首页> 外文会议>Image Processing pt.1; Progress in Biomedical Optics and Imaging; vol.7 no.30 >A representation and classification scheme for tree-like structures in medical images: An application on branching pattern analysis of ductal trees in x-ray galactograms
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A representation and classification scheme for tree-like structures in medical images: An application on branching pattern analysis of ductal trees in x-ray galactograms

机译:医学图像中树状结构的表示和分类方案:在X射线半乳糖图中导管树的分支模式分析中的应用

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We propose a multi-step approach for representing and classifying tree-like structures in medical images. Examples of such-tree-like structures are encountered in the bronchial system, the vessel topology and the breast ductal network. We assume that the tree-like structures are already segmented. To avoid the tree isomorphism problem we obtain the breadth-first canonical form of a tree. Our approach is based on employing tree encoding techniques, such as the depth-first string encoding and the Prufer encoding, to obtain a symbolic representation. Thus, the problem of classifying trees is reduced to string classification where node labels are the string terms. We employ the tf-idf text mining technique to assign a weight of significance to each string term (i.e., tree node label). We perform similarity searches and k-nearest neighbor classification of the trees using the tf-idf weight vectors and the cosine similarity metric. We applied our approach to the breast ductal network manually extracted from clinical x-ray galactograms. The goal was to characterize the ductal tree-like parenchymal structures in order to distinguish among different groups of women. Our best classification accuracy reached up to 90% for certain experimental settings (k = 4), outperforming on the average by 10% that of a previous state-of-the-art method based on ramification matrices. These results illustrate the effectiveness of the proposed approach in analyzing tree-like patterns in breast images. Developing such automated tools for the analysis of tree-like structures in medical images can potentially provide insight to the relationship between the topology of branching and function or pathology.
机译:我们提出了一种多步骤的方法来表示和分类医学图像中的树状结构。在支气管系统,血管拓扑结构和乳腺导管网络中会遇到此类树状结构的示例。我们假设树状结构已经被分割。为了避免树同构问题,我们获得了树的广度优先规范形式。我们的方法基于采用树编码技术(例如深度优先字符串编码和Prufer编码)来获得符号表示。因此,将树分类的问题简化为字符串分类,其中节点标签是字符串项。我们使用tf-idf文本挖掘技术为每个字符串项(即树节点标签)分配重要性权重。我们使用tf-idf权重向量和余弦相似性度量对树执行相似性搜索和k近邻分类。我们将我们的方法应用于从临床X射线半乳糖图中手动提取的乳腺导管网络。目的是表征导管树状实质结构,以区分不同的女性群体。在某些实验设置(k = 4)下,我们的最佳分类精度高达90%,比以前基于分枝矩阵的最新方法的平均精度高出10%。这些结果说明了该方法在分析乳房图像中树状图案方面的有效性。开发用于分析医学图像中的树状结构的此类自动化工具可以潜在地洞察分支拓扑与功能或病理之间的关系。

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