论文标题

使用图归纳学习表示形式的息肉艺术关系分析

Polyp-artifact relationship analysis using graph inductive learned representations

论文作者

Soberanis-Mukul, Roger D., Albarqouni, Shadi, Navab, Nassir

论文摘要

大肠癌的诊断过程主要集中于称为息肉的结肠组织中异常生长的定位和表征。尽管最近的深层物体定位进步,但由于组织之间的相似之处和高水平的伪影,息肉的定位仍然具有挑战性。最近的研究表明,在息肉检测任务中存在伪影的负面影响,并已开始在训练过程中考虑到它们。但是,尚未考虑使用与息肉和人工制品的空间相互作用有关的先验知识。在这项工作中,我们将文物知识纳入后处理步骤。我们的方法将此任务模型为归纳图表示学习问题,并且由培训和推理步骤组成。检测到的息肉周围的边界框,伪影被认为是通过定义标准连接的节点。训练步骤生成一个带有地面真相界框的节点分类器。在推论中,我们使用此分类器分析第二个图,该图是由区域建议网络给出的工件和息肉预测产生的。我们评估连通性和工件中的选择如何影响我们方法的性能,并表明它有可能减少区域提案网络结果中的假阳性。

The diagnosis process of colorectal cancer mainly focuses on the localization and characterization of abnormal growths in the colon tissue known as polyps. Despite recent advances in deep object localization, the localization of polyps remains challenging due to the similarities between tissues, and the high level of artifacts. Recent studies have shown the negative impact of the presence of artifacts in the polyp detection task, and have started to take them into account within the training process. However, the use of prior knowledge related to the spatial interaction of polyps and artifacts has not yet been considered. In this work, we incorporate artifact knowledge in a post-processing step. Our method models this task as an inductive graph representation learning problem, and is composed of training and inference steps. Detected bounding boxes around polyps and artifacts are considered as nodes connected by a defined criterion. The training step generates a node classifier with ground truth bounding boxes. In inference, we use this classifier to analyze a second graph, generated from artifact and polyp predictions given by region proposal networks. We evaluate how the choices in the connectivity and artifacts affect the performance of our method and show that it has the potential to reduce the false positives in the results of a region proposal network.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源