使用图像处理和机器学习的乳腺癌检测

Q3 Computer Science 中国图象图形学报 Pub Date : 2023-03-01 DOI:10.18178/joig.11.1.1-8
Z. Q. Habeeb, B. Vuksanovic, Imad Al-Zaydi
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引用次数: 3

摘要

已经开发了不同的乳腺癌检测系统来帮助临床医生分析筛查性乳房x光照片。乳腺癌一直在逐渐增加,因此科学家们致力于开发新的方法来降低这种危及生命的疾病的风险。由于深度学习的最新发展,卷积神经网络(cnn)在医学成像领域显示出很大的前景。然而,由于少数公开的乳腺癌数据集规模较小,CNN的基于方法受到了限制。这项研究开发了一种新的框架,并将其用于检测乳腺癌。该框架利用卷积神经网络(cnn)和图像处理来实现其目标,因为cnn在图像识别方面取得了重要的成功,达到了人类的表现。在这项研究中使用了一种高效快速的CNN预训练对象检测器,称为RetinaNet。retanet是一个简单的单级目标探测器。采用两阶段迁移学习方法对所选择的检测器进行学习,以提高性能。retanet模型最初使用一个称为COCO数据集的通用数据集进行训练。然后使用迁移学习将RetinaNet模型应用于另一个称为CBIS-DDSM数据集的乳房x光片数据集。最后,第二次迁移学习用于在一个称为INbreast数据集的乳房x光照片小数据集上测试RetinaNet模型。所提出的两阶段迁移学习(RetinaNet→CBIS-DDSM→INbreast)在公共INbreast数据集上的结果优于其他最先进的方法。在1.67个False Positives per Image (FPPI)下,该方法的True Positive Rate (TPR)为0.99±0.02,优于单阶段迁移学习(1.67个FPPI)下的TPR(0.94±0.02)。
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Breast Cancer Detection Using Image Processing and Machine Learning
Different breast cancer detection systems have been developed to help clinicians analyze screening mammograms. Breast cancer has been increasing gradually so scientists work to develop new methods to reduce the risks of this life-threatening disease. Convolutional Neural Networks (CNNs) have shown much promise In the field of medical imaging because of recent developments in deep learning. However, CNN’s based methods have been restricted due to the small size of the few public breast cancer datasets. This research has developed a new framework and introduced it to detect breast cancer. This framework utilizes Convolutional Neural Networks (CNNs) and image processing to achieve its goal because CNNs have been an important success in image recognition, reaching human performance. An efficient and fast CNN pre-trained object detector called RetinaNet has been used in this research. RetinaNet is an uncomplicated one-stage object detector. A two-stage transfer learning has been used with the selected detector to improve the performance. RetinaNet model is initially trained with a general-purpose dataset called COCO dataset. The transfer learning is then used to apply the RetinaNet model to another dataset of mammograms called the CBIS-DDSM dataset. Finally, the second transfer learning is used to test the RetinaNet model onto a small dataset of mammograms called the INbreast dataset. The results of the proposed two-stage transfer learning (RetinaNet → CBIS-DDSM → INbreast) are better than the other state-of-the-art methods on the public INbreast dataset. Furthermore, the True Positive Rate (TPR) is 0.99 ± 0.02 at 1.67 False Positives per Image (FPPI), which is better than the one-stage transfer learning with a TPR of 0.94 ± 0.02 at 1.67 FPPI.
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来源期刊
中国图象图形学报
中国图象图形学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6776
期刊介绍: Journal of Image and Graphics (ISSN 1006-8961, CN 11-3758/TB, CODEN ZTTXFZ) is an authoritative academic journal supervised by the Chinese Academy of Sciences and co-sponsored by the Institute of Space and Astronautical Information Innovation of the Chinese Academy of Sciences (ISIAS), the Chinese Society of Image and Graphics (CSIG), and the Beijing Institute of Applied Physics and Computational Mathematics (BIAPM). The journal integrates high-tech theories, technical methods and industrialisation of applied research results in computer image graphics, and mainly publishes innovative and high-level scientific research papers on basic and applied research in image graphics science and its closely related fields. The form of papers includes reviews, technical reports, project progress, academic news, new technology reviews, new product introduction and industrialisation research. The content covers a wide range of fields such as image analysis and recognition, image understanding and computer vision, computer graphics, virtual reality and augmented reality, system simulation, animation, etc., and theme columns are opened according to the research hotspots and cutting-edge topics. Journal of Image and Graphics reaches a wide range of readers, including scientific and technical personnel, enterprise supervisors, and postgraduates and college students of colleges and universities engaged in the fields of national defence, military, aviation, aerospace, communications, electronics, automotive, agriculture, meteorology, environmental protection, remote sensing, mapping, oil field, construction, transportation, finance, telecommunications, education, medical care, film and television, and art. Journal of Image and Graphics is included in many important domestic and international scientific literature database systems, including EBSCO database in the United States, JST database in Japan, Scopus database in the Netherlands, China Science and Technology Thesis Statistics and Analysis (Annual Research Report), China Science Citation Database (CSCD), China Academic Journal Network Publishing Database (CAJD), and China Academic Journal Network Publishing Database (CAJD). China Science Citation Database (CSCD), China Academic Journals Network Publishing Database (CAJD), China Academic Journal Abstracts, Chinese Science Abstracts (Series A), China Electronic Science Abstracts, Chinese Core Journals Abstracts, Chinese Academic Journals on CD-ROM, and China Academic Journals Comprehensive Evaluation Database.
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