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Classification of Breast Lesions in Automated 3D breast Ultrasound

机译:自动化3D乳房超声中乳腺病变的分类

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In this paper we investigated classification of malignant and benign lesions in automated 3D breast ultrasound (ABUS). As a new imaging modality, ABUS overcomes the drawbacks of 2D hand-held ultrasound (US) such as its operator de-pendence and limited capability in visualizing the breast in 3D. The classification method we present includes a 3D lesion segmentation stage based on dynamic programming, which effectively deals with limited visibility of lesion boundaries due to shadowing and speckle. A novel aspect of ABUS imaging, in which the breast is compressed by means of a dedi-cated membrane, is the presence of spiculation in coronal planes perpendicular to the transducer. Spiculation patterns, or architectural distortion, are characteristic for malignant lesions. Therefore, we compute a spiculation measure in coronal planes and combine this with more traditional US features related to lesion shape, margin, posterior acoustic behavior, and echo pattern. However, in our work the latter features are defined in 3D. Classification experiments were performed with a dataset of 40 lesions including 20 cancers. Linear discriminant analysis (LDA) was used in combination with leave-one-patient-out and feature selection in each training cycle. We found that spiculation and margin contrast were the most discriminative features and that these features were most often chosen during feature selection. An Az value of 0.86 was obtained by merging all features, while an Az value of 0.91 was obtained by feature selection.
机译:在本文中,我们调查了自动化3D乳房超声(Abus)中恶性和良性病变的分类。作为一种新的成像模型,ABUS克服了2D手持式超声(US)的缺点,例如其操作者的操作者的脱模和有限能力在可视化3D中。我们存在的分类方法包括基于动态编程的3D病变分割阶段,其由于阴影和斑点而有效地涉及病变边界的有限可视性。一种新的滥用成像的方面,其中乳房通过夹持膜压缩,是垂直于换能器的冠状架中的刺激存在。刺激模式或建筑扭曲是恶性病变的特征。因此,我们计算冠状平面中的刺激措施,并将其与具有更传统的美国特征与病变形状,边距,后声学行为和回声图案相结合。但是,在我们的工作中,后一种功能在3D中定义。用40个病变的数据集进行分类实验,包括20个癌症。线性判别分析(LDA)与每个训练周期的休假和特征选择结合使用。我们发现刺激和边缘对比是最辨别的特征,并且这些功能最常在特征选择期间选择。通过合并所有特征来获得0.86的AZ值,而通过特征选择获得0.91的AZ值。

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