Department of Biomedical Engineering, Rutgers University, Piscataway, New Jersey 08854, USA.
Med Phys. 2013 Mar;40(3):032305. doi: 10.1118/1.4790466.
Segmentation of breast lesions on dynamic contrast enhanced (DCE) magnetic resonance imaging (MRI) is the first step in lesion diagnosis in a computer-aided diagnosis framework. Because manual segmentation of such lesions is both time consuming and highly susceptible to human error and issues of reproducibility, an automated lesion segmentation method is highly desirable. Traditional automated image segmentation methods such as boundary-based active contour (AC) models require a strong gradient at the lesion boundary. Even when region-based terms are introduced to an AC model, grayscale image intensities often do not allow for clear definition of foreground and background region statistics. Thus, there is a need to find alternative image representations that might provide (1) strong gradients at the margin of the object of interest (OOI); and (2) larger separation between intensity distributions and region statistics for the foreground and background, which are necessary to halt evolution of the AC model upon reaching the border of the OOI.
In this paper, the authors introduce a spectral embedding (SE) based AC (SEAC) for lesion segmentation on breast DCE-MRI. SE, a nonlinear dimensionality reduction scheme, is applied to the DCE time series in a voxelwise fashion to reduce several time point images to a single parametric image where every voxel is characterized by the three dominant eigenvectors. This parametric eigenvector image (PrEIm) representation allows for better capture of image region statistics and stronger gradients for use with a hybrid AC model, which is driven by both boundary and region information. They compare SEAC to ACs that employ fuzzy c-means (FCM) and principal component analysis (PCA) as alternative image representations. Segmentation performance was evaluated by boundary and region metrics as well as comparing lesion classification using morphological features from SEAC, PCA+AC, and FCM+AC.
On a cohort of 50 breast DCE-MRI studies, PrEIm yielded overall better region and boundary-based statistics compared to the original DCE-MR image, FCM, and PCA based image representations. Additionally, SEAC outperformed a hybrid AC applied to both PCA and FCM image representations. Mean dice similarity coefficient (DSC) for SEAC was significantly better (DSC = 0.74 ± 0.21) than FCM+AC (DSC = 0.50 ± 0.32) and similar to PCA+AC (DSC = 0.73 ± 0.22). Boundary-based metrics of mean absolute difference and Hausdorff distance followed the same trends. Of the automated segmentation methods, breast lesion classification based on morphologic features derived from SEAC segmentation using a support vector machine classifier also performed better (AUC = 0.67 ± 0.05; p < 0.05) than FCM+AC (AUC = 0.50 ± 0.07), and PCA+AC (AUC = 0.49 ± 0.07).
In this work, we presented SEAC, an accurate, general purpose AC segmentation tool that could be applied to any imaging domain that employs time series data. SE allows for projection of time series data into a PrEIm representation so that every voxel is characterized by the dominant eigenvectors, capturing the global and local time-intensity curve similarities in the data. This PrEIm allows for the calculation of strong tensor gradients and better region statistics than the original image intensities or alternative image representations such as PCA and FCM. The PrEIm also allows for building a more accurate hybrid AC scheme.
在动态对比增强(DCE)磁共振成像(MRI)中对乳腺病变进行分割是计算机辅助诊断框架中病变诊断的第一步。由于这种病变的手动分割既耗时又容易受到人为错误和可重复性问题的影响,因此非常需要一种自动化的病变分割方法。传统的基于边界的主动轮廓(AC)模型等自动图像分割方法需要在病变边界处具有较强的梯度。即使在 AC 模型中引入了基于区域的项,灰度图像强度通常也无法清晰地定义前景和背景区域的统计信息。因此,需要寻找替代的图像表示方法,这些方法可能具有以下特点:(1)在感兴趣对象(OOI)的边缘处提供强梯度;(2)前景和背景的强度分布和区域统计之间有更大的分离,这对于在到达 OOI 边界时停止 AC 模型的演化是必要的。
在本文中,作者引入了一种基于谱嵌入(SE)的用于乳腺 DCE-MRI 病变分割的 AC(SEAC)。SE 是一种非线性降维方案,以体素的方式应用于 DCE 时间序列,将多个时间点的图像减少到一个参数图像,其中每个体素都由三个主导特征向量来描述。这种参数特征向量图像(PrEIm)表示方法允许更好地捕获图像区域统计信息,并产生更强的梯度,用于驱动混合 AC 模型,该模型同时利用边界和区域信息。作者将 SEAC 与使用模糊 C 均值(FCM)和主成分分析(PCA)作为替代图像表示的 AC 进行了比较。通过边界和区域指标以及使用 SEAC、PCA+AC 和 FCM+AC 的形态学特征进行病变分类来评估分割性能。
在 50 例乳腺 DCE-MRI 研究的队列中,与原始 DCE-MR 图像、FCM 和 PCA 图像表示相比,PrEIm 产生的总体区域和基于边界的统计数据更好。此外,SEAC 优于应用于 PCA 和 FCM 图像表示的混合 AC。SEAC 的平均骰子相似系数(DSC)明显更好(DSC=0.74±0.21),优于 FCM+AC(DSC=0.50±0.32)和 PCA+AC(DSC=0.73±0.22)。基于边界的平均绝对差和 Hausdorff 距离的指标也遵循相同的趋势。在自动分割方法中,基于 SEAC 分割提取的形态学特征的乳腺病变分类使用支持向量机分类器的效果也更好(AUC=0.67±0.05;p<0.05),优于 FCM+AC(AUC=0.50±0.07)和 PCA+AC(AUC=0.49±0.07)。
在这项工作中,我们提出了 SEAC,这是一种准确的、通用的 AC 分割工具,可以应用于任何使用时间序列数据的成像领域。SE 允许将时间序列数据投影到 PrEIm 表示中,以便每个体素都由主导特征向量来描述,从而捕获数据中的全局和局部时间强度曲线相似性。这种 PrEIm 允许计算比原始图像强度或替代图像表示(如 PCA 和 FCM)更强的张量梯度和更好的区域统计数据。PrEIm 还允许构建更准确的混合 AC 方案。