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Medical Image Classification Based on Deep Features Extracted by Deep Model and Statistic Feature Fusion with Multilayer Perceptron‬

机译:基于深度模型提取的深度特征和多层感知器统计特征融合的医学图像分类

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摘要

Medical image classification is a key technique of Computer-Aided Diagnosis (CAD) systems. Traditional methods rely mainly on the shape, color, and/or texture features as well as their combinations, most of which are problem-specific and have shown to be complementary in medical images, which leads to a system that lacks the ability to make representations of high-level problem domain concepts and that has poor model generalization ability. Recent deep learning methods provide an effective way to construct an end-to-end model that can compute final classification labels with the raw pixels of medical images. However, due to the high resolution of the medical images and the small dataset size, deep learning models suffer from high computational costs and limitations in the model layers and channels. To solve these problems, in this paper, we propose a deep learning model that integrates Coding Network with Multilayer Perceptron (CNMP), which combines high-level features that are extracted from a deep convolutional neural network and some selected traditional features. The construction of the proposed model includes the following steps. First, we train a deep convolutional neural network as a coding network in a supervised manner, and the result is that it can code the raw pixels of medical images into feature vectors that represent high-level concepts for classification. Second, we extract a set of selected traditional features based on background knowledge of medical images. Finally, we design an efficient model that is based on neural networks to fuse the different feature groups obtained in the first and second step. We evaluate the proposed approach on two benchmark medical image datasets: HIS2828 and ISIC2017. We achieve an overall classification accuracy of 90.1% and 90.2%, respectively, which are higher than the current successful methods.
机译:医学图像分类是计算机辅助诊断(CAD)系统的一项关键技术。传统方法主要依赖形状,颜色和/或纹理特征及其组合,其中大多数是特定于问题的,并且在医学图像中已显示出互补性,这导致系统缺乏进行表示的能力高级别问题域概念,并且模型概括能力差。最近的深度学习方法提供了一种构建端对端模型的有效方法,该模型可以使用医学图像的原始像素来计算最终分类标签。但是,由于医学图像的高分辨率和较小的数据集大小,深度学习模型遭受了高计算成本以及模型层和通道的限制。为解决这些问题,本文提出了一种将编码网络与多层感知器(CNMP)集成的深度学习模型,该模型结合了从深度卷积神经网络中提取的高级特征和一些传统特征。建议模型的构建包括以下步骤。首先,我们以监督方式将深层卷积神经网络训练为编码网络,其结果是可以将医学图像的原始像素编码为代表高级分类概念的特征向量。其次,我们基于医学图像的背景知识提取一组选定的传统特征。最后,我们设计了一个基于神经网络的有效模型,以融合第一步和第二步获得的不同特征组。我们在两个基准医学图像数据集上评估提出的方法:HIS2828和ISIC2017。我们的总体分类准确率分别为90.1%和90.2%,这比当前成功的方法要高。

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