Breast cancer detection in mammograms using convolutional neural network

S. Charan, Muhammad Jaleed Khan, K. Khurshid
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引用次数: 90

Abstract

Breast cancer is among world's second most occurring cancer in all types of cancer. Most common cancer among women worldwide is breast cancer. There is always need of advancement when it comes to medical imaging. Early detection of cancer followed by the proper treatment can reduce the risk of deaths. Machine learning can help medical professionals to diagnose the disease with more accuracy. Where deep learning or neural networks is one of the techniques which can be used for the classification of normal and abnormal breast detection. CNN can be used for this detection. Mammograms-MIAS dataset is used for this purpose, having 322 mammograms in which almost 189 images are of normal and 133 are of abnormal breasts. Promising experimental results have been obtained which depict the efficacy of deep learning for breast cancer detection in mammogram images and further encourage the use of deep learning based modern feature extraction and classification methods in various medical imaging applications especially in breast cancer detection. It is an ongoing research and further developments are being made by optimizing the CNN architecture and also employing pre-trained networks which will hopefully lead to higher accuracy measures. Proper segmentation is mandatory for efficient feature extraction and classification.
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卷积神经网络在乳房x光检查中的应用
乳腺癌是世界上所有类型癌症中发病率第二高的癌症之一。全世界女性中最常见的癌症是乳腺癌。医学成像总是需要进步的。早期发现癌症并进行适当治疗可降低死亡风险。机器学习可以帮助医疗专业人员更准确地诊断疾病。其中深度学习或神经网络是可用于正常和异常乳房检测分类的技术之一。CNN可以用于这种检测。乳房x线照片- mias数据集用于此目的,其中有322张乳房x线照片,其中近189张是正常乳房,133张是异常乳房。已经获得了有希望的实验结果,这些结果描述了深度学习在乳房x光图像中检测乳腺癌的功效,并进一步鼓励在各种医学成像应用中使用基于深度学习的现代特征提取和分类方法,特别是在乳腺癌检测中。这是一项正在进行的研究,通过优化CNN架构和采用预训练的网络,正在进行进一步的发展,这有望带来更高的精度测量。正确的分割是有效的特征提取和分类的必要条件。
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