Optimization of CNN Model for Breast Cancer Classification

N. Mikhailov, M. Shakeel, A. Urmanov, Min-Ho Lee, M. Demirci
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引用次数: 2

Abstract

Application of deep learning techniques for breast cancer classification using histopathology images has gained interest during recent years. In this study, an open-source convolutional neural network (CNN) model developed for breast cancer classification model is optimized by performing sensitivities on various CNN parameters such as data balancing, activation functions and adding/removing CNN layers. Some of the parameters are less-sensitive in affecting model’s performance. The results show that by balancing the number of positive and negative samples, accuracy of the model can be improved. However, some additional work is required to reach to that point. Furthermore, the computation time is reduced by almost 30% by increasing the learning rate from 0.01 to 0.05 while the training and validation accuracy and loss are comparable to that of the original CNN model.
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乳腺癌分类CNN模型的优化
近年来,利用组织病理学图像进行乳腺癌分类的深度学习技术得到了广泛的应用。本研究针对乳腺癌分类模型开发了一个开源的卷积神经网络(CNN)模型,通过对CNN的各种参数如数据平衡、激活函数、CNN层的添加/移除等进行灵敏度优化。有些参数对模型性能的影响不太敏感。结果表明,通过平衡正负样本的数量,可以提高模型的准确性。然而,需要做一些额外的工作才能达到这一点。此外,通过将学习速率从0.01提高到0.05,计算时间减少了近30%,而训练和验证精度和损失与原始CNN模型相当。
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