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Multi- class classification of breast cancer abnormalities using Deep Convolutional Neural Network (CNN)

机译:利用深卷积神经网络(CNN)多阶级分类乳腺癌异常

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The real cause of breast cancer is very challenging to determine and therefore early detection of the disease is necessary for reducing the death rate due to risks of breast cancer. Early detection of cancer boosts increasing the survival chance up to 8%. Primarily, breast images emanating from mammograms, X-Rays or MRI are analyzed by radiologists to detect abnormalities. However, even experienced radiologists face problems in identifying features like micro-calcifications, lumps and masses, leading to high false positive and high false negative. Recent advancement in image processing and deep learning create some hopes in devising more enhanced applications that can be used for the early detection of breast cancer. In this work, we have developed a Deep Convolutional Neural Network (CNN) to segment and classify the various types of breast abnormalities, such as calcifications, masses, asymmetry and carcinomas, unlike existing research work, which mainly classified the cancer into benign and malignant, leading to improved disease management. Firstly, a transfer learning was carried out on our dataset using the pre-trained model ResNet50. Along similar lines, we have developed an enhanced deep learning model, in which learning rate is considered as one of the most important attributes while training the neural network. The learning rate is set adaptively in our proposed model based on changes in error curves during the learning process involved. The proposed deep learning model has achieved a performance of 88% in the classification of these four types of breast cancer abnormalities such as, masses, calcifications, carcinomas and asymmetry mammograms.
机译:乳腺癌的真正原因是非常具有挑战性的,因此确定疾病的早期检测是降低由于乳腺癌风险导致的死亡率所必需的。早期发现癌症提高了增加的成活机会高达8%。主要是,通过放射学家分析从乳房X光检查,X射线或MRI发出的乳房图像以检测异常。然而,即使有经验丰富的放射科医生也面临着识别微钙化,肿块和肿块等特征的问题,导致高假阳性和高假阴性。图像处理和深度学习的最新进展在设计更具增强的应用方面创造了一些希望用于早期检测乳腺癌的增强型应用。在这项工作中,我们开发了一个深度卷积神经网络(CNN),分段并分类各种类型的乳房异常,例如钙化,群众,不对称和癌症,与现有的研究工作不同,主要将癌症分类为良性和恶性,导致改善疾病管理。首先,使用预先训练的Model Reset50在我们的数据集上执行转移学习。沿着类似的线路,我们开发了一个增强的深度学习模型,其中学习率被认为是训练神经网络时最重要的属性之一。基于所涉及的学习过程中的错误曲线的变化,在我们提出的模型中自适应地设置学习速率。拟议的深度学习模型在这四种类型的乳腺癌异常的分类中实现了88%的性能,例如肿块,钙化,癌和不对称乳房X光检查。

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