Lang Itai, Sklair-Levy Miri, Spitzer Hedva
School of Electrical Engineering, Iby and Aladar Fleischman Faculty of Engineering, Tel-Aviv University, Tel-Aviv 69978, Israel.
Breast Imaging Unit, Diagnostic Imaging Department, Chaim Sheba Medical Center, Tel Hashomer 52621, Israel.
Comput Biol Med. 2016 May 1;72:30-42. doi: 10.1016/j.compbiomed.2016.02.017. Epub 2016 Feb 27.
Automatic segmentation of ultrasonographic breast lesions is very challenging, due to the lesions' spiculated nature and the variance in shape and texture of the B-mode ultrasound images. Many studies have tried to answer this challenge by applying a variety of computational methods including: Markov random field, artificial neural networks, and active contours and level-set techniques. These studies focused on creating an automatic contour, with maximal resemblance to a manual contour, delineated by a trained radiologist. In this study, we have developed an algorithm, designed to capture the spiculated boundary of the lesion by using the properties from the corresponding ultrasonic image. This is primarily achieved through a unique multi-scale texture identifier (inspired by visual system models) integrated in a level-set framework. The algorithm׳s performance has been evaluated quantitatively via contour-based and region-based error metrics. We compared the algorithm-generated contour to a manual contour delineated by an expert radiologist. In addition, we suggest here a new method for performance evaluation where corrections made by the radiologist replace the algorithm-generated (original) result in the correction zones. The resulting corrected contour is then compared to the original version. The evaluation showed: (1) Mean absolute error of 0.5 pixels between the original and the corrected contour; (2) Overlapping area of 99.2% between the lesion regions, obtained by the algorithm and the corrected contour. These results are significantly better than those previously reported. In addition, we have examined the potential of our segmentation results to contribute to the discrimination between malignant and benign lesions.
超声乳腺病变的自动分割极具挑战性,这是由于病变的毛刺状特征以及B超图像在形状和纹理上的差异。许多研究试图通过应用多种计算方法来应对这一挑战,这些方法包括:马尔可夫随机场、人工神经网络、主动轮廓和水平集技术。这些研究聚焦于创建一个与由训练有素的放射科医生勾勒出的手动轮廓相似度最高的自动轮廓。在本研究中,我们开发了一种算法,旨在利用相应超声图像的特性来捕捉病变的毛刺状边界。这主要是通过集成在水平集框架中的独特多尺度纹理识别器(受视觉系统模型启发)来实现的。该算法的性能已通过基于轮廓和基于区域的误差度量进行了定量评估。我们将算法生成的轮廓与专家放射科医生勾勒的手动轮廓进行了比较。此外,我们在此提出一种新的性能评估方法,即在修正区域中,由放射科医生进行的修正取代算法生成的(原始)结果。然后将得到的修正轮廓与原始版本进行比较。评估结果显示:(1)原始轮廓与修正轮廓之间的平均绝对误差为0.5像素;(2)算法得到的病变区域与修正轮廓之间的重叠面积为99.2%。这些结果明显优于先前报道的结果。此外,我们还研究了我们的分割结果对鉴别恶性和良性病变的潜在贡献。