Area-based breast percentage density estimation in mammograms using weight-adaptive multitask learning
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2022Author(s)
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10.1038/s41598-022-16141-2Metadata
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Gudhe, Naga Raju. Behravan, Hamid. Sudah, Mazen. Okuma, Hidemi. Vanninen, Ritva. Kosma, Veli-Matti. Mannermaa, Arto. (2022). Area-based breast percentage density estimation in mammograms using weight-adaptive multitask learning. Scientific reports, 12 (1) , 12060. 10.1038/s41598-022-16141-2.Rights
Abstract
Breast density, which is a measure of the relative amount of fibroglandular tissue within the breast area, is one of the most important breast cancer risk factors. Accurate segmentation of fibroglandular tissues and breast area is crucial for computing the breast density. Semiautomatic and fully automatic computer-aided design tools have been developed to estimate the percentage of breast density in mammograms. However, the available approaches are usually limited to specific mammogram views and are inadequate for complete delineation of the pectoral muscle. These tools also perform poorly in cases of data variability and often require an experienced radiologist to adjust the segmentation threshold for fibroglandular tissue within the breast area. This study proposes a new deep learning architecture that automatically estimates the area-based breast percentage density from mammograms using a weight-adaptive multitask learning approach. The proposed approach simultaneously segments the breast and dense tissues and further estimates the breast percentage density. We evaluate the performance of the proposed model in both segmentation and density estimation on an independent evaluation set of 7500 craniocaudal and mediolateral oblique-view mammograms from Kuopio University Hospital, Finland. The proposed multitask segmentation approach outperforms and achieves average relative improvements of 2.88% and 9.78% in terms of F-score compared to the multitask U-net and a fully convolutional neural network, respectively. The estimated breast density values using our approach strongly correlate with radiologists’ assessments with a Pearson’s correlation of r=0.90 (95% confidence interval [0.89, 0.91]). We conclude that our approach greatly improves the segmentation accuracy of the breast area and dense tissues; thus, it can play a vital role in accurately computing the breast density. Our density estimation model considerably reduces the time and effort needed to estimate density values from mammograms by radiologists and therefore, decreases inter- and intra-reader variability.
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http://dx.doi.org/10.1038/s41598-022-16141-2Publisher
Springer Nature LimitedCollections
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