MDNet: A Semantically and Visually Interpretable Medical Image Diagnosis Network

Zizhao Zhang, Yuanpu Xie, F. Xing, M. McGough, L. Yang
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引用次数: 261

Abstract

The inability to interpret the model prediction in semantically and visually meaningful ways is a well-known shortcoming of most existing computer-aided diagnosis methods. In this paper, we propose MDNet to establish a direct multimodal mapping between medical images and diagnostic reports that can read images, generate diagnostic reports, retrieve images by symptom descriptions, and visualize attention, to provide justifications of the network diagnosis process. MDNet includes an image model and a language model. The image model is proposed to enhance multi-scale feature ensembles and utilization efficiency. The language model, integrated with our improved attention mechanism, aims to read and explore discriminative image feature descriptions from reports to learn a direct mapping from sentence words to image pixels. The overall network is trained end-to-end by using our developed optimization strategy. Based on a pathology bladder cancer images and its diagnostic reports (BCIDR) dataset, we conduct sufficient experiments to demonstrate that MDNet outperforms comparative baselines. The proposed image model obtains state-of-the-art performance on two CIFAR datasets as well.
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MDNet:一个语义和视觉可解释的医学图像诊断网络
不能以语义和视觉上有意义的方式解释模型预测是大多数现有计算机辅助诊断方法的一个众所周知的缺点。在本文中,我们提出MDNet在医学图像和诊断报告之间建立直接的多模态映射,可以读取图像,生成诊断报告,通过症状描述检索图像,并可视化注意力,以提供网络诊断过程的理由。MDNet包括一个图像模型和一个语言模型。为了提高多尺度特征集合和利用效率,提出了图像模型。该语言模型与我们改进的注意机制相结合,旨在从报告中阅读和探索判别图像特征描述,以学习从句子单词到图像像素的直接映射。通过使用我们开发的优化策略,对整个网络进行端到端的训练。基于病理膀胱癌图像及其诊断报告(bidr)数据集,我们进行了足够的实验来证明MDNet优于比较基线。所提出的图像模型在两个CIFAR数据集上也获得了最先进的性能。
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