervised learning algorithms have been developed with this objective in mind, however, the performance of these algorithms depends on the quality of the ground-truth information which is usually labeled by expert readers. These labels are noisy approximations of the ground truth, as there is often intra- and inter-reader variability among labels. Thus, it is crucial to provide a reliable method to obtain digital mammograms matching BI-RADS categories. This paper presents RegL (Labels Regularizer), a methodology that includes different image pre-processes to allow both a correct breast segmentation and the enhancement of image quality through an intensity adjustment, thus allowing the use of deep learning to classify the mammograms into BI-RADS categories. The Confusion Matrix (CM) - CNN network used implements an architecture that models each radiologist's noisy label. The final methodology pipeline was determined after comparing the performance of image pre-processes combined with different DL architectures.<br />Methods: A multi-center study composed of 1395 women whose mammograms were classified into the four BI-RADS categories by three experienced radiologists is presented. A total of 892 mammograms were used as the training corpus, 224 formed the validation corpus, and 279 the test corpus.<br />Results: The combination of five networks implementing the RegL methodology achieved the best results among all the models in the test set. The ensemble model obtained an accuracy of (0.85) and a kappa index of 0.71.<br />Conclusions: The proposed methodology has a similar performance to the experienced radiologists in the classification of digital mammograms into BI-RADS categories. This suggests that the pre-processing steps and modelling of each radiologist's label allows for a better estimation of the unknown ground truth labels.<br /> (Copyright © 2022 The Author(s). Published by Elsevier B.V. All rights reserved.)

Details

Language :
English
ISSN :
1872-7565
Volume :
221
Database :
MEDLINE
Journal :
Computer methods and programs in biomedicine
Publication Type :
Academic Journal
Accession number :
35594581
Full Text :
https://doi.org/10.1016/j.cmpb.2022.106885