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Co-occurrence of Local Anisotropic Gradient Orientations (CoLlAGe): A new radiomics descriptor

机译:同时出现的局部各向异性梯度取向(CoLlAGe):一种新的放射学描述符

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摘要

In this paper, we introduce a new radiomic descriptor, Co-occurrence of Local Anisotropic Gradient Orientations (CoLlAGe) for capturing subtle differences between benign and pathologic phenotypes which may be visually indistinguishable on routine anatomic imaging. CoLlAGe seeks to capture and exploit local anisotropic differences in voxel-level gradient orientations to distinguish similar appearing phenotypes. CoLlAGe involves assigning every image voxel an entropy value associated with the co-occurrence matrix of gradient orientations computed around every voxel. The hypothesis behind CoLlAGe is that benign and pathologic phenotypes even though they may appear similar on anatomic imaging, will differ in their local entropy patterns, in turn reflecting subtle local differences in tissue microarchitecture. We demonstrate CoLlAGe’s utility in three clinically challenging classification problems: distinguishing (1) radiation necrosis, a benign yet confounding effect of radiation treatment, from recurrent tumors on T1-w MRI in 42 brain tumor patients, (2) different molecular sub-types of breast cancer on DCE-MRI in 65 studies and (3) non-small cell lung cancer (adenocarcinomas) from benign fungal infection (granulomas) on 120 non-contrast CT studies. For each of these classification problems, CoLlAGE in conjunction with a random forest classifier outperformed state of the art radiomic descriptors (Haralick, Gabor, Histogram of Gradient Orientations).
机译:在本文中,我们引入了一种新的放射学描述子,即局部各向异性梯度取向的共现(CoLlAGe),用于捕获良性和病理表型之间的细微差异,这在常规解剖成像中可能在视觉上无法区分。 CoLlAGe试图捕获和利用体素水平梯度方向上的局部各向异性差异来区分相似的表型。 CoLlAGe涉及为每个图像体素分配一个熵值,该熵值与围绕每个体素计算出的梯度方向的共现矩阵相关。 CoLlAGe背后的假设是,尽管良性和病理表型在解剖成像上可能看起来相似,但它们的局部熵模式会有所不同,从而反映出组织微体系结构的细微局部差异。我们展示了CoLlAGe在三个临床上具有挑战性的分类问题中的效用:区分(1)放射性坏死是一种放射治疗的良性但令人困惑的效果,来自42例脑肿瘤患者的复发性肿瘤对T1-w MRI的影响,(2)不同的分子亚型65项研究在DCE-MRI上进行了乳腺癌研究,以及120项非对比CT研究在(3)良性真菌感染(肉芽肿)引起的非小细胞肺癌(腺癌)中进行了研究。对于这些分类问题中的每一个,COLlAGE与随机森林分类器的结合都优于最新的放射学描述符(Haralick,Gabor,梯度方向直方图)。

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