Deep learning-based breast tissue segmentation in digital mammography: generalization across views and vendors

被引:1
作者
Verboom, Sarah D. [1 ]
Caballo, Marco [1 ]
Broeders, Mireille J. M. [2 ,3 ]
Teuwen, Jonas [1 ,4 ]
Sechopoulos, Ioannis [1 ,3 ,5 ]
机构
[1] Radboud Univ Nijmegen, Med Ctr, Dept Med Imaging, Nijmegen, Netherlands
[2] Radboud Univ Nijmegen, Med Ctr, Dept Hlth Evidence, Nijmegen, Netherlands
[3] Dutch Expert Ctr Screening LRCB, Nijmegen, Netherlands
[4] Netherlands Canc Inst NKI, Dept Radiat Oncol, Amsterdam, Netherlands
[5] Univ Twente, Tech Med Ctr, Enschede, Netherlands
来源
MEDICAL IMAGING 2022: IMAGE PROCESSING | 2022年 / 12032卷
关键词
Mammography; Segmentation; U-Net; Deep convolutional neural network (DCNN); Pectoral muscle; PECTORAL MUSCLE;
D O I
10.1117/12.2611437
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Segmentation of digital mammograms (DMs) into background, breast, and pectoral muscle is an important pre-processing step for many medical imaging pipelines. Our aim is to propose a segmentation method suited for processed DMs that generalizes across cranio-caudal (CC) and medio-lateral oblique (MLO) projections, and across models of different vendors. A dataset of 247 diagnostic DM exams was used, totaling 493 CC and 494 MLO processed images, of which 199 (40.4%) and 486 (98.4%) contained a pectoral muscle, respectively. The images were acquired with 10 different DM models from GE (73%) and Siemens (27%). The multi-class segmentation was done by a U-Net trained with a multi-class weighted focal loss. Several types of data augmentation were used during training, to generalize across model types, including random look-up table and random elastic and gamma transformations. The DICE coefficients for the segmentations were (mean +/- std. dev.) 0.995 +/- 0.005, 0.980 +/- 0.016, 0.839 +/- 0.243 for background, breast, and pectoral muscle, respectively. Background segmentation did not differ significantly between CC and MLO images. The pectoral muscle segmentation resulted in a higher DICE coefficient for MLO (0.932 +/- 0.104) than CC images (0.636 +/- 0.323). The false positive rate of pectoral muscle segmentation was 1.5% in CC images without any pectoral muscle. Among different model types, the mean overall DICE coefficients ranged from 0.985-0.990 for the different system models. The developed method yielded accurate overall segmentation results, independent of view, and was able to generalize well over mammograms acquired by systems of different vendors.
引用
收藏
页数:7
相关论文
共 50 条
[41]   Medical Image Segmentation: A Comprehensive Review of Deep Learning-Based Methods [J].
Gao, Yuxiao ;
Jiang, Yang ;
Peng, Yanhong ;
Yuan, Fujiang ;
Zhang, Xinyue ;
Wang, Jianfeng .
TOMOGRAPHY, 2025, 11 (05)
[42]   Deep Learning-Based Segmentation for the Extraction of Micro-Doppler Signatures [J].
Martinez, Javier ;
Vossiek, Martin .
2018 15TH EUROPEAN RADAR CONFERENCE (EURAD), 2018, :190-193
[43]   Evaluation of a deep learning-based software to automatically detect and quantify breast arterial calcifications on digital mammogram [J].
Saccenti, Laetitia ;
Ben Jedida, Bilel ;
Minssen, Lise ;
Nouri, Refaat ;
El Bejjani, Lina ;
Remili, Haifa ;
Voquang, An ;
Tacher, Vania ;
Kobeiter, Hicham ;
Luciani, Alain ;
Deux, Jean Francois ;
Dao, Thu Ha .
DIAGNOSTIC AND INTERVENTIONAL IMAGING, 2025, 106 (03) :98-104
[44]   ResDUnet: A Deep Learning-Based Left Ventricle Segmentation Method for Echocardiography [J].
Amer, Alyaa ;
Ye, Xujiong ;
Janan, Faraz .
IEEE ACCESS, 2021, 9 :159755-159763
[45]   Hybrid Deep Learning-Based Automatic Diagnosis of Breast Cancer from Mammograms Using Segmentation and Feature Selection [J].
Rajesh Pandian, N. ;
Selvaganesh, N. ;
Shanthi, D. .
INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE, 2025, 39 (07)
[46]   Contrastive Learning-Based Breast Tumor Segmentation in DCE-MRI [J].
Guo, Shanshan ;
Zhang, Jiadong ;
Gu, Dongdong ;
Gao, Fei ;
Zhan, Yiqiang ;
Xue, Zhong ;
Shen, Dinggang .
MACHINE LEARNING IN MEDICAL IMAGING, MLMI 2023, PT I, 2024, 14348 :157-165
[47]   Deep Learning-Based Medical Ultrasound Image and Video Segmentation Methods: Overview, Frontiers, and Challenges [J].
Xiao, Xiaolong ;
Zhang, Jianfeng ;
Shao, Yuan ;
Liu, Jialong ;
Shi, Kaibing ;
He, Chunlei ;
Kong, Dexing .
SENSORS, 2025, 25 (08)
[48]   Evaluation of deep learning-based autosegmentation in breast cancer radiotherapy [J].
Byun, Hwa Kyung ;
Chang, Jee Suk ;
Choi, Min Seo ;
Chun, Jaehee ;
Jung, Jinhong ;
Jeong, Chiyoung ;
Kim, Jin Sung ;
Chang, Yongjin ;
Chung, Seung Yeun ;
Lee, Seungryul ;
Kim, Yong Bae .
RADIATION ONCOLOGY, 2021, 16 (01)
[49]   A deep learning system to obtain the optimal parameters for a threshold-based breast and dense tissue segmentation [J].
Javier Perez-Benito, Francisco ;
Signol, Francois ;
Perez-Cortes, Juan-Carlos ;
Fuster-Baggetto, Alejandro ;
Pollan, Marina ;
Perez-Gomez, Beatriz ;
Salas-Trejo, Dolores ;
Casals, Maria ;
Martinez, Inmaculada ;
LLobet, Rafael .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2020, 195
[50]   Deep learning-based ensemble model for classification of breast cancer [J].
Nemade, Varsha ;
Pathak, Sunil ;
Dubey, Ashutosh Kumar .
MICROSYSTEM TECHNOLOGIES-MICRO-AND NANOSYSTEMS-INFORMATION STORAGE AND PROCESSING SYSTEMS, 2024, 30 (05) :513-527