用于乳腺癌分子分类的多输入CNN

M. Gasmi, M. Derdour, Abdellatif Gahmousse, M. Amroune, H. Bendjenna, Brahim Sahraoui
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引用次数: 1

摘要

病理解剖中的分子分类是一项重要的工作,因为它非常方便癌症及其亚型的诊断,从而提供适当的治疗选择。随着计算机视觉的发展,癌症分类已经成为医学和计算机视觉的交叉学科。基于收集的数据集,设计了一个多输入卷积神经网络,用于癌症的分子分类,该数据集包含四种组织,用四种抗体处理;每一个都由33张图片组成。经数据增强后,该模型的准确率达到了令人满意的90.43%。尽管数据增强有助于模型,但由于缺乏样本多样性,模型的准确性仍然受到限制。
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Multi-Input CNN for molecular classification in breast cancer
Molecular classification in pathological anatomy is an important task as it is extremely convenient for the diagnosis of cancer and its subtypes for adequate therapeutic choice. With the development of computer vision, cancer classification has become an interdisciplinary subject in both medicine and computer vision.A multi-input convolutional neural network is designed for the molecular classification of cancer based on a collected dataset, which contains four tissues treated with four antibodies; each one of them is composed of 33 images. The proposed model achieves a satisfactory accuracy of 90.43% after data augmentation. Even though the data augmentation contributes to the model, the accuracy is still limited by the lack of sample diversity.
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