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A similarity study of content-based image retrieval system for breast cancer using decision tree

机译:基于决策树的基于内容的乳腺癌图像检索系统相似性研究

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Purpose: We are developing a decision tree content-based image retrieval (DTCBIR) CADx system to assist radiologists in characterization of breast masses on ultrasound images. Methods: Three DTCBIR configurations, including decision tree with boosting (DTb), decision tree with full leaf features (DTL), and decision tree with selected leaf features (DTLs) were compared. For DTb, features of a query mass were combined first into a merged feature score and then masses with similar scores were retrieved. For DTL and DTLs, similar masses were retrieved based on the Euclidean distance between feature vectors of the query and those of selected references. For each DTCBIR configuration, we investigated the use of full feature set and subset of features selected by the stepwise linear discriminant analysis (LDA) and simplex optimization method, resulting in six retrieval methods and selected five, DTb-lda, DTL-lda, DTb-full, DTL-full, and DTLs-full, for the observer study. Three MQSA radiologists rated similarities between the query mass and computer-retrieved three most similar masses using nine-point similarity scale (9 = very similar). Results: For DTb-lda, DTL-lda, DTb-full, DTL-full, and DTLs-full, average A_z values were 0.90 ?0.03, 0.85 ?0.04, 0.87 ?0.04, 0.79 ?0.05, and 0.71 ?0.06, respectively, and average similarity ratings were 5.00, 5.41, 4.96, 5.33, and 5.13, respectively. Conclusions: The DTL-lda is a promising DTCBIR CADx configuration which had simple tree structure, good classification performance, and highest similarity rating.
机译:目的:我们正在开发基于决策树内容的图像检索(DTCBIR)CADx系统,以帮助放射科医生表征超声图像上的乳腺肿块。方法:比较了三种DTCBIR配置,包括增强决策树(DTb),具有全叶特征的决策树(DTL)和具有选定叶特征的决策树(DTL)。对于DTb,首先将查询质量的特征合并为合并的特征分数,然后检索具有相似分数的质量。对于DTL和DTL,基于查询的特征向量与选定参考的特征向量之间的欧式距离来检索相似的质量。对于每个DTCBIR配置,我们研究了通过逐步线性判别分析(LDA)和单纯形优化方法选择的全部特征集和特征子集的使用,从而得出了6种检索方法,并选择了5种,即DTb-lda,DTL-lda,DTb -full,DTL-full和DTLs-full,供观察者研究。三名MQSA放射科医生使用九点相似性量表(9 =非常相似)对查询质量和计算机检索的三个最相似质量之间的相似性进行了评分。结果:对于DTb-lda,DTL-lda,DTb-full,DTL-full和DTLs-full,平均A_z值分别为0.90〜0.03、0.85〜0.04、0.87〜0.04、0.79〜0.05和0.71 = 0.06。 ,平均相似性等级分别为5.00、5.41、4.96、5.33和5.13。结论:DTL-lda是一种很有前途的DTCBIR CADx配置,具有简单的树状结构,良好的分类性能和最高的相似性等级。

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