BREAST CANCER SEGMENTATION OF MAMMOGRAPHICS IMAGES USING GENERATIVE

N. Swathi, T. Bobby
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Abstract

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.
乳腺癌图像的生成分割
癌症肿瘤的分割对于识别肿瘤的位置、了解肿瘤的形状和癌症的分期具有重要作用。本文利用生成对抗性网络(GAN)对乳腺肿块图像进行分割。考虑了一个小型数据集,其中包含乳房X光照片及其相应的地面实况图像。对原始乳房X光图像进行图像格式转换、增强、胸肌去除和大小调整等预处理。GANs有两个称为生成网络和判别网络的神经网络,它们相互竞争以获得分割输出。PIX2PIX是一种条件GAN变体,它以U-Net作为生成器网络,以简单的深度神经网络作为鉴别器。网络的输入是一对预处理的海量图像和相关的地面实况。获得具有突出肿瘤的二值图像作为输出。通过绘制生成器和鉴别器损耗图来评估GAN的性能。将分段输出与相应的地面实况进行比较。计算了Jaccard指数、Jaccard距离和Dice系数等指标。Dice系数和Jaccard指数分别达到90%和88.38%。在未来,可以通过涉及更大的数据集来实现更高的精度,以使系统具有鲁棒性。
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