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Colorectal Cancer Classification using Deep Convolutional Networks - An Experimental Study

机译:使用深卷积网络进行结直肠癌分类 - 实验研究

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The analysis of histological samples is of paramount importance for the early diagnosis of colorectal cancer (CRC). The traditional visual assessment is time-consuming and highly unreliable because of the subjectivity of the evaluation. On the other hand, automated analysis is extremely challenging due to the variability of the architectural and colouring characteristics of the histological images. In this work, we propose a deep learning technique based on Convolutional Neural Networks (CNNs) to differentiate adenocarcinomas from healthy tissues and benign lesions. Fully training the CNN on a large set of annotated CRC samples provides good classification accuracy (around 90% in our tests), but on the other hand has the drawback of a very computationally intensive training procedure. Hence, in our work we also investigate the use of transfer learning approaches, based on CNN models pre-trained on a completely different dataset (i.e. the ImageNet). In our results, transfer learning considerably outperforms the CNN fully trained on CRC samples, obtaining an accuracy of about 96% on the same test dataset.
机译:组织学样本的分析对于结肠直肠癌(CRC)的早期诊断至关重要。由于评估的主观性,传统的视觉评估是耗时和高度不可靠的。另一方面,由于组织学图像的建筑和着色特性的可变性,自动分析非常具有挑战性。在这项工作中,我们提出了一种基于卷积神经网络(CNNS)的深度学习技术,以区分从健康组织和良性病变中区分腺癌。完全训练大量注释的CRC样品上的CNN提供了良好的分类准确性(我们测试中约90%),但另一方面有一个非常计算密集型培训程序的缺点。因此,在我们的工作中,我们还根据在完全不同的数据集(即想)上预先培训的CNN模型来调查转移学习方法的使用。在我们的结果中,转移学习会显着优于CRC样本的CNN完全培训的CNN,在同一测试数据集上获得约96%的精度。

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