Literature DB >> 24636804

Semi-automated and fully automated mammographic density measurement and breast cancer risk prediction.

Rafael Llobet1, Marina Pollán2, Joaquín Antón3, Josefa Miranda-García4, María Casals5, Inmaculada Martínez6, Francisco Ruiz-Perales7, Beatriz Pérez-Gómez8, Dolores Salas-Trejo9, Juan-Carlos Pérez-Cortés10.   

Abstract

The task of breast density quantification is becoming increasingly relevant due to its association with breast cancer risk. In this work, a semi-automated and a fully automated tools to assess breast density from full-field digitized mammograms are presented. The first tool is based on a supervised interactive thresholding procedure for segmenting dense from fatty tissue and is used with a twofold goal: for assessing mammographic density (MD) in a more objective and accurate way than via visual-based methods and for labeling the mammograms that are later employed to train the fully automated tool. Although most automated methods rely on supervised approaches based on a global labeling of the mammogram, the proposed method relies on pixel-level labeling, allowing better tissue classification and density measurement on a continuous scale. The fully automated method presented combines a classification scheme based on local features and thresholding operations that improve the performance of the classifier. A dataset of 655 mammograms was used to test the concordance of both approaches in measuring MD. Three expert radiologists measured MD in each of the mammograms using the semi-automated tool (DM-Scan). It was then measured by the fully automated system and the correlation between both methods was computed. The relation between MD and breast cancer was then analyzed using a case-control dataset consisting of 230 mammograms. The Intraclass Correlation Coefficient (ICC) was used to compute reliability among raters and between techniques. The results obtained showed an average ICC=0.922 among raters when using the semi-automated tool, whilst the average correlation between the semi-automated and automated measures was ICC=0.838. In the case-control study, the results obtained showed Odds Ratios (OR) of 1.38 and 1.50 per 10% increase in MD when using the semi-automated and fully automated approaches respectively. It can therefore be concluded that the automated and semi-automated MD assessments present a good correlation. Both the methods also found an association between MD and breast cancer risk, which warrants the proposed tools for breast cancer risk prediction and clinical decision making. A full version of the DM-Scan is freely available.
Copyright © 2014 Elsevier Ireland Ltd. All rights reserved.

Entities:  

Keywords:  Automated density assessment; Breast cancer risk; Computer image analysis; Computer-aided diagnosis; Mammographic density

Mesh:

Year:  2014        PMID: 24636804     DOI: 10.1016/j.cmpb.2014.01.021

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  5 in total

1.  Application of Sholl analysis to quantify changes in growth and development in rat mammary gland whole mounts.

Authors:  Jason P Stanko; Michael R Easterling; Suzanne E Fenton
Journal:  Reprod Toxicol       Date:  2014-11-15       Impact factor: 3.143

2.  The Impact of Acquisition Dose on Quantitative Breast Density Estimation with Digital Mammography: Results from ACRIN PA 4006.

Authors:  Lin Chen; Shonket Ray; Brad M Keller; Said Pertuz; Elizabeth S McDonald; Emily F Conant; Despina Kontos
Journal:  Radiology       Date:  2016-03-22       Impact factor: 11.105

3.  Correlation of mammographic density and serum calcium levels in patients with primary breast cancer.

Authors:  Carolin C Hack; Martin J Stoll; Sebastian M Jud; Katharina Heusinger; Werner Adler; Lothar Haeberle; Thomas Ganslandt; Felix Heindl; Rüdiger Schulz-Wendtland; Alexander Cavallaro; Michael Uder; Matthias W Beckmann; Peter A Fasching; Christian M Bayer
Journal:  Cancer Med       Date:  2017-05-02       Impact factor: 4.452

4.  Automatic and fast segmentation of breast region-of-interest (ROI) and density in MRIs.

Authors:  Dinesh Pandey; Xiaoxia Yin; Hua Wang; Min-Ying Su; Jeon-Hor Chen; Jianlin Wu; Yanchun Zhang
Journal:  Heliyon       Date:  2018-12-17

5.  Breast Dense Tissue Segmentation with Noisy Labels: A Hybrid Threshold-Based and Mask-Based Approach.

Authors:  Andrés Larroza; Francisco Javier Pérez-Benito; Juan-Carlos Perez-Cortes; Marta Román; Marina Pollán; Beatriz Pérez-Gómez; Dolores Salas-Trejo; María Casals; Rafael Llobet
Journal:  Diagnostics (Basel)       Date:  2022-07-28
  5 in total

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