Literature DB >> 28129144

Geometry-Based Pectoral Muscle Segmentation From MLO Mammogram Views.

Saeid Asgari Taghanaki1, Yonghuai Liu2, Brandon Miles3, Ghassan Hamarneh3.   

Abstract

Computer-aided diagnosis systems (CADx) play a major role in the early diagnosis of breast cancer. Extracting the breast region precisely from a mammogram is an essential component of CADx for mammography. The appearance of the pectoral muscle on medio-lateral oblique (MLO) views increases the false positive rate in CADx. Therefore, the pectoral muscle should be identified and removed from the breast region in an MLO image before further analysis. None of the previous pectoral muscle segmentation methods address all breast types based on the breast imaging-reporting and data system tissue density classes. In this paper, we deal with this deficiency by introducing a new simple yet effective method that combines geometric rules with a region growing algorithm to support the segmentation of all types of pectoral muscles (normal, convex, concave, and combinatorial). Experimental segmentation accuracy results were reported for four tissue density classes on 872 MLO images from three publicly available datasets. An average Jaccard index and Dice similarity coefficient of 0.972 ± 0.003 and 0.985 ± 0.001 were obtained, respectively. The mean Hausdorff distance between the contours detected by our method and the ground truth is below 5 mm for all datasets. An average acceptable segmentation rate of ∼95% was achieved outperforming several state-of-the-art competing methods. Excellent results were obtained even for the most challenging class of extremely dense breasts.Computer-aided diagnosis systems (CADx) play a major role in the early diagnosis of breast cancer. Extracting the breast region precisely from a mammogram is an essential component of CADx for mammography. The appearance of the pectoral muscle on medio-lateral oblique (MLO) views increases the false positive rate in CADx. Therefore, the pectoral muscle should be identified and removed from the breast region in an MLO image before further analysis. None of the previous pectoral muscle segmentation methods address all breast types based on the breast imaging-reporting and data system tissue density classes. In this paper, we deal with this deficiency by introducing a new simple yet effective method that combines geometric rules with a region growing algorithm to support the segmentation of all types of pectoral muscles (normal, convex, concave, and combinatorial). Experimental segmentation accuracy results were reported for four tissue density classes on 872 MLO images from three publicly available datasets. An average Jaccard index and Dice similarity coefficient of 0.972 ± 0.003 and 0.985 ± 0.001 were obtained, respectively. The mean Hausdorff distance between the contours detected by our method and the ground truth is below 5 mm for all datasets. An average acceptable segmentation rate of ∼95% was achieved outperforming several state-of-the-art competing methods. Excellent results were obtained even for the most challenging class of extremely dense breasts.

Entities:  

Keywords:  Breast; Cancer; Image edge detection; Image segmentation; Mammography; Microwave integrated circuits; Muscles

Mesh:

Year:  2017        PMID: 28129144     DOI: 10.1109/TBME.2017.2649481

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  4 in total

1.  Automated pectoral muscle identification on MLO-view mammograms: Comparison of deep neural network to conventional computer vision.

Authors:  Xiangyuan Ma; Jun Wei; Chuan Zhou; Mark A Helvie; Heang-Ping Chan; Lubomir M Hadjiiski; Yao Lu
Journal:  Med Phys       Date:  2019-03-12       Impact factor: 4.071

2.  Deep-LIBRA: An artificial-intelligence method for robust quantification of breast density with independent validation in breast cancer risk assessment.

Authors:  Omid Haji Maghsoudi; Aimilia Gastounioti; Christopher Scott; Lauren Pantalone; Fang-Fang Wu; Eric A Cohen; Stacey Winham; Emily F Conant; Celine Vachon; Despina Kontos
Journal:  Med Image Anal       Date:  2021-07-02       Impact factor: 13.828

3.  Deep learning-based breast region extraction of mammographic images combining pre-processing methods and semantic segmentation supported by Deeplab v3.

Authors:  Kuochen Zhou; Wei Li; Dazhe Zhao
Journal:  Technol Health Care       Date:  2022       Impact factor: 1.205

4.  PeMNet for Pectoral Muscle Segmentation.

Authors:  Xiang Yu; Shui-Hua Wang; Juan Manuel Górriz; Xian-Wei Jiang; David S Guttery; Yu-Dong Zhang
Journal:  Biology (Basel)       Date:  2022-01-14
  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.