The University of Texas Medical School, Department of Diagnostic and Interventional Imaging, Ultrasonics Laboratory, Houston, TX, USA.
The University of Texas Medical School, Department of Diagnostic and Interventional Imaging, Ultrasonics Laboratory, Houston, TX, USA.
Ultrasonics. 2015 Jan;55:58-64. doi: 10.1016/j.ultras.2014.08.005. Epub 2014 Aug 19.
Axial-shear strain elastography was introduced recently to image the tumor-host tissue boundary bonding characteristics. The image depicting the axial-shear strain distribution in a tissue under axial compression was termed as an axial-shear strain elastogram (ASSE). It has been demonstrated through simulation, tissue-mimicking phantom experiments, and retrospective analysis of in vivo breast lesion data that metrics quantifying the pattern of axial-shear strain distribution on ASSE can be used as features for identifying the lesion boundary condition as loosely-bonded or firmly-bonded. Consequently, features from ASSE have been shown to have potential in non-invasive breast lesion classification into benign versus malignant. Although there appears to be a broad concurrence in the results reported by different groups, important details pertaining to the appropriate segmentation threshold needed for - (1) displaying the ASSE as a color-overlay on top of corresponding Axial Strain Elastogram (ASE) and/or sonogram for feature visualization and (2) ASSE feature extraction are not yet fully addressed. In this study, we utilize ASSE from tissue mimicking phantom (with loosely-bonded and firmly-bonded inclusions) experiments and freehand - acquired in vivo breast lesion data (7 benign and 9 malignant) to analyze the effect of segmentation threshold on ASSE feature value, specifically, the "fill-in" feature that was introduced recently. We varied the segmentation threshold from 20% to 70% (of the maximum ASSE value) for each frame of the acquisition cine-loop of every data and computed the number of ASSE pixels within the lesion that was greater than or equal to this threshold value. If at least 40% of the pixels within the lesion area crossed this segmentation threshold, the ASSE frame was considered to demonstrate a "fill-in" that would indicate a loosely-bonded lesion boundary condition (suggestive of a benign lesion). Otherwise, the ASSE frame was considered not to demonstrate a "fill-in" indicating a firmly-bonded lesion boundary condition (suggestive of a malignant lesion). The results demonstrate that in the case of in vivo breast lesion data the appropriate range for the segmentation threshold value seems to be 40-60%. It was noted that for a segmentation threshold within this range (for example, at 50%) all of the analyzed breast lesion cases can be correctly classified into benign and malignant, based on the percentage number of frames within the acquisition cine-loop that demonstrate a "fill-in".
轴剪切应变弹性成像是最近引入的一种成像技术,用于描绘肿瘤-宿主组织边界结合特性。描述组织在轴向压缩下的轴剪切应变分布的图像被称为轴剪切应变弹性图(ASSE)。通过模拟、组织模拟体模实验和回顾性分析体内乳腺病变数据,已经证明了量化 ASSE 上轴剪切应变分布模式的指标可用于识别病变边界条件是松散结合还是紧密结合。因此,ASSE 的特征在非侵入性乳腺病变的良性与恶性分类中具有潜在的应用价值。尽管不同研究组报告的结果似乎有广泛的一致性,但仍有一些重要的细节需要解决,例如(1)为了在相应的轴向应变弹性图(ASE)和/或声像图上显示 ASSE 作为颜色叠加,以及(2)ASSE 特征提取,需要合适的分割阈值,目前尚未完全解决。在这项研究中,我们利用组织模拟体模(包含松散结合和紧密结合的夹杂)实验和自由获取的体内乳腺病变数据(7 个良性和 9 个恶性),分析了分割阈值对 ASSE 特征值的影响,特别是最近引入的“填充”特征。我们将分割阈值从每个数据采集电影循环的每帧的 20%到 70%(最大 ASSE 值)进行变化,并计算大于或等于此阈值的病变内 ASSE 像素数。如果病变区域内至少有 40%的像素穿过这个分割阈值,那么这一帧 ASSE 被认为显示了“填充”,表明病变边界条件是松散结合的(提示良性病变)。否则,这一帧 ASSE 被认为没有显示“填充”,表明病变边界条件是紧密结合的(提示恶性病变)。结果表明,在体内乳腺病变数据的情况下,分割阈值的适当范围似乎在 40%到 60%之间。值得注意的是,在这个范围内(例如,50%)的分割阈值下,基于采集电影循环中显示“填充”的帧数百分比,所有分析的乳腺病变病例都可以正确地分为良性和恶性。