A Deep Learning Approach to Tumour Identification in Fresh Frozen Tissues

H. Ugail, Maisun Alzorgani, A. M. Bukar, Humera Hussain, Christopher Burn, Thinzar Min Sein, S. Betmouni
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引用次数: 2

Abstract

The demand for pathology services are significantly increasing whilst the numbers of pathologists are significantly decreasing. In order to overcome these challenges, a growing interest in faster and efficient diagnostic methods such as computer-aided diagnosis (CAD) have been observed. An increase in the use of CAD systems in clinical settings has subsequently led to a growing interest in machine learning. In this paper, we show the use of machine learning algorithms in the prediction of tumour content in Fresh Frozen (FF) histological samples of head and neck. More specifically, we explore a pre-trained convolutional neural network (CNN), namely the AlexNet, to build two common machine learning classifiers. For the first classifier, the pre-trained AlexNet network is used to extract features from the activation layer and then Support Vector Machine (SVM) based classifier is trained by using these extracted features. In the second case, we replace the last three layers of the pre-trained AlexNet network and then fine tune these layers on the FF histological image samples. The results of our experiments are very promising. We have obtained percentage classification rates in the high 90s, and our results show there is little difference between SVM and transfer learning. Thus, the present study show that an AlexNet driven CNN with SVM and fine-tuned classifiers are a suitable choice for accurate discrimination between tumour and non-tumour histological samples from the head and neck.
新鲜冷冻组织肿瘤识别的深度学习方法
对病理服务的需求正在显著增加,而病理学家的数量却在显著减少。为了克服这些挑战,人们对计算机辅助诊断(CAD)等更快、更有效的诊断方法越来越感兴趣。临床环境中CAD系统使用的增加随后导致了对机器学习日益增长的兴趣。在本文中,我们展示了机器学习算法在预测新鲜冷冻(FF)头颈部组织学样本中肿瘤含量的使用。更具体地说,我们探索了一个预训练的卷积神经网络(CNN),即AlexNet,以构建两个常见的机器学习分类器。对于第一个分类器,使用预训练好的AlexNet网络从激活层提取特征,然后使用提取的特征训练基于支持向量机(SVM)的分类器。在第二种情况下,我们替换预训练的AlexNet网络的最后三层,然后在FF组织学图像样本上微调这些层。我们的实验结果很有希望。我们已经获得了90%以上的百分比分类率,我们的结果表明SVM和迁移学习之间的差异很小。因此,本研究表明,AlexNet驱动的CNN与支持向量机和微调分类器是准确区分头颈部肿瘤和非肿瘤组织学样本的合适选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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