Evaluation of Graph Topological Features in Digitized Mammogram for Microcalcification Cluster Classification

N. Alam, R. Zwiggelaar
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引用次数: 1

Abstract

In this paper, the scale-specific graph topological changes of Microcalcifications (MC) were investigated to classify MC cluster. A series of multi-scale MC cluster graphs were generated based on the connectivity of individual MCs. The extracted features from the graph series were integrated with the statistical and morphological characteristics of MC clusters. Subsequent feature selection showed that the features related to the denseness of MC cluster at some specific scales of the generated graphs discriminated better than all other features in classifying MC clusters while using an ensemble classifier with 10-fold cross validation. The proposed method was evaluated using two well-known digitized datasets: MIAS (Mammographic Image Analysis Society) and DDSM (The Digital Database for Screening Mammography). High classification accuracy (around 98%) and good ROC (receiver operating characteristic) results (area under the ROC curve up to 0.99) were achieved.
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微钙化聚类分类的数字化乳房x线图拓扑特征评价
本文研究了微钙化(mcc)的尺度特异性图拓扑变化,对mcc簇进行了分类。基于单个MC的连通性,生成了一系列多尺度MC聚类图。从图序列中提取的特征与MC聚类的统计特征和形态学特征相结合。随后的特征选择表明,在使用10倍交叉验证的集成分类器对MC聚类进行分类时,在生成的图的某些特定尺度上,与MC聚类密度相关的特征比所有其他特征都更好。采用两个著名的数字化数据集:MIAS(乳房摄影图像分析协会)和DDSM(乳腺摄影筛查数字数据库)对所提出的方法进行了评估。获得了较高的分类准确率(约98%)和良好的ROC(受试者工作特征)结果(ROC曲线下面积可达0.99)。
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