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Finding Lesion Correspondences in Different Views of Automated 3D Breast Ultrasound

机译:从自动3D乳房超声的不同角度查找病变对应

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Screening with automated 3D breast ultrasound (ABUS) is gaining popularity. However, the acquisition of multiple views required to cover an entire breast makes radiologic reading time-consuming. Linking lesions across views can facilitate the reading process. In this paper, we propose a method to automatically predict the position of a lesion in the target ABUS views, given the location of the lesion in a source ABUS view. We combine features describing the lesion location with respect to the nipple, the transducer and the chestwall, with features describing lesion properties such as intensity, spiculation, blobness, contrast and lesion likelihood. By using a grid search strategy, the location of the lesion was predicted in the target view. Our method achieved an error of 15.64 mm±16.13 mm. The error is small enough to help locate the lesion with minor additional interaction.
机译:使用自动3D乳房超声(ABUS)进行筛查越来越受欢迎。然而,覆盖整个乳房所需的多个视图的采集使放射学阅读很耗时。跨视图链接病灶可以促进阅读过程。在本文中,我们提出了一种在源ABUS视图中给定病变位置的情况下,自动预测目标ABUS视图中病变位置的方法。我们将描述相对于乳头,换能器和胸壁的病变位置的特征与描述诸如强度,针刺,斑点,对比和病变可能性的病变特性的特征相结合。通过使用网格搜索策略,可以在目标视图中预测病变的位置。我们的方法实现了15.64 mm±16.13 mm的误差。该错误足够小,可以通过较小的附加交互作用来帮助定位病变。

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