Department of Computer Science & Software Engineering, International Islamic University, Islamabad, Pakistan.
Artificial Intelligence & Data Analytics Lab CCIS, Prince Sultan University, Riyadh, Saudi Arabia.
Microsc Res Tech. 2021 Sep;84(9):2186-2194. doi: 10.1002/jemt.23773. Epub 2021 Apr 27.
Females are approximately half of the total population worldwide, and most of them are victims of breast cancer (BC). Computer-aided diagnosis (CAD) frameworks can help radiologists to find breast density (BD), which further helps in BC detection precisely. This research detects BD automatically using mammogram images based on Internet of Medical Things (IoMT) supported devices. Two pretrained deep convolutional neural network models called DenseNet201 and ResNet50 were applied through a transfer learning approach. A total of 322 mammogram images containing 106 fatty, 112 dense, and 104 glandular cases were obtained from the Mammogram Image Analysis Society dataset. The pruning out irrelevant regions and enhancing target regions is performed in preprocessing. The overall classification accuracy of the BD task is performed and accomplished 90.47% through DensNet201 model. Such a framework is beneficial in identifying BD more rapidly to assist radiologists and patients without delay.
女性约占全球总人口的一半,其中大多数是乳腺癌(BC)的受害者。计算机辅助诊断(CAD)框架可以帮助放射科医生找到乳腺密度(BD),这进一步有助于精确地进行 BC 检测。这项研究使用基于物联网(IoMT)支持设备的乳腺 X 线照片自动检测 BD。应用了两种经过预训练的深度卷积神经网络模型,称为 DenseNet201 和 ResNet50,并通过迁移学习方法进行应用。总共从 Mammogram Image Analysis Society 数据集获得了 322 张乳腺 X 线照片,其中包含 106 例脂肪、112 例致密和 104 例腺体病例。在预处理中执行了剔除不相关区域和增强目标区域的操作。通过 DensNet201 模型完成了 BD 任务的整体分类准确性,达到了 90.47%。这样的框架有助于更快速地识别 BD,从而及时帮助放射科医生和患者。