Explainability for Medical Image Captioning

D. Beddiar, Mourad Oussalah, T. Seppänen
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引用次数: 3

Abstract

Medical image captioning is the process of generating clinically significant descriptions to medical images, which has many applications among which medical report generation is the most frequent one. In general, automatic captioning of medical images is of great interest for medical experts since it offers assistance in diagnosis, disease treatment and automating the workflow of the health practitioners. Recently, many efforts have been put forward to obtain accurate descriptions but medical image captioning still provides weak and incorrect descriptions. To alleviate this issue, it is important to explain why the model produced a particular caption based on some specific features. This is performed through Artificial Intelligence Explainability (XAI), which aims to unfold the ‘black-box’ feature of deep-learning based models. We present in this paper an explainable module for medical image captioning that provides a sound interpretation of our attention-based encoder-decoder model by explaining the correspondence between visual features and semantic features. We exploit for that, self-attention to compute word importance of semantic features and visual attention to compute relevant regions of the image that correspond to each generated word of the caption in addition to visualization of visual features extracted at each layer of the Convolutional Neural Network (CNN) encoder. We finally evaluate our model using the ImageCLEF medical captioning dataset.
医学图像字幕的可解释性
医学图像字幕是对医学图像生成具有临床意义的描述的过程,有许多应用,其中医学报告生成是最常见的一种。一般来说,医学图像的自动字幕是医学专家非常感兴趣的,因为它为诊断、疾病治疗和健康从业者的自动化工作流程提供了帮助。近年来,为了获得准确的描述,人们做出了许多努力,但医学图像字幕仍然提供了较弱和不正确的描述。为了缓解这个问题,解释为什么模型根据一些特定的特征产生特定的标题是很重要的。这是通过人工智能可解释性(XAI)来实现的,该技术旨在揭示基于深度学习的模型的“黑箱”特征。我们在本文中提出了一个可解释的医学图像字幕模块,通过解释视觉特征和语义特征之间的对应关系,为我们基于注意力的编码器-解码器模型提供了一个合理的解释。为此,我们利用自注意来计算语义特征的单词重要性,并利用视觉注意来计算图像中与标题中每个生成的单词对应的相关区域,此外还利用卷积神经网络(CNN)编码器的每一层提取的视觉特征进行可视化。最后,我们使用ImageCLEF医疗字幕数据集评估我们的模型。
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