Breast cancer segmentation of mammographics images using generative adversarial network

被引:0
作者
Swathi N. [1 ]
Christy Bobby T. [2 ]
机构
[1] Department of Computer Science and Engineering, M.S. Ramaiah University of Applied Sciences, Bengaluru, Karnataka
[2] Department of Electronics and Communication Engineering, M.S. Ramaiah University of Applied Sciences, Bengaluru, Karnataka
关键词
Generative Adversarial Network; Machine learning; Mammograms; Pix2Pix; Segmentation; U-Net;
D O I
10.34107/YHPN9422.04247
中图分类号
学科分类号
摘要
Segmentation of breast cancer tumor plays an important role in identifying the location of the tumor, to know the shape of tumor and hence the stage of breast cancer. This paper deals with the segmentation of tumor from whole mammographic mass images using Generative Adversarial Network (GAN). A mini dataset was considered with mammograms and their corresponding ground truth images. Pre-processing like image format conversion, enhancement, pectoral muscle removal and resizing was performed on raw mammogram images. GANs have two neural nets called generative and discriminative networks that compete against each other to obtain the segmentation output. PIX2PIX is a conditional GAN variant which has U-Net as the Generator network and a simple deep neural net as the discriminator. The input to the network was pair of pre-processed mass image and the associated ground truth. A binary image with highlighted tumor was obtained as output. The performance of GAN was evaluated by plotting Generator and discriminator loss. The segmented output was compared with corresponding ground truth. Metrics like Jaccard index, Jaccard distance and Dice-coefficient were calculated. A Dice-coefficient and Jaccard index of 90% and 88.38% was achieved. In future, higher accuracy could be achieved by involving larger dataset to make the system robust. ©2021 IAE All rights reserved.
引用
收藏
页码:247 / 255
页数:8
相关论文
共 24 条
[1]  
Harris J.R., Et al., Breast cancer, In New England J. of Medicine, 327, 5, pp. 319-328, (1992)
[2]  
Singh V.K., Et al., Breast tumor segmentation and shape classification in mammograms using generative adversarial and convolutional neural network, Expert Systems with Applicat, 139, (2020)
[3]  
Lodish H., Et al., Molecular Cell Biology. 4th edition, New York: W. H. Freeman
[4]  
2000. Section 24.1, Tumor Cells and the Onset of Cancer.
[5]  
Hela B., Et al., Breast cancer detection: A review on mammograms analysis techniques, 10Th Int. Multi-Conferences on Systems, Signals & Devices 2013 (SSD13), pp. 1-6
[6]  
George M.J., Dhas D.A.S., Preprocessing filters for mammogram images: A review, 2017 Conference on Emerging Devices and Smart Syst. (ICEDSS), pp. 1-7
[7]  
Mina L.M., Isa N.A.M., Preprocessing technique for mammographic images, Int. J. of Comput. Science and Inform. Technology Research, 2, 4, pp. 226-323, (2014)
[8]  
Yi X., Et al., Generative adversarial network in medical imaging: A review, Medical Image Anal, 58, (2019)
[9]  
Ronneberger O., Et al., U-net: Convolutional networks for biomedical image segmentation, Int. Conference on Medical Image Computing and Comput.-Assisted Intervention, pp. 234-241, (2015)
[10]  
Cai J., Zhu H., Lung image segmentation by generative adversarial networks, 2019 Int. Conference on Image and Video Process. and Artificial Intell.