In recent years, colorectal cancer has become one of the most significant diseases that endanger human health. Deep learning methods are increasingly important for the classification of colorectal histopathology images. However, existing approaches focus more on end-to-end automatic classification using computers rather than human-computer interaction. In this paper, we propose an IL-MCAM framework. It is based on attention mechanisms and interactive learning. The proposed IL-MCAM framework includes two stages: automatic learning (AL) and interactivity learning (IL). In the AL stage, a multi-channel attention mechanism model containing three different attention mechanism channels and convolutional neural networks is used to extract multi-channel features for classification. In the IL stage, the proposed IL-MCAM framework continuously adds misclassified images to the training set in an interactive approach, which improves the classification ability of the MCAM model. We carried out a comparison experiment on our dataset and an extended experiment on the HE-NCT-CRC-100K dataset to verify the performance of the proposed IL-MCAM framework, achieving classification accuracies of 98.98% and 99.77%, respectively. In addition, we conducted an ablation experiment and an interchangeability experiment to verify the ability and interchangeability of the three channels. The experimental results show that the proposed IL-MCAM framework has excellent performance in the colorectal histopathological image classification tasks.
翻译:近些年来,红外癌已成为危害人类健康的最重要疾病之一。深层次的学习方法在对红外组织病理学图像进行分类方面越来越重要。但是,现有的方法更侧重于使用计算机而不是人-计算机互动进行端到端自动分类。在本文件中,我们提议了一个IL-MCAM框架,它以关注机制和互动学习为基础。拟议的IL-MCAM框架包括两个阶段:自动学习(AL)和互动学习(IL)。在AL阶段,一个包含三种不同关注机制渠道和神经神经网络的多渠道关注机制模型被用于提取多渠道特性进行分类。在IL阶段,拟议的IL-MCAM框架以互动方式不断将错误分类图像添加到培训套件中,从而提高了MCAM模型的分类能力。我们对我们的数据集进行了比较试验,对EC-NCT-CRC-100K数据集进行了扩大试验,以核实拟议的IMMC框架的性能,实现了98.8%的分类和98.77%的精良性互换能力。在IL-MCAM的互换过程中,分别进行了一项测试。