Automated Segmentation of the Pectoral Muscle in Axial Breast MR Images
Zafari, Sahar; Diab, Mazen; Eerola, Tuomas; Hanson, Summer E.; Reece, Gregory P.; Whitman, Gary J.; Markey, Mia K.; Ravi-Chandar, Krishnaswamy; Bovik, Alan; Kälviäinen, Heikki (2019-10-21)
Post-print / Final draft
Zafari, Sahar
Diab, Mazen
Eerola, Tuomas
Hanson, Summer E.
Reece, Gregory P.
Whitman, Gary J.
Markey, Mia K.
Ravi-Chandar, Krishnaswamy
Bovik, Alan
Kälviäinen, Heikki
21.10.2019
Lecture Notes in Computer Science
11844
345-356
Springer, Cham
Lecture Notes in Computer Science
School of Engineering Science
Kaikki oikeudet pidätetään.
© Springer Nature Switzerland AG 2019
© Springer Nature Switzerland AG 2019
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi-fe2019103135999
https://urn.fi/URN:NBN:fi-fe2019103135999
Tiivistelmä
Pectoral muscle segmentation is a crucial step in various computer-aided
applications of breast Magnetic Resonance Imaging (MRI). Due to imaging
artifact and homogeneity between the pectoral and breast regions, the pectoral
muscle boundary estimation is not a trivial task. In this paper, a fully automatic
segmentation method based on deep learning is proposed for accurate delineation
of the pectoral muscle boundary in axial breast MR images. The proposed method
involves two main steps: pectoral muscle segmentation and boundary estimation.
For pectoral muscle segmentation, a model based on the U-Net architecture is
used to segment the pectoral muscle from the input image. Next, the pectoral
muscle boundary is estimated through candidate points detection and contour
segmentation. The proposed method was evaluated quantitatively with two real-world
datasets, our own private dataset, and a publicly available dataset. The first
dataset includes 12 patients breast MR images and the second dataset consists of
80 patients breast MR images. The proposed method achieved a Dice score of
95% in the first dataset and 89% in the second dataset. The high segmentation
performance of the proposed method when evaluated on large scale quantitative
breast MR images confirms its potential applicability in future breast cancer clinical
applications.
applications of breast Magnetic Resonance Imaging (MRI). Due to imaging
artifact and homogeneity between the pectoral and breast regions, the pectoral
muscle boundary estimation is not a trivial task. In this paper, a fully automatic
segmentation method based on deep learning is proposed for accurate delineation
of the pectoral muscle boundary in axial breast MR images. The proposed method
involves two main steps: pectoral muscle segmentation and boundary estimation.
For pectoral muscle segmentation, a model based on the U-Net architecture is
used to segment the pectoral muscle from the input image. Next, the pectoral
muscle boundary is estimated through candidate points detection and contour
segmentation. The proposed method was evaluated quantitatively with two real-world
datasets, our own private dataset, and a publicly available dataset. The first
dataset includes 12 patients breast MR images and the second dataset consists of
80 patients breast MR images. The proposed method achieved a Dice score of
95% in the first dataset and 89% in the second dataset. The high segmentation
performance of the proposed method when evaluated on large scale quantitative
breast MR images confirms its potential applicability in future breast cancer clinical
applications.
Lähdeviite
Zafari, S., Diab, M., Eerola, T, Hanson, S.E., Reece, G.P., Whitman, G.J., Markey, M.K., Ravi-Chandar, K., Bovik, A., Kälviäinen, H., Automated Segmentation of the Pectoral Muscle in Axial Breast MR Images, Proceedings of International Symposium on Visual Computing (ISVC 2019), Lake Tahoe, USA, 2019.
Alkuperäinen verkko-osoite
https://link.springer.com/chapter/10.1007/978-3-030-33720-9_26Kokoelmat
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