The amount of medical images stored in hospitals is increasing faster than ever; however, utilizing the accumulated medical images has been limited. This is because existing content-based medical image retrieval (CBMIR) systems usually require example images to construct query vectors; nevertheless, example images cannot always be prepared. Besides, there can be images with rare characteristics that make it difficult to find similar example images, which we call isolated samples. Here, we introduce a novel sketch-based medical image retrieval (SBMIR) system that enables users to find images of interest without example images. The key idea lies in feature decomposition of medical images, whereby the entire feature of a medical image can be decomposed into and reconstructed from normal and abnormal features. By extending this idea, our SBMIR system provides an easy-to-use two-step graphical user interface: users first select a template image to specify a normal feature and then draw a semantic sketch of the disease on the template image to represent an abnormal feature. Subsequently, it integrates the two kinds of input to construct a query vector and retrieves reference images with the closest reference vectors. Using two datasets, ten healthcare professionals with various clinical backgrounds participated in the user test for evaluation. As a result, our SBMIR system enabled users to overcome previous challenges, including image retrieval based on fine-grained image characteristics, image retrieval without example images, and image retrieval for isolated samples. Our SBMIR system achieves flexible medical image retrieval on demand, thereby expanding the utility of medical image databases.
翻译:医院中储存的医疗图像数量比以往增加得更快;然而,使用累积的医疗图像的数量却越来越快;这是因为现有基于内容的医疗图像检索(CBMIR)系统通常需要示例图像,以构建查询矢量;然而,无法总是制作示例图像。此外,可能存在一些具有罕见特征的图像,难以找到类似的示例图像,我们称之为孤立样本。在这里,我们引入了一个基于草图的医疗图像检索(SBMIR)系统,使用户能够找到有兴趣的图像,而没有示例图像。关键理念在于医疗图像的特征分解,使医疗图像的整个特征可以从正常和异常的特性中分解并重建。通过扩展这一理念,我们的SBMIR系统提供了一种易于使用的两步图形界面界面界面。用户首先选择一个模板图像来指定一个普通特征,然后在模板图像上绘制病情的语系图图图图,以代表异常特征。随后,它整合了两种类型的投入,用于构建查询矢量矢量和检索图像与最接近的引用矢量矢量,这样可以将医学图像分解成,通过两个数据集,使10个医疗保健专业人员在临床图像上进行检索。</s>