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基于群组标注的软自约束聚类。

Soft and self constrained clustering for group-based labeling.

机构信息

Department of Advanced Information Technology, Kyushu University, Fukuoka, Japan.

Department of Advanced Information Technology, Kyushu University, Fukuoka, Japan; Research Center for Medical Bigdata, National Institute of Informatics, Tokyo, Japan.

出版信息

Med Image Anal. 2021 Aug;72:102097. doi: 10.1016/j.media.2021.102097. Epub 2021 May 12.

Abstract

When using deep neural networks in medical image classification tasks, it is mandatory to prepare a large-scale labeled image set, and this often requires significant effort by medical experts. One strategy to reduce the labeling cost is group-based labeling, where image samples are clustered and then a label is attached to each cluster. The efficiency of this strategy depends on the purity of the clusters. Constrained clustering is an effective way to improve the purity of the clusters if we can give appropriate must-links and cannot-links as constraints. However, for medical image clustering, the conventional constrained clustering methods encounter two issues. The first issue is that constraints are not always appropriate due to the gap between semantic and visual similarities. The second issue is that attaching constraints requires extra effort from medical experts. To deal with the first issue, we propose a novel soft-constrained clustering method, which has the ability to ignore inappropriate constraints. To deal with the second issue, we propose a self-constrained clustering method that utilizes prior knowledge about the target images to set the constraints automatically. Experiments with the endoscopic image datasets demonstrated that the proposed methods give clustering results with higher purity.

摘要

在医学图像分类任务中使用深度神经网络时,必须准备一个大规模的标记图像集,这通常需要医学专家付出大量的努力。一种降低标记成本的策略是基于群组的标记,其中将图像样本聚类,然后为每个聚类分配一个标签。如果可以将适当的必须链接和不能链接作为约束条件,那么该策略的效率取决于聚类的纯度。在医学图像聚类中,如果我们可以将适当的必须链接和不能链接作为约束条件,那么约束聚类是一种提高聚类纯度的有效方法。但是,传统的约束聚类方法在处理医学图像聚类时存在两个问题。第一个问题是由于语义和视觉相似性之间的差距,约束条件并不总是合适的。第二个问题是附加约束条件需要医学专家付出额外的努力。为了解决第一个问题,我们提出了一种新的软约束聚类方法,该方法具有忽略不适当约束的能力。为了解决第二个问题,我们提出了一种自约束聚类方法,该方法利用目标图像的先验知识自动设置约束条件。通过内窥镜图像数据集的实验表明,所提出的方法给出了具有更高纯度的聚类结果。

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