A Novel Transfer Learning Approach to Improve Breast Cancer Diagnosing on Screening Mammography

Dr. G N Keshava Murthy, Dr. Chaitra H V, Dr. Vidya E V, Dr. Manjula B M, Dr. Chetana Srinivas
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Abstract

Segmentation is a technique for separating an image into discrete areas in order to separate objects of interest from their surroundings. In image analysis, segmentation—which encompasses detection, feature extraction, classification, and treatment—is crucial. In order to plan treatments, segmentation aids doctors in measuring the amount of tissue in the breast. Categorizing the input data into two groups that are mutually exclusive is the aim of a binary classification problem. In this case, the training data is labeled in a binary format based on the problem being solved. Identifying breast lumps accurately in mammography pictures is essential for the purpose of prenatal testing for breast cancer. The proposed TLA (Transfer Learning Approach) based CNN (Convolution Neural Network) –TLA based CNN aims to offer binary classification for rapid and precise breast cancer diagnosis (benign and malignant). In order to predict the sub-type of cancer, this exploration as used Deep Learning techniques on the Histogram of Oriented Gradient (HOG) - Feature extraction technique that creates a local histogram of the image to extract features from each place in the image with CNN classifier. This research work employs two well-known pre-trained models, ResNet-50 and VGG16, to extract characteristics from mammography images. The high-level features from the Mammogram dataset are extracted using a transfer learning model based on Visual Geometry Group (VGG) with 16-layer and Residual Neural Network with 50-layers deep model architecture (ResNet-50). The proposed model TLA based CNN has achieved 96.49% and 95.48% accuracy as compared to ResNet50 and VGG16 in the breast cancer classification and segmentation.
改进乳腺癌筛查诊断的新型迁移学习方法
分割是一种将图像分割成离散区域的技术,目的是将感兴趣的物体从周围环境中分离出来。在图像分析中,分割包括检测、特征提取、分类和处理,是至关重要的。为了制定治疗计划,分割技术可以帮助医生测量乳腺组织的数量。将输入数据分为互斥的两组是二元分类问题的目的。在这种情况下,训练数据会根据要解决的问题以二进制格式进行标注。准确识别乳房 X 光照片中的乳房肿块对于乳腺癌产前检测至关重要。所提出的基于 TLA(迁移学习方法)的 CNN(卷积神经网络)--基于 TLA 的 CNN 旨在为快速、准确的乳腺癌诊断(良性和恶性)提供二元分类。为了预测癌症的子类型,该探索在定向梯度直方图(HOG)上使用了深度学习技术--特征提取技术可创建图像的局部直方图,从而通过 CNN 分类器从图像中的每个位置提取特征。这项研究工作采用了两个著名的预训练模型 ResNet-50 和 VGG16 来提取乳腺 X 射线图像的特征。乳房 X 射线照相数据集的高级特征是通过基于视觉几何组(VGG)16 层和残差神经网络(ResNet-50)50 层深度模型架构的迁移学习模型提取的。与 ResNet50 和 VGG16 相比,基于 TLA 的拟议 CNN 模型在乳腺癌分类和分割方面的准确率分别达到了 96.49% 和 95.48%。
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CiteScore
1.70
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