Breast cancer is one of the most common cause of deaths among women. Mammography is a widely used imaging modality that can be used for cancer detection in its early stages. Deep learning is widely used for the detection of cancerous masses in the images obtained via mammography. The need to improve accuracy remains constant due to the sensitive nature of the datasets so we introduce segmentation and wavelet transform to enhance the important features in the image scans. Our proposed system aids the radiologist in the screening phase of cancer detection by using a combination of segmentation and wavelet transforms as pre-processing augmentation that leads to transfer learning in neural networks. The proposed system with these pre-processing techniques significantly increases the accuracy of detection on Mini-MIAS.
翻译:乳癌是造成妇女死亡的最常见原因之一。乳房造影术是一种广泛使用的成像模式,可以在早期用于癌症的检测。通过乳房造影术获得的图像中广泛使用深层学习来检测癌症群。由于数据集的敏感性质,提高准确性的必要性保持不变,因此我们引入了分解和波子变形,以加强图像扫描中的重要特征。我们提议的系统将分解和波子变形相结合,作为处理前的增强,从而导致神经网络中学习的转移,从而帮助放射科医生在癌症检测的筛选阶段使用分解和波子变形作为预处理前的增强。拟议的系统加上这些预处理技术,大大提高了对微型和微型企业信息系统的检测的准确性。