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Histopathological Diagnosis for Viable and Non-viable Tumor Prediction for Osteosarcoma Using Convolutional Neural Network

机译:利用卷积神经网络对骨肉瘤可行和不可行肿瘤的组织病理学诊断

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Pathologists often deal with high complexity and sometimes disagreement over Osteosarcoma tumor classification due to cellular heterogeneity in the dataset. Segmentation and classification of histology tissue in H&E stained tumor image datasets is challenging due to intra-class variations and inter-class similarity, crowded context, and noisy data. In recent years, deep learning approaches have led to encouraging results in breast cancer and prostate cancer analysis. In this paper, we propose a Convolutional neural network (CNN) as a tool to improve efficiency and accuracy of Osteosarcoma tumor classification into tumor classes (viable tumor, necrosis) vs non-tumor. The proposed CNN architecture contains five learned layers: three convolutional layers interspersed with max pooling layers for feature extraction and two fully-connected layers with data augmentation strategies to boost performance. We conclude that the use of neural network can assure high accuracy and efficiency in Osteosarcoma classification.
机译:由于数据集中的细胞异质性,病理学家经常应对高度复杂性,有时在骨肉瘤肿瘤分类方面存在分歧。由于类内变异和类间相似性,拥挤的背景和嘈杂的数据,H&E染色的肿瘤图像数据集中的组织学组织的分割和分类具有挑战性。近年来,深度学习方法已在乳腺癌和前列腺癌分析中取得令人鼓舞的结果。在本文中,我们提出了卷积神经网络(CNN)作为一种工具,以提高将骨肉瘤肿瘤分为非肿瘤类(活体肿瘤,坏死性肿瘤)的效率和准确性。拟议的CNN体​​系结构包含五个学习层:三个卷积层与最大池层散布以进行特征提取;两个完全连接层具有数据增强策略以提高性能。我们得出的结论是,神经网络的使用可以确保骨肉瘤分类的准确性和效率。

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