Ulcerative colitis (UC) classification, which is an important task for endoscopic diagnosis, involves two main difficulties. First, endoscopic images with the annotation about UC (positive or negative) are usually limited. Second, they show a large variability in their appearance due to the location in the colon. Especially, the second difficulty prevents us from using existing semi-supervised learning techniques, which are the common remedy for the first difficulty. In this paper, we propose a practical semi-supervised learning method for UC classification by newly exploiting two additional features, the location in a colon (e.g., left colon) and image capturing order, both of which are often attached to individual images in endoscopic image sequences. The proposed method can extract the essential information of UC classification efficiently by a disentanglement process with those features. Experimental results demonstrate that the proposed method outperforms several existing semi-supervised learning methods in the classification task, even with a small number of annotated images.
翻译:加速性脊髓灰质炎(UC)分类是内分层诊断的一项重要任务,它涉及两个主要困难。首先,带有UC(正或负)注释的内分层图像通常有限。其次,这些图像的外观因结肠位置而变化很大。特别是,第二个困难使我们无法使用现有的半监督学习技术,这是第一种困难的共同解决办法。在本文件中,我们建议对UC分类采用一种实用的半监督的半监督学习方法,新利用另外两种特征,即结肠的位置(如左结肠)和图像捕捉顺序,两者通常都附在内分层图像序列中的个人图像中。拟议的方法可以通过与这些特征的分离过程有效地提取UC分类的基本信息。实验结果表明,拟议的方法在分类任务中超越了现有的若干半监督性学习方法,即使有少量附加说明的图像。</s>