Song Enmin, Jiang Luan, Jin Renchao, Zhang Lin, Yuan Yuan, Li Qiang
Center for Biomedical Imaging and Bioinformatics, School of Computer Science and Technology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430074, China.
Acad Radiol. 2009 Jul;16(7):826-35. doi: 10.1016/j.acra.2008.11.014. Epub 2009 Apr 10.
Segmentation is an important and challenging task in a computer-aided diagnosis (CAD) system. Accurate segmentation could improve the accuracy in lesion detection and characterization. The objective of this study is to develop and test a new segmentation method that aims at improving the performance level of breast mass segmentation in mammography, which could be used to provide accurate features for classification.
This automated segmentation method consists of two main steps and combines the edge gradient, the pixel intensity, as well as the shape characteristics of the lesions to achieve good segmentation results. First, a plane fitting method was applied to a background-trend corrected region-of-interest (ROI) of a mass to obtain the edge candidate points. Second, dynamic programming technique was used to find the "optimal" contour of the mass from the edge candidate points. Area-based similarity measures based on the radiologist's manually marked annotation and the segmented region were employed as criteria to evaluate the performance level of the segmentation method. With the evaluation criteria, the new method was compared with 1) the dynamic programming method developed by Timp and Karssemeijer, and 2) the normalized cut segmentation method, based on 337 ROIs extracted from a publicly available image database.
The experimental results indicate that our segmentation method can achieve a higher performance level than the other two methods, and the improvements in segmentation performance level were statistically significant. For instance, the mean overlap percentage for the new algorithm was 0.71, whereas those for Timp's dynamic programming method and the normalized cut segmentation method were 0.63 (P < .001) and 0.61 (P < .001), respectively.
We developed a new segmentation method by use of plane fitting and dynamic programming, which achieved a relatively high performance level. The new segmentation method would be useful for improving the accuracy of computerized detection and classification of breast cancer in mammography.
在计算机辅助诊断(CAD)系统中,分割是一项重要且具有挑战性的任务。准确的分割可以提高病变检测和特征描述的准确性。本研究的目的是开发并测试一种新的分割方法,旨在提高乳腺钼靶摄影中乳腺肿块分割的性能水平,该方法可用于提供准确的特征以进行分类。
这种自动分割方法包括两个主要步骤,结合了边缘梯度、像素强度以及病变的形状特征以获得良好的分割结果。首先,将平面拟合方法应用于肿块的背景趋势校正感兴趣区域(ROI)以获得边缘候选点。其次,使用动态规划技术从边缘候选点中找到肿块的“最优”轮廓。基于放射科医生手动标记的注释和分割区域的基于面积的相似性度量被用作评估分割方法性能水平的标准。根据这些评估标准,将新方法与1)由廷普和卡尔塞梅ijer开发的动态规划方法,以及2)归一化割分割方法进行比较,这两种方法基于从公开可用图像数据库中提取的337个ROI。
实验结果表明,我们的分割方法能够达到比其他两种方法更高的性能水平,并且分割性能水平的提高具有统计学意义。例如,新算法的平均重叠百分比为0.71,而廷普的动态规划方法和归一化割分割方法的平均重叠百分比分别为0.63(P <.001)和0.61(P <.001)。
我们通过使用平面拟合和动态规划开发了一种新的分割方法,该方法达到了相对较高的性能水平。这种新的分割方法将有助于提高乳腺钼靶摄影中乳腺癌计算机检测和分类的准确性。