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Combined Datasets For Breast Cancer Grading Based On Multi-CNN Architectures

机译:基于多CNN架构的乳腺癌分级组合数据集

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Breast cancer is the most leading cancer among women. Usually, pathologists have to examine the histological image slides through the whole slides tissues in different magnifications, to extract the tumor malignancy then the tumor grade. These image’s interpretation is one of the time and effort consuming task to define an accurate diagnosis. Consequently, Computer-Aided Diagnosis (CAD) systems are highly demanded. However, the histological images have pervasive variability, which is a big challenge due to the variation of tissue textures and which is hard to be interpreted by the computer. For this, deep learning algorithms have been promised architectures for complex objects, but the problem of the low resource of datasets is still yet a constraint to build an efficient medical system for image classification.In this work, we propose a solution based on combining two different datasets for breast cancer grade detection. Our proposed method is about adding a new class (grade 0) to the three known classes of breast cancer grades, which make our model detect both the malignancy and the grade of the breast tumors. Furthermore, both datasets images have the same magnification factor which helps our models in avoiding overfitting problems. Our models are trained using two different convolutional neural network architectures, the ResNet50 and the MobileNet for comparing between a lightweight and heavyweight architectures. The obtained results show the best accuracy in the state-of-the-art.
机译:乳腺癌是女性中最主要的癌症。通常,病理学家必须检查组织学图像通过不同放大倍数的整个载玻片组织的载玻片,以提取肿瘤恶性肿瘤然后提取肿瘤级。这些图像的解释是消耗任务定义准确诊断的时间和精力之一。因此,高要求计算机辅助诊断(CAD)系统。然而,组织学图像具有普遍的变异性,这是由于组织纹理的变化,这是一个很大的挑战,并且很难被计算机解释。为此,深度学习算法已经承诺为复杂对象的架构,但数据集的低资源问题仍然是构建用于图像分类的有效医疗系统的约束。在这项工作中,我们提出了基于两个组合的解决方案乳腺癌等级检测的不同数据集。我们所提出的方法是将新的类(0级)添加到三种已知的乳腺癌等级中,这使我们的模型检测到恶性肿瘤和乳腺肿瘤的等级。此外,两个数据集图像具有相同的放大因子,这有助于我们的模型避免过度拟合问题。我们的模型使用两种不同的卷积神经网络架构,Reset50和MobileNet进行培训,用于比较轻量级和重量级架构。所获得的结果表明了最先进的最佳准确性。

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