Prasanna Prateek, Tiwari Pallavi, Madabhushi Anant
Med Image Comput Comput Assist Interv. 2014;17(Pt 3):73-80. doi: 10.1007/978-3-319-10443-0_10.
We introduce a novel biologically inspired feature descriptor, Co-occurrence of Local Anisotropic Gradient Orientations (CoLlAGe), that captures higher order co-occurrence patterns of local gradient tensors at a pixel level to distinguish disease phenotypes that have similar morphologic appearances. A number of pathologies (e.g. subtypes of breast cancer) have different histologic phenotypes but similar radiographic appearances. While texture features have been previously employed for distinguishing subtly different pathologies, they attempt to capture differences in global intensity patterns. In this paper we attempt to model CoLlAGe to identify higher order co-occurrence patterns of gradient tensors at a pixel level. The assumption behind this new feature is that different pathologies, even though they may have very similar overall texture and appearance on imaging, at a local scale, will have different co-occurring patterns with respect to gradient orientations. We demonstrate the utility of CoLIAGe in distinguishing two subtly different types of pathologies on MRI in the context of brain tumors and breast cancer. In the first problem, we look at CoLlAGe for distinguishing radiation effects from recurrent brain tumors over a cohort of 40 studies, and in the second, discriminating different molecular subtypes of breast cancer over a cohort of 73 studies. For both these challenging cohorts, CoLlAGe was found to have significantly improved classification performance, as compared to the traditional texture features such as Haralick, Gabor, local binary patterns, and histogram of gradients.
我们引入了一种新型的受生物启发的特征描述符——局部各向异性梯度方向共现(CoLlAGe),它在像素级别捕获局部梯度张量的高阶共现模式,以区分具有相似形态外观的疾病表型。许多病理学情况(如乳腺癌亚型)具有不同的组织学表型,但放射学表现相似。虽然纹理特征此前已被用于区分细微不同的病理学情况,但它们试图捕获全局强度模式的差异。在本文中,我们试图对CoLlAGe进行建模,以识别像素级别的梯度张量的高阶共现模式。这一新特征背后的假设是,不同的病理学情况,即使在成像上它们可能具有非常相似的整体纹理和外观,但在局部尺度上,关于梯度方向将具有不同的共现模式。我们展示了CoLIAGe在脑肿瘤和乳腺癌背景下的MRI中区分两种细微不同类型病理学情况的效用。在第一个问题中,我们在40项研究的队列中研究CoLlAGe以区分放射性效应和复发性脑肿瘤,在第二个问题中,在73项研究的队列中区分乳腺癌的不同分子亚型。对于这两个具有挑战性的队列,与传统纹理特征(如哈氏、伽柏、局部二值模式和梯度直方图)相比,发现CoLlAGe具有显著提高的分类性能。